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Magnetic Barkhausen Noise Measurements Using Tetrapole Probe Designs by Paul McNairnay A thesis submitted to the Department of Physics, Engineering Physics and Astronomy in conformity with the requirements for the degree of Master of Applied Science Queen’s University Kingston, Ontario, Canada December 2014 Copyright © Paul McNairnay, 2014 Abstract A magnetic Barkhausen noise (MBN) testing system was developed for Defence Research and Development Canada (DRDC) to perform MBN measurements on the Royal Canadian Navy’s Victoria class submarine hulls that can be correlated with material properties, including residual stress. The DRDC system was based on the design of a MBN system developed by Steven White at Queen’s University, which was capable of performing rapid angular dependent measurements through the implementation of a flux controlled tetrapole probe. In tetrapole probe designs, the magnetic excitation field is rotated in the surface plane of the sample under the assumption of linear superposition of two orthogonal magnetic fields. During the course of this work, however, the validity of flux superposition in ferromagnetic materials, for the purpose of measuring MBN, was brought into question. Consequently, a study of MBN anisotropy using tetrapole probes was performed. Results indicate that MBN anisotropy measured under flux superposition does not simulate MBN anisotropy data obtained through manual rotation of a single dipole excitation field. It is inferred that MBN anisotropy data obtained with tetrapole probes is the result of the magnetic domain structure’s response to an orthogonal magnetization condition and not necessarily to any bulk superposition magnetization in the sample. A qualitative model for the domain configuration under two orthogonal magnetic fields is proposed to describe the results. An empirically derived fitting equation, that describes tetrapole MBN anisotropy data, is presented. The equation describes results in terms of two largely independent orthogonal fields, and includes interaction terms arising due to competing orthogonally magnetized domain structures and interactions with the sample’s magnetic easy axis. The equation is used to fit results obtained from a number of samples and tetrapole orientations and in each case correctly identifies the samples’ magnetic easy axis. i Acknowledgements First and foremost I would like to thank my supervisors Thomas Krause and Lynann Clapham and express my gratitude for your guidance throughout this project. Thank you for all the advice and assistance you provided me over these past years. I would like to give my thanks to Arash Samimi for the countless helpful discussions we had on both work and life. They made this project infinitely easier. Thank you also to Robbie Edwards and Chris Mohr for all the time spent in the lab helping with the build. These past few years have been immensely enjoyable thanks in large part to a wonderful group of friends whose company I am incredibly grateful for. Finally, I would like to thank my family. I cannot describe how much the support you have given me my entire life means to me. Thank you for everything. ii Table of Contents Abstract.......................................................................................................................................... i Acknowledgements ...................................................................................................................... ii Table of Contents ........................................................................................................................ iii List of Tables ............................................................................................................................... vii List of Figures ..............................................................................................................................viii List of Symbols and Acronyms ....................................................................................................xii Chapter 1 Introduction ............................................................................................................ 1 1.1 Residual Stress in Victoria Class Submarines.................................................................. 2 1.2 Magnetic Barkhausen Noise ........................................................................................... 3 1.2.1 MBN and Stress................................................................................................... 4 1.3 Stress Anisotropy Measurement and Steven White’s MBN System .............................. 6 1.4 Development of a MBN System for DRDC ...................................................................... 8 1.5 Organization of Thesis .................................................................................................... 9 Chapter 2 2.1 Theory and Background ........................................................................................ 10 Stress Measurement ..................................................................................................... 11 2.1.1 Stress and Strain ............................................................................................... 11 2.1.2 Stress Measurement Techniques ..................................................................... 13 iii 2.2 Maxwell’s Equations ..................................................................................................... 14 2.3 Magnetic Materials ....................................................................................................... 15 2.4 Domain Theory ............................................................................................................. 19 2.4.1 Magnetic Energy ............................................................................................... 20 2.4.2 Magnetization Process...................................................................................... 25 2.5 Magnetic Measurements.............................................................................................. 27 2.6 Magnetic Barkhausen Noise ......................................................................................... 28 2.6.1 MBN Parameters............................................................................................... 29 2.6.2 MBN Energy ...................................................................................................... 30 2.6.3 MBN Anisotropy................................................................................................ 32 2.6.4 MBN Energy under Orthogonal Fields .............................................................. 34 Chapter 3 3.1 DRDC MBN System and Experimental Setup ....................................................... 36 Hardware ...................................................................................................................... 38 3.1.1 Data Acquisition Boards (DAQs) ....................................................................... 38 3.1.2 Flux Control System .......................................................................................... 38 3.1.3 Power Supply .................................................................................................... 39 3.1.4 Preamplifier ...................................................................................................... 40 3.2 Software........................................................................................................................ 40 3.3 Probe............................................................................................................................. 41 3.3.1 Pickup Coil Design ............................................................................................. 47 3.3.2 Probe Summary ................................................................................................ 49 3.4 Experimental Setup and Samples ................................................................................. 50 3.4.1 Dipole Anisotropy Measurements .................................................................... 51 3.4.2 Tetrapole Anisotropy Measurements............................................................... 51 3.4.3 Samples ............................................................................................................. 52 iv Chapter 4 4.1 System Performance & Study of Flux Superposition Validity ............................. 54 System Performance..................................................................................................... 55 4.1.1 System Error...................................................................................................... 55 4.1.2 BN Envelope ...................................................................................................... 60 4.1.3 BN Normalized Power Spectrum ...................................................................... 64 4.1.4 BN Energy Anisotropy ....................................................................................... 66 4.2 Detailed Study of Flux Superposition Validity in Tetrapole Probes ............................. 68 4.2.1 Dipole MBN Anisotropy Results Using the FDP Probe ..................................... 70 4.2.2 Tetrapole MBN Anisotropy Results: The effect of tetrapole orientation using the FTP probe ..................................................................................... 72 4.2.3 Tetrapole MBN Anisotropy Results: High resolution measurements on mild steel using both the FTP and STP probes ............................................ 77 4.2.4 Comparison of Dipole and Tetrapole Results: Studies involving independent orthogonal dipoles ...................................................................... 82 4.2.5 Field Amplitude Effects of Anisotropy .............................................................. 89 4.2.6 Voltage (Field) and Flux Control of the MBN Excitation Field: Effects on anisotropy results ............................................................................................. 91 4.2.7 Empirical Fitting of Tetrapole Data ................................................................... 92 Chapter 5 Discussion .............................................................................................................. 99 5.1 Construction and Evaluation of DRDC MBN System .................................................. 100 5.2 Tetrapole MBN Anisotropy and Empirical Fitting Equation ....................................... 102 5.3 Origin of Tetrapole MBN Anisotropy .......................................................................... 103 5.3.1 Pickup Coil and Probe Coupling Effects .......................................................... 104 5.3.2 Domain Structure Effects ................................................................................ 105 5.4 DRDC System and Residual Stress Anisotropy ........................................................... 108 v Chapter 6 Conclusion and Future Work .............................................................................. 109 6.1 Tetrapole MBN Anisotropy ......................................................................................... 110 6.2 System Performance................................................................................................... 111 6.3 Future Work and Recommendations ......................................................................... 111 6.3.1 MBN Anisotropy.............................................................................................. 112 6.3.2 MBN System Design ........................................................................................ 113 Bibliography.............................................................................................................................. 114 Appendix A FCS of the Original Queen’s and DRDC Systems ............................................. 120 Appendix B Calibration Procedure ...................................................................................... 122 Appendix C Empirical Fitting on Polar Plots ........................................................................ 124 Appendix D Empirical Fitting of Tetrapole Data on Laminate Samples ............................. 126 Appendix E Skin Depth and Diffusion of Time Harmonic and Transient Fields into a Semi-Infinite Slab ............................................................................................. 129 Appendix F Derivation of Diffusion of Time Harmonic and Transient Fields into a Semi-Infinite Slab ............................................................................................. 133 vi List of Tables 2.1 Classification of magnetic materials in terms of magnetic susceptibility ..................... 17 3.1 FTP coil parameters ....................................................................................................... 43 3.2 FDP coil parameters ....................................................................................................... 44 3.3 STP coil parameters ....................................................................................................... 46 3.4 Summary of probes used in this work and their relevant coil parameters ................... 49 3.5 Sample material investigated in this work .................................................................... 53 4.1 Best fit parameters for the dipole MBN energy fitting equation (2.32) and the MBN energy ratio for all samples. ................................................................................. 72 4.2 Fitting parameters for equation (4.3) for angular dependent MBN energy measurements performed on mild steel with the FTP probe at various probe orientation angles ......................................................................................................... 96 4.3 Fitting parameters for equation (4.3) for angular dependent MBN energy measurements performed on mild steel with the STP probe at various probe orientation angles ......................................................................................................... 96 4.4 Fitting parameters for equation (4.3) for angular dependent MBN energy measurements performed on HY-80 with the FTP probe at various probe orientation angles ......................................................................................................... 97 vii List of Figures 1.1 A simplified magnetic Barkhausen noise setup and signal ............................................. 5 1.2 The original Queen’s system spring-loaded 4-pole (SL4P) tetrapole probe design ........ 7 2.1 The Cauchy stress tensor represented on a continuous solid in Cartesian coordinates .................................................................................................................... 11 2.2 Hysteresis loops observed in ferromagnetic materials ................................................. 18 2.3 Ferromagnetic crystal showing domain walls that separate magnetic domains of different magnetic orientation ...................................................................................... 19 2.4 Bethe curve describing the variation in exchange energy for increasing ratio of interatomic distance to radius of the 3d electron shell. ............................................... 21 2.5 Minimization of the magnetostatic energy by reducing the demagnetizing field through the creation of more magnetic domains ......................................................... 22 2.6 BCC crystal with magnetic easy axis in the [100] direction and hard axis in the [111] direction ............................................................................................................... 23 2.7 Representation of magnetostriction and the Villari effect .......................................... 24 2.8 The magnetization process illustrated in five stages .................................................... 26 2.9 Typical non-linear increase of MBN energy with increasing excitation field amplitude....................................................................................................................... 31 2.10 Typical MBN energy anisotropy measurement using manual dipole rotation in increments of .......................................................................................................... 33 viii 2.11 Tetrapole oriented at an angle ( 3.1 from a reference direction on the sample ), generating a superposition field at an angle . ............................... 35 Block diagram of system of the DRDC system, hardware and probe assembly components. .................................................................................................................. 37 3.2 CAD model of FTP probe ............................................................................................... 43 3.3 CAD model of FDP probe ............................................................................................... 44 3.4 CAD model of STP probe ............................................................................................... 46 3.5 Large radius pickup coil assembly consisting of aluminum shield and pickup coil with ferrite core ............................................................................................................. 49 3.6 Angular measurement guide (AMG) and tetrapole orientation ( ) measurement setup .............................................................................................................................. 50 4.1 System error for various excitation frequencies and flux densities for the (a) DRDC system and (b) original Queen’s system. ................................................. 58 4.2 Measured excitation/feedback coil inductance frequency 4.3 as a function of excitation . ................................................................................................................ 59 BN envelopes measured by the (a) STP probe and (b) SL4P probe for various flux densities 4.4 / at an excitation frequency on mild steel B sample. ........... 61 Typical BN envelope parameters for STP and SL4P probe as a function of flux density. (a) MBN energy, (b) BN envelope peak voltage and (c) BN envelope peak phase. ............................................................................................................................ 63 4.5 Typical BN envelope parameters for STP and SL4P probe as a function of excitation frequency . (a) MBN energy, (b) BN envelope peak voltage and (c) BN envelope peak phase ..................................................................................................................... 63 ix 4.6 Differences in the normalized power spectrum measured by the SL4P and the STP probes. ........................................................................................................................... 65 4.7 MBN Energy anisotropy as measured by the STP, SL4P and FDP probes under flux control at 4.8 and .................................................................... 67 MBN energy anisotropy measured with a dipole on (a) mild steel A at , (b) HY-80 at , (c) grain-oriented SiFe at (d) non-oriented laminate at 4.9 4.10 ) on grain-oriented laminate ) and non-oriented laminate ( ). ...................................... 76 MBN energy anisotropy measured using the FTP at various ‘high resolution’ probe orientations 4.12 on mild steel A ( ). ........................................................................................... 74 MBN energy anisotropy using FTP for various ( 4.11 . ................................................................ 71 MBN energy anisotropy using FTP for various and HY-80 ( and on mild steel A. .................................................................................... 79 MBN energy anisotropy measured using the STP at various probe orientations on mild steel A. .............................................................................................................. 81 4.13 Experimental setup for measurements of MBN using independent orthogonal dipoles ........................................................................................................................... 84 4.14 MBN energy resulting from a superposition field independent fields 4.15 4.16 at various probe orientation angles ................................. 86 MBN energy resulting from a superposition field independent fields and two orthogonal and two orthogonal at various flux densities .................................................... 88 MBN energy anisotropy at peak flux densities of (a) , (b) and (c) . Measurements performed under flux control with STP on the mild steel B sample. .. 90 x 4.17 Tetrapole MBN energy anisotropy of under flux and voltage control with FTP on mild steel B sample ........................................................................................................ 91 4.18 MBN energy anisotropy measurements using the FTP probe on mild steel A at various probe orientation angles 4.19 MBN energy anisotropy measurements using the STP probe on mild steel A at various probe orientation angles 4.20 . ............................................................................ 95 ............................................................................. 95 MBN energy anisotropy measurements using the FTP probe on HY80 at various probe orientation angles .......................................................................................... 98 xi List of Symbols and Acronyms ̅ Vector area (m2) Feedback coil area (m2) ̅ Magnetic flux density (T) Initial magnetic flux density at sample surface (T) Magnetic flux density as a function of depth z and t (T) Peak magnetic flux density at 1-3 pole-pair (T) Peak magnetic flux density at 2-4 pole-pair (T) Measured peak magnetic flux density in the feedback coils (T) Target peak magnetic flux density in the feedback coils (T) Electric field (V/m) Total magnetic energy (J) Exchange energy (J) Magnetostatic energy (J) Magnetocrystalline anisotropy energy (J) Domain wall energy (J) Magnetostrictive energy (J) Zeeman energy (J) xii ̅ Force (N) Feedback voltage gain (unitless) Circuit gain (unitless) ̅ Magnetic field (A/m) Magnetic field generated under superposition (A/m) ̅ Demagnetizing field (A/m) Magnetic field generated by the 1-3 pole-pair (A/m) Magnetic field generated by the 2-4 pole-pair (A/m) Current (A) ̅ Current density (A/m2) ̅ Bound current density (A/m2) ̅ Free current density (A/m2) Excitation coil inductance (H) Feedback coil inductance (H) Pickup coil inductance (H) ̅ Magnetization field (A∙turns/m) Saturation magnetization (A∙turns/m) Magnetic Barkhausen noise energy (V2∙s) MBN energy when running the 1-3 pole-pair ( ) independently (V2∙s) MBN energy when running the 2-4 pole-pair ( ) independently (V2∙s) MBN energy measured by the tetrapole probes (V2∙s) xiii MBN energy measured under ‘no superposition’, where the MBN energy from each orthogonal pole-pair is measured separately (V2∙s) Number of coil turns (turns) Number of feedback coil turns (turns) Power (W) Resistance (Ω) Period (s) Voltage (V) Target feedback voltage (V) Feedback voltage (V) Younge’s modulus (Pa) Coefficient of Barkhausen events contributing to anisotropy (V 2∙s) Coefficient of Barkhausen events contributing to isotropic background (V2∙s) Skin depth (m) Strain (unitless) Permittivity of free space (8.8542 × 10-12 F/m) Angle of excitation field in the sample reference frame (°) Angle of the assumed superposition excitation field in the probe reference frame (°) Angle of the probe in the sample reference frame (°) MBN energy ratio (unitless) MBN energy ratio for tetrapole data (unitless) xiv Magnetostriction constant (unitless) Permeability of free space (4π × 10-7 H/m) Relative permeability (unitless) Electric charge density (C/m3) Stress tensor (Pa) Conductivity (S/m) Time constant (s) Magnetic flux (Wb) Easy axis direction (°) Magnetic susceptibility (unitless) Angular frequency (rad/s) Coil diameter (m) RMS error (VRMS) Normalized RMS error (unitless) Total system error (unitless) Excitation frequency ̅ Dipole magnetization Elementary charge (1.6022 × 10-19 C) ̅ Time (s) Velocity (m/s) Poisson’s ratio (unitless) xv ABS Acrylonitrile Butadiene Styrene AMG Angular Measurement Guide BCC Body Centered Cubic BN Barkhausen Noise CAD Computer Aided Design CANDU CANadian Deuterium Uranium DAQ Data Acquisition DRDC Defence Research and Development Canada FCS Flux Control System FDP Feeder Dipole Probe FEM Finite Element Modeling FTP Feeder Tetrapole Probe IACS International Copper Annealed Standard MBN Magnetic Barkhausen Noise MFL Magnetic Flux Leakage NDE Non-Destructive Evaluation NDT Non-Destructive Testing NI National Instruments NPSBN Normalized Power Spectrum of Barkhausen Noise PCB Printed Circuit Board RMS Root Mean Squared xvi SL4P Spring-Loaded 4 Pole (original Queen’s System Probe) STP Submarine Tetrapole Probe UPS Uninterruptible Power Supply xvii Chapter 1 Introduction Engineered materials are designed to achieve specific performance requirements, which allow for efficient and safe operation during their service lifetime. Depending on their application and operating conditions, material properties of these components can change over time increasing the likelihood of in-service failure. In applications where the cost of failure is high, a method for the evaluation of fitness for service is required. Furthermore, when the replacement cost of a component is significant, extending the service lifetime through such evaluations is desired. Non-destructive testing and evaluation (NDT/NDE) are methods by which engineered components are inspected to ensure material properties remain within their operational envelope while leaving them otherwise intact. Such testing methodologies allow for efficient risk assessment and lowers operational costs associated with the repair/replacement of degraded components [1]. NDE technologies have been developed to measure numerous material conditions. One parameter that is significant in almost all engineering considerations is the presence of material stress. Exceeding design stress limits often leads to catastrophic failure and thus the stress state of components is a crucial factor to monitor. Despite this, there are relatively few methods for non-destructive stress measurement that can be performed in the field and are not time 1 CHAPTER 1. INTRODUCTION 2 intensive [2]. One method that shows stress sensitivity and, which can be performed rapidly and on-site, is the magnetic Barkhausen noise (MBN) technique. Furthermore, MBN is sensitive to anisotropic surface stresses, as may be investigated through angular dependent measurements [3], [4]. The goal of this thesis was to develop and evaluate a MBN testing system for the Defence Research and Development Canada (DRDC). The system was to be capable of performing rapid angular dependent MBN measurements, which can be correlated with residual stress, on the Royal Canadian Navy’s Victoria class submarine hulls. This chapter presents the important considerations regarding residual stress in Victoria class submarines and introduces the magnetic Barkhausen noise method and its ability to measure residual stress. The importance of measuring residual stress anisotropy is discussed and the design of a MBN system developed by Steven White at Queen’s University [5], [6] is briefly reviewed. The development of the MBN testing system for DRDC, based on the design of the original Queen’s system, is discussed. 1.1 Residual Stress in Victoria Class Submarines Victoria class submarine hulls were originally manufactured from Q1N steel [7], a type of highstrength steel used for pressure vessel applications. HY-80 is a similar high-strength steel, which has been used as a substitute in repairs and is known for its high strength-to-weight ratio, exceptional toughness and it ability to resist fracture [8]. As with most structural steels, Victoria class submarine hulls contain residual stress arising from a variety of sources. Initial fabrication often locks in residual strain due to hot or cold rolling and cutting. Thermal strain occurs around welds or flame cut sections due to shrinkage during cooling. Heating and cooling can also lead to transformation strains with non-homogeneous volume changes. Misalignment of prefabricated plates generates strains, as does surface treatment such as grinding. Hull damage due to collisions and diving cycles may also be a source of residual stress. Inspection of the hull requires the removal of acoustic tiles, which has been known to create a thin surface layer of CHAPTER 1. INTRODUCTION 3 compressive stress [7]. Finally in the case of dry-docked submarines, static loading strains are present due to weight dispersion [7]. All these sources combine to produce complex strain fields that can impact the safe operational limits of the submarine. Among the most significant factors is the level of tensile stress at the inner and outer surface of the hull, which can facilitate crack growth [9]. The aggressive operating environment can enhance the chances of buckling, fatigue and stress corrosion cracking. Also, specific sections of the submarine, such as areas near the exhaust, exhibit a decrease in toughness due to prolonged heat exposure and require regular replacement [7]. For these reasons, the stress state of the hull must be monitored. Neutron and X-ray diffraction techniques have previously been used to address the measurement of residual stress, but the development of a MBN residual stress measurement system would be beneficial for a number of reasons. Neutron diffraction requires a stable neutron source (typically a nuclear reactor), which prevents on-site measurements and raises measurement costs. X-ray diffraction can be performed on-site [7], however, it has a small penetration depth and requires careful surface preparation, which itself can induce residual stresses [7]. MBN technology allows for in situ stress measurements, has penetration depth greater than X-ray diffraction, can perform rapid measurement with minimal surface preparation and has several other benefits outlined in Section 1.2. 1.2 Magnetic Barkhausen Noise Magnetic Barkhausen noise (MBN) is the term given to the abrupt changes in domain configuration (see Section 2.4) that occur when a ferromagnetic material is magnetized. The Barkhausen effect was first discovered by Heinrich Barkhausen in 1919 [10]. With the application of an external magnetic field, the magnetic domain structure changes but these changes are inhibited by irregularities in the crystal lattice, which represent potential barriers to domain wall motion. With higher applied fields, these potential barriers, also known as ‘pinning CHAPTER 1. INTRODUCTION 4 sites’, are overcome and there is a discontinuous change in the local magnetization commonly referred to as a Barkhausen event. These changes in magnetization can be measured in terms of a voltage induced in a nearby coil, according to Faraday’s law of induction. Typical MBN measurements are performed using a time harmonic excitation field to magnetize the sample, and a pickup coil, which detects Barkhausen events in the form of a voltage. Figure 1.1a shows a simplified MBN setup in which a dipole electromagnet generates the excitation field. A pickup coil with an axis perpendicular to the surface, detects induced Barkhausen events. The MBN signal is measured over one full excitation period and consists of a series of discontinuous voltage jumps representing each Barkhausen event. An example of a typical signal is shown in Figure 1.1b. The MBN signal is multivariate and contains information about both the residual stress and microstructure [11]. It has been shown to contain vastly more information than that which can be obtained from hysteresis measurements [12]. This is both a benefit and drawback because, while it is useful to observe a multitude of microstructural effects, it also becomes difficult to isolate the influence of a single parameter. Furthermore, MBN is stochastic in nature, meaning that the domain configuration is determined probabilistically. As a result, a specific domain configuration can likely never be reproduced, only the average domain properties [13]. 1.2.1 MBN and Stress The relationship between stress and magnetism was first discovered by Joule in 1842 [14], who found that ferromagnetic materials were slightly deformed in the presence of a magnetic field. In 1865, Villari discovered the reverse effect, where an applied stress altered the magnetic properties of a ferromagnet [15]. This second discovery by Villari has allowed for the nondestructive evaluation of stress in ferromagnetic materials through the examination of magnetization processes [16]. More specifically, applied and residual stresses affect the magnetic domain configuration [17]–[19] which in turn affects magnetic properties such as CHAPTER 1. INTRODUCTION 5 permeability, coercivity [20] or more complex magnetic phenomena such as magnetic Barkhausen noise [3], [4], [21], [22]. (a) 200 300 Pickup Coil Voltage Excitation Flux Density Pickup Coil Voltage (mV) 150 200 100 100 50 0 0 -50 -100 -100 -200 Excitation Flux Density (mT) (b) -150 -200 0 90 180 270 -300 360 Phase (°) Figure 1.1: A simplified magnetic Barkhausen noise setup and signal. (a) A dipole electromagnet and surface mounted pickup coil. (b) A Barkhausen signal (solid line) generated from an alternating magnetic field (dashed line) over one excitation cycle (360° of the signal phase). CHAPTER 1. INTRODUCTION 6 Because of this relationship, a significant amount of MBN research has focused on the measurement of residual stress in terms of parameters that characterize the MBN signal [20], [21], [23], [24] (discussed in detail in Section 2.6.1). Stress, even at low levels, has been shown to generate large changes in the energy of the MBN signal [25]. As examples, investigations of pipeline steels under uniaxial tensile stress demonstrated that tensile strains increase MBN energy, while compressive strains decrease MBN energy [3]. It has also been shown that above a critical stress level the MBN energy reaches saturation [4], [26] and below a critical strain level (e.g. 1000 μstrain for HY-80) the MBN signal energy becomes less sensitive to changes in strain [27]. In addition to the MBN energy, other MBN signal parameters have been used to evaluate stress in poor magnetic materials [21] and around weldments in ship steel plates [25]. 1.3 Stress Anisotropy Measurement and Steven White’s MBN System The basic design of MBN measurement systems has not changed significantly over the years [20], [26], [28], [29], and generally consists of an excitation electromagnet, to magnetize the sample and a pickup sensor, to detect Barkhausen noise (BN) emissions. As mentioned previously and shown in Figure 1.1a, the excitation field is generally produced using a dipole electromagnet consisting of a magnetically soft u-core yoke. This represents a directional measurement, and thus, to fully characterize the residual stress anisotropy, a series of measurements in different directions, termed ‘angular dependent measurements’, are required. This is typically done by manually rotating the dipole probes in 10° to 15° increments, and at each angular position measuring the MBN response [20], [30], [31]. While such time consuming measurements do not pose a significant problem in a laboratory setting, this manual rotation method limits the industrial applicability of the technology. For this reason, systems designed for rapid angular measurement have been developed, such as a ‘tetrapole’ probe design [6], [32], [33]. CHAPTER 1. INTRODUCTION 7 One such tetrapole design, developed by Steven White at Queen’s University [5], [6] consisted of two orthogonal U-core dipoles, shown in Figure 1.2. Instead of manual rotation of the probe, the applied field between the poles could be electronically rotated, by suitably varying the magnetic field at the four poles. This design assumed a region at the center of the four poles where there was a vector addition of the orthogonal flux densities. This was termed the ‘flux superposition’ region. There are only a handful tetrapoles in existence and engineering details are not available for most designs. The main question surrounding tetrapoles is the validity of using flux superposition in ferromagnetic materials for the purpose of MBN measurement. Finite element modeling was performed during the original development of the tetrapole to evaluate flux superposition, but these models did not incorporate non-linear effects, magnetic anisotropy or domain structure [5]. Ultimately, a comparison of angular MBN measurements performed using a tetrapole and a manually rotated dipole is required. This comparison formed part of the work in the current thesis (Section 4.2). Figure 1.2: The original Queen’s system spring-loaded 4-pole (SL4P) tetrapole probe design [5]. CHAPTER 1. INTRODUCTION 8 In addition to the novel tetrapole probe design, the Queen’s system designed by White [5] implemented flux control at the four poles of the tetrapole probe. This was achieved by using feedback coils at each pole tip, which measured the flux waveforms through the magnetic circuits. The flux waveforms were then controlled using a four-channel analog feedback circuit and a digital error correction algorithm. Control of the excitation waveform is common in MBN system designs to improve measurement repeatability, but is typically applied to the excitation voltage or current. By controlling the flux waveforms directly, the Queen’s system tetrapole was less susceptible to the effects of probe-sample liftoff, when compared to traditional voltage control [5], [6], [23]. 1.4 Development of a MBN System for DRDC The design of the MBN system developed by White [5], referred to from this point on as the ‘original Queen’s system’, offered two significant advantages over previous designs. Foremost was the tetrapole probe design, which through an assumed flux superposition, enabled rapid MBN anisotropy measurements to be conducted. Second, was the implementation of flux control which reduced the effects of probe-sample liftoff and improved measurement repeatability. For these reasons the original Queen’s system design was selected for the development of a MBN system for DRDC submarine hull stress measurement application. In the development of the DRDC system, the original Queen’s system was examined for areas in which the design could be improved. With the goal of improving measurement repeatability, the flux control system was modified to increase flux waveform accuracy. In addition, the tetrapole probe was redesigned to reduce complexity and make it suitable for drydock conditions. The effects of design changes implemented in the DRDC system are examined through a direct comparison with the original Queen’s system. The two systems are compared in terms of flux waveform accuracy and measured MBN signals. CHAPTER 1. INTRODUCTION 9 During the course of this work, the validity of using flux superposition generated by a tetrapole probe, to measure MBN, was brought into question. As a result, a detailed study was performed that investigated flux superposition and the ability of tetrapole probes to accurately reproduce anisotropic MBN measurements. 1.5 Organization of Thesis This thesis is organized as follows: Chapter 2 presents the necessary theory required for the development of the DRDC MBN system and interpretation of measurements. It reviews the concepts of stress and strain, electromagnetic theory, properties of magnetic materials, domain theory and magnetic Barkhausen noise phenomena. Chapter 3 describes the design and construction of the DRDC MBN system developed as part of this thesis. It also describes the basic experimental procedure for MBN measurements with the system as well as the samples investigated in this work. Chapter 4 presents an investigation into the performance of the DRDC system through a comparison with the original Queen’s system. Chapter 4 also contains a detailed study of the ability of tetrapole probe designs to achieve flux superposition and generate accurate angular dependent MBN results. Tetrapole results are compared to those obtained with traditional dipoles and are fit with the empirical fitting equation in Section 2.6.5. Chapter 5 presents a discussion of the results from Chapter 4. Chapter 6 presents the major conclusions of this work and offers suggestions for future work in this field. Chapter 2 Theory and Background Presented here is the theoretical background for the subsequent chapters. This chapter begins with a review of stress and strain and the techniques used to measure them. Maxwell’s equations and the properties of magnetic fields in matter are also reviewed. The various types of magnetic materials are introduced and their magnetic behavior is explained. A detailed discussion of domain theory is presented in terms of domain structure, magnetic energies and the process of magnetization. Methods of magnetic measurement are discussed and magnetic Barkhausen noise is introduced. Barkhausen events are explained in terms of domain wall motion and the basic method for their detection is outlined. The common analyses of MBN signals are also presented. Finally, the dynamics of MBN generation under orthogonal fields is discussed. 10 CHAPTER 2. THEORY AND BACKGROUND 11 2.1 Stress Measurement 2.1.1 Stress and Strain In material science, stress is defined as the force per unit area that neighboring particles within a continuous body exert on each other. In crystalline materials these forces act in three dimensions with a general stress state expressed in terms of the Cauchy stress tensor [ ] [34]: (2.1) Since, in a Cartesian coordinate system any given point in space lies on three orthogonal planes, there is one normal and two orthogonal (shear) stresses associated with that point. Therefore, a second order stress tensor with nine elements is required to fully describe the stress state, as illustrated in Figure 2.1. In the Cauchy stress tensor, normal stresses are represented by the diagonal elements and shear stresses by the off-diagonal elements. While equation (2.1) represents the most general case of a triaxial stress, the stress normal to a free surface is zero Figure 2.1: The Cauchy stress tensor represented on a continuous solid in cartesian coordinates. CHAPTER 2. THEORY AND BACKGROUND 12 and can thus only be at most biaxial. In NDE stresses are generally measured at the sample surface, therefore biaxial and uniaxial stresses are the focus of most studies [35]. There are two categories of stress, applied and residual. Applied stress is simply the external force applied to a sample divided by its cross section. Every material has a maximum stress that it can withstand before undergoing plastic deformation. This is known as the yield stress. Below the yield stress, when external force is removed, the stress of the sample returns largely to its original state [35]. Exceeding the yield stress permanently changes the shape of the material. Upon release of the external stress, a non-uniform plastic deformation generates an internal, residual stress field. Residual stress is often introduced during fabrication processes such as welding, extrusion, bending or can be a result of physical damage such as grinding, gouges and dents [35]. For the purposes of NDE, stress cannot be measured directly, but the induced deformation of the crystal lattice can be. This deformation is known as strain and is defined by the fractional change in length due to an applied stress [35]: (2.2) where is the length under stress, * is the unstressed length and + correspond to the nine elements of (2.1). Equation (2.2) holds for stresses well below the yield strength. The stress-strain relationship for an isotropic material is described by Hooke’s law in its general form [34]: 0 where is Young’s modulus and ( )1 (2.3) is Poisson’s ratio. Both are material dependent properties, describing the stiffness of the material and describing the magnitude of the Poisson effect, whereby an axially strained material develops a negative transverse strain. The case of an CHAPTER 2. THEORY AND BACKGROUND 13 anisotropic material is more complicated, with stress and strain being related by a fourth order stiffness tensor [34]: (2.4) Because polycrystalline materials are composed of grains with different crystallographic orientations, a uniform macroscopic stress will also induce different local intragranular and intergranular microstresses [35]. The distance over which these stresses self-equilibrate provides the distinction between a macrostress (several grains) and microstress (≤ single grain) [2]. As a result different measurement techniques vary in their sensitivity to macro- and microstresses based largely on their sampling area. 2.1.2 Stress Measurement Techniques The predominant non-destructive residual stress measurement techniques are based on measuring the diffraction of a beam (X-Ray or Neutron) incident on the sample surface. Both techniques have a relatively small sampling volume, on the order of 1 mm 3, and are thus sensitive to both macro- and microstresses [2]. Neutron diffraction can achieve a penetration depth of several centimeters in iron and steel and has an accuracy on the order of ±50 x 10-6 strain [2]. Neutron diffraction measurements cannot be performed on-site and are relatively expensive. X-Ray diffraction achieves accuracy similar to neutron diffraction but only has a penetration depth on the order of 10 μm [2], [34]. X-Ray diffraction systems can be made portable for on-site measurements [7]. Another method of non-destructive residual stress measurement is ultrasonics, which measures the change in wave velocity due to stress. The ultrasonic method detects macroscopic stress over large volumes due to its large depth of penetration but there are difficulties in separating the effects of microstructural inhomogeneities and multiaxial stresses [2]. Finally, magnetic measurements are also capable CHAPTER 2. THEORY AND BACKGROUND 14 of measuring stress by observing changes in the magnetic properties of materials under applied or residual stresses. The relationship between magnetism and stress is detailed in subsequent sections, beginning with a review of Maxwell’s equation and magnetic materials. 2.2 Maxwell’s Equations The relationship between the electric field and magnetic flux density is described by Maxwell’s equations. In a vacuum, the set of four equations are Gauss’ law (2.5), Gauss’ law for Magnetism (2.6), Faraday’s law (2.7) and Ampere’s law with Maxwell’s correction (2.8) [36]: ̅ (2.5) ̅ (2.6) ̅ ̅ ̅ where ̅ ̅ is the permittivity of free space, (2.7) is the permeability of free space, (2.8) is the electric charge density, ̅ is the current density and is time. The Lorentz Force law [36]: ̅ (̅ describes the force on a particle with charge ̅ ̅ ), (2.9) and velocity ̅ due to an electric or magnetic field. Equations (2.5) to (2.9) provide the foundation for classical electrodynamics. When CHAPTER 2. THEORY AND BACKGROUND 15 examining magnetic fields in matter the equations can be combined and simplified to provide an expression for the magnetic flux density resulting from magnetization ̅ and the auxiliary field ̅ [36]. In the case of slowly varying electric and magnetic fields ( 108 Hz [37]), equation ̅ (2.8) can be simplified assuming ̅ and rewritten as: ̅ ̅ (2.10) In magnetized matter, the current density ̅ is the sum of bound ̅ and free ̅ currents [36]: ̅ ̅ ̅ (2.11) Bound currents are attributed to the magnetization field ̅ , and free currents to the auxiliary field ̅ , according to equations (2.12) and (2.13): ̅ ̅ (2.12) ̅ ̅ (2.13) Combining equations (2.10), (2.11), (2.12) and (2.13) gives an expression for the magnetic flux in magnetized matter: ̅ (̅ ̅) (2.14) 2.3 Magnetic Materials The magnetization vector ̅ expresses the magnetic dipole density (both permanent and induced) and is material dependent. The relation between ̅ and ̅ is given by: CHAPTER 2. THEORY AND BACKGROUND 16 ̅ where ̅ (2.15) is known as the magnetic susceptibility and is related to the relative permeability by [36]. Both are essentially proportionality constants, relating ̅ and ̅ such that equation (2.14) can be rewritten as: ̅ and )̅ ( ̅ (2.16) are used to classify materials into magnetic categories, the four predominant ones being; diamagnetic, paramagnetic, ferromagnetic and ferrimagnetic, as summarized in Table 2.1 [38]. The categories are determined by the dominant magnetic response of the material to an applied field. Diamagnetism and paramagnetism are the result of an interaction of the external magnetic field with magnetic moments inside the material. The orbital motion and spin of electrons constitute tiny current loops, which generate magnetic moments proportional to the loop area according to [36]: ̅ ̅ (2.17) where ̅ is the magnetic moment vector, is the current and ̅ is the vector area. The current loop generated by spin is small compared to the orbital motion, but still experiences a torque in the presence of an external magnetic field [18]. This has the effect of aligning the magnetic dipoles parallel to the field, and is called paramagnetism. Because electrons in the same orbitals CHAPTER 2. THEORY AND BACKGROUND 17 Table 2.1: Classification of magnetic materials in terms of magnetic susceptibility [38] Magnetic Classification Magnetic Susceptibility Example Materials Diamagnetic -10-6 to -10-5 Cu, Hg, Bi, B, Si, P, S, H2, N2 Paramagnetic 10-5 to 10-3 Cr, Mn, O2, NO Ferromagnetic 10 to 106 Fe, Co, Ni Ferrimagnetic 10 to 104 Fe3O4 have opposite spin, due to the Pauli exclusion principle, their magnetic dipoles cancel each other out [18]. Thus a macroscopic paramagnetic effect is only observed in materials with an odd number of electrons. The effective current loop generated by the orbital motion of the electron is much larger than that of the spin, and while there is a small paramagnetic effect, the torque on the current loop is not enough to align the magnetic dipole parallel to the external field. The larger effect is on the speed of the orbiting electron. The external magnetic field has the effect of increasing or decreasing the electron speed, in both cases generating a dipole moment antiparallel to the external field, a result of Lenz’s and Faraday’s law. This phenomenon is known as diamagnetism and is present in all materials, but is a relatively weak effect. Like paramagnetism, ferromagnetism arises from the magnetic dipole moments of unpaired electrons. In ferromagnets, however, unpaired electrons located in inner shells are prevented from forming pairs with electrons in neighboring atoms due to a shielding effect by outer electrons (e.g. unpaired 3d electrons are shielded by 4s electrons in Fe) [19]. Neighboring unpaired electrons do interact, however, through what is known as the exchange force (described in detail Section 2.4.1), which has the effect of aligning magnetic moments parallel to each other [18]. The end result is a configuration of separate regions of aligned magnetic moments called domains, with a distribution which minimizes the total energy of the system. In materials with multiple atomic species in a crystal lattice, each can have its own magnetic CHAPTER 2. THEORY AND BACKGROUND 18 moment. When these moments oppose each other in direction but are unequal in magnitude, these materials are said to be ferrimagnetic. Ferro- and ferrimagnets are non-linear materials unlike dia- and paramagnets. As such, in equation (2.16) is not a constant, but dependent on ̅ . As the external field is increased, approaches one. If the field is then removed, the ferromagnet retains a residual magnetization. This phenomenon in known as hysteresis and is shown in Figure 2.2. The mechanism for hysteresis is explained in detail in Section 2.4. Figure 2.2: Hysteresis loops observed in ferromagnetic materials. As the applied field is increased, the initial magnetization follows the red curve from the origin. Magnetization approaches saturation ( ) as the field is increased. When the applied field is reversed the magnetization follows the blue curve (major loop). The green curve (minor loop) shows the magnetization loop when the applied field is cycled but does not reach saturation. CHAPTER 2. THEORY AND BACKGROUND 19 2.4 Domain Theory Magnetic dipoles in ferromagnetic materials align themselves in groups known as domains as a result of the minimization of magnetic energies, discussed in Section 2.4.1. Within a domain the magnetization is uniform and at saturation. The bulk magnetization is determined by the vector sum of each domain’s magnetization. The boundaries between domains are known as domain walls, across which the magnetic dipoles change their alignment [11]. An example of a ferromagnetic crystal with 90 and 180 degree domains walls is shown in Figure 2.3. Figure 2.3: Ferromagnetic crystal showing domain walls that separate magnetic domains of different magnetic orientation. Insets highlight incremental rotation of magnetic spins across 90 degree (upper inset) and 180 degree (lower inset) domain walls. CHAPTER 2. THEORY AND BACKGROUND 20 2.4.1 Magnetic Energy Domain structure arises from the minimization of various magnetic energies within a ferromagnetic crystal. There are six energies that contribute to the domain configuration; the exchange energy ( energy ( ), the magnetostatic energy ( ) [39], the domain wall energy ( Zeeman energy ( ), the magnetocrystaline anisotropy ), the Magnetoelastic energy ( ) and the ) [40], [41]. The total magnetic energy associated with a ferromagnetic crystal can be written as: (2.18) Each of these terms is discussed briefly below. Exchange Energy The exchange interaction is the quantum mechanical phenomenon that gives rise to ferromagnetism. Neighboring unpaired electrons will undergo the interaction and by summing over all pairs, the system will have an exchange energy given by [39]: ∑ where (| ̅ ̅ |) ̅ ( ̅ ) ̅ ( ̅ ) ( ) (2.19) is the exchange integral for two electrons with spin ̅ and ̅ located at ̅ and ̅ and ( ) is the angle between the spins. In the case of ferromagnetic materials, equation (2.19) is minimized when , (i.e. when the spins are aligned)[39]. Because equation (2.15) depends on the distance between spins, | ̅ ̅ |, the atomic separation also affects the exchange energy. In the case of α Fe, as the distance between atoms decreases, the exchange force increases up to a peak value after which it decreases again [19]. The variation in exchange energy with atomic separation is described by the Bethe curve shown in Figure 2.4. CHAPTER 2. THEORY AND BACKGROUND 21 Figure 2.4: Bethe curve describing the variation in exchange energy for increasing ratio of interatomic distance to radius of the 3d electron shell, . The curve is representative of the trend with example paramagnetic elements Cr, Mn and γ Fe and ferromagnetic elements α Fe, Co, Ni and Gd, plotted at their approxamite locations. Magnetostatic Energy If the exchange energy was the only factor in determining domain structure, ferromagnetic crystals would exhibit a single uniform domain. This configuration, however, would result in a demagnetizing field ( ̅ ) extending outside the ferromagnetic crystal, representing energy stored in a magnetic potential. This magnetostatic energy is given by [40]: ∫ where ∫ ̅ (2.20) is the integral over all space. The magnetostatic energy can be reduced by introducing domains with opposing magnetic moments, minimizing the demagnetizing field. Figure 2.5a shows a ferromagnetic crystal with a uniform magnetic domain with a large demagnetizing field. Figures 2.5b to 2.5c show the reduction of the demagnetizing field through the addition of new domains [19]. CHAPTER 2. THEORY AND BACKGROUND 22 Figure 2.5: Minimization of the magnetostatic energy by reducing the demagnetizing field through the creation of more magnetic domains. (a) object with uniform magnetization and large demagnetizing field, (b) the introduction of a 180° domain wall between two magnetic domains reduces the demagnetizing field, (c) combination of 180° and 90° domain walls separating four domains creates a flux closed object Magnetocrystalline Anisotropy Energy In a ferromagnetic crystal lattice there are energetically preferred crystallographic directions along which magnetic dipoles align themselves. The energy associated with magnetization along an axis is known as the magnetocrystalline anisotropy energy and for cubic crystals is given by [42]: ( where and ) ( ) are the first and second order anisotropy constants and (2.21) , and are the cosines between the magnetization and the crystallographic directions. Directions of low energy are known as an ‘easy axis’ whereas those with higher energy are termed a ‘hard axis’. In BCC crystals the [100] is the easy axis and the [111] the hard axis as shown in Figure 2.6. CHAPTER 2. THEORY AND BACKGROUND 23 Figure 2.6: BCC crystal with magnetic easy axis in the [100] direction and hard axis in the [111] direction. Domain Wall Energy As discussed above, adjacent domains with opposing magnetizations lowers the magnetostatic energy. Domain wall energy is the energy associated with the creation of the wall between such domains. Across the width of the wall, magnetic dipoles gradually rotate from one domain orientation to the other (see Figure 2.3). Because these dipoles are no longer aligned along a crystallographic direction or parallel to each other there is an increase in magnetocrystalline anisotropy energy and the exchange energy associated with the wall. Thus for the creation of a domain wall, the decrease in the magnetostatic energy must be larger than the increase in all other energies. Magnetoelastic Energy The interaction between magnetic dipoles not only affects domain structure but also affects the crystal lattice itself. The interaction between the magnetic moments and the stress and strain fields is known as magnetoelasticity and presents itself in two forms shown in Figure 2.7. CHAPTER 2. THEORY AND BACKGROUND 24 Figure 2.7: Representation of magnetostriction (left) and the Villari effect (right). The first is termed ‘magnetostriction’, where the magnetization of domains induces a strain on the crystal lattice. The generated strain measured at magnetic saturation is called the magnetostriction constant, , and is often used to define the magnetostrictive behavior of ferromagnetic materials. For example, in Fe, the saturation magnetostriction is measured in the [100] direction ( ). In this case the magnetostrictive energy is given by [43]: ∫( where is the uniaxial stress, is Poisson’s ratio, the domain orientation and ∫ ) (2.22) is the angle between the applied stress and is the volume integral over the ferromagnetic crystal. CHAPTER 2. THEORY AND BACKGROUND 25 The second manifestation of magnetoelasticity is known as the Villari effect, and describes how externally applied stresses will change the internal domain structure of a magnetic material. In response to strain on the crystal lattice, the number of 180° domain walls along the direction of strain increases [44] until the energy associated with the creation of a new wall is greater than the reduction in the magnetoelastic energy. Zeeman Energy Zeeman energy, also known as the external field energy, represents the potential energy of an object with magnetization ̅ in a magnetic field ̅ [18]: ∫ ̅ ̅ (2.23) The Zeeman energy is minimized when the magnetization of a domain is aligned with the applied field. This is achieved through the growth of favorably aligned domains and domain vector rotation. This process of domain reconfiguration, to minimize the Zeeman energy, is detailed in Section 2.4.2. 2.4.2 Magnetization Process The magnetization process is stochastic in nature, whereby the final domain configurations are the result of the minimization of magnetic energies in equation (2.18) to reach a local minimum potential energy [11]. With the application of an external magnetic field, the domain structure changes due to increases in and . To lower the energy, magnetic domains tend to align themselves in the direction of the applied field according to (2.23). As shown in Figure 2.8, there are three mechanisms that accomplish this: (2) domain wall motion to increase the size of preferentially aligned domains at the expense of misaligned domains; (3) domain wall creation CHAPTER 2. THEORY AND BACKGROUND 26 Figure 2.8: The magnetization process illustrated in five stages, (1) the initial domain configuration, (2) growth of domains with magnetization aligned with the applied field primarily through the motion of 180 degree domain walls, (3) further growth of domains through the motion of 90 degree domain walls, (4) final domain wall motion leaving a uniform domain and (5) domain vector rotation. and annihilation; and (5) domain vector rotation to reduce the angle between the magnetization of the domains and the applied field. While all three mechanisms occur to some extent throughout the magnetization process, domain wall motion (stages 2 to 4 in Figure 2.8) is the predominant magnetization mechanism. The motion of domain walls will reduce the volume of misaligned domains until the energy associated with the domain wall is greater than the reduction in magnetostatic energy ( ). At this point the domain wall is annihilated, removing the misaligned domain. As CHAPTER 2. THEORY AND BACKGROUND 27 the magnitude of the applied field is increased further, the magnetic moments in the remaining domains will begin to rotate in the direction of the applied field. The majority of domain rotation occurs last because the energy associated with the rotation of magnetic dipoles off their preferred crystallographic directions ( ), is much larger than the energy associated with the motion and annihilation of domain walls [18]. Furthermore, in the case of BCC crystals (e.g. Fe), which have 90° and 180° domain walls, the energy associated with the motion of each of these two types of domain wall is different. A 90° domain wall represents the interface between two different induced strain fields ( ). Therefore the motion or annihilation of the wall would represent an increase in . The strain field across a 180° domain wall, however, is identical and therefore does not cause an increase in . Thus, during the initial magnetization, 180° domain wall motion is the dominant change in the domain structure. The force on a domain wall is a function of the parallel component of the mean field in the vicinity of the domain wall, and can be written as [28]: (2.24) where is the domain saturation magnetization and is the angle between and the length of the domain wall. As a result of equation (2.24), in materials that have an anisotropic distribution of domain walls (i.e. a large population of domain walls which are aligned) magnetization of the material will have an angular dependence. This dependence is characterized by a majority of domains aligned in a particular direction, which is generally known as the magnetic easy axis direction . 2.5 Magnetic Measurements As described in Section 2.4, a material’s domain configuration is the result of the minimization of magnetic energies and is therefore influenced by microstructure, magnetic history, external CHAPTER 2. THEORY AND BACKGROUND 28 magnetic fields as well as applied and residual stresses [1], [11], [17], [42]. For these reasons, observing the effect of applied magnetic fields on ferromagnetic objects can provide information on material properties [11], [17], [42]. Numerous magnetic inspection methods have arisen to measure material properties such as grain size and residual stress, as well as material damage like cracks and corrosion [1]. Because magnetization is directional and because many of these properties are anisotropic in nature, angular dependent measurements are required to fully characterize many material properties [11], [17], [42]. One of the earliest magnetic inspection methods is the measurement of hysteresis [1], [45]. The flux density ̅ within a ferromagnetic material not only depends on the applied field ̅ but on its magnetic history. Cyclical magnetization traces out what is known as a hysteresis curve (see Figure 2.2), which has been described with macroscopic parameters such as coercivity, remnant flux density and saturation flux density [20]. The significant limitation of hysteresis measurements has been the strong dependence on sample geometry, flux waveform and frequency [12], making repeatable measurements difficult. Another common magnetic inspection method, used extensively in the pipeline industry, is magnetic flux leakage (MFL) [1]. MFL techniques are based on passing magnetic flux through a sample and measuring the flux that ‘leaks’ out of the sample due to inhomogeneities such as cracks, corrosion and to a small extent stress [1]. The topic of the current thesis, magnetic Barkhausen noise (MBN) results from the abrupt motion of domain walls that occurs during magnetization, and has also been shown to be sensitive to residual stress [16]. 2.6 Magnetic Barkhausen Noise The motion of domain walls in response to an applied magnetic field is not a continuous process. As domain walls move through the crystal lattice they encounter crystal imperfections, impurities, dislocations, grain boundaries and other quantities that represent potential barriers CHAPTER 2. THEORY AND BACKGROUND 29 [13]. These are known as ‘pinning sites’, which obstruct the motion of domain walls. As the external field is increased, domain walls ‘jump’ over these pinning sites, resulting in an abrupt change in the local magnetization [13]. These are known as Barkhausen events and manifest in two forms: (1) the change in the strain field due to magnetostriction, which generates acoustic noise; and (2) the discrete magnetization changes induce corresponding voltage pulses in an appropriately placed coil. The latter is the more commonly measured quantity and is termed magnetic Barkhausen noise. MBN is attributed primarily to the motion of 180° domain walls, as compared with 90° domain walls. This is because 180° wall motion requires magnetic dipoles to rotate through twice the angle of that associated with 90° domain wall motion. Because the volume change is nominally larger for 180° domains, it is the dominant contribution to the MBN signal [13]. However, because 90° domain wall motion requires changes to the local strain fields, their motion is the dominant source of magneto acoustic noise [46], [47]. 2.6.1 MBN Parameters The MBN voltage signal (see Figure 1.1b) lends itself to a wide variety of analyses and can be characterized by a number of parameters. The repeatability and correlation of these parameters with various microstructural properties varies significantly and as such, a large amount of research in the area of MBN is focused on identifying these correlations and developing repeatable measurement techniques [23]. The most common analysis of MBN utilizes the RMS voltage of the signal or the integral of the squared voltage signal known as the Magnetic Barkhausen Noise energy, . It is one of the most repeatable parameters [31], [48] but because of its non-linear relationship with magnetizing current [31], [32] the applied field must be carefully controlled. Other commonly used parameters include the peak height of the signal, the peak position and the peak width [24]. Peak height has been shown to increase, and peak location to decrease, for increasing stress and both have been used to characterize stress fields around weldments in naval steels [25]. MBN has also been used to CHAPTER 2. THEORY AND BACKGROUND 30 determine several macroscopic properties such as coercivity [13], [42] and magnetic permeability [25]. Some less common MBN parameters that have been investigated as well, are the MBN power spectra [24] and Barkhausen counts/events [21], [26] both of which have been correlated with residual stress. The MBN power spectra represents the frequency distribution in the MBN signal. BN count is the number of data points above a voltage threshold and BN events is the number of voltage peaks above that threshold [21]. The MBN signal is typically filtered using a bandpass filter in the range of 1 kHz to 100 kHz to remove high frequency background noise, low frequency power line harmonics, pickup coil resonance peaks and aliasing frequencies [13], [23], [26]. In addition to intentional filtering, the BN noise spectrum is affected by attenuation due to the skin effect in the sample [2], [13]. The effect of pickup coil lift off is very significant [5], [23] and pickup coils are typically pressed on the sample using a spring to achieve consistent liftoff or a fixed liftoff is introduced [23], [48]. Lastly, the detected MBN is significantly dependent on the geometry [12], [23] and frequency response [5] of the pickup coil. This dependence is one of the main limitations in achieving repeatability of MBN across different platforms. 2.6.2 MBN Energy The multivariate nature of MBN lends itself to a wide variety of analyses to characterize a signal. Because MBN signals are typically measured as a voltage across a pickup coil, a simple and appropriate parameter used to quantify a MBN response is the energy in the voltage signal: ∫ where is the energy, (2.25) is the power and the integral is over the excitation period, . Equation (2.25) can be rewritten in MBN terms as: CHAPTER 2. THEORY AND BACKGROUND 31 ∫ where is the MBN voltage, (2.26) is a constant representative of the pickup coil resistance and the integral is over one excitation period. MBN energy tends to be a consistent and reproducible parameter for Barkhausen noise analysis [31], [48] but it has a non-linear dependence on excitation field amplitude typically of the form shown in Figure 2.9 [31]. This non- linear dependence can be split in to regions of ‘low’, ‘medium’ and ‘high’ field amplitude. The low field region represents the excitation field amplitudes that are only high enough to move a small number of weakly pinned domain walls. The medium field region is characterized by a large increase in MBN energy with field amplitude, as a larger number of domain walls can now overcome their respective pinning sites. As the excitation field amplitude increases further into the high region, there remain fewer and fewer domain walls that can still be un-pinned and the MBN energy approaches a maximum value. The positions of these regions are not exact and serve primarily to assist in the discussion of the non-linear variation of MBN energy with the excitation field amplitude. Figure 2.9: Typical non-linear increase of MBN energy with increasing excitation field amplitude [31]. CHAPTER 2. THEORY AND BACKGROUND 32 2.6.3 MBN Anisotropy Polycrystalline ferromagnetic materials are comprised of very small crystals, or grains, each of which has a particular crystallographic orientation. If the population of grains exhibits a preferred orientation, known as texture, the material may also exhibit bulk magnetic anisotropy. In addition, bulk magnetic anisotropy may also result from anisotropic microstructural effects as well as residual stress. As a result, is dependent on the direction of the magnetizing field, relative to that of the bulk magnetic anisotropy. During magnetization, each Barkhausen event and the associated increased magnetic moment represents a change in energy according to [49]: ( where is a coefficient of the Barkhausen event, mean field in the vicinity of the event, ) (2.27) is the sum of the applied field and the is the angle of the applied field and is the angle of the magnetic easy axis, where both angles are relative to a given reference direction. The total MBN energy is the sum of all the energy changes associated with ∑ ( Barkhausen events: ) (2.28) Equation (2.28) can be re-written in terms of energies contributing to the net easy axis (anisotropic contributions) and the isotropic background: ∑ ( ) ∑ ( ) (2.29) Equation (2.29) can then be simplified through the introduction of constants representing the anisotropic , and isotropic , Barkhausen events, given by: CHAPTER 2. THEORY AND BACKGROUND 33 ∑ (2.30) ∑ ( ) (2.31) Using equations (2.29), (2.30) and (2.31), the angular dependence of MBN energy can be written as [49]: ( ) ( ) (2.32) Figure 2.10 shows typical MBN energy anisotropy data. Such measurements are typically performed by physically rotating a dipole probe, through 180° on the sample, taking measurements at 10-15° intervals. The red line through the data is the line of best fit obtained using equation (2.32). 105 90 75 120 4 60 135 3 45 30 MBN Energy (mV2s) 150 2 1 0 1 2 3 4 165 15 180 0 195 345 330 210 225 315 240 300 255 270 285 Figure 2.10: Typical MBN energy anisotropy data plot using manual dipole rotation in increments of . The measurements are performed under flux control at . The line of best fit is obtained using equation (2.32). CHAPTER 2. THEORY AND BACKGROUND The parameters of equation (2.32), namely , , 34 and can all be obtained from this fitting line. The relative anisotropy of a sample can also be described by the MBN energy ratio, [50]: (2.33) which is the ratio of the maximum MBN energy to the isotropic background, where a ratio of 1 represents the case of a sample that is purely isotropic. 2.6.4 MBN Energy under Orthogonal Fields Traditionally, angular dependent MBN measurements were performed using the manual rotation of a MBN dipole probe [20], [31], [49]. However, the tetrapole designed and developed in the original Queen’s system was intended to eliminate the need for this manual rotation. In the tetrapole probe design, orthogonal magnetic fields generate a superposition field in the center of the tetrapole. Through suitable manipulation of the magnitude of the orthogonal fields, it is assumed that a uniform superposition field can be electronically rotated though 360°, thus generating an angular MBN plot such as that seen in figure 2.10 [5], [32], [33]. This is explained in more detail below. The tetrapole principle operates under the assumption that the two orthogonal fields are added vectorially in the sample. The direction of the resulting superposition field is determined by varying the magnitude of the orthogonal fields according to [5], [48]: ̅ where ̅ ( ) represents the superposition field, ( ) (2.34) and are the magnitudes of the orthogonal flux densities (through pole-pairs 1 and 3, and 2 and 4, respectively), magnetic permeability and is the is the angle of the superposition field. Equation (2.34) requires that: (1) the magnetic flux is controlled through the orthogonal magnetic circuits; (2) the CHAPTER 2. THEORY AND BACKGROUND magnetic permeability 35 is isotropic, constant ( ) and is not itself a function of ; and (3) the effects of anisotropic domain structure and magnetic hysteresis in the circuit can be neglected. It is assumed that with the implementation of flux control and in the case of small anisotropic permeability variations, requirements (1) and (2) hold to a first approximation. In addition to the above requirements, because of the geometry of a tetrapole, equation (2.34) will only be valid in a small area at the center of the probe. In the surrounding region, the magnetic flux will be non-uniform in both magnitude and direction. Figure (2.11) shows a tetrapole probe oriented at an angle the sample ( with from a reference direction on ), generating a hypothetical superposition field according to equation (2.34), at an angle to the angle . The relationship between , and can be described by the following equation: (2.35) Figure 2.11: A tetrapole (having poles 1,2,3 and 4) oriented at an angle from a reference direction on the sample ( ), generating a superposition field at an angle from the angle . Chapter 3 DRDC MBN System and Experimental Setup The MBN system that was rebuilt and modified for DRDC in this work is based on the original Queen’s system designed by Ph.D. student Steven White [5], [6]. As part of the current M.Sc. work, changes were made for the purposes of improving overall system performance and adapting the design to be suitable for use by a technician, on submarines in dry-dock. This chapter provides a basic description of the design modifications as well as the construction of the DRDC system. Emphasis is placed on design changes, their justification and their implementation. The chapter concludes with a brief explanation of the MBN measurement procedure and the samples investigated in this work. A block diagram of the final, completed, DRDC system developed as part of this thesis, is shown in Figure 3.1. The system consists of a hybrid analog/digital controller implemented in LabVIEW 2011 capable of generating up to four controlled excitation waveforms at the poles of a tetrapole electromagnet, while measuring induced Barkhausen noise with a pickup coil. The system was implemented in three main parts shown in Figure 3.1: (1) the PC with LabVIEW 2011 software; (2) the flux control hardware (PCI 6259, PCI 6133, SR560 Preamp, FCS, SEG100R UPS, Power Supply); and (3) the probe assembly (Excitation, feedback and pickup coils). 36 CHAPTER 3. DRDC MBN SYSTEM AND EXPERIMENTAL SETUP 37 Figure 3.1: Block diagram of the DRDC system with software, hardware and probe assembly components. Arrows denote direction of power or signal. The integrated nature of the original Queen’s system design, particularly the FCS and the LabVIEW 2011 software required that modifications to the system be limited. To provide DRDC with a MBN system with established performance capabilities, design changes were either incremental or self-contained. For this reason changes to the control circuitry and software were limited but numerous changes were made regarding the probe design. In both the original Queen’s system and DRDC system, the probe is removable and thus measurements can be performed with different hardware-probe configurations (discussed in Section 4.1). In each section that follows, the significant design elements of the original Queen’s system are briefly explained in order to explain and highlight the modifications needed for the new DRDC system. Section 3.1 describes the hardware components, Section 3.2 describes the software and Section 3.3 describes the probe assembly. A number of different probes were examined in this work, which are summarized in Section 3.3. CHAPTER 3. DRDC MBN SYSTEM AND EXPERIMENTAL SETUP 38 3.1 Hardware Hardware refers to the system components that generate and control the excitation waveforms applied to the probe excitation coils and measure the MBN signal induced in the probe pickup coil. Specifically this refers to the data acquisition boards (DAQs), flux control system (FCS), power supplies and preamplifier. 3.1.1 Data Acquisition Boards (DAQs) The DRDC system is controlled in National Instruments® (NI) LabVIEW® 2011 which is implemented through the use of two National Instruments® data acquisition boards. The NI PCI6259 is responsible for generating and sampling the excitation and feedback voltage waveforms in all four channels of the tetrapole (through the FCS). The NI PCI-6133 samples the MBN voltage signal in the pickup coil (through the preamplifier). The original Queen’s system implemented a NI PCI-6229, which is structurally identical to the NI PCI-6259 used in the DRDC system, but has a maximum sampling rate of only 250 kHz compared to 1 MHz for the PCI-6259. The PCI-6259 was selected for the DRDC system because the 1 MHz sampling rate would meet the Nyquist criterion for measuring Barkhausen noise (which has significant frequency components up to 300 kHz) and could allow the entire system to be run with only one DAQ. The required modifications to the LabVIEW 2011 software, however, proved to be significant, and because such changes would only result in a minor reduction in system complexity, the DRDC system was implemented with two DAQs. 3.1.2 Flux Control System The flux control system (FCS) provides analog control of excitation waveforms in parallel over four channels through the use of a negative feedback amplifier circuit. The circuit design in the CHAPTER 3. DRDC MBN SYSTEM AND EXPERIMENTAL SETUP 39 new DRDC system is identical to that used in the original Queen’s system [6] but is implemented with a modified printed circuit board layout to address noise and heat issues affecting system performance [5]. See Appendix A for a comparison of the FCS circuits of the original Queen’s and DRDC systems. Each channel employs a LM388T high power audio amplifier, H11F1M optocouplers for digital switching between a voltage follower and flux feedback circuit configuration and BUF634 buffer amplifiers for accurate sampling of shunt and feedback voltages. The FCS is connected to the PCI-6259 DAQ through two 68-pin D-Sub connections and to the probe through an 18-pin Maxi-Con-X connection. The circuit layout of the FCS used in the DRDC system was created in National Instruments® Ultiboard® and manufactured by SpeedyPCB® in Ottawa, Ontario. Compared to the original Queen’s system, the layout of the circuit was modified in the following ways: The length of non-inverting input traces were minimized and the inverting and noninverting traces were physically separated, to reduce capacitive effects/noise [51]. The size of ground traces were increased to reduce the impedance of ground connections with the intention of decreasing conducted noise [51]. Larger op-amp heat sinks were attached to prevent previously observed thermal overload at high currents [5]. Heat sink power dissipation requirements were calculated for continuous operation at 40°C under natural convection conditions [52] to ensure functionality in dry-dock conditions for submarine hull measurements. The circuit layout and labeling was modified for simplified debugging by an operator/technician. 3.1.3 Power Supply During the testing of the original Queen’s system, a significant reduction of noise in the system was observed when using a pure sinusoid uninterruptable power supply. With the aim of reducing system noise, the DRDC system was implemented with a SEG100R STABILINE CHAPTER 3. DRDC MBN SYSTEM AND EXPERIMENTAL SETUP 40 uninterruptible power supply and Power-One HCC24-2.4-AG linear power supply with ±0.05% output regulation [53] compared to ±1% output regulation of the Anatek 25-2D power supply used in the original Queen’s system [54]. 3.1.4 Preamplifier The low voltage signal induced in the pickup coil by Barkhausen events requires amplification before it can be sampled by the PCI-6133 DAQ. The original Queen’s system used an Ithaco 1201 preamplifier with a 400 kHz bandwidth, 60 dB gain and 7 √ DRDC system implemented a Stanford Research® SR 560 that meets or exceeds these requirements and has a notably superior noise floor at 4 √ noise floor [5]. The [55]. 3.2 Software The FCS is controlled in LabVIEW® 2011 using software developed for the original Queen’s system. The feedback mode of the FCS (voltage or flux) is controlled in the software by digital outputs on the PCI-6259 to the H11F1 optocouplers. Under flux control, the software also includes an optional digital error correction algorithm that can correct the excitation waveforms once the analog feedback circuit has achieved a specified waveform accuracy (relative to a reference waveform). Changes to the software were limited to adding alternative excitation waveforms (e.g. square wave) and adjusting constants for the purposes of calibrating probes (see Appendix B). For a measurement in either voltage of flux control mode, the system begins by sampling the ambient background noise in the pickup and excitation coils over a number of cycles so it can be subtracted off during measurement. The PCI-6259 then outputs a reference excitation waveform to the FCS. The FCS amplifies the reference waveform, which is then controlled CHAPTER 3. DRDC MBN SYSTEM AND EXPERIMENTAL SETUP 41 though a voltage or flux feedback circuit. The software monitors the waveforms and other important system parameters throughout the measurement. Once all four waveforms are below the target waveform error threshold (discussed in Section 4.1.1), the PCI-6133 samples the MBN pickup voltage over a specified number of cycles. The raw MBN and waveform data is then stored in text files. 3.3 Probe The probe refers to the U-core magnetic yokes, excitation coils, feedback coils, pickup coil and the housing in which they are contained. Four different probes are examined in this work, one which was part of the original Queen’s system, and three of which were constructed by the author for this thesis work. The four probes are referred to in this work by the following names: Spring-Loaded 4 Pole (SL4P) – Tetrapole probe designed and built for the original Queen’s system. Feeder Tetrapole Probe (FTP) – The initial tetrapole probe constructed for the DRDC system designed to emulate the SL4P as closely as possible. Feeder Dipole Probe (FDP) – Dipole probe constructed for the DRDC system. This was similar to the FTP with one U-core magnetic yoke removed. Submarine Tetrapole Probe (STP) – Final tetrapole probe constructed for the DRDC system with a modified design optimized for use in dry-dock conditions on submarine hulls. Unlike the FCS and software discussed in earlier sections, the probe design could be modified more significantly, while still maintaining compatibility with the rest of the system. In theory the FCS and software are able to control the excitation waveforms through any four independent excitation/feedback coil pairs. Therefore, the coil geometry and number of turns CHAPTER 3. DRDC MBN SYSTEM AND EXPERIMENTAL SETUP 42 can be modified with only correspondingly minor adjustments in the software. The three probes constructed as part of this thesis work share several common design elements including orthogonal Supermendur dipole cores with 500 turn excitation and 50 turn feedback coils at each pole end. Each probe was also equipped with a centrally mounted pickup coil, which was significantly modified from the SL4P design which is discussed in Section 3.3.1. CAD models of the probe components were designed in Solidworks® 2010 and constructed of acrylonitrile butadiene styrene (ABS) using a Stratasys® Dimension 1200es 3D printer. The accuracy of the models was limited by the horizontal resolution of the Dimension 1200es to 0.5 mm. The design of the three probes and their parameters are presented below. Feeder Tetrapole Probe (FTP) The Feeder Tetrapole Probe (FTP), shown in Figure 3.2, was built to emulate the original Queen’s system probe (SL4P) design as closely as possible . The FTP used a spring-loaded U-core to achieve even contact of the poles to the sample. Mounted at the center of the FTP was a 700 turn 5.5 mm diameter pickup coil. Coil parameters of the FTP are shown in Table 3.1. Feeder Dipole Probe (FDP) The Feeder Dipole Probe (FDP) uses the same housing as the FTP but contains only a single long U-core dipole and is shown in Figure 3.3. As a result there are only two excitation/feedback coil pairs whose parameters are summarized in Table 3.2. The pickup coil in the FDP was 5 mm in diameter and had 400 turns. The symmetric nature of the pin header connection allows the coil pairs to be run using FCS feedback circuits 1 and 3 or 2 and 4. For consistency, all measurements using the FDP in this work were performed using feedback circuits 2 and 4. The FDP’s primary purpose was to serve as a dipole reference for anisotropy measurements performed by the tetrapole probes. The FTP, STP, SL4P and FDP anisotropy results are compared in detail in Chapter 4. CHAPTER 3. DRDC MBN SYSTEM AND EXPERIMENTAL SETUP 43 Figure 3.2: CAD model of FTP probe. Table 3.1: FTP Coil Parameters. is coil resistance and Precision® 878B LCR meter at 1 kHz. is coil inductance measured on a BK Parameter Excitation 1 Excitation 2 Excitation 3 Excitation 4 Feedback 1 Feedback 2 Feedback 3 Feedback 4 Pickup Coil (Ω) 28.2 28.9 28.2 28.9 2.70 2.79 2.69 2.69 29.4 (mH) 29.2 32.8 33.7 35.2 0.27 0.35 0.33 0.35 4.41 CHAPTER 3. DRDC MBN SYSTEM AND EXPERIMENTAL SETUP 44 Figure 3.3: CAD model of FDP probe. Table 3.2: FDP Parameters. is coil resistance and Precision® 878B LCR meter at 1 kHz. is coil inductance measured on a BK Parameter Excitation 2 Excitation 4 Feedback 2 Feedback 4 Pickup Coil (Ω) 30.4 32.8 2.88 2.82 23.6 (mH) 31.2 30.5 0.33 0.32 2.11 CHAPTER 3. DRDC MBN SYSTEM AND EXPERIMENTAL SETUP 45 Submarine Tetrapole Probe (STP) The Submarine Tetrapole Probe (STP) was developed from the FTP design to improve its functionality in the field. It is shown in Figure 3.4. The main challenge with the earlier FTP housing design was the poor cable connectivity. The pin headers for the excitation/feedback coils and the pickup coils were located on opposite ends of the probe causing problems with cable management. Furthermore the pin header connectors were held in place by friction allowing cables to easily slip out. Using a pin header for the pickup coil also required a custom cable for connection. Other problems with the FTP design related to the probe housing. For example, the dipole poles extended well past the probe housing (see Figure 3.2) exposing the coils to potential damage. The FTP housing was also very small (to accommodate CANDU feeder pipe spacing, the focus of Steven Whites’ Ph.D. work [5]) leading to difficulties in manufacturing To address these issues, the size of the probe housing was increased to accommodate handheld use more comfortably. The pickup cable was redirected through an internal, shielded channel to connect at the rear of the housing. The pickup cable was terminated with a BNC jack, allowing any standard BNC cable to connect the probe to the preamplifier. The excitation/feedback cables were terminated with two shielded CAT5 (RJ45 Ethernet) jacks. The BNC and CAT5 connections locked cables in place, maintaining good connections during measurements. Each CAT5 jack was connected to the two excitation/feedback coil pairs on each dipole, which allowed for switching between feedback circuits. Because the STP probe is designed for use on surfaces with very little curvature, the springloaded design was replaced in favor of fixing the dipoles in position using epoxy. Although this limited the sample geometries the probe could accommodate, it allowed for consistent coupling to flat samples. CHAPTER 3. DRDC MBN SYSTEM AND EXPERIMENTAL SETUP 46 Figure 3.4: CAD model of STP probe. Table 3.3: STP Coil Parameters. is coil resistance and Precision® 878B LCR meter at 1 kHz. is coil inductance measured on a BK Parameter Excitation 1 Excitation 2 Excitation 3 Excitation 4 Feedback 1 Feedback 2 Feedback 3 Feedback 4 Pickup Coil (Ω) 28.7 28.7 28.8 28.6 3.16 3.08 3.14 3.11 15.6 (mH) 35.3 38.3 37.5 37.8 0.35 0.31 0.34 0.32 1.34 CHAPTER 3. DRDC MBN SYSTEM AND EXPERIMENTAL SETUP 47 3.3.1 Pickup Coil Design The original pickup coil used in the SL4P was designed primarily to achieve a small sensing radius of <2.5 mm, which finite element modeling (FEM) suggested was the region over which flux superposition (discussed in Section 2.6.4) was most accurate [5]. To achieve such a sensing radius, the pickup coil employed a ferrite core (0.5 mm radius) inside a 100 turn pancake coil (1.5 mm outer radius), inside a ferrite sheath, inside a copper shield. There were two significant challenges with this design: (1) sensitivity to liftoff; and (2) a complex design which made construction difficult. Because of the low number of turns as well as limited sensing radius, the pickup coil was significantly affected by liftoff [5]. Therefore, despite the spring loaded design, liftoff due to layers of paint, rust or other debris on the sample surface could reduce the MBN signal. The second issue was that the intricate design required delicate and time consuming manufacturing. Upon consultation with Steven White, the designer of the original Queen’s system, the SL4P pickup coil was revealed to be the only working coil among dozens of prototypes [56]. Based on these design and construction issues it was determined that a simplified pickup coil design was required. The first step in redesigning the pickup coil was to enlarge the pickup shield. Increasing the radius of the pickup shield allowed for a larger area to connect leads to the pickup coil. As a result, the lead solder joints could be made more robust, reducing the likelihood of a poor/open connection. The increased space could then be used to thoroughly insulate leads from each other as well as the shield. The inner radius of the shield was increased to 2.5 mm, which would leave a 1.5 mm space to solder and insulate leads. The shield was made from aluminum, which, due to its higher conductivity when compared to brass (50% International Copper Annealed Standard (IACS) for Al compared to 27% IACS for brass [57]), would provide superior shielding. This is reflected in the skin depth equation (E.2), where the attenuation of electromagnetic waves increases with conductivity. The pickup coils used in FTP, FDP and STP probes were implemented without a ferrite sheath as used in the original design [5] to further CHAPTER 3. DRDC MBN SYSTEM AND EXPERIMENTAL SETUP 48 reduce complexity. The effects on the performance of the new pickup coil design are examined in Chapter 4. The redesigned pickup shield is shown in Figure 3.5. The increased size of the pickup shield not only simplified construction but also accommodated a larger radius pickup coil. It was inferred that a pancake pickup coil with a larger radius and a larger number of turns would be more sensitive to BN emissions according to Faraday’s law of induction: (3.1) where is the number of turns in the coil and is the magnetic flux passing through the coil turns. Furthermore, because the effect of liftoff scales with coil diameter, increasing the size of the coil would make the pickup assembly less sensitive to liftoff variations. Both of these effects were expected to improve the signal-to-noise ratio of the measured BN events. The larger sensing radius, however, would also increase the sensitivity of the pickup coil to the effects of non-uniform field superposition, which FEM modeling indicated was significant for coils with sensing radii above 2.5 mm [5]. The impact of modifying the pickup assembly on BN results, including a comparison to the original pickup coil design, is presented in Chapter 4. 3.3.2 Probe Summary The four probes examined in this work are summarized in Table 3.4. Three (FTP, FDP and STP) were constructed by the author as described above and a fourth (SL4P) was the probe in the original Queen’s system [5], [6]. CHAPTER 3. DRDC MBN SYSTEM AND EXPERIMENTAL SETUP 49 Figure 3.5: Large radius pickup coil assembly consisting of aluminum shield and pancake pickup coil with ferrite core (left) and cross-section view with dimensions (right). Table 3.4: Summary of probes used in this work and their relevant pickup coil parameters. is the number of coil turns, is the outer coil diameter, is the coil resistance, is the coil inductance and is the coil time constant. SL4P parameters retrieved from [5]. Probe Name Feeder Tetrapole Probe Feeder Dipole Probe Submarine Tetrapole Probe Spring Loaded 4 Pole Probe Acronym (turns) (mm) (Ω) (mH) (ms) FTP 700 5.5 29.4 4.41 0.15 FDP 400 5.0 23.6 2.11 0.09 STP 300 4.0 15.6 1.34 0.08 SL4P 100 3.0 4.7 0.12 0.03 CHAPTER 3. DRDC MBN SYSTEM AND EXPERIMENTAL SETUP 50 3.4 Experimental Setup and Samples The measurements presented in this work were performed using a custom built angular measurement guide (AMG) to maintain alignment of the pickup coil over the target sensing area for a given probe orientation angle , shown in Figure 3.6. The AMG is comprised of two pieces, a circular alignment ring, which is mounted on the sample using a double-sided adhesive, and a circular probe housing guide in which the probe is inserted. The housing guide is free to rotate within the alignment ring allowing for rotation of the probe to any angle with an estimated uncertainty of . Once aligned in the AMG the probes were pressed on the sample using a plastic gator-clamp. Measurements were performed with a sinusoidal excitation waveform, at a specified excitation frequency . Unless otherwise noted, all measurements in this work were performed at . During testing of the system, was determined to be the lowest frequency at which the system was consistently stable, with a low system error (see Figure 3.6: Angular measurement guide (AMG) (left) and probe orientation ( setup (right) ) measurement CHAPTER 3. DRDC MBN SYSTEM AND EXPERIMENTAL SETUP 51 Section 4.1.1). Under flux control, the peak flux density through the feedback coil (i.e. flux waveform amplitude) is specified. Under voltage control, the peak voltage through the excitation coil (i.e. voltage waveform amplitude) is specified. Because waveform error increases significantly at low field amplitudes (discussed in Section 4.1.1) measurements under flux control were performed at a minimum of . However, even at , the possibility that thin samples could be driven to saturation needed to be addressed. To provide an alternative path for excess flux, thin samples were mounted on steel backing plates. Because MBN signals are detected at shallow depth [18], [30] (for the excitation frequencies used in this work) the influence of MBN signals originating from the backing plate was considered negligible. 3.4.1 Dipole Anisotropy Measurements Dipole anisotropy measurements were performed using manual rotation of the probe in the AMG. Measurements were made in increments of from to , relative to an arbitrary reference angle on the sample. The symmetric nature of the sinusoidal excitation field makes measurements from to to unnecessary as they are identical to those from . To account for variation in probe-sample coupling between measurements, an average of 5 measurements at each probe orientation was obtained, removing and mounting the probe for each measurement. Multiple measurements at each location also provided an estimation of measurement error. 3.4.2 Tetrapole Anisotropy Measurements In tetrapole anisotropy measurements it is possible to vary a number of parameters as shown in Figure 2.11. In this work, tetrapole measurements were performed by orienting the probe at an angle , relative to a reference direction on the sample ( ). The field was then CHAPTER 3. DRDC MBN SYSTEM AND EXPERIMENTAL SETUP electronically rotated in increments of appropriate superposition field angles or from 52 to or , by selecting , as described in Section 2.6.4. 3.4.3 Samples The purpose of angular dependent MBN measurements is to characterize the magnetic anisotropy of a material. Therefore, any investigation into the ability of tetrapole probes to perform angular dependent MBN measurements must examine materials with a wide range of magnetic anisotropy. In this work, five sample materials were selected for investigation, whose properties are summarized in Table 3.5. The sample with the highest magnetic anisotropy was the grain-oriented laminate (3% Si-Fe), which is engineered to be highly magnetically anisotropic to improve efficiency in magnetic devices such as transformers. The second most magnetically anisotropic steel was the mild steel A sample which exhibited a large magnetic easy axis in its rolling direction, which is a common result of fabrication processes. The third sample, HY-80 steel, also exhibited magnetic anisotropy in its rolling direction as did the fourth sample, mild steel B. The fifth sample, which displayed the least amount of magnetic anisotropy was a non-oriented laminate. Non-oriented laminates are engineered to be as magnetically isotropic as possible [58]. The majority of measurements were performed on the mild steel samples (A and B). This was done for a number of reasons. The dimensions of the mild steel samples were significantly larger than the other samples, limiting the potential influence of sample geometry. The samples were also significantly thicker than other samples as shown in Table 3.5 and had a higher magnetic permeability reducing the likelihood of saturating the magnetic circuit. The validity of flux superposition is dependent on a vector addition of flux through the sample and thus removing the influence of geometry and magnetic saturation on the flux path was important. CHAPTER 3. DRDC MBN SYSTEM AND EXPERIMENTAL SETUP 53 Table 3.5: Sample materials investigated in this work, in order of decreasing magnetic anisotropy (as determined by dipole MBN anisotropy measurements shown in Section 4.2.1). Aside from sample thickness and associated saturation effects, it was assumed the differences in sample dimensions would not affect MBN anisotropy measurements. Sample Material Grain-Oriented Laminate Mild Steel A HY-80 Mild Steel B Non-Oriented Laminate Length (mm) 100 1600 178 193 275 Width (mm) 30 100 34 102 30 Thickness (mm) 0.17 4.0 1.0 5.0 0.35 Chapter 4 System Performance & Study of Flux Superposition Validity Following the construction of the new DRDC system, it was tested and compared to the original Queen’s system. The results of these tests are covered in Section 4.1. During the testing of the DRDC system, however, questions arose as to the validity of the principle of flux superposition as it pertains to the measurement of MBN, which was the basis of the original Queen’s system as well as the new DRDC one. This prompted a detailed study of the validity of using flux superposition in tetrapole probes to perform angular dependent MBN measurements. This study is presented in Section 4.2. Note that since this represented a ‘sideline study’, it is somewhat self-contained, in that the discussion of experimental parameters, as well as associated theory, is contained within Section 4.2 rather than being included in earlier Chapters 2 or 3. 54 CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 55 4.1 System Performance To measure the performance of the new DRDC system a series of comparative measurements were performed against the original Queen’s system. Of interest were the performance of the new hardware/flux control circuitry and the effects of the new probe and pickup coil design. Differences between the systems were measured in terms of waveform error in Section 4.1.1, BN envelope in Section 4.1.2 and 4.1.3 and BN energy anisotropy in Section 4.1.4. As noted in Chapter 3, the DRDC system and the original Queen’s system can be run using any of the probes summarized in Table 3.4. To isolate the differences in hardware performance between the DRDC system, the original Queen’s system, and the various probe designs, measurements were performed using a number of hardware-probe configurations. For example, to remove the effects that different probes may have on hardware performance, measurements were performed with the DRDC and original Queen’s system, both running the STP probe. The results presented in this section highlight an important limitation of MBN, namely the repeatability of measurements across different MBN platforms. As discussed in Chapter 2, MBN measurements are highly dependent on the measurement system, requiring accurate calibration to obtain meaningful results. Section 4.1 not only demonstrates differences between the systems but also similarities, providing insights into how different MBN platforms can be compared or calibrated. 4.1.1 System Error In this section, the hardware performance of the DRDC and original Queen’s system is compared in terms of system error. For the tetrapole probes, the analog feedback and digital correction algorithms are designed to achieve waveform accuracy over four excitation CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 56 channels. The extent to which this is achieved is reflected in the rms error of each waveform and is calculated as [6]: √ ∑. where is the length of the waveform vector, / (4.1) is the target voltage at phase and is the measured feedback voltage at phase . The total rms error can be normalized with respect to the total flux rate and expressed as a percentage according to: (4.2) √ where is the normalized rms error, feedback turns, the is the excitation frequency, is the area of the feedback coil and is the number of is the peak flux density. Averaging of all coils gives the total normalized rms system error, . This section provides a series of measurements to identify the ability of both systems to minimize under varying measurement parameters. System error is dependent on the target voltage/flux and the excitation frequency . This is because the gain of the feedback circuits and coil inductances are frequency dependent properties. Furthermore because of eddy current effects in the coils and potential magnetic saturation of the circuit, feedback gain is also dependent on flux density [5], [6]. To establish the convergence of the system, measurements were made at various flux densities and frequencies while recording . The final of the system was calculated by averaging the final 50 cycles after running the measurement for a minimum of 200 cycles. To isolate for the performance of the hardware (FCS, power supply, etc.) and remove the potential effects of differences in probe construction (between the DRDC system’s STP and original Queen’s system’s SL4P probe), measurements with the two systems were performed CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 57 both using the STP. All measurements were performed at a superposition field angle (defined in Section 2.6.4) of on the mild steel B sample. The original Queen’s system and DRDC system were calibrated at and prior to all measurements. Calibration of the probe refers to the adjustment (in the LabVIEW software) of the feedback circuit gain and the feedback coil gain minimize the of each circuit during the feedback loop to of the waveforms. The calibration procedure is described in detail in Appendix B. Figure 4.1 shows the of the DRDC and original Queen’s system both using the STP probe at various flux densities as a function of excitation frequency . Both systems show the same general pattern of a minimum error in the frequency range between 30 and 65 Hz. At frequencies below 30 Hz the error increases rapidly in both systems with maximum of 2.5 % and 3.1 % at 10 Hz for the DRDC and original Queen’s systems, respectively. In addition, the DRDC system is able to operate at 5 Hz with a maximum of 5.8 %. During testing, the original Queen’s system was unable to establish waveforms at 5 Hz and thus there is no data at that frequency in Figure 4.1b. The larger errors at low frequencies are likely a result of decreased signal-to-noise ratio in the feedback coil [5], [6]. This conclusion is based on equation (3.1), which describes how as frequency decreases so does , resulting in a lower induced voltage in the feedback coil. Therefore, at lower frequencies, the signal-to-noise ratio increases, reducing the effectiveness of the analog and digital feedback system to correct the waveform. The increased error at low frequency may also be the result of the frequency response of the excitation and feedback coils. The measured inductance of the coils (particularly the feedback coil) varies significantly at frequencies below 20 Hz as seen in Figure 4.2. At low frequencies, small changes in the feedback waveform frequency result in large changes in feedback coil inductance. This could result in instabilities in the analog and digital control system causing the increase in . CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 58 (a) DRDC System Total rms error errtotal (%) 10 100 mT 200 mT 300 mT 400 mT 1 0 10 20 30 40 50 60 70 80 90 100 Excitation Frequency fex(Hz) (b) Original Queen's System Total rms error errtotal (%) 10 100 mT 200 mT 300 mT 400 mT 1 0 10 20 30 40 50 60 70 80 90 100 Excitation Frequency fex(Hz) Figure 4.1: System error for various excitation frequencies and flux densities for the (a) DRDC system and (b) original Queen’s system. Lines are to guide the eye. CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 59 1.2 Excitation Inductance LEx (H) 0.22 1.0 0.8 0.20 0.6 0.18 0.4 0.16 0.2 0.0 0.14 -0.2 0.12 -0.4 -0.6 0.10 Feedback Inductance LF (mH) Excitation Feedback -0.8 0 10 20 30 40 50 60 Frequency fex (Hz) Figure 4.2: Measured excitation/feedback coil inductance / as a function of excitation frequency . Measurements performed with HP 4192 LF Impedance Analyzer. At higher frequencies the error increases again and appears to peak at 90 Hz for both systems and then decreases again. The trend is not explored above 100 Hz because MBN measurements at higher frequencies result in eddy currents and overlapping BN events [23]. In both systems, there is a small peak at 60 Hz, which could be explained by noise entering the system at power line frequencies. This does not, however, explain a similar peak at 70 Hz observed in both systems. Both the DRDC and original Queen’s systems show decreasing error with increasing flux density, particularly at low excitation frequencies. For identical excitation frequencies, higher maximum flux densities require that increase as well. According to equation (3.1), this results in a larger induced voltage in the feedback coil. This is another indication that the signalto-noise ratio in the feedback voltage waveform is a significant factor in the total system error. The importance of improving lies in the ability to perform controlled low frequency MBN measurements. Figure 4.1 demonstrates the improvement of the DRDC system design CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 60 over the Queen’s system in terms of a reduction in system error particularly at low frequencies and low flux densities. This reduced error can be attributed to a reduction in overall system noise through the implementation of a UPS, low noise power supplies and modified flux control circuit layout. It should be noted, however, that measurements on the two systems were performed in different locations, each with its particular ambient electromagnetic noise signature. The effect of ambient noise can therefore not be ruled out as a contributor to the differences observed in Figure 4.1. 4.1.2 BN Envelope As described in Section 3.3.1, the pickup coil was significantly modified from the original design. With a larger sensing radius ( ) and greater number turns (see Table 3.4) it was expected that the new pickup coil would produce a larger amplitude BN voltage signal according to equation (3.1), however, the effects on BN envelope parameters (peak height, peak phase, etc.) was unknown. This section presents a comparison of the BN envelopes as measured by the STP and the SL4P, whose pickup coil parameters are summarized in Table 3.4. Measurements with the two probes were all performed using the original Queen’s system hardware to remove any possible effect that hardware differences between the DRDC system and original Queen’s system could have on the BN envelope. All measurements were performed under flux control on the mild steel B sample with a superposition field angle of sample magnetic easy axis in the direction of the . Figure 4.3 shows the BN envelopes detected by each probe at flux densities from to and an excitation frequency of . The amplitude of the envelopes detected by the STP probe is larger at all flux densities, as is expected, because the pickup coil has a greater number of turns and a greater sensing area (see Table 3.4), which according to Faraday’s law results in a higher induced voltage. The larger coil area also results in a higher number of total BN events being detected. CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 61 (a) STP Probe 100 550 mT BNenv (mV) 80 450 mT 350 mT 60 40 250 mT 20 150 mT 0 0 50 100 150 200 250 300 350 Phase (°) (b) SL4P Probe 100 BNenv (mV) 80 550 mT 60 450 mT 350 mT 40 250 mT 20 150 mT 0 0 50 100 150 200 250 300 350 Phase (°) Figure 4.3: BN envelopes measured by the (a) STP probe and (b) SL4P probe for various flux densities at an excitation frequency on mild steel B. CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 62 For both probes the envelope peak increases with flux density and the peak position decreases. For both probes the position of the trailing edge of the envelope does not appear to change between and . From Figure 4.3 it appears the STP and SL4P detect the same BN envelopes at different amplitudes/flux densities. Figures 4.4 and 4.5 examine the BN envelopes detected by the STP and SL4P in terms of MBN energy, peak voltage (height) and peak phase (position), all as functions of flux density and excitation frequency, respectively. MBN energy is calculated using equation (2.26). The peaks of the BN envelopes are located using a Gaussian fit of the peaks. The results are plotted on double y-axis graphs with different scales for the STP and SL4P data. Of most interest in these figures is the comparison of trends between the probes, not the absolute values. By modifying the scales such that the first and last data points are approximately at the same location, the behavior of the two probes can be compared more easily. Figure 4.4 shows the envelope parameters as a function of flux density from to . In Figure 4.4a the STP and SL4P both show a non-linear increase in MBN energy with flux density. Figure 4.4b shows a similar non-linear increase in peak voltage for both probes. In this case the peak voltage appears to be approaching a maximum value. In Figure 4.4c, aside from an apparent outlier peak phase with the SL4P at , both probes follow a similar trend, of decreasing phase with flux. Figures 4.4a to 4.4c demonstrate that although the absolute values of the results for the STP and SL4P probes are different, they both exhibit similar trends with variation in excitation flux density. Figure 4.5 shows the BN envelope parameters for low excitation frequencies from to . Figure 4.5a appears to show a linear relationship for both the STP and SL4P for MBN energy in the given frequency range. Figure 4.5b shows an increase of peak voltage for both probes which, like Figure 4.4b, appears to approach a maximum value. In Figure 4.5c, the SL4P shows a linear decrease in peak phase, whereas the STP demonstrates an exponential decrease in peak phase with increasing frequency. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 80 30 20 20 10 0 75 (b) 60 45 50 30 15 SL4P Probe MBNe (mV2s) BN Envelope Peak Voltage (mV) STP Probe 40 STP SL4P 40 0 100 63 MBNe (mV2s) (a) 60 BN Envelope Peak Voltage (mV) CHAPTER 4. 0 0 90 90 80 80 70 BN Envelope Peak Phase (°) BN Envelope Peak Phase (°) (c) 70 100 200 300 400 500 600 Flux Density (mT) 60 40 BN Envelope Peak Voltage (mV) STP Probe 20 120 100 80 60 100 BN Envelope Peak Phase (°) (b) (c) 100 95 95 90 90 85 SL4P Probe 80 BN Envelope 70 60 50 40 30 20 10 0 90 80 70 60 50 40 30 STP SL4P Peak Voltage (mV) (a) BN Envelope Peak Phase (°) MBNe (mV2s) 100 MBNe (mV2s) Figure 4.4: Typical BN envelope parameters for STP and SL4P probe as a function of flux density. (a) MBN energy, (b) BN envelope peak voltage and (c) BN envelope peak phase. Lines are to guide the eye. 85 20 25 30 35 40 45 50 55 Frequency (Hz) Figure 4.5: Typical BN envelope parameters for STP and SL4P probe as a function of excitation frequency . (a) MBN energy, (b) BN envelope peak voltage and (c) BN envelope peak phase. Lines are to guide the eye. CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 64 The similar trends of the BN envelope parameters in Figures 4.4 and 4.5 are significant because they suggest that a scaling factor could be developed to perform direct comparisons of MBN data between different probes. Direct comparisons of data from different probes has often been difficult with MBN measurements [23]. Furthermore, the results also indicate that the new pickup coil design did not significantly affect basic BN envelope parameters. 4.1.3 BN Normalized Power Spectrum The BN signal contains significant frequency components between 3 kHz and 400 kHz. The normalized power spectrum of the BN signal represents the power of each frequency component. Figure 4.6 shows a comparison of the normalized power spectrum detected by the STP and SL4P probes. In each figure the area of the normalized power spectrum is normalized to provide a comparison of the shape of the power spectrums. Figure 4.6a shows a direct comparison of the normalized power spectrum obtained with the SL4P and the STP. Both measurements were performed at a superposition field angle on the mild steel B sample at and a flux density of . The difference between the SL4P and STP results is primarily attributed to the intrinsically different frequency responses of the two pickup coils. Due to different inductance and resistance values, the time constants of the coils will be different (see Table 3.4) resulting in different normalized power spectrums. This is one of the primary reasons that absolute comparisons between Barkhausen noise measurement systems are limited. Figures 4.6b and 4.6c compare the normalized power spectrums of each probe at superposition field angles of and . Figure 4.6b shows how, aside from a slight increase at low frequencies, the normalized power spectrum remains relatively unchanged for the SL4P probe when the field is rotated to . In comparison, the STP shows much larger differences between the normalized power spectrums at and . At the peak is diminished and appears to contain more high frequency components CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 65 0.035 Normalized Power (unitless) 0.030 SL4P (a) 0° 0.025 0.020 STP 0.015 0.010 0.005 0.000 0.035 Normalized Power (unitless) (b) SL4P 0.030 0° 0.025 45° 0.020 0.015 0.010 0.005 0.035 Normalized Power (unitless) 0.030 0.000 (c) STP 0° 0.025 0.020 45° 0.015 0.010 0.005 0.000 0 100k 200k 300k 400k 500k Frequency (Hz) Figure 4.6: Differences in the normalized power spectrum measured by the SL4P and the STP probes. (a) direct comparison of normalized power spectrum of SL4P and STP measured at . (b) comparison of normalized power spectrum measured by SL4P at and and (c) comparison of normalized power spectrum measured by STP at and . All measurements were on mild steel B under flux control with a peak flux density of and an excitation frequency of . CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 66 in the signal, compared to the SL4P case, Figure 4.6b. The changes in the normalized power spectrum demonstrated by the STP are most likely a result of its larger sensing radius, which would make it more sensitive to non-uniform field effects. This suggests that at non-zero values, the superposition field may be significantly non-linear and non-uniform. It also suggests that the anisotropy measurements of each probe may be influenced by the sensing radius of the pickup up coils, which is explored in Section 4.1.4. 4.1.4 BN Energy Anisotropy This section presents a series of comparative MBN anisotropy measurements between the SL4P and STP tetrapole probes under the assumption of flux superposition (see Section 2.6.4). The purpose of these measurements was to examine the effect of STP’s redesigned pickup coil (detailed in Section 3.3.1) on angular dependent MBN measurements. All measurements were performed on the mild steel B sample under flux control at a flux density of excitation frequency of and . Figure 4.7a shows the measured anisotropy of the STP and SL4P with the probe oriented in the direction. The magnitudes of the STP MBN energies are larger, as expected, due to the higher number of coil turns and larger radius pickup coil. Both probes exhibit a four-lobe pattern with a large peak in the easy axis direction ( ), and a smaller peak perpendicular to the easy axis. The ratio of the large peak to the small peak is 2.0 for the SL4P and the STP indicating the four-lobe pattern is equally as pronounced in both probes. Figure 4.7b shows the measured anisotropy of the STP and SL4P with the probe oriented in the direction. Once again the magnitudes of the STP MBN energies are larger and both probes show the four-lobe pattern with a large peak in the easy axis direction and a smaller peak perpendicular to the easy axis. At an orientation of the ratio of the large peak to the small peak is 3.3 for the SL4P and 2.4 for the STP. Due to the symmetry of the tetrapole probe, it would be expected that the results at and be identical. CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 67 The difference in peak ratios, however, suggests that there is an ‘imbalance’ between the flux density through the dipole pairs 1-3 and 2-4 (see Section 2.6.4), despite the use of flux control. This imbalance could be the result of a number of factors but is most likely due differences in the coupling of the poles to the sample. (a) 0 SL4P STP 90 35 120 (b) 90 35 60 20 30 150 15 10 5 180 0 5 10 15 330 210 20 MBN Energy (mV2s) 20 30 150 15 10 5 0 180 0 5 10 15 330 210 20 25 25 30 30 240 35 300 240 35 (c) 45 SL4P STP 90 35 120 (d) FDP 70 60 30 40 5 180 0 5 10 15 330 210 MBN Energy (mV2s) MBN Energy (mV2s) 150 10 30 150 30 20 10 0 180 0 10 20 30 40 330 210 50 25 60 30 35 60 50 30 15 20 90 120 60 25 0 300 270 270 20 60 25 25 MBN Energy (mV2s) 120 30 30 0 SL4P STP 90 240 300 270 70 240 300 270 Figure 4.7: MBN Energy anisotropy as measured by the STP, SL4P and FDP probes under flux control at and on Mild Steel B. (a)-(c) tetrapole measurements performed using the STP and SL4P under flux superposition for probe orientation angles of (a) (b) and (c) . Lines are to guide the eye. (d) dipole anisotropy measurements performed using the FDP under manual rotation. Line represents fit of equation (2.32) with fit parameters of , , and an correlation factor of 0.98. CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 68 Figure 4.7c illustrates the imbalance of the two probes more clearly with both probes oriented at and . Unlike in Figures 4.7a and 4.7b, the lobe peaks are now located at . The symmetry of the anisotropy measured by the STP, as well as the small change in peak ratios from Figures 4.7a and 4.7b, indicates the STP probe is significantly better balanced than the SL4P. The most interesting result observed in Figures 4.7a-c is not the difference in anisotropy between the SL4P and STP probe, but rather the four-lobe pattern that both probes exhibit. Figure 4.7d shows the MBN energy anisotropy data as measured by the FDP (dipole probe) using traditional manual rotation. As is clear from Figure 4.7, the MBN anisotropy measured by the tetrapole probes (SL4P and STP) under the assumed principle of flux superposition is very different from that measured by the dipole. Unlike the four-lobe pattern of the tetrapoles, the FDP measurements demonstrate a two-lobe pattern, which is fit using MBN energy anisotropy fitting equation (2.32) in Figure 4.7d. The difference between dipole and tetrapole measurements throws into question the validity of the flux superposition principle for tetrapole probes, and was a severe concern. As such, a significant effort was subsequently focused on examining the validity of flux superposition for MBN anisotropy measurements. 4.2 Detailed Study of Flux Superposition in Tetrapole Probes As mentioned earlier, the comparative study between the Queen’s and DRDC systems threw into question the validity of flux superposition using tetrapole probes. This section presents a detailed study of the nature of flux superposition in these probes. Because Section 4.2 is fairly lengthy, it is worthwhile providing an overview of this section to the reader, as follows. MBN anisotropy has traditionally been measured by manual rotation of the MBN excitation field using a dipole [20], [31], [49]. Results are well documented in the literature and physical models have been developed based on domain theory to describe MBN energy anisotropy. For CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 69 this reason, any investigation of MBN anisotropy measurements obtained using a tetrapole probe requires a set of dipole results for comparison. These dipole results are presented in Section 4.2.1. As discussed in Section 2.6.4, the measurement of magnetic anisotropy utilizing flux superposition has several assumptions associated with it, as highlighted by equation (2.34). These assumptions have been thrown into question based on the experimental data seen in Figure 4.7. Understanding the magnetic anisotropy measured by tetrapole probes however, may provide insight into the magnetization process and MBN generation mechanisms when orthogonal magnetic fields are applied. This could allow for alternative analysis methods to characterize materials using tetrapole data. A series of MBN measurements were performed with the tetrapole (FTP and STP) to examine the ability of the tetrapole probe to reproduce the dipole results shown in Figure 4.8 and investigate reasons for differences. Sections 4.2.2 and 4.2.3 examine the effect of probe angle on MBN anisotropy across multiple steel sample grades. Following the studies on different types of steel, the following studies were done, focusing on the mild steel A sample: Section 4.2.4 examines the tetrapole MBN anisotropy as the result of MBN generated by two independent, but orthogonal, dipoles on mild steel. Section 4.2.5 examines the effect of field amplitude on MBN anisotropy in mild steel. Section 4.2.6 examines the effect of voltage and flux control on MBN anisotropy in mild steel. Section 4.2.7 examines the ability of an empirical fitting equation to describe tetrapole results and identify the magnetic easy axis. CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 70 4.2.1 Dipole MBN Anisotropy Results Using the FDP Probe FDP anisotropy results for the mild steel A, HY-80, grain-oriented laminate and non-oriented laminate samples are presented in Figure 4.8. FDP anisotropy results for the mild steel B sample are shown in Figure 4.7d. For each sample, data was fit using the dipole MBN energy equation (2.32). Best fit parameters of equation (2.32) , , and equation (2.33) are summarized for all samples in Table 4.1 (note that the table heading summarizes the meaning and significance of each of these parameters). Figure 4.8, and the (MBN energy ratio) values in Table 4.1, indicate that the mild steel A and the grain-oriented laminate are the most anisotropic of the samples studied. A high level of anisotropy is expected in grain-oriented laminates (Figure 4.8c) as these types of steels are designed to have ‘cube on edge’ Goss texture [18]. This texture aligns the magnetically easy [100] crystallographic direction perpendicular to the magnetically harder [110] direction in the surface plane of the sample. This creates a well-defined macroscopic easy axis of magnetization in the rolling direction, which is useful in reducing core loss in transformers. The anisotropy evident in the mild steel A sample (Figure 4.8a) indicates an easy axis in the direction, which corresponds to the rolling direction in this case. In general, mild steels are hot rolled. Hot rolling can produce mild to relatively strong anisotropy depending on the crystallographic texture and residual stress that is introduced. This anisotropy typically manifests itself in the form of a magnetic easy axis in the rolling direction [28], [59]. Figure 4.8b and Table 4.1 indicate that the HY-80 has a lower magnetic anisotropy than the mild steel A or grain-oriented laminate samples. This is confirmed by the MBN energy ratio 2.3 for the HY-80 sample compared to 5.4 and 5.6 for the mild steel A and grain-oriented laminate respectively. CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY (a) Mild Steel A (b) HY-80 105 90 75 120 4 105 60 135 45 15 180 0 195 345 2 45 30 150 165 15 1 0 180 0 1 2 3 330 210 195 345 330 210 4 3 225 315 225 315 5 4 240 300 255 270 240 285 105 90 270 285 (d) Non-Oriented Laminate 75 120 2 300 255 (c) Grain-Oriented Laminate 135 105 0.75 60 0.45 30 1 90 75 120 0.60 45 150 MBN Energy (mV2s) MBN Energy (mV2s) 165 3 MBN Energy (mV2s) MBN Energy (mV2s) 2 60 135 30 150 1 75 4 2 0 90 120 5 3 1 71 60 135 45 30 150 0.30 165 15 165 15 0.15 0 180 0 0.00 180 0 0.15 195 345 330 210 2 195 345 0.30 1 225 315 240 300 255 270 285 0.45 0.60 0.75 330 210 225 315 240 300 255 270 285 Figure 4.8: MBN energy anisotropy measured with the FDP (dipole) on (a) mild steel A at , (b) HY-80 at , (c) grain-oriented SiFe at and (d) nonoriented laminate at . Lines of best fit using equation (2.32) are shown and summarized in Table 4.1. Note that the radial units are not the same for each material. CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 72 Table 4.1: Best fit parameters for the dipole MBN energy fitting equation (2.32) ( ) and the MBN energy ratio (equation (2.33)) ( ) for all samples. represents Barkhausen events that contribute to the anisotropy, represents Barkhausen events that contribute to the isotropic background, represents the direction of the magnetic easy axis and is a measure of the relative anisotropy of the material. Sample ( ) ( ) () Grain-Oriented Laminate 1.71 ± 0.07 0.37 ± 0.4 2±1 5.6 ± 0.3 0.97 Mild Steel A 2.9 ± 0.1 0.66 ± 0.09 0±1 5.4 ± 0.3 0.95 HY-80 2.88 ± 0.09 2.16 ± 0.05 0 ± 0.9 2.3 ± 0.1 0.98 Mild Steel B 35.6 ± 0.9 30.7 ± 0.6 4.9 ± 0.8 2.2 ± 0.1 0.98 Non-Oriented Laminate 0.26 ± 0.02 0.46 ± 0.01 129 ± 2 1.6 ± 0.1 0.90 Finally, the non-oriented laminate shown in Figure 4.8d demonstrates the least amount of magnetic anisotropy among the samples with a of only 1.6. It is also the only sample that has a magnetic easy axis that does not lie in the rolling direction. As the name suggests, nonoriented laminates are manufactured to achieve magnetic isotropy and are commonly used in electric motors or other machines where a rotational magnetic field is present. Their lack of preferred magnetic anisotropy reduces core loss and improves machine efficiency for engineering applications in which the magnetization direction is always changing [58]. 4.2.2 Tetrapole MBN Anisotropy Results: The effect of tetrapole orientation using the FTP probe If the assumption of linear flux superposition is correct, the physical orientation of the tetrapole probe should not affect MBN anisotropy measurements. The results in this section serve to CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY examine the effect of tetrapole probe orientation 73 on MBN anisotropy. The measurements presented were performed as described in Section 3.4.2 with the DRDC system using the FTP probe, for probe orientation angles of and on the mild steel A, HY-80, grain-oriented and non-oriented samples. Figure 4.9 shows the effect of tetrapole orientation on MBN energy anisotropy for the mild steel A and HY-80 samples. For both types of steels, it is observed that the tetrapole orientation has a significant effect on the measured MBN anisotropy. As previously observed in Figure 4.7, the most obvious difference between the tetrapole result of Figure 4.9 and the dipole result of Figure 4.8 is that the tetrapole results display a ‘four-lobe’ pattern. Examining Figure 4.9, for mild steel A with the tetrapole orientation at anisotropy result indicates a magnetic easy axis in the , the MBN direction. While this is consistent with the dipole result of Figure 4.8, a smaller set of lobes exist at tetrapole result of Figure 4.9. This suggests another easy axis along the and for the direction, which does not agree with the dipole results. This four-lobe pattern is also observed on the HY80 sample in Figure 4.9, with but the lobes are much sharper and there are very pronounced minima at roughly and . The lobes in both the mild steel A and HY-80 results are suspiciously located in the direction of the tetrapole probe poles, while the minima lie in the directions between them. When is increased to , Figure 4.9 shows that the lobe angular positions once again correspond to the direction of the probe poles. Furthermore, these easy axis at results suggest an , which is inconsistent with the dipole results. Interestingly the four-lobe pattern produced when does not appear symmetrical like the one produced when ; rather they appear slightly stretched along the direction, which the dipole results indicated was the easy axis direction for both the mild steel A and HY-80 samples. This suggests that the tetrapole results, while distorted, are still affected by the sample’s magnetic anisotropy. CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY Mild Steel A 0° HY-80 0° 90 12 120 180 0 2 4 MBN Energy (mV2s) MBN Energy (mV2s) 2 300 0 180 0 3 6 330 210 45° 120 45° 90 18 60 120 12 30 150 4 2 180 0 2 4 MBN Energy (mV2s) 8 9 30 150 6 3 0 180 0 3 6 9 330 210 330 210 12 8 15 10 240 12 300 240 18 90° 90° 90 24 120 120 12 4 180 0 4 8 MBN Energy (mV2s) 30 150 8 9 30 150 6 3 0 180 0 3 6 9 330 210 330 210 12 16 15 20 240 24 300 240 18 135° 135° 90 12 120 2 180 0 2 4 330 210 MBN Energy (mV2s) MBN Energy (mV2s) 60 12 30 150 4 9 30 150 6 3 0 180 0 3 6 9 330 210 12 8 15 10 12 120 15 8 6 90 18 60 10 0 300 270 270 6 60 15 16 MBN Energy (mV2s) 90 18 60 20 12 300 270 270 0 60 15 10 12 300 270 90 12 240 18 270 MBN Energy (mV2s) 3 15 240 12 6 30 150 6 12 10 0 9 9 330 210 8 6 60 12 30 150 4 6 120 15 8 0 90 18 60 10 6 74 240 300 270 18 240 300 270 Figure 4.9: MBN energy anisotropy using FTP for various on mild steel A ( ) and HY-80 ( ). Dotted red lines indicate fit of dipole data for comparison. Solid lines are to guide the eye. Radial scale is doubled for mild steel A result at . CHAPTER 4. At SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY in Figure 4.9 the MBN energy lobe in the when compared to the scale at direction is much larger case, particularly for mild steel A (note that the MBN energy is twice that of the other lobe at 75 ). For both the mild steel A and the HY-80, the is also significantly suppressed to the point where the overall result appears qualitatively similar to that of the dipole. The final two polar plots in Figure 4.9 with the tetrapole aligned at qualitatively similar to those at appear with slight differences in the peak amplitudes in the probe pole directions. Figure 4.10 shows the tetrapole orientation effects on MBN energy anisotropy for the grain-oriented laminate and the non-oriented laminate, again for the same four angles that were considered in Figure 4.9. The effect of tetrapole orientation is very different in these samples compared to the mild steel A and HY-80 of Figure 4.9, since the four-lobe pattern is not apparent in the results for either sample, at any tetrapole angle. For the grain-oriented laminate sample, measurements with the tetrapole orientation at and produce a result very similar to that obtained with the dipole, as seen in Figure 4.8. Interestingly these two cases correspond to the probe poles being aligned with the magnetic easy axis of the sample (as determined by the dipole). In Figure 4.9, the mild steel A and HY-80 results also were most similar to the dipole results for tetrapole orientations and , but not to the extent of the grain-oriented laminate. The grain-oriented laminate result in Figure 4.10 at and does not reproduce the dipole result. The non-oriented laminate results in Figure 4.10 are the most peculiar of the tetrapole results. Results from other samples would suggest that the tetrapole result should be most similar to the dipole result when the probe poles are aligned with the easy axis. Because the magnetic easy axis is at the case for and for the non-oriented laminate sample, this should be . However, at resemble the dipole result in Figure 4.8d, and at the tetrapole result does not there is only partial similarity with CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY Grain-Oriented Laminate 0° Non-Oriented Laminate 0° 90 14 120 76 90 6 60 12 120 60 5 10 4 30 150 6 4 2 0 180 0 2 4 6 8 MBN Energy (mV2s) MBN Energy (mV2s) 8 12 240 14 45° 120 0 4 6 MBN Energy (mV2s) MBN Energy (mV2s) 180 2 300 180 0 0 1 2 330 210 90° 120 300 270 90° 90 14 240 6 270 90 6 60 12 120 60 5 10 4 30 150 6 4 2 180 0 2 4 6 MBN Energy (mV2s) MBN Energy (mV2s) 1 5 240 14 30 150 3 2 1 0 180 0 1 2 3 330 210 330 210 4 10 12 5 240 14 300 135° 120 300 270 135° 90 14 240 6 270 90 6 60 12 120 60 5 10 4 30 150 6 4 2 180 0 2 4 6 330 210 MBN Energy (mV2s) MBN Energy (mV2s) 30 2 4 12 3 30 150 2 1 0 180 1 2 3 330 210 4 10 5 12 14 60 150 3 3 330 210 10 8 90 120 4 30 150 2 0 300 5 4 8 240 6 6 8 330 210 45° 60 10 0 2 270 12 8 0 1 6 90 14 8 180 0 5 300 270 0 1 4 10 8 2 3 330 210 30 150 3 240 300 270 6 240 300 270 Figure 4.10: MBN energy anisotropy using FTP for various on grain-oriented laminate ( ) and non-oriented laminate ( ). Dotted red lines indicate fit of dipole data scaled by a factor of 2 and 3 respectively, for comparison. Lines are to guide the eye. CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY the tetrapole indicating a magnetic easy axis at around 77 . The non-oriented laminate results in Figure 4.10 also do not exhibit the four-lobe pattern that was observed in the mild steel A and HY-80 results in Figure 4.9. 4.2.3 Tetrapole MBN Anisotropy Results: High resolution measurements on mild steel using both the FTP and STP probes To gain a more detailed understanding of the tetrapole results observed in Figures 4.9 and 4.10, a set of higher resolution measurements ( in increments rather than ) was performed on the mild steel A sample. The mild steel A was selected for these measurements because its physical dimensions are the largest (see Table 3.5) of the samples, which was expected to minimize any geometry effects. Furthermore the mild steel A sample had a wellestablished magnetic easy axis, allowing for an investigation of the effects of magnetic anisotropy. In this part of the study, measurements were made using both the FTP and also the STP probe. The STP probe measurements were added to this study with the aim of providing an insight into how probe design and construction affect MBN results. The data collected in this part of the study was used to develop an empirical fitting equation. It was hoped that this fitting equation might be able to extract useful MBN anisotropy information from the four-lobe patterns (see Section 2.6.5 and 4.2.7). Figure 4.11 shows the results obtained using the FTP probe, with seen in Figure 4.11 these smaller changes in in increments. As indicate that the four-lobe MBN energy pattern undergoes a steady, progressive rotation as increases. Furthermore, the 4 lobes (MBN energy peaks) are consistently located within roughly 5° of the pole-pair directions for each value of . When the largest lobe pair is located at pole-pair position. The minor peak appears at , this corresponds to the 1-3 , corresponding to the 2-4 pole-pair CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY position. As the probe is rotated ( 78 increases) the lobe associated with the 1-3 pole-pair decreases in magnitude, and the 2-4 pole peak increases in magnitude. At the lobes are roughly equivalent in magnitude. For probe orientation angles greater than the lobes associated with the 2-4 pole-pair increase up to , where they dominate the pattern and the 1-3 lobe peaks are barely visible. In fact, at the pattern appears to resemble an elongated dipole result (see Figure 4.8a). The final plot in Figure 4.11 is a direct comparison of the and results. Theoretically, given the symmetry of the tetrapole and the use of flux control, these two results are expected to be identical. It is helpful at this stage to quantify the comparative magnitude of the lobes associated with the 1-3 pole-pair, with that of the 2-4 pole-pair. Therefore a quantity termed the ‘tetrapole peak ratio’ is defined as: (4.1) which is the peak MBN energy magnitude in the 2-4 pole-pair direction over the sum of the magnitudes in the two pole-pair directions. If all lobes have the same magnitude, the results shown in Figure 4.11, for , and for , . For . Figure 4.12 presents the results for a similar set of measurements as were made for Figure 4.11, except in this case the STP is used. The STP measurements were made for comparison purposes – to determine if the results seen in Figure 4.11 are probe-specific, or are generically associated with the fundamental tetrapole superposition principle as described by equation (2.34). The results shown in Figure 4.12 indicate that the STP probe results are very similar to those for the FTP probe in Figure 4.11. Specifically, the common trends are as follows: Both sets of probe results exhibit a four-lobe pattern that rotates with the probe, which suggests that the lobe positions are a result of probe geometry. CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 0 15 90 10 120 8 6 30 150 4 2 0 180 0 2 4 6 120 330 210 30 150 4 2 0 180 0 2 4 6 8 330 210 8 240 10 300 240 10 270 30 120 45 6 30 150 2 180 0 2 4 MBN Energy (mV2s) MBN Energy (mV2s) 120 330 210 30 150 4 2 0 180 0 2 4 6 8 330 210 8 240 10 300 240 10 270 60 120 75 6 30 150 2 180 0 2 4 MBN Energy (mV2s) MBN Energy (mV2s) 120 330 210 30 150 4 2 0 180 0 2 4 6 8 330 210 8 240 10 300 240 10 270 90 120 0 and 90 10 60 8 180 0 2 4 330 210 8 10 MBN Energy (mV2s) MBN Energy (mV2s) 6 30 150 2 6 90 120 60 8 4 0 300 270 90 10 6 60 8 4 6 90 10 60 8 0 300 270 90 10 6 60 8 4 6 90 10 60 8 0 300 270 90 10 6 60 8 MBN Energy (mV2s) MBN Energy (mV2s) 6 90 10 60 79 30 150 4 2 0 180 0 2 4 6 330 210 8 240 300 270 10 240 300 270 Figure 4.11: MBN energy anisotropy measured using the FTP at various ‘high resolution’ probe orientations on mild steel A. Solid lines are to guide the eye. Dotted lines indicated fit of dipole data using equation (2.32) for comparison, except the final plot for and . CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY Both probes exhibit a stretching of the four-lobe pattern in the 80 direction, which corresponds to the magnetic easy axis of the sample. This latter observation is an indication that the tetrapole measurements are sensitive to the magnetic anisotropy of the sample. This is a promising result, because it suggests that magnetic easy axis information may still be extracted from the tetrapole data, even though the results do not match those obtained with a dipole. There are also minor differences in the FTP (Figure 4.11) and STP (Figure 4.12) results, namely: Unlike the FTP, in the STP results the peak amplitudes appear to be closest in magnitude at At . the largest peak is once again in the direction, however, unlike results shown in Figure 4.11, the four-lobe pattern is not significantly elongated. In the final plot of Figure 4.12 the difference between the and case is shown to be much less significant than that for the FTP probe (Figure 4.11). Quantitatively, for , and for , , which is in much better agreement than the results obtained with the FTP probe. The differences between the FTP and STP probes with respect to this is discussed in greater detail below. As mentioned above, the magnitude of the 4 lobes for the STP probe is more similar than it is for the FTP probe. It is useful to examine the MBN energy measured in the for FTP probe orientations of measured in the . At and (Figure 4.11). At direction the MBN energy direction (thus under excitation from the 1-3 pole-pair only) was the MBN energy measured in the excitation from the 2-4 pole pair only) was . direction (now under CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 0 15 90 30 120 25 180 0 5 10 MBN Energy (mV2s) MBN Energy (mV2s) 5 15 15 30 150 10 5 0 180 0 5 10 15 330 210 20 330 210 20 25 25 240 30 300 240 30 270 30 45 25 25 20 20 30 150 10 5 0 180 0 5 10 15 15 20 120 30 150 5 0 180 0 5 10 330 210 20 25 25 240 30 300 240 30 270 60 120 75 10 5 180 0 5 10 15 30 150 10 5 0 180 0 5 10 15 330 210 20 330 210 20 25 25 240 30 300 240 30 270 90 120 0 and 90 30 60 25 180 0 5 10 330 210 20 MBN Energy (mV2s) MBN Energy (mV2s) 5 15 30 150 10 5 0 180 0 5 10 15 330 210 20 25 30 60 20 30 150 10 15 90 120 25 20 0 300 270 90 30 15 60 20 30 150 MBN Energy (mV2s) MBN Energy (mV2s) 120 25 20 15 90 30 60 25 0 300 270 90 30 15 60 10 15 330 210 90 30 60 MBN Energy (mV2s) MBN Energy (mV2s) 120 300 270 90 30 15 60 20 30 150 10 0 120 25 20 15 90 30 60 81 25 240 300 270 30 240 300 270 Figure 4.12: MBN energy anisotropy measured using the STP at various probe orientations on mild steel A. Solid lines are to guide the eye. Dotted lines indicated fit of dipole data using equation (2.32) for comparison, except the final plot for and . CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 82 The comparison of these MBN energies from these two difference pole-pairs indicates that the flux density through the 1-3 pole-pair in the FTP was less than that through the 2-4 polepair. This suggested that an air gap (large enough that the flux control system could not compensate) was present in the 1-3 pole-pair magnetic circuit. Upon inspection of the FTP probe, a small air gap was observed on pole 1 or 3 (depending on the pressure applied to the probe). Despite efforts to adjust the probe housing and spring loaded design, a more effective coupling of the 1-3 pole-pair to the sample could not be achieved with this probe. A similar air gap on the STP probe was not observed, which can explain the similar results for probe orientations of and in Figure 4.11. The cause of the air gap in the FTP probe is most likely a result of a combination of factors affecting the orientation of the 1-3 pole-pair. As described in Section 3.3, in the FTP the 1-3 dipole couples to the sample using a spring loaded design. If the force of the springs is not balanced or the core cannot slide smoothly in the housing, one end of the dipole may couple to the sample, while the other has a gap. Comparatively, the STP probe pole-pairs are epoxied together to form a ridged tetrapole. From the results in Figures 4.11 and 4.12, it appears that this allows for more balanced coupling of the pole-pairs on a flat surface. 4.2.4 Comparison of Dipole and Tetrapole Results: Studies involving independent orthogonal dipoles The tetrapole results of Figures 4.11 and 4.12, in comparison with the dipole results of Figure 4.8a indicated that the orthogonal fields were not superimposing as originally expected. Indeed, the two-lobe results from the dipole probe (FDP) are markedly different from the fourlobe results obtained with both tetrapole probes (FTP and STP). This section of the thesis attempts to experimentally determine why this is the case. It is helpful to define some terms: CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 83 – The theoretical MBN result assuming ‘ideal superposition’ (IS). Recall that the original premise of the tetrapole flux superposition assumed that, at the central location between the pole-pairs, the magnetic field created by the two orthogonal pole-pairs would vectorially add to provide a ‘sum’ field of the required magnitude and direction. – The experimentally measured MBN result from the tetrapole (T) probes (i.e. as shown in Figures 4.11, 4.12, etc.) – This is an experimentally measured result where there is ‘no superposition’ (NS), where the MBN value from each orthogonal pole-pair is measured separately. This is achieved by activating one pole-pair (of the FTP or STP) and measuring the MBN result, and then activating the other pole-pair and measuring the result. This is followed by adding the two MBN values together. The details of the experiments to obtain are outlined below. Both the FTP and STP probes were used to obtain the data. As described above, each pole-pair (either 1-3 or 2-4) was activated independently. The field amplitude used for each pole-pair corresponded to that required to produce the target superposition field at a particular angle. This is illustrated in Figure 4.13. at a superposition angle represents the target superposition field amplitude . MBN measurements were performed first with the (with the other pole-pair switched off) and then the field. For any particular field the result was obtained by summing the independent MBN results for each pole-pair: (4.2) where The and are the MBN results from the value was subsequently compared to and fields, respectively. , obtained using the tetrapole CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 84 Figure 4.13: Experimental setup for measurements of MBN using independent orthogonal dipoles. and correspond to field amplitudes used to measure the MBN of two independent orthogonal dipoles. is the superposition field amplitude used to measure MBN at an angle , which is achieved under the assumption of linear superposition of the flux. superposition field. This procedure was performed for various probe orientation angles flux densities. Results are discussed below, comparing the function of the probe orientation angle and and , first as a and then as a function of the excitation field amplitude. 4.2.4.1 Effects of Probe Orientation Angle Figure 4.14 shows the comparison of the experimental orientation angles of and results for probe using the FTP. This figure indicates that both exhibit similar trends at all three probe orientation angles and . This result is highly significant, since it suggests that the assumption of flux superposition in the tetrapole probe is not valid. It further suggests that the four-lobed pattern observed in the tetrapole MBN energy CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 85 data may, primarily, be the result of the orthogonal fields acting essentially independently to produce their own MBN result. Although Figure 4.14 indicates similar trends between the two sets of data, a careful examination of the results does show some differences between the and results. Figures 4.14a and 4.14c represent the case of one of the probe pole-pairs aligned with the magnetic easy axis at field angle and results decrease as the is rotated away from the easy axis, the drop in the result is larger for both and . Although both the in the initial part of the graph. The difference is evident from for and from to for to . These differences indicate that the behavior of the pole-pairs is not entirely independent (as it is in the case) but that there is some interaction between the fields that results in a reduction of MBN energy. It is speculated that, during magnetization, the two pole-pairs are ‘competing’ to magnetize domains with their respective fields and this interaction or competition between the domains magnetized by the independent orthogonal fields reduces the overall MBN energy. Consider Figure 4.14a, where the 1-3 pole-pair is aligned in the easy axis direction and the 2-4 pole-pair is perpendicular to it. As the superposition field angle is rotated away from the easy axis at , according to equation (2.34), the field of the 2-4 pole-pair increases as shown in Figure 4.13. Because this field is perpendicular to the 1-3 pole-pair it has the effect of reducing the growth of domains that are being induced by the 1-3 pole-pair. This reduction in domain growth, results in the observed decrease in MBN energy. As the superposed field angle is rotated further, the relative amplitude of the 2-4 pole-pair field increases and so does the competition, resulting in even less equal again at difference between the to . In Figures 4.14a and 4.14c, and remain relatively so up to and from to and are . Thus the larger is attributed to the easy axis at , which magnifies the competition between the pole-pairs. CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 0 20 40 60 80 86 100 MBNenergy (mV2s) 40 MBNNS 30 MBNT 20 10 (a) T = 0° MBNenergy (mV2s) 0 25 20 15 10 (b) T = 45° 5 MBNenergy (mV2s) 30 25 20 15 10 (c) T = 90° 5 0 20 40 60 80 100 Field Angle (°) Figure 4.14: MBN energy resulting from a superposition field and two orthogonal independent fields at probe orientation angles (a) , (b) and (c) all at a flux density of . Measurements were performed using the FTP. Lines are to guide the eye. Figure 4.14b compares the and trend in angular dependence of differences, particularly at for the case of and and . While the general appear similar, there are significant . Unlike Figures 4.14a and 4.14c, in Figure 4.14b CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY is higher than for field angles near the easy axis at 87 . Continuing from the idea introduced in the previous paragraph, the competition between the pole-pairs should be highest at a superposition field angle amplitude), which, for of the easy axis ( (i.e. when the orthogonal fields are of equal corresponds to ) and is larger than . Interestingly, in the direction . This suggests the easy axis reduces competition between the orthogonal fields and results in an increase in MBN activity. At , with the target superposition field perpendicular to the easy axis, the reverse effect is observed, suggesting increased competition reduces relative to . There are three concepts that emerge from the analysis of Figure 4.14: The and angular dependence shows that the four-lobe pattern is most likely a result of the fact that the two pole-pairs do not appear to be creating the expected superposition field, but rather are acting more independently. The orthogonal fields exhibit competition between pole-pairs, which results in a reduction in the measured MBN energy. The magnetic anisotropy (i.e. the easy axis population) affects the extent of such competition. 4.2.4.2 Effects of Field Amplitude Figure 4.15 shows the measured for flux densities of and , and and at a single probe orientation angle using the STP. At (Figure 4.15a) exhibit similar trends, as observed previously in Figure 4.14a and 4.14c. However, at the higher values of large difference between the (Figure 4.15b) and and result. (Figure 4.15c), there is a CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 0 20 40 60 80 88 100 MBNenergy (mV2s) 15 MBNNS MBNT 10 5 (a) 150mT MBNenergy (mV2s) 0 60 50 40 30 (b) 350 mT MBNenergy (mV2s) 100 20 90 80 70 60 (c) 550 mT 50 0 20 40 60 80 100 Field Angle (°) Figure 4.15: MBN energy resulting from a superposition field and two orthogonal independent fields at flux densities of (a) , (b) and (c) all at a probe orientation angle . Measurements were performed using the STP. Lines are to guide the eye. The interesting result in Figure 4.15 is that as flux increases, the magnitude of the result is less than the result, for superposition fields between and . This is significant as it demonstrates the effect of the previously introduced concept of competition CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 89 and shows the extent of the independent behavior of the pole-pairs in generating MBN. It is speculated that as flux is increased, the competition between the orthogonal fields reduces the number of domain walls that each field is able to move, resulting in an overall decrease in MBN energy for the tetrapole case ( ). For the purely independent case of , there is no interaction between the fields and each is able to move a larger number of domain walls. As flux is increased, MBN energy increases non-linearly (as seen in Figure 2.9) resulting in the peaks at , observed in both Figure 4.15b and 4.15c. The result in Figure 4.15 also indicates that the effect of competition is most significant at higher flux densities. Although the result appears very similar to the result at (suggesting predominantly independent behavior), as flux increases, competition dominates the result. 4.2.5 Field Amplitude Effects on Anisotropy The results in Figure 4.15 indicated differences in MBN anisotropy at various flux densities. These results however, did not highlight the flux density effect on the four-lobe tetrapole pattern. This is considered in this section, using the STP probe. Figure 4.16 shows the angular dependent MBN energy measured by the STP at flux densities of , and . In Figure 4.16a, at flux density of typical four-lobe pattern is observed with an elongation in the easy axis direction at Applying equation (4.1) a tetrapole peak ratio . In Figure 4.16c, at . is observed. In Figure 4.16b at a flux of the four-lobe pattern becomes less pronounced, although the slightly to , the value decreases only the four-lobe pattern is barely visible and , representing a modest decrease in the tetrapole peak ratio from the results at and . The smoothing of the four-lobe pattern from to can be attributed to: (1) the non-linear relationship between MBN energy and flux density (shown in Figure 2.9); and (2) CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 90 the independent behavior of the orthogonal fields. As seen in Figure 2.9, at lower flux densities MBN energy increases exponentially with flux, but at higher flux densities the rate of MBN energy increase is lower. The superposition field orthogonal fields and at a non-zero consists of two of lower magnitude as described by equation (2.34) (see Figure 4.13). Therefore, as flux density is increased, the relative increase in MBN energy generated by these independently behaving orthogonal fields will be larger than that of a single field at . This results in the observed smoothing of the pattern. (a) 150 mT 2.4 (b) 350 mT 90 120 70 60 50 40 30 150 MBN Energy (mV2s) MBN Energy (mV2s) 1.6 0.8 0.4 0.0 180 0 0.4 0.8 1.2 330 210 30 150 30 20 10 0 180 0 10 20 30 330 210 40 1.6 50 2.0 2.4 60 60 2.0 1.2 90 120 60 240 300 240 70 270 300 270 (c) 550 mT 120 90 120 60 100 MBN Energy (mV2s) 80 60 30 150 40 20 0 180 0 20 40 60 330 210 80 100 120 240 300 270 Figure 4.16: MBN energy anisotropy at peak flux densities of (a) 150, (b) 350 and (c) 550 mT. Measurements performed under flux control with STP on the mild steel B sample. Lines are to guide the eye. Note that the scales for each plot are different. CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 91 4.2.6 Voltage (Field) and Flux Control of the MBN Excitation Field: Effects on MBN anisotropy results Flux control for the MBN excitation field has been shown to improve MBN measurement repeatability compared to voltage (field) control [5]. This was the basis for using flux control in the DRDC system. The flux density through a sample is dependent on the relative permeability of the material, which can be both non-linear and anisotropic in ferromagnetic materials. Given our revised understanding of tetrapole MBN behavior, this study examined tetrapole MBN measurements, comparing flux and voltage control for the MBN excitation field. Figure 4.17 compares MBN anisotropy measurements performed under flux and voltage control at probe orientation angles and . It is apparent that both flux and voltage control produce the four-lobe pattern. This confirms that the flux control, which compensates for changes in permeability, is not the cause of the four-lobe pattern. 00 Deg 30 45 Deg 90 120 21 60 15 12 30 150 10 5 180 0 5 10 15 330 210 20 30 150 9 6 3 0 180 0 3 6 9 12 330 210 15 25 30 MBN Energy (mV2s) MBN Energy (mV2s) 20 0 60 18 25 15 90 120 18 240 300 270 21 240 300 270 Figure 4.17: MBN energy anisotropy under flux control ( 200 mT) and voltage control ( 1 V) at probe orientation angles of and . Measurements performed with FTP probe on the mild steel B sample. Lines are to guide the eye. CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 92 4.2.7 Empirical Fitting of Tetrapole Data As described in Section 2.6.3, the angular dependence of MBN energy measured with a dipole probe can be fit with equation (2.32). This fitting equation was developed under the assumption of a single, uniform excitation field [49] and has been shown to correctly identify and quantify the magnetic easy axis in ferromagnetic materials for data collected using dipoles [31], [60], [61]. The tetrapole results presented in Section 4.2.2 and 4.2.3, however, demonstrated a significantly different MBN anisotropy from that obtained with a dipole. These results indicate that the traditional fitting equation (2.32) used for dipole measurements is not appropriate for tetrapole MBN anisotropy data and a new fitting equation is required. Section 4.2.7.1 describes the development of a new empirical fitting equation and Section 4.2.7.2 presents the fitting of tetrapole MBN anisotropy data with the new empirical equation. 4.2.7.1 Development of Empirical Fitting Equation for Tetrapole MBN Anisotropy Data The empirical fitting equation presented here was developed with the primary purpose of identifying the sample magnetic easy axis in a similar manner to equation (2.32). To achieve this, the independent behavior of the orthogonal fields and the concept of competition were incorporated into the fitting equation. Alternative fitting equations have been developed previously to describe the magnetic anisotropy of dual easy axis systems [49] and Si-Fe laminates [62], by taking into account significant magnetic domain interactions due to sample composition. The fitting equation developed in this work incorporates separate terms for each orthogonal pole-pair, an orthogonal dipole-dipole interaction term and a term which accounts for an asymmetric imbalance in the system. Combining these terms yielded the following fitting function: CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY ( ) ( where ( ( ) (4.3) )) is the angle of the field in the sample reference frame and where the best fit parameters are; and ) ( 93 the probe orientation angle, the direction of the easy axis and , , are coefficients. This equation was developed by attempting to describe the observed patterns mathematically and by incorporating interaction terms present in other alternative fitting equations [49], [62]. All the fitting parameters in equation 2.34 contain a term in their angular dependence, which is the direction of the sample’s magnetic easy axis. In the tetrapole fitting equation (4.3) the and terms are intended to describe the independent behavior of the orthogonal fields for a tetrapole probe oriented at terms and . The two describe MBN energy lobes in the direction of each pole-pair separately, accounting for the different flux densities of each pole-pair for different (2.34). In contrast to equation (2.32) the and according to are multiplied by fourth-order cosine and sine terms, which have been used previously to account for higher-order dipole interactions [49], [62]. The in the tetrapole fitting equation is an asymmetric term intended to describe an imbalance in the system, possibly due to probe coupling imbalances. is multiplied by a first-order cosine term, which has been introduced in previous dipole fitting equations as well [28], [62], [63]. The final term, , is an interaction term, which accounts for the competition between pole-pairs resulting in a decrease in MBN energy. Such interaction terms have been used in previous fitting equations to describe the reduction in MBN energy due to eddy current interactions [62]. The term is multiplied by a double angle sine function, which describes the maximum competition at . CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 94 4.2.7.2 Fitting of Tetrapole MBN Anisotropy Data Using Empirical Equation Figures 4.18 and 4.19 show the angular dependent MBN energy data from Section 4.2.2 for orientation angles of , , and , as measured by the FTP (Figure 4.18) and STP (Figure 4.19) probes. The fit of equation (4.3) to the data is superimposed (in red). Tables 4.3 and 4.4 show the fitting parameters obtained using equation (4.3) for various interest are the ‘predicted’ fitting parameters and . Of most , which predict the probe orientation and sample’s magnetic easy axis, respectively. As seen in Tables 4.2 and 4.3 the fitting of both the FTP and STP results correctly predicts within for all probe orientation angles. More importantly the fitting equation also appears to correctly predict the direction of the sample’s magnetic easy axis . For the FTP probe, the fitting parameters in Table 4.2 correctly identify the magnetic easy axis (at the error in is ) to within for all except at where . This variation can be explained by the tetrapole imbalance identified in the FTP (Section 4.2.3). In comparison, the fitting results using the STP (which exhibited significantly less imbalance compared to the FTP), correctly identify values of to within at all . In both the results from the FTP and STP, a similar pattern is observed in the values of and , which describe the magnitude of lobes of the four-lobe pattern in the direction of the pole-pairs. For both probes, as increases, decreases and increases, which is consistent with the observations made in Section 4.2.3. It is expected, due to the symmetry of the probe, that at , . For the FTP (Table 4.2) at . In the STP fitting results (Table 4.3) at , is almost twice as large as the difference between and is much smaller. This is a reflection of the STP exhibiting better balance between the coupling of the probe poles to the sample, when compared to the FTP probe. In Table 4.2 (FTP) the term, which is associated with an asymmetric imbalance in the system, shows a large variation as the probe is rotated from the variation in the term from to . In Table 4.3 (STP) to 90 is not as significant. This is another indication of the larger coupling imbalance present in the FTP probe when compared to the STP. In both CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 95 MBNenergy (mV2s) 5.5 5.0 T = 0° 4.5 T = 15° T = 30° 4.0 T = 45° 3.5 3.0 2.5 2.0 1.5 1.0 -20 0 20 40 60 80 100 120 140 160 180 200 Field Angle (°) Figure 4.18: MBN energy anisotropy measurements using the FTP probe on mild steel A at various probe orientation angles . The empirical fitting equation (4.3) is shown in red for each set of data. Table 4.2 includes the fitting parameters for each data set. Plots of the data and fitting equations on polar graphs can be found in Appendix C. 30 T = 0° 25 T = 15° MBNenergy (mV2s) T = 30° T = 45° 20 15 10 5 -20 0 20 40 60 80 100 120 140 160 180 200 Field Angle (°) Figure 4.19: MBN energy anisotropy measurements using the STP probe on mild steel A at various probe orientation angles . The empirical fitting equation (4.3) is shown in red for each set of data. Table 4.3 includes the fitting parameters for each data set. Plots of the data and fitting equations on polar graphs can be found in Appendix C. CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 96 Table 4.2: FTP probe: Fitting parameters for equation (4.3) for angular dependent MBN energy measurements performed on mild steel A at various probe orientation angles . Probe Angle (mV2s) (mV2s) (mV2s) (mV2s) (mV2s) (°) (°) (°) 0 0.03 4.18 2.36 0.0009 0.29 1.8 -1.3 0.98 15 -0.36 3.61 2.51 0.0005 0.41 14.0 1.3 0.99 30 -0.66 2.87 3.05 0.0007 0.60 30.7 -0.5 0.99 45 -0.57 2.22 4.24 0.0014 0.49 40.6 5.6 0.99 60 -0.55 2.16 6.24 0.0090 0.10 62.0 -0.1 0.99 75 -0.32 2.37 8.24 0.0132 -0.39 76.9 0.1 0.98 90 -0.07 2.75 9.18 0.0119 -0.78 90.7 0.3 0.98 Table 4.3: STP probe: Fitting parameters for equation (4.3) for angular dependent MBN energy measurements performed on mild steel A at various probe orientation angles . Probe Angle (mV2s) (mV2s) (mV2s) (mV2s) (mV2s) (°) (°) (°) 0 -0.17 23.9 3.7 0.074 3.87 0.2 -0.1 0.99 15 -0.63 23.8 5.8 0.014 3.06 13.9 -0.2 0.99 30 -0.73 19.9 8.6 0.056 3.03 27.8 -0.1 0.99 45 -1.53 14.5 12.2 0.002 1.78 45.3 0.2 0.99 60 -1.20 11.8 16.8 0.025 1.42 61.2 0.0 0.99 75 -0.61 10.0 20.9 0.044 1.80 76.0 0.1 0.99 90 0.43 5.7 20.7 0.050 2.29 89.5 0.0 0.99 Tables 4.2 and 4.3 , or is several orders of magnitude smaller than the other fitting parameters suggesting that the asymmetric imbalance is a small effect. Similar to , (which was intended to describe the competition between the orthogonal fields) has a minimum at since at for the STP probe (Table 4.3). This is a reasonable result, , due to the symmetry of the probe with respect to the easy axis at , competition between the pole-pairs would be at a maximum (assuming a perfectly balanced probe). The minimum coupling imbalance. for the FTP (Table 4.2) is shifted to again indicating probe CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 97 Figures 4.18 and 4.19 and Tables 4.2 and 4.3 show the ability of the tetrapole fitting equation to describe data from two different probes. This demonstrates the versatility of the fitting equation for probes with different coupling balances. Both sets of measurements were, however, performed on mild steel A. To establish whether equation (4.3) is able to describe measurements on other types of steel, the data from Figure 4.9 on HY-80 was fit as well. Figure 4.20 shows the empirical fit of tetrapole MBN anisotropy data on HY80. Table 4.4 summarizes the HY80 steel fitting parameters for probe angles , and . As with the measurements on mild steel, the fitting equation is able to identify the magnetic easy axis to within for all probe angles. In Table 4.4, consistent with mild steel. However, is at a minimum at is maximum at which is , which is the opposite of what was observed in mild steel, possibly due to a change in coupling imbalance between measurements. The quality of the fits in terms of is still high for HY-80 suggesting that the tetrapole fitting equation is versatile across multiple steels. From the fitting results in Figures 4.18 and 4.19 and Tables 4.3, 4.4 and 4.5 it can be seen that the tetrapole fitting equation (4.3) is capable of identifying the magnetic easy axis to within in all but two measurements in this study. Although derived empirically, this suggests that, the fitting equation is capable of accurately describing angular dependent MBN energy data obtained with tetrapole probes. Empirical fitting results of the grain-oriented and non-oriented laminates samples are shown in Appendix D. Table 4.4: Fitting parameters for equation (4.3) for angular dependent MBN energy measurements performed on HY-80 with the FTP probe at various probe orientation angles. Probe Angle (mV2s) (mV2s) (mV2s) (mV2s) (mV2s) (°) (°) (°) 0 0.67 29.4 23.3 0.034 -9.7 0.1 0.1 0.97 45 -2.11 32.4 14.2 0.053 -7.3 43.4 0.0 0.99 90 -0.12 15.3 38.4 0.002 -9.5 94.0 -4.0 0.99 CHAPTER 4. SYSTEM PERFORMANCE & STUDY OF FLUX SUPERPOSITION VALIDITY 98 MBNenergy (mV2s) 30 25 T = 0° 20 T = 90° T = 45° 15 10 5 0 -20 0 20 40 60 80 100 120 140 160 180 200 Field Angle (°) Figure 4.20: MBN energy anisotropy measurements using the FTP probe on HY80 at various probe orientation angles . The empirical fitting equation (4.3) is shown in red for each set of data. Table 4.4 includes the fitting parameters for each data set. Chapter 5 Discussion This M.Sc. work began with the purpose of developing a MBN testing system for DRDC, capable of measuring residual stress anisotropy in submarine hulls. The DRDC system was based on an existing MBN system developed by Steven White at Queen’s University [5], [6]. The construction and evaluation of the DRDC system performance is discussed in Section 5.1. The original Queen’s system used a tetrapole probe design to perform rapid MBN anisotropy measurements. The tetrapole principle assumed that two orthogonal fields would add vectorially in the sample to create a superposition field. This superposition field would then act to generate MBN in the same manner as traditional dipole probe designs. During the course of this work, it became apparent that the MBN anisotropy measured using tetrapole probes did not, in fact, reproduce the MBN results obtained through manual rotation of a dipole. As a consequence a large focus of this thesis was devoted to a detailed study of MBN anisotropy measurements performed with tetrapole probes. These results are discussed in Section 5.2. The tetrapole MBN anisotropy results were characterized by a four-lobe pattern, which was affected by a number of factors, including magnetic anisotropy. The possible origins of this pattern are discussed in Section 5.3. 99 CHAPTER 5. DISCUSSION 100 Although the original goal of this thesis was to provide DRDC with a MBN measurement system capable of measuring residual stress anisotropy, from the results presented here, the ability of the DRDC system to perform such measurements has come into question. Section 5.4 discusses what further work may be required for the DRDC system to achieve its original design goals. 5.1 Construction and Evaluation of DRDC MBN System As described in Chapter 3 the system constructed for DRDC was based on the original Queen’s system design. The original Queen’s system offered two key design elements; the tetrapole probe and flux control of the excitation waveforms. During the development of the DRDC system modifications to the original Queen’s system design were made for the purpose of improving performance and simplifying the design where possible. The effects of these design changes were measured through a comparison with the original Queen’s system (see Section 4.1). The comparison was made in terms of total system error and the measured BN envelopes. In Section 4.1.1 the total system error of the DRDC system was shown to be lower than that of the original Queen’s system at all flux densities ( frequencies ( at to with an to ) and excitation ). Furthermore, the DRDC system was capable of operating , a frequency at which the Queen’s system was unable to establish excitation flux waveforms. These measurements were performed with the same probe (STP) on the same sample and thus any differences between the systems must be attributable to the Flux Control Systems and associated power supplies. The increase in at low excitation frequencies, where the excitation voltages are lower, suggested that the signal-to-noise ratio was the primary factor affecting waveform accuracy. This indicates that the DRDC system design represents a reduction in system noise, however, because the effects of the low noise power supply, UPS CHAPTER 5. DISCUSSION 101 and modified FCS and printed circuit board layout cannot be isolated the individual impact of each of these modifications is unclear. The importance of the reduction of system error lies in the ability to operate the system at lower frequencies. Low frequency MBN measurements have advantages, including the ability to discern individual Barkhausen events and a reduction in the impact of eddy currents [23], [64]. At higher frequencies, overlapping BN events limit analysis of parameters such as BN counts and BN events [23]. In addition to system error, the impact of the pickup coil redesign was examined through a comparison of the BN envelopes measured by the STP and SL4P probes. The major modification to the pickup coil was the increase in the coil turn number and radius, and the removal of the ferrite sheath. These changes had the effect of increasing the coil sensing radius. Increasing the number of turns in the pickup coil also had the effect of increasing the sensitivity of the coil to Barkhausen events according to Faraday’s law of induction (3.1). These design modifications did not appear to have significant qualitative effects on the BN envelope or BN envelope parameters. Although, absolute values for peak height, peak phase and MBN energy were different, results appeared scalable. This scaling is due to Faraday’ law (3.1) and in the case of MBN energy is also scaled by equation (2.26), which indicates that . Because of the intrinsically different inductances however, the frequency response of the SL4P and STP probes in terms of the normalized power spectrum was very different. Furthermore, the STP probe, with its larger sensing radius, appeared to be more affected by non-uniform field effects than the SL4P. Both probes demonstrated the four-lobe pattern in MBN energy anisotropy measurements, suggesting that the cause of the four-lobe pattern was not a result of coil sensing radius. The comparison of the SL4P and STP pickup coil designs indicates that increasing coil radius, and therefore sensing radius, does not significantly alter the measured MBN signal. Larger coils with more turns result in an amplification of the observed BN envelope and more importantly do not cause or alter the angular dependent MBN measurements. This is a CHAPTER 5. DISCUSSION 102 significant result because it suggests that a calibration for BN envelope parameters could be developed so that data from different probes or entire MBN systems could be directly compared. Based on the comparisons of total system error and the measured BN envelopes, it can be concluded that the DRDC system successfully met or exceeded the performance of the original Queen’s system it was modeled after. 5.2 Tetrapole MBN Anisotropy and Empirical Fitting Equation During the course of this work, the ability of the tetrapole probe design to perform MBN anisotropy measurements, under assumed flux superposition, was brought into question. Section 4.2 presented a detailed study into tetrapole MBN anisotropy measurements. The results on mild steel (Section 4.2.3) identified a number of trends among tetrapole MBN anisotropy data. In all measurements, tetrapole MBN anisotropy exhibited a four-lobe pattern with lobes extended in the direction of the probe poles. Under physical rotation of the probe, the lobes maintained alignment with the probe poles. This suggested that the geometry of the probe was a significant factor in the measured MBN anisotropy. It also suggested partially independent behavior of the pole-pairs. This concept of independent behavior was then supported by a comparison of tetrapole MBN anisotropy measured using a superposition field and two independent orthogonal fields (see Section 4.2.4). These results also indicated a form of competition between the orthogonal fields that led to a reduction in MBN energy at particular angles (see Figures 4.14 and 4.15). Another trend to emerge from the results was the elongation of the four-lobe pattern in the direction of the magnetic easy axis. This implied that tetrapole MBN anisotropy was affected by the sample’s magnetic anisotropy and presented the CHAPTER 5. DISCUSSION 103 possibility that magnetic properties could be extracted from tetrapole MBN anisotropy data. This was explored through the development of an empirical fitting equation. The empirical fitting equation (4.3), developed in Section 2.6.5, was shown to describe the data obtained on mild steel and HY80 very well. It was able to accurately predict the magnetic easy axis for the majority of probe orientation angles The error in the predicted was maximum at using both the FTP and STP probes. and only significant (>5°) for the FTP probe. Other fitting parameters appear to correlate with probe and sample properties. and describe the majority of the four-lobe pattern variation and their relative values at provide a measure of probe coupling imbalance. was negative in all fits, which is consistent with the proposition that it represent a competition term, which is maximized at . Finally, which describes an asymmetric imbalance in the system was a relatively small value in all fits, but showed larger variation for the more imbalanced FTP probe. Equation (4.3) was compiled from previous fitting equations [28], [49], [62], attempting to incorporate the additional complexity of the orthogonal magnetization condition and tetrapole configuration. During the development of the equation it was observed that removal of any one of the parameters resulted in an inaccurate prediction of the magnetic easy axis , therefore, necessitating the incorporation of all the fitting terms. The empirical fitting equation is a promising sign that valuable material information can be gained from tetrapole data. Currently however, the ability to extract material condition such as the presence of residual stress is unclear. The work required to identify residual stress from tetrapole MBN anisotropy data is discussed in Section 5.4. 5.3 Origin of Tetrapole MBN Anisotropy This section examines the factors responsible for producing the four-lobe pattern observed in tetrapole MBN anisotropy results. More specifically, the cause of the largely independent CHAPTER 5. DISCUSSION 104 generation of MBN by the pole-pairs and apparent minimal superposition of orthogonal fields is explored. In developing a model for MBN generation under orthogonal fields the effects of pickup coil alignment, pickup coil sensing radius, probe-sample liftoff/coupling, domain structure and magnetic anisotropy are considered. 5.3.1 Pickup Coil and Probe Coupling Effects Misalignment of the pickup coil refers to the deviation of the center of the pickup coil from the intersection of the pole-pair axes. Accurate positioning of the pickup coil is dependent on the careful construction of all probe components. All probes built during this work showed a deviation from center of no more than 0.5 mm. With increasing distance from the center of the superposition field the accuracy of the magnetic flux density field angle and the superposition decreases. A misaligned coil would therefore demonstrate a systematic error with respect to an aligned coil. FEM modeling performed during the design of the original system indicated that the mean error in the superposition field was relatively independent of field angle up to a radius of 4 mm [5]. Consequently, a misaligned coil would still observe the angular variation in MBN that an aligned coil would and therefore could not be the cause of the four-lobe pattern. The pickup coil sensing radius refers to the region in which the coil is most sensitive to MBN events. The pickup coil of the original Queen’s system probe (SL4P) had a 1.5 mm coil radius and a sensing radius of 2.5 mm. The pickup coil of the STP, in comparison, had a 2 mm coil radius and an estimated sensing radius of at least 5 mm. Both the SL4P and the STP probes, however, exhibited similar four-lobe patterns (Section 4.1.4) suggesting that the sensing radius of the pickup coil was not a significant factor in producing the four lobe pattern. Pole-sample liftoff represents an increase in the reluctance of the magnetic circuit. Although the flux control system has been shown to compensate for liftoff to a degree [48], because the flux is controlled at the pole end and not on the sample, an air gap results in flux CHAPTER 5. DISCUSSION 105 leakage out of the magnetic circuit. Therefore, larger liftoffs reduce the magnetic flux through the sample. This effect is most significant when the coupling of the pole-pairs are unequal, resulting in a larger flux density through one pole-pair than the other. This causes the differences in the magnitude of the lobes in the four-lobe pattern, when the probe orientation is changed by 90°. These liftoff effects, however, cannot explain the origin of the four-lobe pattern. The STP probe demonstrated the most equal coupling between pole-pairs as seen in Figure 4.12, but still exhibited a clear four-lobe pattern. 5.3.2 Domain Structure Effects The pickup coil and probe coupling effects described in Section 5.3.1 cannot account for the four-lobe pattern observed in the experimental data. This suggests that the cause of the pattern must be the ferromagnetic nature of the materials examined. At this point it is important to remember that MBN is the result of abrupt domain wall motion, which occurs as the domain structure reorganizes itself, in response to an applied magnetic field. Consequently, MBN is primarily sensitive to the domain structure, and not necessarily to the bulk magnetization of the sample. Considering this, the non-superposition effects observed under the orthogonal magnetization conditions of the tetrapole, can be attributed to the domain structure’s response to the application of two orthogonal magnetic fields, and not necessarily to any bulk superposition magnetization in the sample. The MBN anisotropy measured by the tetrapole probes can therefore be explained in terms of the complex domain structure that results from the application of two orthogonal fields. Such a structure, and a possible mechanism for producing it, is described below. When performing anisotropy measurements with a dipole, domain growth occurs in response to a single field, which in the region between the poles is approximately uniform [5]. As a result, domains will all experience growth in the same direction. During magnetization under orthogonal fields the situation is different. In the region between the four poles, the field CHAPTER 5. DISCUSSION 106 will be non-uniform and domains in different locations will experience different internal ̅ fields. The motion of domain walls (and therefore domain growth) is a result of the ‘mean field’ in the vicinity of the wall [62], [65] and thus would be most significantly influenced by the magnetization of neighboring domains. This interaction between neighboring domains or ‘coupling’ is quantified by the mean field coupling coefficient [66]. Because of this coupling, magnetization of a single domain can initiate a magnetic avalanche in the material [66]. For a non-uniform excitation field this suggests that the order in which domains are magnetized will influence the final domain configuration. The first domains to be magnetized will be those that experience the highest flux density. Intuitively and through finite element modelling, the location with the highest flux density is near the poles. At that distance from the center of the probe, however, the field is mostly parallel with the pole-pair axis and not in the assumed superposition field direction [5]. Therefore, domains in this region will grow to align their magnetization in the direction of the pole-pair axis. Neighboring domains will follow and the magnetization will propagate toward the center of the probe. The resulting domain configuration would have two populations of domains magnetized in the pole-pair directions. Since these two populations are orthogonal to each other, they would not influence each other’s magnetization significantly. It is speculated that at the center of the sample, a small number of domains will be affected by the magnetization of both pole-pairs and magnetize in the superposition direction. As observed in the results, this is restricted to a smaller region because of the early domain growth near the poles forcing the majority of domains to align in the direction of one of the pole-pair axes. The final domain configuration would therefore be significantly different than that induced by a single uniform field and yield a very different MBN results. Should the domain configuration under orthogonal fields be similar to that described above it could explain the tetrapole MBN anisotropy results, more specifically, the four-lobe pattern. As described by equation (2.27), MBN energy associated with a Barkhausen event is proportional to the magnitude of the local ̅ field. In the domain configuration described above CHAPTER 5. DISCUSSION 107 domains in the pole-pair axis directions are magnetized by only one of the two orthogonal and lower magnitude fields, as described by equation (2.34). This magnetization process essentially represents a competition between the orthogonal fields to magnetize the domains. The competition results in a minimal number of domains magnetized in the superposition field direction, , since domains are magnetized by either one pole-pair or the other. In terms of the MBN energy observed by a pickup coil, this would result in maximum energies for the pole-pair directions and a minimum at superposition angles of in , where the competition is the strongest (for a perfectly balanced probe), which is what is observed in the results. Applying this theory to Figure 4.7c, the minimum MBN energy of a given tetrapole should occur at an angle that represents the maximum competition between the pole-pairs. For the relatively balanced STP this would be pole-pair coupling) it would be . As can be seen in Figure 4.7c the STP shows a clear minimum for a superposition angle of energy at ° and and for the SL4P (which has slightly better 1-3 , whereas the SL4P shows almost equal suggesting a minimum in that region, attributed to the slight coupling imbalance. The last major pattern observed among the tetrapole data was consistent elongation of the four-lobe pattern in the direction of the magnetic easy axis. In dipole anisotropy measurements the stretching of the two-lobe pattern indicates the magnetic easy axis direction and this would appear to be the case for tetrapole measurements as well. This is a result of the sample having a large population of 180° domain walls parallel to the magnetic easy axis. When a magnetic field is applied in the easy axis direction a higher number of domain walls move resulting in a larger MBN energy. Although the final domain configuration would appear significantly more complex under orthogonal fields, the 180° domain wall population along the easy axis still ‘amplifies’ the MBN response in a similar fashion to dipole results. CHAPTER 5. DISCUSSION 108 5.4 DRDC System and Residual Stress Anisotropy Based on the results presented in this work, the ability of the DRDC system to perform residual stress anisotropy measurements remains in question. The tetrapole MBN anisotropy results were affected by the sample’s magnetic anisotropy, which suggests that correlations between tetrapole MBN anisotropy and residual stress could be developed. Already in this work, the empirical fitting equation was able to correctly identify the sample’s magnetic easy axis based on the elongation of the four-lobe pattern observed in tetrapole results. A study on the effects of stress on the four-lobe pattern would provide valuable insight into the possibility of extracting residual stress information from tetrapole MBN anisotropy data. The effect of stress on the empirical fitting equation may also identify fitting parameters that correlate with stress. Should further studies of tetrapole MBN anisotropy not be pursued, the DRDC system can still be operated in a dipole probe configuration using traditional manual rotation of the probe. Furthermore, such measurements could be aided by the ability of the tetrapole to rapidly identify the magnetic easy axis. Chapter 6 Conclusions and Future Work Non-destructive testing and evaluation methods allow for the efficient monitoring of critical material properties, enabling the safe and cost effective operation of engineered components. Magnetic Barkhausen noise (MBN) is a ferromagnetic inspection technique that has demonstrated the ability to identify a number of material properties, including stress. The tensor nature of stress requires angular dependent MBN characterization, which has typically been performed through manual rotation of dipole electromagnets. The time consuming nature of such measurements has led to alternative MBN system designs, such as tetrapole probes. Tetrapole probes, under the assumption of linear flux superposition, electronically rotate the excitation field. The validity of flux superposition in ferromagnetic materials for the purpose of generating MBN, however, has not yet been established in the literature. Based on the design of a tetrapole MBN system developed by Steven White at Queen’s University [5], [6], a MBN system was built for Defence Research and Development Canada (DRDC) for the purpose of performing angular dependent MBN measurements on the Royal Canadian Navy’s Victoria class submarine hulls. Modifications to the original Queen’s system design were implemented to improve performance and were evaluated through a comparison with the original Queen’s system. During the course of this thesis the validity of flux superposition for the purpose of measuring MBN anisotropy was brought into question. 109 CHAPTER 6. CONCLUSIONS AND FUTURE WORK 110 Because this was a fundamental design element of the new DRDC system, a detailed study of the ability of tetrapole probes to perform angular dependent MBN measurements was performed. 6.1 Tetrapole MBN Anisotropy MBN anisotropy measurements performed with a tetrapole under an assumed flux superposition were not comparable to measurements performed with manual rotation of a dipole. Dipole MBN energy anisotropy results were distinguished by a two-lobe pattern, with lobes extended in the direction of the magnetic easy axis. Tetrapole results, however, exhibited a four-lobe pattern with lobes in the direction of pole-pairs. This four-lobe pattern appeared to be affected by a number of factors including probe orientation, probe-sample coupling and magnetic anisotropy. Measurements of MBN energy in terms of two orthogonal and independent pole-pairs suggested that the four-lobe pattern was a result of largely independent behavior of the orthogonal magnetic fields. It was speculated that the tetrapole MBN anisotropy was the result of the domain structure’s response to two orthogonal magnetic fields, and not to any bulk superposition field. A qualitative model was proposed to explain the observed largely independent behavior as well as ‘competition’ in generated Barkhausen events. It was suggested that domains near the pole-pairs are the first to magnetize due to the relatively higher flux density, and do so in the direction of a pole-pair axis. Because the motion of domain walls, and therefore domain growth, is heavily influenced by the local mean field, the magnetized domain near the pole-pairs result in an avalanche of magnetization in the direction of the pole-pair axis. This propagates to the center of the probe, where the orthogonally magnetized domain structures converge, greatly reducing the number of domains magnetized in the target superposition direction. CHAPTER 6. CONCLUSIONS AND FUTURE WORK 111 An empirical fitting equation was developed to describe the four-lobe pattern and was able to correctly identify the magnetic easy axis, on both mild steel and HY-80 with the FTP and STP probes. The empirical model indicated that, although tetrapole MBN anisotropy results differ from those obtained with a manually rotated dipole, useful material properties may still be extracted from the data. 6.2 System Performance Modifications to the original Queen’s system design included the addition of low noise power supplies, revised flux control circuit layout and a simplified probe design. The DRDC system demonstrated an average reduction in system error of 0.5% over the original Queen’s system that was primarily attributed to better signal-to-noise ratios. The larger pickup coil radius and number of turns increased the signal-to-noise ratio in the pickup coil signal, while still generating qualitatively similar BN envelopes. The increased pickup sensing area did not have a significant effect on measured MBN energy anisotropy. Comparison with the original Queen’s system indicated that a scaling factor could be applied to directly compare MBN data from different probes or systems. 6.3 Future Work and Recommendations During the course of this work, several areas for further study and development were identified. This section discusses further analysis of tetrapole MBN anisotropy as well as alternative methods for angular MBN measurement. Potential improvements to the DRDC system design are also discussed. CHAPTER 6. CONCLUSIONS AND FUTURE WORK 112 6.3.1 MBN Anisotropy As seen in this work, the angular dependence of MBN using the tetrapole probe is significantly more complex than that obtained with a dipole. The qualitative model presented here, which describes the predominantly independent magnetization of domains in the pole-pair directions, could be tested by direct observation of domains. One such technique is the magneto-optical Kerr effect [18], which is used to observe domain wall motion. By examining the magnetization process of domains under orthogonal magnetic fields, the MBN anisotropy observed with tetrapole probes could be better understood and potentially lead to the development of a theoretical model that describes the orthogonal magnetization condition. The empirical model presented here may also assist in the development of a theoretical model, by suggesting the possible elements within it. While it is obvious that the development of a model to describe the tetrapole data should be pursued, more basic system designs, which can perform angular dependent MBN should also be explored. A MBN system, which can measure magnetic anisotropy similar to a manually rotated dipole has the benefit of a wide knowledge base with which to compare or analyze data. For this reason, a MBN system consisting of a dipole with a computer controlled stepper motor to rotate the field incrementally may be the most reasonable design to implement. Alternatively, a continuous rotational MBN system, which has been developed [61] could be explored. It is not clear, however, whether the mechanism of continuous rotational magnetization generates MBN signals that are comparable to conventional dipole measurements. CHAPTER 6. CONCLUSIONS AND FUTURE WORK 113 6.3.2 MBN System Design The reductions in system noise allowed the DRDC system to operate with less system error at lower frequencies. Identifying the modifications (UPS, redesign PCB layout, etc.) that were most effective in reducing noise was difficult because the effects of each element could not be separated. A series of tests running the system in different configurations (e.g without the UPS, without the new PCB, etc.) could help identify the most important source of noise in the system. Further modifications to the design could include adding a layer of conductive material to the probe casing to shield the excitation and feedback coils from ambient electromagnetic noise. Also, as previously noted, it was suspected that the strongly varying inductance of the feedback coils at low frequency (Figure 4.2) contributed to the increasing error in the system. Exploring the effects of coil shape and number of turns on the inductance of the feedback coil may produce a coil with a more stable frequency response at low frequencies. As outlined in Appendix E.1, MBN at low frequencies generates Barkhausen events at greater depths within the sample due to the skin effect. 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Appendix A FCS of the Original Queen’s and DRDC Systems This appendix contains pictures of the original Queen’s and DRDC systems FCS circuit boards. Figure A.1: Flux control system (FCS) circuit board of the original Queen’s system. 120 APPENDIX A Figure A.2: Flux control system (FCS) circuit board front (top) and back (bottom) of the DRDC system. The circuit board implemented the changes described in Section 3.1.2. 121 Appendix B Calibration Procedure Calibration of the probe refers to the adjustment of the feedback circuit gain feedback coil gain of each circuit during the feedback loop to minimize the and the of the waveforms. These gains can be electronically adjusted in the LabVIEW 2011 software during the operation of the system. During calibration, the target threshold error is set at 0%, resulting in the continuous operation of the system. This allows the operator to observe the and of the system and the effects of adjusting the gain values in the LabVIEW 2011 software. The superposition field angle is set to 45° so that the flux density is equal in all channels. Once the system is running, the feedback circuit gain observed. Once the value of of channel 1 is adjusted and the effect on which results in a minimum on that channel is found, the process is repeated for the other channels. This procedure is then repeated with the feedback coil gain values of of each channel as well. Often after the optimum are obtained, the can be adjusted further to lower the error. For this reason, the minimization of the total system error involves an iterative adjustment between considered calibrated once any change in or 122 increases then . . The system is APPENDIX B 123 Because system error is dependent on a number of factors (e.g. probe-sample coupling, sample magnetic permeability, excitation frequency, flux density etc.) this calibration procedure should be performed before any new measurement. Appendix C Empirical Fitting on Polar Plots This appendix contains the empirical fitting equation results for the FTP and STP probes plotted on polar graphs. 0 15 90 120 60 4 4 30 2 1 180 30 150 MBN Energy (mV2s) MBN Energy (mV2s) 150 0 1 2 2 1 0 180 0 1 2 330 210 330 210 3 3 4 240 4 300 240 270 30 120 45 60 MBN Energy (mV2s) MBN Energy (mV2s) 3 30 150 180 0 1 330 210 60 30 150 2 1 0 180 0 1 2 3 3 4 120 4 1 2 90 5 3 0 300 270 90 4 2 60 3 3 0 90 120 330 210 4 240 300 5 270 240 300 270 Figure C.1: MBN energy anisotropy measurements on mild steel A (Figure 4.11) with fitting equation (4.2) using FTP probe at various probe orientation angles plotted on a polar graph. 124 APPENDIX C 125 0 15 90 30 120 25 180 0 5 10 MBN Energy (mV2s) MBN Energy (mV2s) 5 15 15 30 150 10 5 0 180 0 5 10 15 330 210 20 330 210 20 25 25 240 30 300 240 30 270 30 45 60 10 5 180 0 5 10 330 210 15 20 240 300 270 MBN Energy (mV2s) MBN Energy (mV2s) 10 30 150 90 120 15 20 0 300 270 90 120 15 60 20 30 150 10 0 120 25 20 15 90 30 60 60 30 150 5 0 180 0 5 10 15 330 210 240 300 270 Figure C.2: MBN energy anisotropy measurements on mild steel A (Figure 4.12) with fitting equation (4.2) using STP probe at various probe orientation angles plotted on a polar graph. Appendix D Empirical Fitting of Tetrapole Data on Laminate Samples 14 12 MBNenergy (mV2s) 10 T = 0° T = 45° 8 T = 90° 6 T = 135° 4 2 -20 0 20 40 60 80 100 120 140 160 180 200 Field Angle (°) Figure D.1: MBN energy anisotropy measurements using the FTP probe on grain-oriented laminate sample at various probe orientation angles . The empirical fitting equation (4.3) is shown in red for each set of data. Table D.1 includes the fitting parameters for each data set. 126 APPENDIX D 127 MBNenergy (mV2s) 6 T = 0° 4 T = 45° T = 90° T = 135° 2 -20 0 20 40 60 80 100 120 140 160 180 200 Field Angle (°) Figure D.2: MBN energy anisotropy measurements using the FTP probe on non-oriented laminate sample at various probe orientation angles . The empirical fitting equation (4.3) is shown in red for each set of data. Table D.2 includes the fitting parameters for each data set. Table D.1: FTP probe: Fitting parameters for equation (4.3) for angular dependent MBN energy measurements performed on grain-oriented laminate at various probe orientation angles . Probe Angle (mV2s) (mV2s) (mV2s) (mV2s) (mV2s) (°) (°) (°) 0 -4.22 0.08 1.93 0.0031 6.38 51.0 0.7 0.99 45 -0.51 3.10 0.00 0.0005 4.70 42.1 -4.6 0.97 90 -5.36 3.18 1.83 0.1088 5.81 42.9 0.0 0.99 135 0.64 0.60 0.81 -0.0105 4.81 41.4 0.0 0.85 APPENDIX D 128 Table D.2: FTP probe: Fitting parameters for equation (4.3) for angular dependent MBN energy measurements performed on non-oriented laminate at various probe orientation angles . Probe Angle (mV2s) (mV2s) (mV2s) (mV2s) (mV2s) (°) (°) (°) 0 0.78 0.68 1.87 0.0038 3.46 0.2 -0.2 0.96 45 -1.78 1.15 1.52 -0.0010 3.08 51.4 1.4 0.99 90 -0.69 1.94 0.00 0.0018 2.64 4.4 -0.7 0.99 135 -1.08 0.46 1.58 0.0089 2.31 30.9 0.0 0.98 Appendix E Skin Depth and Diffusion of Time Harmonic and Transient Fields into a Semi-Infinite Slab E.1 Skin Depth The amplitude of an electromagnetic wave incident upon a conductor will decrease exponentially as a function of depth due to ohmic losses within the medium. This is known as the skin effect and is given by (in the case of an incident magnetic field ̅ ( )) [36]: ̅( ) where is the initial amplitude, (E.1) is the depth into the conductor and is the skin depth, which represents the distance equal to a decrease in amplitude by a factor of . The skin depth can be written as [36]: √ where and is the permeability of free space, (E.2) is the relative permeability, is the angular frequency of the incident field. In linear materials, because and is considered constant are constant. In ferromagnetic materials, however, 129 is the conductivity is non-linear and APPENDIX E 130 dependent upon the hysteresis curve. As the applied field ̅ is increased, ̅ approaches saturation as seen in Figure 2.2 and ̅ ̅ . This has the effect of decreases according to increasing the skin depth according to E.2. In relation to this work, MBN signals generated within ferromagnetic samples are also attenuated as they propagate toward the surface. This is the limiting factor in the depth of MBN signals that can be detected by a surface mounted pickup coil. By examining the effect of varying skin depth, alternative excitation waveforms can be found, which increase skin depth, allowing MBN signals deeper in the sample to be observed. E.2 Time Harmonic vs. Transient Excitation Fields MBN excitation waveforms are typically time harmonic, with frequencies between 1 and 60 Hz [23]. In this section, the diffusion of such waveforms into conducting materials is compared to an alternative, transient excitation signal. To accomplish this, analytical models for both signals are derived by solving the diffusion equation under boundary conditions determined by a simplified geometry of a traditional MBN setup. In both models, the excitation field is parallel to a semi-infinite slab of conductivity and relative permeability , as shown in Figure E.1. For the given geometry, the time harmonic solution is: ( ) ( ) . / (E.3) )+ (E.4) and the transient solution is: * ( √ APPENDIX E 131 Figure E.1: Analytical model geometry for parallel magnetic field diffusing into a semi-infinite slab. where for both solutions, is the field amplitude, is the depth into the sample and is time. Detailed derivations of (E.3) and (E.4) can be found in Appendix F. Figures E.2a and E.2b show the field amplitudes as a function of depth for various times for time harmonic fields and transient fields, respectively. Figures E.2a and E.2b are scaled with a magnetic field amplitude of 1. In the time harmonic solution, as the field propagates through the sample, the flux density at the surface decreases. In the case of the transient solution, however, a high flux is maintained near the surface as the field diffuses into the sample. If the initial field amplitude is near saturation, the regions inside the sample with high flux represent areas of higher skin depth according to equation (E.2) and Figure 2.2. For the transient case, this would suggest that the attenuation of Barkhausen events deeper in the sample is reduced because of the large flux density near the surface, unlike the time harmonic case. From Figure E.2 it appears that a transient excitation field may be able to increase MBN measurement depth over the common time harmonic fields. APPENDIX E 132 0.5 s 2.0 s 3.5 s a) Time Harmonic 1.0 0.8 Flux, B (T) 0.6 0.4 0.2 0.0 0.0 -0.2 0.1 0.2 0.3 Depth, z (mm) -0.4 0.5 s 2.0 s 3.5 s b) Transient 1.0 0.8 Flux, B (T) 0.6 0.4 0.2 0.0 0.0 -0.2 0.1 0.2 0.3 Depth, z (mm) -0.4 Figure E.2: (a) Time harmonic and (b) transient solutions to diffusion of a magnetic field into a semi-infinite slab Appendix F Derivation of Diffusion of Time Harmonic and Transient Fields into a Semi-Infinite Slab F.1 Time Harmonic Solution To find an expression for the magnetic field in the slab as a function of space and time, the diffusion equation in one dimension (F.1) must be solved under specific boundary conditions (F.2), (F.3) and initial condition (F.4). Where ( ) is the magnetic field inside the conductor and ( ) ( ) is the applied magnetic field. ( ) ( ( ) ( ) ( ( ) ) (F.1) (F.2) (F.3) ) (F.4) We begin by assuming a separable solution of the form: ( Where B(z) and T(t) are of the form: ) ( ) ( ) (F.5) APPENDIX G 134 ( ) (F.6) ( ) (F.7) We will only be concerned with the real components of (F.6) and (F.7) but using exponential form simplifies the math. In (F.6) and (F.7) ω is the angular frequency and k is given by: ( )√ (F.8) Substituting (F.7) and (F.7) into (F.5) and using the equation for skin depth, (E.2), we find: ( ( Where and ) ( ) (F.9) ) ( ) (F.10) are constants. To determine them we look at the real part of (F.10) and use the boundary conditions. (F.3) indicates that C must equal 0 since the field is finite as . We are left with: ( ) ( ) (F.11) Where the cosine term comes from taking the real part of the imaginary exponential. Using the boundary condition (F.2), . ( ) ( ) (F.12) Equation (F.12) is the solution to the steady state diffusion of the sinusoidal magnetic field into the sample. This result is not surprising since we expect with a time-harmonic applied field that the field inside the conductor is also time harmonic with the same frequency. The exponential decay according to the skin depth is also expected. F.2 Transient Solution To find the transient solution, that is, for an abruptly applied and constant field, we use a completely different procedure. As before we must still solve the diffusion equation (F.1), and we use the same APPENDIX G 135 boundary condition (F.3) and initial conditions (F.4), but have a new boundary condition (15) where ( ) is now a step function. ( ) ( ( (F.1) ) ( ( ) (F.13) ) (F.3) ) (F.4) For the transient case we will use an integral transform method which involves taking the Laplace transform to both sides of equation (F.1) with respect to t: ( ∫ ) ( ) ( ∫ ) ( ) (F.14) Looking at the LHS of (F.14), the double derivative comes out of the integral, and the integral is then equal to 1, leaving us on the LHS with: ̅̅̅( Where ̅̅̅( ) is the Laplace transform of ( , ( ( ) ( From the initial condition (F.4) ( ) (F.15) ). On the RHS, using integration by parts we find: ( ∫ ) ) )) ( ∫ ∫ (F.16) ) ( ) ( ) ( ) (F.17) (F.18) and we are left with: ̅̅̅( ) ̅̅̅( ( ∫ ) ̅̅̅( (F.19) ) (F.20) ) Equation (F.20) is a simple differential equation that has a solution of the form: ̅̅̅( ) (√ ) ( √ ) (F.21) APPENDIX G Where and the value of 136 are constants. From the boundary condition (F.3), we require that we use the boundary condition (F.13), ( ) . To determine , and find that under the Laplace transform the boundary condition becomes: ̅̅̅( ) ̅̅̅( ∫ ( ) ( ) ∫ ( ) ̅̅̅( Thus, (F.22) ) (F.23) (F.24) ) , and the solution of the Laplace transform is: ̅̅̅( ) ( √ (F.25) ) To find the final solution we take the inverse Laplace transform, which can be found calculated using complex contour integration or can be found in tables, and gives: ( Where ) * ( √ ( )is the error function which has the properties (F.26) )+ ( ) and ( ) . By inspection we see that it satisfies both boundary conditions. It should be noted however, that the solution has a singularity at and thus cannot model the diffusion of the magnetic field from