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National University of Tainan Graduate Institute of Mechatronic System Engineering 2009 spring Industry Research Master Program in Precision Industry Master Dissertation The Study of the Thermal Effect on the ZnO Pyroelectric Film Temperature Sensor Student name: Doan Van Tan Advisor : David. T.W. Lin Jan 2011 The Study of the Thermal Effect on the ZnO Pyroelectric Film Temperature Sensor by Doan Van Tan National University of Tainan Graduate Institute of Mechatronic System Engineering Master Dissertation A Thesis submitted in partial fulfillment of the requirements for the Master of Engineering degree in Graduate Institute of Mechatronic System Engineering 2009 spring Industry Research Master Program in Precision Industry in the College of Science and Engineering of National University of Tainan Advisor: David. T.W. Lin Jan 2011 The Study of the Thermal Effect on the ZnO Pyroelectric Film Temperature Sensor Student: Doan Van Tan Advisor: David. T.W. Lin Graduate Institute of Mechatronic System Engineering 2009 spring Industry Research Master Program in Precision Industry National University of Tainan Tainan, Taiwan, R.O. C ABSTRACT The purpose of this study is to quantify the response of the proposed pyroelectric ZnO film sensor and approach the optimal design by the integration of experiment and numerical method. The experiment has been done to find the relationship between voltage response and temperature input. This study develops an effective method to design the performance of this proposed film sensor. The optimal method is adopted by the simplified conjugated gradient method (SCGM) combined with the finite element method. For designing a novel film sensor, four kinds of top electrode of the film pyroelectric ZnO temperature sensors are discussed. In addition, the temperature variation rate is enhanced significantly through the optimal process. Through the quantification and optimization of this study, the proposed sensor can be applied on the proximity sensing and thermal sensing more exactly. In addition, this proposed optimal method will build an effective way to simplify the engineering design procedure. Key word: ZnO pyroelectric film sensor, voltage response, temperature variation rate, optimization, SGCM. i ACKNOWLEDGEMENT I would like to express my sincere gratitude to the people who provided invaluable encourage and help to me during my first two years life in Taiwan. Foremost, I would like to thank my advisor Dr. David.T.W.Lin for his advice, guidance, encouragement and continuous support during my graduate study and research. Without his help, this work would not be possible. I could not have imagined having a better advisor and mentor for my graduate study. A special thanks to Dr. Yuh-Chung Hu for the help he provided the experiment sample, the idea, and the verification in this research. Beside that, thanks to Dr. Jui-Ching Hsieh who supports me to write the program and gives me the suggestion in my experiment. I also would like to thank my fellow lab mates in Optimization Lab. Last but not the least, I would like to thank my family especially my dear parents, for giving birth to me at the first place and supporting me spiritually throughout my life. It is the everlasting love from them to my whole life that creates my tomorrow. ii CONTENTS ABSTRACT ................................................................................................................................ i ACKNOWLEDGEMENT .......................................................................................................... ii CONTENTS .............................................................................................................................. iii TABLE CAPTIONS .................................................................................................................. iv FIGURE CAPTIONS ............................................................................................................... vii NOMENCLATURE ................................................................................................................ viii 1. INTRODUCTION ................................................................................................................. 1 1-1 Background.................................................................................................................. 1 1-2 Literature review ......................................................................................................... 3 2. NUMERICAL AND OPTIMAL APPROACH ..................................................................... 9 2-1 Theory.......................................................................................................................... 9 2-2 Numerical modeling .................................................................................................. 12 2-3 Optimal method ......................................................................................................... 14 3. EXPERIMENT .................................................................................................................... 27 3-1 Instrument list ............................................................................................................ 27 3-2 Experimental procedure............................................................................................. 30 4. RESULTS AND DISCUSSIONS ....................................................................................... 33 4-1 Experiment ................................................................................................................ 33 4-2 Model simulation ....................................................................................................... 35 4-3 Optimization result .................................................................................................... 37 5. CONCLUSIONS ................................................................................................................. 92 REFERENCE ........................................................................................................................... 94 iii TABLE CAPTIONS Table 1 Parameters of the model for simulation ..................................................................... 18 Table 2 The variable variation in the initial guess and optimal process of Rectangle type .... 59 Table 3 The variable variation in the initial guess and optimal process of Criss-cross type ..... .................................................................................................................................... 60 Table 4 The variable variation in the initial guess and optimal process of Target type .......... 61 Table 5 The variable variation in the initial guess and optimal process of Web type ............. 62 iv FIGURE CAPTIONS Fig. 1 The photos of the flexible ZnO pyroelectric sensor [20] .............................................. 6 Fig. 2 The structure of flexible ZnO pyroelectric sensor [20] ................................................. 7 Fig. 3 The schematic diagram of the ink-jet printing system [20]........................................... 8 Fig. 4 Schematic two-dimensional electrically polar lattice [34] .......................................... 19 Fig. 5 Sawyer - Tower circuit for observing hysteresis loops of pyroelectric materials [34] ... ..................................................................................................................................... 20 Fig. 6 The schematic diagram of pyroelectric sensor [35] .................................................... 21 Fig. 7 Shape of the top electrode in the pyroelectric film sensor .......................................... 22 Fig. 8 Layer of the pyroelectric film sensor .......................................................................... 23 Fig. 9 The meshing model of the pyroelectric film sensor .................................................... 24 Fig. 10 The flow chart of the optimization process ................................................................. 25 Fig. 11 Connection among optimizer and direct solver problem ............................................ 26 Fig. 12 The Rectangular ZnO pyroelectric film sensor ........................................................... 31 Fig. 13 The schematic diagram of experimental system ......................................................... 32 Fig. 14 The voltage response profile and temperature profile with the fitting curve from the multinomial function ................................................................................................... 62 Fig. 15 The temperature distribution of top electrode in the pyroelectric film sensor at 0.1s ..... ..................................................................................................................................... 63 Fig. 16 The temperature profiles of pyroelectric film sensor with different shape type of top electrode ...................................................................................................................... 64 Fig. 17 The temperature variation rate of pyroelectric film sensor with different shape type of top electrode ............................................................................................................ 65 v Fig. 18 The second order derivative of temperature in the pyroelectric film sensor with different shape type of top electrode .......................................................................... 66 Fig. 19 The design variable in different kinds of ZnO pyroelectric sensor ............................. 67 Fig. 20 The temperature distribution in the initial guess and optimal of Rectangle type at 0.05s ............................................................................................................................ 68 Fig. 21 The temperature profile in the initial guess and optimal of Rectangle type................ 69 Fig. 22 The temperature variation rate profile in the initial guess and optimal of Rectangle type .............................................................................................................................. 70 Fig. 23 The second order derivative of temperature profile in the initial guess and optimal of Rectangle type ............................................................................................................. 71 Fig. 24 Convergence process of the objective function in different initial value for Rectangle type ............................................................................................................. 72 Fig. 25 The variation of the design variable through the optimal process for Rectangle type .... ..................................................................................................................................... 73 Fig. 26 The temperature distribution in the initial guess and optimal of Criss-cross type at 0.05s ............................................................................................................................ 74 Fig. 27 The temperature profile in the initial guess and optimal of Criss-cross type .............. 75 Fig. 28 The temperature variation rate profile in the initial guess and optimal of Criss-cross type .............................................................................................................................. 76 Fig. 29 The second order derivative of temperature profile in the initial guess and optimal of Criss-cross type ........................................................................................................... 77 Fig. 30 Convergence process of the objective function in different initial value for Criscross type ..................................................................................................................... 78 Fig. 31 The variation of the design variable through the optimal process for Criss-cross type .. vi ..................................................................................................................................... 79 Fig. 32 The temperature distribution in the initial guess and optimal of Target type at 0.05s .... ..................................................................................................................................... 80 Fig. 33 The temperature profile in the initial guess and optimal of Target type ..................... 81 Fig. 34 The temperature variation rate profile in the initial guess and optimal of Target type ... ..................................................................................................................................... 82 Fig. 35 The second order derivative of temperature profile in the initial guess and optimal of Target type ................................................................................................................... 83 Fig. 36 Convergence process of the objective function in different initial value for Target type .............................................................................................................................. 84 Fig. 37 The variation of the design variable through the optimal process for Target type ..... 85 Fig. 38 The temperature distribution in the initial guess and optimal of Web type at 0.05s ... 86 Fig. 39 The temperature profile in the initial guess and optimal of Web type ........................ 87 Fig. 40 The temperature variation rate profile in the initial guess and optimal of Web type ...... .................................................................................................................................... .88 Fig. 41 The second order derivative of temperature profile in the initial guess and optimal of Web type ..................................................................................................................... 89 Fig. 42 Convergence process of the objective function in different initial value for Web type .. ..................................................................................................................................... 90 Fig. 43 The variation of the design variable through the optimal process for Web type ........ 91 vii NOMENCLATURE A : detector area ( m 2 ) P : pyroelectric coefficient (C.m .k ) dT / dt : temperature variation rate C : heat capacity per unit volume ( J k : thermal conductivity T : temperature ( K ) : relaxation time respectively : density (kg / m ) Cp : the heat capacity at constant pressure Q : heat source or a heat sink (W t : time L : length (m) W : width (m) H : height (m) q : heat flux : temperature gradient 2 1 ( K / s) m3 .K ) (W / m.K ) (1/ K ) 3 (s) (W / m / k ) viii m3 ) ( J / kg.K ) . 1. INTRODUCTION 1-1 Back ground The measurement of temperature is one of the fundamental requirements for environmental control system, as well as certain chemical, electrical and mechanical system. Many kinds of temperature sensors are commercially available and used such as DDR3 memory module, metal processing industry and biomedical implanted chip etc. Beside that, in the textile industry, flexible electronics are embedded into the fiber or clothes to perform the human health detection. In recent years, the ferroelectric materials have been developed gradually in MEMS. One of them is pyroelectric material, they have been successfully used in many applications, and possess the advantages of integrality on a chip, uncooled detecting, operation at room temperature, fast and wide spectral response, high sensitivity and low cost, beside that flexible films sensor can capture the image from biomedicine, artificial skin, and wearable electronics. ZnO is a pyroelectric material; the pyroelectric voltage is induced as temperature variation is subjected to ZnO material. In this study, the flexible ZnO pyroelectric sensor is shown in Fig. 1. This film sensor includes a top electrode layer made of nano silver, a flexible aluminum sheet which serves as the bottom electrode, and a ZnO layer as the pyroelectric layer. Different designs of top-electrode in the flexible ZnO pyroelectric sensor discussed in this study are Rectangle, Criss-cross, Target and Web shape, respectively. The diagrams of these sensors are shown in Fig. 2. In the fabrication of micro sensor, they use fully inkjet printing process are shown in Fig. 3. After deposit process, they continue annealing under different temperature. This thesis focuses on the behavior of sensor by the experimental verification and optimal design of the top electrode through the numerical study. An experimental model is built up to 1 find out the transfer function between temperature and voltage response in ZnO pyroelectric film sensor. This system consists of the hot plate, thermocouple and data acquisition system for data collection. Besides that, the simulation of transient heat conduction of the pyroelectric film sensor is built and combined with the optimal method to design the best shape of the top electrode. We can demonstrate that the maximum response can be reached as the optimal design of the top electrode is obtained. The structure of this thesis includes four sections. The first section introduces the characteristics of ZnO pyroelectric film sensor and more investigations for applications and simulations of pyroelectric material. In the second section, it illustrates the numerical and optimal approach. Besides that, the third section describes the experimental procedure. The results and discussions of experimental process, simulation in different design of top electrode shape, and the new design of top electrode in optimization process are presented in the fourth section. All contribution possible applications of this study are concluded in the final section. 2 1-2 Literature review The pyroelectric effect plays an important role in the pyroelectric sensor. It’s characterized as non-centrosymmetrical crystal and has a specific polar axis along the direction of spontaneous polarization [1]. When the heat is applied to the pyroelectric material, the positive and negative charges move to opposite ends of the material and generate an electrical charge. Many kinds of pyroelectric material depended on the different crystal structure exist, such as Perovskite ferroelectric materials (PZT, PbTiO3, PLT) [2-5], polymer film (Polyvinylidene fluoride (PVDF), vinylidene fluoride trifluoroethylene (VDF/TrFE)) [6-8], and nonferroelectric material (ZnO, CdS, CdSe) [3,9,10]. The pyroelectric effects distinguish as primary and secondary effect. Primary pyroelectric effect is dependent on the temperature variation and refers as strain-free or constant strain case. The secondary pyroelectric effect is resulted from the pyroelectric charge of piezoelectricity [9-11]. The primary pyroelectric effect dominates the pyroelectric response in (Zr0.54Tie0.46)O3 and PbTiO3 thin films while ZnO thin film is dominated by secondary pyroelectric effect [12]. Different kinds of deposition methods are studied to fabricate the pyroelectric sensor such as DC or RF sputtering [13], metal organic chemical vapor deposition (MOCVD) [14], metal organic decomposition (MOD) [15], sol-gel method [16], spray pyrolysis [17], aesol deposition method (AMD) [18,19] and full inkjet printing [20]. C.S. Wei et al. [12] fabricate and investigate three groups of the ZnO pyroelectric sensor with various layer thickness, effective area, partially and fully covered electrode. Their results show that the responsibility of the partial-electrode sensors is four times higher than the one of the full-electrode sensors in the frequency range of 10-1000Hz. The effects of other design parameters such as thickness of ZnO, SiO2 and Si3N4 on the responsibility are also discussed. Liao et al. [20] propose a new flexible ZnO pyroelectric sensor and four kinds of top electrode 3 (Rectangle type, Criss-cross type, Target and Web type) are fabricated and investigated. The results show that the sensor with the Web type has the highest responsibility resulted from the higher annealing temperature. They present the design of top electrode is a critical factor to affect the temperature variation rate in the pyroelectric film in advance [21]. In addition, the voltage responsibility will toward identically as the modulating frequency increase to a certain value. Chen et al. [22] discover that PT/P(VDF-TrFE) detector has higher voltage and current responsibilities than the P(VDF-TrFE) copolymer for sensing elements with the same thickness. Tang et al. [23] present the results of better pyroelectric response, those can be expected by controlling temperature below 700C during the fabrication of the pyroelectric detectors, selecting absorption layer with high absorption coefficient, and decreasing the thickness of the ments. Li et al. [24] use ANSYS to simulate the temperature field of multilayer pyroelectric thin film sensor and show that the porous silica film as a thermalinsulation layer reduces obviously the loss of heat from the pyroelectric film sensor to the Si substrate. Xie et al. [25] consider the energy harvesting using the pyroelectric materials such as PZT-5A and thin-films. A simple model is used to predict the power generation based on the temperature as a function of time. Vanderpool et al. [26] convert the waste heat into electricity using the pyroelectric materials directly. In addition, they propose a simulation of prototype pyroelectric converter by FEM Liu et al. [27] illustrate a solid precursor used to prepare PZT thin films by the sol-gel deposition method for uncooled pyroelectric IR sensors. Akedo et al. [28] make PZT thick films formed on several kinds of substrates by impact consolidation of PZT, ultrafine particles through an aerosol deposition method. The PZT layers are shown to have a high breakdown voltage about 700kV/cm after annealing from room temperature to 10000C. Ko et al. [29] verify the theoretical analysis of the micro machined Pb(Zr0.3Ti0.7)O3(PZT30/70) thin film pyroelectric detectors with different silicon 4 substrate thickness. Limbong et al. [30] investigate that the effect of a varying bias field on the pyroelectric properties of sub-micron ferroelectric polymer films and the magnitude and phase of the pyroelectric signal reflects the hysteresis in the polarization resulted from the bias field. Ozgur et al. [31] detect the stimulated emission measured from ZnO thin films grown on c-plane sapphire by RF sputtering. Free exciton transitions are clearly observed at 10K in the photoluminescence, transmission, and reflection spectra of the sample annealed at 10000C. Kohli et al. [32] propose a pyroelectric thin film point detector array manufactured by sol-gel deposited PZT thin film elements on micromachined SiN4/SiO2 membranes. The measured current and voltage response is compared with FEM simulations. Häusler et al. [33] propose a method to examine the conjugated thermal-electrical-mechanical problems by FEM package. The complex interactions are realized by implementing a two-step approach. From the above citing references, the issue of explore the pyroelectric effect and improve the quality of pyroelectric film sensor is very important. This study proposes an experimental process to explore the relationship between temperature and voltage, besides that we combine optimization method with finite element method to gain the greatest benefits in the shape design of top electrode on the pyroelectric film sensor. 5 Fig. 1 The photos of the flexible ZnO pyroelectric sensor [20] 6 Rectangle type Criss-cross type Target type Web type Fig. 2 The structure of flexible ZnO pyroelectric sensor [20] 7 Fig. 3 The schematic diagram of the ink-jet printing system [20] 8 2. NUMERICAL AND OPTIMAL APPROACH 2-1 Theory Pyroelectric materials are the crystalline substances capable of generating an electrical charge in response to the heat flow. This material can be applied in the film sensor field, as a pyroelectric sensor. The pyroelectric sensor is essentially a capacitor that can be charged by an influx of heat not require any external electrical bias. Contrary to the thermocouple, which produces a steady voltage when two dissimilar metal junctions are held at steady but different temperatures, the pyroelectric sensor generates charge in response to the temperature variation. Since a change in temperature essentially requires thermal propagation, a pyroelectric device is a heat flux detector rather than a thermal detector. Pyroelectricity is based on a pronounced temperature dependence of the electric displacement field in a piezoelectric material. The effect occurs in any piezoelectric material (single crystal, ceramic or polymer) which possesses polar point symmetry. Microscopically, the pyroelectric effect occurs because of the asymmetric environment experienced by electrical charged species within the crystal structure of the material. This can be viewed schematically as shown in Fig. 4, which shows a two-dimensional lattice of cations and anions. The cations are displaced relative to the unit cells ‘centre of gravity’ to give rise to an electrical dipole moment (or spontaneous polarization Ps) along the line x1-x2. Quantitatively, the pyroelectric effect is described in terms of a vector, the pyroelectric coefficient P, given by the rate of change of Ps with temperature (T). p dPs dT (1) 9 Polarization P is the electric dipole moment per unit volume. The polarization P may be expressed as the bound surface charge per unit area of a free surface normal to the direction of P. Polarization is related to electric displacement D through the linear expression. Di Pi 0 Ei (2) Where the derived constant ε0 is equal to 8.854x10-12C/Vm (permittivity of free space), E represents the applied field, D is the electric displacement, and P is the polarization as well. In pyroelectric materials both D and P are nonlinear functions of E may depend on the previous history of the material. When the term ε0E in the above equation is negligible compared to P, D is nearly equal to P. Therefore, the D versus E and P versus E plots of the hysteresis loop become, in practice, equivalent. In addition, permittivity is defined as the incremental change in electric displacement per unit electric field when the magnitude of the measuring field is very small compared to the coercive electric field. The small signal relative permittivity K is equal to the ratio of the absolute permittivity ε to the permittivity of free space ε0. K 0 (3) The value of the polarization Ps that remains after an applied electric field is removed is defined as the remanent polarization. The remanent polarization can be measured by Sawyer -Tower Circuit which is shown in Fig. 5. The hysteresis loop of polarization versus electric field is recorded on an x-y plotter or an oscilloscope using Sawyer-Tower circuit. The interaction of hysteresis loop and y-axis is remnant polarization. The value of Ps measured by this method usually depends on both the frequency and amplitude of the sine-wave voltage applied on the pyroelectric material. After applying high voltages, charge will be generated and measured through a capacitor and an electrometer. The charge and voltage are recorded 10 using an oscilloscope and data acquisition system. Since Ps varies with the temperature, the pyroelectric discharge current on heating is given by equation 4. dQ dT i s dT dt AdPs dT dT dt (4) Or i pA dT dt (5) Where A is the area of the pyroelectric material, and Qs is the total charge stored by the capacitor when the sample is heated from room temperature to a temperature above Tc. 11 2-2 Numerical and modeling Nowadays, the pyroelectric materials are gradually applied in the film temperature sensor field. Fig.6 presents the structure of pyroelectric film sensor. Here, pyroelectric materials are used in the form of thin slices or films with electrode deposited on opposite sides to collect the thermally induced charges. The pyroelectric sensor has two electrodes on opposite sides and the heat source is applied along axis 3 from the bottom and escapes upward. From Eq (5), we can see that the response current of the multilayer pyroelectric thin film sensor is proportion to temperature variation rate of the pyroelectric film sensor. A large scale of temperature variation rate leads to higher response current. In addition, the top electrode design also affects the response current. In this study, there are four kinds of the top electrode namely the Rectangle type; the Crisscross type, the Target type, and the Web type are simulated. The design of top electrode is a critical factor to affect the temperature variation in the pyroelectric film sensor which proposed by Hu et al. [18]. The mathematical model of heat equation is expressed: C T T T T T . C k k k Q t t x x y y z z xi , yi , zi V (6) For the energy transport through the heat conduction, a heat flux vector can be approximated by q kT (7) The present finite element model of the ZnO pyroelectric film sensors is generated with FEM including the different four cases. Fig. 7 shows all types of pyroelectric film sensor. The thermal properties of the films are given in Table 1. Fig. 8 presents the structure of ZnO pyroelectric sensor; it includes four main components such as substrate, membrane layer, 12 pyroelectric layer and electrode. Substrate is a medium layer for heat transfer and diminishing the volume of substrate. The material of the substrate used in this study is Al. The membrane layer is used as supporting layer and it has the significant effect on the heat transfer and responsibility. Two kinds of materials is SiO2 and Si3N4 are usually used in membrane, the advantage of theseq materials are high stiffness and serve as thermal barrier layer for the high heat capacity and low temperature conductivity [3,10]. The material of membrane is SiO2 in this study. The material of electrode is Ag in this study. It’s also use for energy absorption layer. A dark coating on the upper electrode is usually used as a near transparent absorber for the incident energy [9]. In order to compare the result of the four models, some parameters of the films are assumed the same properties in the modeling, and changed the designs of the top electrode to get the different thermal response. The mesh number of the geometry in the modeling for four models is normal mesh and shows in Fig.9. In the boundary conditions, the ambient temperature is 300K and the temperature on top electrode of the surface is 301K. The interface between layer and layer is assumed continuity and other outside boundary conditions in the model are assumed insulation. Continuity nu .(KuTu ) nd . kd d 0 (8) Insulation n.(kT ) 0 (9) 13 2-3 Optimal method According to the above simulation part, the geometry of top electrode is one of factors to affect the temperature variation rate. Thus, when we design a new type film sensor, this factor has to be considered. In this study, we have a discussion of the dimensions of the top electrode in four types ZnO pyroelectric film sensor. The purpose of this discussion is to create a new shape which can improve the thermal response. In the Rectangle and Criss-cross type, the length and the width of the top electrode shape will be considered as the variables. Beside that, for the Target and Web type, we consider the length, the width and the radius are the optimal variable. We propose the objective function being the temperature variation rate J, and the maximum J being the value we desire. J dT dt (10) In this manner, as the objective function J is approaching its maximum value in the optimal process with the definition of J, the temperature variation gradually reaches a maximum value. This implies that the phenomena of temperature variation rate will be increased. Assume that, ai , i 1,2,..., l be the set of undetermined coefficients to be optimized in the iterative process. Different combinations of these coefficients represent different dimension of electrode shape, from which the optimal location arrangement may be found. In other words, the coefficients ai , i 1,2,..., l are updated iteratively toward the maximization of the object function through this optimal process. The maximum of the objective function is accomplished by using the SCGM method. The method evaluates the gradient functions of the objective function and sets up a new 14 conjugate direction for the updated undetermined coefficients with the help of a direct numerical sensitivity analysis. We perform the direct numerical sensitivity analysis to determine the gradient functions J / Ja , i 1, 2,..., l in n i the nth step. First, give perturbation ai to each of the undetermined coefficients in the first step, and then find the change of the objective function ai caused by ai . The gradient function with respect to each of the undetermined coefficients can be calculated by the direct numerical differentiation as J J ai ai (11) Then, we can calculate the conjugate gradient coefficients, i and the search directions, n in 1 , for each of the undetermined coefficients with 2 J n ai n i , i 1, 2,..., l n 1 J ai (12) n n 1 i J n n i i , i 1, 2,..., l a i (13) The step sizes i , i 1,2,..., l will be assigned for all the undetermined coefficients and leave it unchanged during the iteration. In this study, the fixed value is determined by a trial and error process, and the value is set to be 1.0×10-6 typically. The difficulty lies with the fact that how to decide the suitable value of the step size. The undetermined coefficients will be updated. ain 1 ain i in 1 , i 1, 2,..., l (14) 15 The procedure for applying the SCGM method is described briefly in the following: (1) Make an initial guess for the shape profile by giving initial values to the set of undetermined coefficients. With initialization accomplished, the run itself can begin. (2) Use the direct problem solver to predict the temperature distribution and calculate the objective function J . (3) When the objective function reaches a maximum, the solution process is terminated. Otherwise, proceed to step (4). (4) Through the Eq. (11), to determine the gradient functions J / ai , i 1, 2,..., l . n n (5) Through the Eq. (12) and (13), to calculate the conjugate gradient coefficients, i , n 1 and the search directions, i , for each of the undetermined coefficients. (6) Assign a fixed value to the step sizes i , i 1,2,..., l for all the undetermined coefficients ai , i 1,2,..., l and leave it unchanged during the iteration. (7) According the Eq. (14), to update the undetermined coefficients and re-new the geometry of the film sensor top, and go back to step (2). The flow chart of the optimization process is plotted in Fig. 10. The self-developed optimizer and the commercial COMSOL code are connected through an interface program COMSOL Script. The interface program is written by MATLAB language. Using the interface it is possible to pass messages among the direct problem solver and the optimizer. The message of necessary changes in the designed parameters suggested by the optimizer is sent to the direct problem solver for building the updated geometrical model and generating grid system for computation. Next, the direct problem solver is executed based on the updated information to yield the numerical predictions of the flow fields and the objective function as 16 well, which are further transferred back to the optimizer for calculating the consecutive searching directions. Connection among the optimizer and the direct problem solver is shown in Fig. 11. 17 Table 1 Parameters of the model for simulation Material Thermal Density Heat capacity Length Width Conductivity (Kg/m) At constant pressure (m) (m) (W/m-K) (J/kg-k) Al 237 2700 940 9x10-3 4x10-3 ZnO 6 5767 385 6.775x10-3 3x10-3 Ag 429 10500 235 - - 18 Fig. 4 Schematic two-dimensional electrically polar lattice [34] 19 Fig. 5 Sawyer - Tower circuit for observing hysteresis loops of pyroelectric materials [34] 20 Fig. 6 The schematic diagram of pyroelectric sensor [35] 21 (a) Rectangle type (b) Criss-cross type (c) Target type (d) Web type Fig. 7 Shape of the top electrode in the pyroelectric film sensor 22 Ag layer ZnO layer Ag layer Fig. 8 Layer of the pyroelectric film sensor 23 (a) Rectangle type (b) Criss-cross type (c) Target type (d) Web type Fig. 9 The meshing model of the pyroelectric film sensor 24 Fig.10 The flow chart of the optimization process 25 Fig. 11 Connection among optimizer and direct solver problem 26 3. EXPERIMENT The purpose of this chapter is to build up an experiment for the transfer function between temperature and voltage response in ZnO pyroelectric film sensor. 3-1 Experimental Instrument In the present study, an experimental study of transient heat conduction in a differentially heated ZnO film sensor is performed. In a heat transfer experiment, except for a transient test, it may take a long time for the apparatus to reach its steady state. Thus, it may consume lots of time and much power to conduct an experiment in a thermal system. Experimental automation, including sequential control of the experiment, auto-data-acquisition and processing, is of significance in reducing the human errors during the measurements. The experimental system, as schematically shown in Fig. 13, is made of three major parts: (1) Rectangle ZnO pyroelectric film sensor, (2) thermocouple, (3) silver inks, (4) spot welding equipment, (5) Data acquisition and (6) Hot plate. (1) ZnO pyroelectric film sensor structure. The Fig. 12 shows the real Rectangle ZnO pyroelectric film sensor used in this experiment. The structure of this film sensor type includes three layers, and the geometry of the top electrode is rectangular. The Al layer serves as the bottom electrode, the top electrode is Ag layer and the ZnO layer plays a role as the sandwich layer. The size of each layer is 9 mm 4 mm 15 m ; 4.8mm 3mm 1 m ; 6.775mm 4 mm 5 m , separately. (2) Hot plate. The hot plate YS-300s is used be a heat source for this experiment. The temperature range of this hot plate is from room temperature to 3000C with the dimensions being 30*30*17H and the heated power being 1500W. We can adjust the PV (measure value and 27 indicator parameter name) and SV (setting value and indicator parameter value) function provided from the hot plate to create temperature variation. (3) Silver inks. In the experimental process, we need to connect the Rectangle ZnO pyroelectric sensor with thermocouple to get the electric signal. The positive pole of thermocouple is connected with the top layer and the negative pole is connected with the bottom layer. We use silver inks to create the connecting. This material has good conductivity, dries fast and very sticky. After welding, we harden the soldering by keep in 1000C about five minute. (4) Thermocouple. Thermocouples utilize the so-called Seebeck effect in order to transform a temperature difference to a voltage difference. A thermocouple consists of two electrical conductors that are made of dissimilar metallic materials and have at least one electrical connection. This electrical connection is referred to as a junction. A thermocouple junction may be created by welding, soldering, or by any method that provides good electrical contact between the two conductors, such as twisting the wires around one another. A typical thermocouple circuit has two junctions. The output of a thermocouple circuit is a voltage, related to the temperatures of the junctions that make up the circuit. Thermocouples are characterized according to the alloys that are used for their construction. The following four classes are the most popular ones: J–type (iron constantan), K–type (chromel–alumel), E–type (chromel–constantan), and T–type (copper–constantan). Ttype thermocouple at low temperature has the best linearity and stability so this study we used the smallest of T-type thermocouple (Model AWG-40), the reaction time is only 0.003 seconds. (5) Spot welding equipment 28 We use T-type thermocouple to measure the temperature. Therefore, to get the Seebeck effect, we create a thermocouple junction by welding the positive pole with negative pole using spot welding equipment. The temperature range of welding process is 200~2600C. (6) Data acquisition system During the test, the voltage signals from the thermocouples are transferred to YOKOGAWA MX100 recorder, and then to a personal computer for further data processing. In the present study, data collection is normally started when the temperature reaches the steady or statistical state. In this experiment, the input signal from T-type thermocouple will be transmitted through 20 channels of YOKOGAWA MX100 data acquisition system. This system is designed to enable desired measurement environments by combining three elements: the main module, input/output modules, and a base plate. These features of this data acquisition system are shortest measurement interval of YOKOGAWA 10ms, possible to acquire data from up to 1200 channels and reinforced insulation between the input terminal and the case handles 3700Vrms for one minute, or 600Vrms/VDC continuous. To treat the output signal from data acquisition system, we use a kind of software to connect a single MX unit to perform data acquisition. This software performs real-time monitoring and logging of measured data. 29 3-2 Experimental procedure In the present study, temporal voltage response in the ZnO film sensor is measured by directly thermocouples of T-type. The T-type thermocouples with diameter 0.0254mm are fixed at the electrode. Prior to installation, the thermocouples are calibrated by the LAUDA thermostats and high precision liquid-in-glass thermometers. All the data are then sent to the personal computer for further data processing. The time history of the data is recorded on the strip chart and also stored in a magnetic disk. Additionally, to check the background noise, a temperature measurement about initialization is first performed. In the experimental system, the Rectangle ZnO pyroelectric sensor is used to measure voltage response and temperature, respectively. The ZnO film sensor is fixed on the surface of hot plate and connected with the data acquisition system through the thermocouple. In the System Setting of MX logger software, we choose the record interval being five seconds and adjust channel 1 being voltage and channel 2 being temperature. The voltage range keeps in 200mV equivalent with the Span is (min -200, max 200). When apply the heat to the surface of ZnO film sensor, the variation of temperature convert to the corresponding electric signal because of the pyroelectric effect. The first thermocouple will transform this signal to data acquisition system. Beside that, at the junction of the second thermocouple, it appears the Seebeck effect. Therefore, this thermocouple has the output voltage signal. Data acquisition system receives and converts two kinds of signals become different output signals. Channel 1 and channel 2 of data acquisition system have function accepting these output signals and sending them to computer. And this computer uses MX logger software to analyze these signals. The interface of Monitor Window indicates the value and the diagram of output signals (voltage response in channel 1, temperature response in channel 2). And, we get the detail data by export to excel. 30 Fig. 12 The Rectangular ZnO pyroelectric film sensor 31 Fig. 13 The schematic diagram of experimental system 32 4. RESULTS AND DISCUSSIONS 4-1 Experiment Through the experimental process, we adjust the PV and SV setting to get the temperature fluctuation. The experiment time used in this process is 1325s. As can be seen that the temperature curve has the sine shape with the range from 52.80C to 82.50C. Similarly, the variation of voltage response has trend as the variation of temperature, and it varies from 1.16mV to 2.66mV.The peak value of voltage response curve is not at the peak value of temperature curve. From the collection data in the experiment, we use Matlab software to find out the output function of temperature follow the time: T (t ) 7.14 1019 t 7 1.03 1015 t 6 2.96 1012 t 5 7.57 109 t 4 5.77 106 t 3 1.56 103 t 2 0.055t 55.29 (17) And, the function of voltage response follow the time is: V (t ) 1.15 1019 t 7 4.46 1016 t 6 6.05 1013 t 5 3.15 1010 t 4 2.46 108 t 3 1.63 105 t 2 0.0151t 1.2 (18) In the Fig. 14 describes the fitting curve of the temperature and the fitting curve of the voltage response from the multinomial function (17), (18). Beside that, this figure also shows the voltage response profile and temperature profile from the real data in the experiment. This figure point out the fitting curve of temperature and voltage response can reach to the same position with the voltage response and temperature profile. And, it also proves that we can use these multinomial functions to substitute the real data in the experiment. In addition, the transfer function between voltage response and temperature output can be expressed as: 33 From (17) and (18), the transfer function between voltage response and temperature output can be expressed as: 6 3 4 2 3.25 10 T 9 10 T 0.0279T 0.597 ( a ); T2 T1 V (T ) 4 3 2 (b); T2 T1 1.22 10 T 0.0231T 1.4T 28.92 (19) And the approximate function is: 0.0379T 0.7035 V (T ) 0.0405T 0.5444 ( a ); T2 T1 (b); T2 T1 (20) In (20), we can see that the transfer function has two forms; it depends on the variation of temperature. If the temperature variation increases, the transfer function has form (a), and if the temperature variation decreases, the transfer function has form (b). The result function proves that the voltage response is in proportion to temperature, and the proportion to temperature reflects right phenomenon of pyroelectric effect in pyroelectric film sensor. However, this experiment data are just collected from one sample (Rectangle ZnO pyroelectric film sensor), so it is very poor. Thus, this transfer function has not reflected exactly the relationship between voltage response and temperature yet. In addition, this data cannot show the factor in pyroelectric sensor, which influences the voltage response, and the data can also not use to compare with the simulation result in this study. In the next time, we can combine the experimental data collection from the four models of ZnO pyroelectric film sensor to show out the accuracy of phenomena of pyroelectric effect in ZnO pyroelectric film temperature sensor. 34 4-2 Model simulation The simulated results are assumed to expose 0s to 1s under the room-temperature. This study uses the transient process with time dependent option to solve the temperature profile of the pyroelectric film sensor. In this model, the dimension of the length and width are not in proportion to the height, so it is hard to mesh. Therefore, we have to increase Z-direction scale factor in the finite element method package. Fig. 15 (a) - 15 (d) show the temperature distribution on the top electrode with different shape types in pyroelectric film sensor. From these figures, we could compare the distribution of temperature in four types. The temperature range of the rectangle electrode type is higher than of the rest of three electrode types. Fig. 16, it shows the response time of temperature field from 0s to 1s and we can discover the temperature to increase during 0s to 0.4s rapidly. As can be seen in Fig. 16, the temperature response of the pyroelectric film sensor is affected by the electrode shape exactly. When the simulated time arrives at 0.1s, the temperature of the film sensor with rectangle type electrode approaches to 300.84K, and the web type electrode approaches to 300.76K. Through the comparison between two shapes of the different top electrode on ZnO film sensor, Fig. 16 shows that the heat transfer rate of the film sensor with the rectangle type electrode is higher 10% than the one with the web type electrode at 0.1s. The other kinds of the top electrode have the similar trends as the temperature variation of the film sensor with the web type electrode. Fig. 17 presents the temperature variation rate (dT/dt) with different types of the top electrode in the pyroelectric film sensor. The value of the temperature variation rate on ZnO film sensor decreases from 0s to 0.4s. After the time is equal 0.4s, the temperature variation rate converges to 0. From these results, it is concluded that the effect of electric area is 35 important. This figure also shows that the initial temperature variation rate of the rectangle type is higher than others. It is obviously that the temperature response of the film sensor with the rectangle type electrode is faster than the ones with other type electrode. But, the temperature variation rate of the other type of the film sensor will be larger than the rectangle type of the film sensor gradually as the time after 0.1s. This means that the response of the film is affected by the different type of the film sensor is important within 0~0.1s. This is the reason that the hyperbolic heat transfer phenomena happen in this model. More clear phenomena can be seen from Fig. 18. From the Fig. 18, the second order derivative temperature (d2T/dt2) is proposed in the different type electrode of the pyroelectric film sensor. As can be seen from Fig. 17 and Fig. 18, the temperature variation rate (dT/dt) of the film sensor with the rectangle type electrode not only increases highest than the others, but also the second order temperature derivative decreases highest. As deduced from here, we know that each of the different shape type of the top electrode trends the same response after 0.1s. In the other words, the temperature variation rate before 0.1s is an important issue on the speed of the temperature response. From these results of this simulation, it proves that the shape of electrode top is direct affect to thermal response of pyroelectric film sensor is an important problem. The results can combine the finite element method with optimal method to design the top electrode of optimal shape and it would gain greatest benefits for improving the temperature variation rate and find out the substance of pyroelectric phenomena in ZnO pyroelectric film sensor. 36 4-3 Optimization result In this study, the aim is to achieve the maximum temperature variation rate through SCGM combined with Comsol for four models of ZnO pyroelectric sensor. And, through the optimal result, the phenomena of pyroelectric in film sensor are showed and verified. In this section, according the above simulation results, it proves that the geometry of top electrode directly affect the temperature variation rate. Therefore, the variation of top electrode area is the key point which we focus when executes the optimization process. Fig.19 presents the design variable in every model for ZnO pyroelectric film sensor. The boundary for optimization program is the variation for the dimension of top electrode with the limit being the size of the surface on second layer of ZnO pyroelectric sensor. Depending on the geometry property of top electrode, we have different ways to choose different variables like the width, the length and radius. To verify and confirm the optimal result, we choose three different kinds of initial guess with the same boundary in the optimization process for every model. These initial guesses are summarized as follow: 1. Rectangle model The variable is the width (X) and length (Y) of top electrode shape. And, the ranges of X variable and Y variable in the SCGM program are: Case 1: X = 0.0051m, Y = 0.0032m; 0.0048m ≤ X ≤ 0.0058, 0.003m ≤ Y ≤ 0.004m Case 2: X = 0.0048m, Y = 0.003m; 0.0048m ≤ X ≤ 0.0058, 0.003m ≤ Y ≤ 0.004m Case 3: X = 0.0048m, Y = 0.0035m; 0.0048m ≤ X ≤ 0.0058, 0.003m ≤ Y ≤ 0.004m 2. Criss-cross model The variable is the width (X) and length (Y) of top electrode shape. And, the ranges of X variable and Y variable in the SCGM program are: Case 1: X = 0.00505m, Y = 0.00325m; 0.0048m ≤ X ≤ 0.0058, 0.003m ≤ Y ≤ 0.004m 37 Case 2: X = 0.0048m, Y = 0.0035m; 0.0048m ≤ X ≤ 0.0058, 0.003m ≤ Y ≤ 0.004m Case 3: X = 0.0048m, Y = 0.003m; 0.0048m ≤ X ≤ 0.0058, 0.003m ≤ Y ≤ 0.004m 3. Target model The variable is the width (X) and length (Y) of top electrode shape. And, the ranges of X variable and Y variable in the SCGM program are: Case 1: X = 0.00484m, Y = 0.003m; 0.00484m ≤ X ≤ 0.00634, 0.003m ≤ Y ≤ 0.004m Case 2: X = 0.00519m, Y = 0.0033m; 0.00484m ≤ X ≤ 0.00634, 0.003m ≤ Y ≤ 0.004m Case 3: X = 0.005325m, Y = 0.00331m; 0.00484m ≤ X ≤ 0.00634, 0.003m ≤ Y ≤ 0.004m 4. Web model The variable is the width (X) and length (Y) of top electrode shape. And, the ranges of X variable and Y variable in the SCGM program are: Case 1: X = 0.00479m, Y = 0.003m; 0.00479m ≤ X ≤ 0.00629, 0.003m ≤ Y ≤ 0.004m Case 2: X = 0.005115m, Y = 0.00319m; 0.00479m ≤ X ≤ 0.00629, 0.003m ≤ Y ≤ 0.004m Case 3: X = 0.005245m, Y = 0.00333m; 0.00479m ≤ X ≤ 0.00629, 0.003m ≤ Y ≤ 0.004m 4-3-1 Rectangle model Fig.20 (a) - 20 (b) show the temperature distribution of initial guess and optimal result on top electrode of case 1. Through these figures, we can see that the distribution of temperature color has a lot of variations. In (b) the red color, yellow color spread wider and the blue color reduces smaller than in (a), that means there has the increasing of temperature in (b) compare with (a). Go to the detail of this phenomenon, Fig.21 (a) - 21 (c) show out the temperature profile in initial guess and optimal result of Rectangle ZnO pyroelectric sensor. After 0.1s, the temperature value of optimal result is bigger than of initial guess in case 1, case 2 and case 3 38 are 6.4%, 9.7% and 9.1%. We can evidently see that the temperature curves of the optimal result are also higher and more uniform than of the initial guess in three cases. In the next Fig.22 (a) - 22 (c), it presents the temperature variation rate (dT/dt) profiles of initial guess and optimal result. Here, the value of optimal result curve decreases from 0s to 0.3s, and after 0.3, it starts converging to 0. In case 1, we show the comparison between the result of the initial guess and the final result through the optimization process with the initial guess condition, it is clear to see that the temperature variation rate is 8.27K/s at t=0.1s , and after the optimization, there has improved the temperature variation rate to 9.325K/s. In case 2, it is apparently to see that the highest temperature variation rate is 8.43K/s at t = 0.1sin the initial guess condition and the temperature variation rate has been raised to 9.34K/s when the program finishes the convergence process. In case 3, the optimal result shows that at t = 0.1s the temperature variation rate increase from 8.49K/s to 9.346K/s. Those results obviously see that the temperature response of optimal results is faster than of initial guesses. On the other hand, the second order derivative of temperature (d2T/dt2) is presented in Fig.23 (a) - 23 (c). From case (a), (b) and (c), as can be seen, the second order derivative of optimal results has the lower value than of initial guesses at 0s, but increase and get the biggest value at 0.25s. Where the slope of the optimal curves have the highest value from 0s to 0.1s. At 0.1s, the second order derivative of temperature of optimal result is bigger than of initial guess in case 1, case 2 and case 3 are 12.55%, 19.35% and 17.6%. In the application scope, the response speed is an important factor to verify the effect of film temperature sensor. So, with the increase the second order derivative of temperature value as above in the interval from 0s to 0.1s, it proves that the dimension value of top electrode after optimization can improve the quality of the ZnO pyroelectric sensor in our study. 39 The Fig. 24 (a) shows the variation of the objective function during the optimization with the first initial guess. In general, through global of the boundary, the value of the objective function is continuously increasing and it fluctuate very trouble. However, there have some differences in every stage of the process. From the 1st iteration to about the 230th iteration, the objective function fluctuates with the amplitude smaller than with after from the 230th iteration. To go to the target optimal result, this optimization needs 341 iterations to increase the objective function value from 15.71K/s to 17.8K/s. The raising of this objective function is 11.7%. From the results, we can easily realize the influence of top electrode area to the temperature variation rate. When SCGM program updates the variable value in the optimization process, the dimension of top electrode is broaden and make the top electrode area which contacts with heat source become bigger. So, it increases the ability for absorption the heat of pyroelectric film sensor. Thus, it has the raise of temperature variation rate in the optimization process. The Fig. 24 (b) presents the optimal result with the second initial guess. From the convergence map, we can see that the variation of the objective function has trend like case 1, but through the optimization process, the fluctuation of the objective function can be divided into three stages. From the 1st iteration to about the 200th iteration, the objective function value fluctuates with the amplitude bigger than the fluctuation amplitude of the stage has the iterations from the 200th iteration to about the 350th iteration, and after 350th iteration, the objective function value fluctuates with the biggest amplitude to find the optimal value. Whole process needs 509 iterations and the objective function increases from 15.1K/s to 17.82K/s. The percentage of the optimal value is higher than of initial guess value about 15.2%. The result shows that this optimization program can effectively increase the objective function value. 40 Beside that, Fig. 24 (c) illustrates another optimization process with the third initial guess. In this process, the variation of objective function is very similar trend to the case 1. From the 1st iteration to about the 230th iteration, the objective function fluctuates with the amplitude smaller than the amplitude of the objective function after from the 230th iteration. In this case, the objective function converges after 466th iterations. At this time, the SCGM program gets the maximum value of objective function at 17.86K/s with the initial guess being 15.27K/s. The increasing percentage of this maximum value is 14.5%. After the optimization of three cases, we see that although the variation of the objective function through the boundary has the difference about the fluctuation amplitude and iteration in every case, altogether, the objective function value always fluctuates with the biggest amplitude in the final stage of every process to find the maximum value of objective function. From Fig 24 (a) - Fig 24 (c), we can see the impact of different initial value to the number of iteration and the increase of objective function in the optimization process. The numbers of iterations required to reach the optimal designs are roughly 341,509 and 466 for case 1, case 2 and case 3, respectively. And, the maximums of objective functions in every case in turn are 17.8K/s, 17.82K/s, 17.86K/s. The results prove that even the initial value and the iteration are not the same; the objective function will be raised to the same value at the same surrounding enactment. Next, we discuss about the relationship between variation of the variable and the iteration. In the first initial guess, the variation of the optimization process is showed in Fig. 25 (a). Here, the initial values are x = 0.0051m and y = 0.0032m, these variables are the width and the length of top electrode shape. They increase after 341 iterations and converge with the value x = 0.005748m, y = 0.003048m. As can be seen in this figure, X variable linearly increases upward; however, at the end of this line, there are some X values decrease. Beside 41 that, Y variable just varies in a small range, and always fluctuates no steady to find the optimal value. Fig. 25 (b) presents the variation of second initial guess. In this case, X variable starts at 0.0048m and Y variable starts at 0.003m, these dimensions also are the original dimensions of the model. In this process, to get the maximum objective function, it needs 509 iterations and the variable converges at x = 0.005792m and y = 0.003138m. From this figure, we see that the variation of X variable is similar trend to the case 1, but at the end of this line, X variable is not only decrease but also increase. And, although Y variable also fluctuates, the oscillation trend is raise, not reduce like the case 1. The variation of third initial value is verified in Fig. 25 (c), two curves of X, Y variables begin at x = 0.0048m and y = 0.0035m. At x = 0.00572m and y = 0.003448m, the objective function gets the maximum value. This optimization process needs the number of iteration being 446 times; it is smaller than of the case 2 and bigger than of the case 1. The variation of the X variable varies linearly through the boundary; the variation of the Y variable also has the fluctuation trend like the case 1. The variation of variable in the initial and optimal process is shown in table 2. The X variable for case 1, case 2 and case 3 are raised from 0.0051m, 0.0048m and 0.0048m to 0.005748m, 0.005792m and 0.00572m, respectively. These results make the length of top electrode wider. Beside that, the variable Y varies from 0.0032m, 0.003m, and 0.0035m to 0.003048m, 0.003138m and 0.003448m, respectively. From these results, it can be seen that the variation of two variables is different, X variable increase with the large range, by contrast, Y fluctuates follow a small cycle or periodicity, it easily realizes that the effect of X variable to the temperature variation rate is higher than of Y variable in this model. Besides that, compare the area of top electrode after the optimization process in every case in turn are 42 1.75×10-5m2, 1.81×10-5m2 and 1.97×10-5m2 correlative with 17.8K/s, 17.82K/s, and 17.86K/s, respectively. It proves that the temperature variation rate depends on the area of top electrode and expresses the right phenomena of pyroelectric in film temperature sensor. 4-3-2 Criss-cross model The Fig. 26 (a) - 26 (b) show the temperature distribution of initial guess and optimal result on the top electrode of case 1. Through these figures, we can see that the distribution of temperature color has a lot of changes. In (b) the red color, yellow color spread wider and the blue color reduces smaller than in (a), that mean there has the increase of temperature in (b) compare with (a). Go to the detail of this phenomenon, Fig. 27 (a) - 27 (c) show out the temperature profile in initial guess and optimal result of Criss-cross ZnO pyroelectric sensor. After 0.1s, the temperature value of optimal result bigger than of initial guess in case 1, case 2 and case 3 are 6.73%, 9.55% and 11.57%. We can evidently see that the temperature curves of the optimal result are also higher and more uniform than of initial guess in three cases. In the next Fig. 28 (a) - 28 (c), it presents the temperature variation rate (dT/dt) profiles of initial guess and optimal result. Here, the value of optimal result curve decreases from 0s to 0.3s and after 0.3s, it starts converging to 0. In case 1 , we show the comparison between the result of the initial guess and the final result through the optimization process with the initial guess condition, it is clear to see that the temperature variation rate 8.71K/s is at t = 0.1s, and after the optimization, there has improved the temperature variation rate to 9.339K/s. In case 2, it is apparently to see that the highest temperature variation rate is 8.44K/s at t = 0.1s in the initial guess condition and the temperature variation rate has been raised to 9.332K/s when the SCGM program finishes the convergence process. In case 3, the optimal result shows that at t = 0.1s the temperature variation rate increase from 8.23K/s to 43 9.307K/s. Those results obviously see that the temperature response of optimal results is faster than initial guesses. On the other hand, the second order derivative of temperature (d2T/dt2) is presented in Fig. 29 (a) - 29 (c). From case (a), (b) and (c), as can be seen, the second order derivatives of optimal results has the lower value than of initial guesses at 0s, but increase and get the biggest value at 0.25s, where the slope of the optimal curves has highest value from 0s to 0.1s. At 0.1s, the second order derivative of temperature of optimal result bigger than of initial guess in case 1, case 2 and case 3 are 13.4%, 18.41% and 22.4%. In the application scope, the response speed is an important factor to verify the effect of film temperature sensor. So, with the increase the second order derivative of temperature value as above in the interval of response time from 0s to 0.1s, it proves that the dimension value of top electrode after optimization can improve the quality of the ZnO pyroelectric sensor in our study. Fig. 30 (a) shows out the relationship between the objective function and the iteration with the first initial guess. In general, the value of the objective function is continuously increasing and it fluctuate very trouble through global of the boundary. In this case, the objective function value increases from 15.91K/s to 17.78K/s with 346 iterations. The raising of this objective function is 10.5%. From the results, we can easily realize the influence of top electrode area to the temperature variation rate. When SCGM program updates the variable value in the optimization process, the dimension of top electrode is broaden and make the top electrode area which contacts with heat source become bigger. So, it increases the ability for absorption the heat of pyroelectric film sensor. Thus, it has the raise of temperature variation rate in the optimization process. Fig. 30 (b) presents the optimal result with the second initial guess. From the convergence map, we can see that the variation of the objective function has similar trend to 44 case 1. Whole the optimization process needs 492 iterations and the objective function increases from 15.3K/s to 17.8K/s. The percentage of the optimal value is higher than of initial guess value about 15%. The result shows that this optimization program can effectively increase the objective function value. Beside that, Fig. 30 (c) illustrates another optimal result with the third initial guess. In this optimization process, the objective function curve also has similar trend to case 1 and 2. After 478 iterations, the objective function is converged. The SCGM program starts from 14.66K/s and gets the optimal value at 17.83K/s. The increasing percentage of this maximum value is 17.7%. From Fig. 30 (a) - Fig 30. (c), we can see the impact of different initial value to the number of iteration and the increase of objective function in the optimization process. The numbers of iterations required to reach the optimal designs are roughly 364, 492 and 487 for case 1, case 2 and case 3, respectively. And, the maximums of objective functions in every case in turn are 17.78K/s, 17.8K/s, 17.83K/s. The results prove that even the initial value and the iteration are not the same; the objective function will be raised to the same value at the same surrounding enactment. Next, we discuss about the relationship between variation of the variable and the iteration. In the first initial guess, the optimization process is showed in Fig. 31 (a). Here, the initial values are x = 0.00505m and y = 0.00325m, these variables are the length and the width of top electrode. When the SCGM program operates, the objective function increases and converges after 364 iterations with the optimal values of variable are x = 0.005744m and y = 0.003256m, as can be seen in this figure, X variable linearly increases upward, but at the end of this line has some X values decrease. Beside that, Y variable just varies in a small range, and always fluctuates no steady to find the optimal dimension. 45 Fig. 31 (b) presents the variation of the variable with the second initial guess. In this case, X variable starts at 0.0048m and Y variable starts at 0.0035m, in this process, to get the maximum objective function, it needs 492 iterations and the variables are converged at x = 0.005742m and y = 0.003618m. From this figure, we also see that the variation of X and Y variable has similar trend to case 1. The variation of third initial value is verified in Fig. 31 (c), two curves of X and Y variables begin at x = 0.0048m and y = 0.003m, these dimensions also are the original dimensions of top electrode in this model. At x = 0.005768m and y = 0.00321m, the objective function gets the maximum value. This optimization process needs the number of iteration is 478 times, it smaller than case 2 and bigger than case 1. The variation of X variable varies linearly through the boundary and Y variable also has the fluctuation trend like the case 1. The variation of variable in the initial guess and optimal process is shown in table 3. The variable X for case 1, case 2 and case 3 are raised from 0.00505m, 0.0048m and 0.0048m to 0.005744m, 0.005742m and 0.005768m, respectively. This result makes the length of top electrode will be wider. Beside that, the variable Y varies from 0.00325m, 0.0035m and 0.003m to 0.003256m, 0.003618m and 0.00321m, respectively. From these results can be seen that the variation of two variables is different, X variable increase through the boundary with the large range, by contrast, Y fluctuates follow a small cycle or periodicity, it easily realize that the effect of X variable to the temperature variation rate is higher than Y variable in this model. From the optimal result of model 1 and model 2, it can be seen that those results have nearly equal value. Although two models have same original dimensions and geometrical properties, but the top electrode of model 2 has these windows. Follow the theory, the window in the top electrode shape make the second layer (ZnO pyroelectric layer) direct 46 contact with heat source. Consequently, increase the heat absorption of pyroelectric film sensor. That means improve the temperature variation rate in the pyroelectric film sensor. So, the temperature variation rate in model 2 must bigger than model 1. Here, we have the opposition in the conclusion, going to the phenomena of this problem. In the simulation process of model 1 and 2, when the heat transfers from the surface of top electrode to the surface of second layer, the Comsol software cannot simulate accurate the temperature value because the thickness of top electrode is too small 1µm. Therefore, with the same simulation time, the temperature value in the surface of second layer in the model 1 is equal the temperature value in the surface of second layer in the model 2. That‘s why, the variations of temperature in model 1 and model 2 are the same. These results prove that because of the geometrical property of the model and the restriction of Comsol software, we cannot see the effect of the window in the top electrode to the temperature variation rate of the ZnO pyroelectric film sensor in this research. 4-3-3 Target model Fig. 32 (a) - 32 (b) show the temperature distribution of initial guess and optimal result on the top electrode of case 1. Through these figures, we can see that the distribution of temperature color has a lot of variations. In (b) the red color, yellow color spread wider and the blue color reduces smaller than in (a), it points out there has the increasing of temperature in (b) compare with (a). And, the detail of temperature value is presented in next figures. Fig. 33 (a) - 33 (c) show the temperature profile in initial guess and optimal result of Target ZnO pyroelectric sensor. At t = 0.1s, the temperature values of initial guess in case 1, case 2, and case 3 are 300.783K, 300.841K, and 300.861K, respectively. After optimization, at t=0.1s, the temperature values of optimal results are 300.964K, 300.964K, and 300.962K correlative with case 1, case 2, and case 3, respectively. We can evidently see that the 47 temperature curves of the optimal result are also higher and more uniform than of the initial guess in three cases. In the next Fig. 34 (a) - 34 (c), it presents the temperature variation rate (dT/dt) profiles of initial guess and optimal result. Here, the value of optimal result curve decreases from 0s to 0.3s, and after 0.3s, it starts converging to 0. In case 1, we show the comparison between the result of the initial guess and the final result through the optimization process with the initial guess condition, it is clear to see that the temperature variation rate is 7.83K at t = 0.1s, and after the optimization, there has improved the temperature variation rate to 9.64K/s. In case 2, it is apparently to see that the highest temperature variation rate is 8.41K/s at t = 0.1s in the initial guess condition and the temperature variation rate has been raised to 9.64K / s when the SCGM program finishes the convergence process. In case 3, the optimal result shows that at t = 0.1s the temperature variation rate increase from 8.61K/s to 9.62K/s. Those results obviously see that the temperature response of optimal results is faster than of initial guesses. On the other hand, the second order derivative of temperature d2T/dt2 is presented in Fig. 35 (a) - 35 (c). From case (a), (b) and (c), as can be seen, the second order derivative of optimal results has the lower value than of initial guesses at 0s, but increase and get the biggest value at 0.25s, where the slope of the optimal curves has the highest value from 0s to 0.1s. At 0.1s, the second order derivative of temperature of optimal result is bigger than of initial guess in case 1, case 2 and case 3 are 34.71%, 24.21% and 20.48%. In the application scope, the response speed is an important factor to verify the effect of film temperature sensor. So, with the increase the second order derivative of temperature value as above in the interval of response time from 0s to 0.1s, it proves that the dimension value of top electrode after optimization process can improve the quality of the ZnO pyroelectric sensor in our study. 48 Fig. 36 (a) shows out the convergence of objective function in the optimization process. From this map, we can see that the objective function has the continuously upward phenomenon and fluctuates troublous through the boundary. From 1st iteration to about the 250th iteration, the increasing property of objective function likes a linear line and after 250th iteration it still increases but the trend like a curve. Finally, this optimization program converges with the total iteration being 469 iterations. At this time, the objective function varies from 13.81K/s to 18.97K/s. The increasing percentage of this maximum value is 27.22%. Fig. 36 (b) presents the optimal result of case 2 with the second initial guess. In general, the graph varies similar trend to case 1, but at about the 120th iteration the objective function begin transform from the linear line to the curve. Eventually the program needs 344 iterations to finish this optimization. The objective function increases from 15.34K / s and gains the optimal result at 18.95K/s. The percentage of the optimal value is higher than of initial guess value about 19%. Fig. 36 (c) illustrates another optimal result with the third initial guess. The convergence map has a little bit different with case 1 and case 2. From 1st iteration to about the 140th iteration, the objective function increases linear, after 140th iteration, it still increases follow a curve and after about the 270th iteration, this curve converts to a line. In this final stage, the SCGM program finds maximum value of objective function for whole process. The objective function converges after 334th iterations. And, at this time, it has the optimal value being 18.9K/s with the initial value being 16K/s. The increasing percentage of this maximum value is 15.34%. The results of case 1, case 2 and case 3 show that this optimization program can effectively increase the objective function value. 49 From Fig 36 (a) - Fig 36 (c), we can see the impact of different initial value to the number of iteration and the increase of objective function in the optimization process. The numbers of iterations required to reach the optimal designs are roughly 469, 344 and 334 for case 1, case 2 and case 3 , respectively. And, the maximums of objective functions in every case in turn are 18.97K/s, 18.95K/s and 18.9K/s. The results prove that even the initial value and the iteration are not the same; the objective function will be raised to the same value at the same surrounding enactment. Next, we discuss about the variation of variable and the iteration. In the first initial guess, the convergence process of variable is showed in Fig. 37(a). Here, the initial value is x = 0.00484m and y = 0.003m, these dimensions also are the original dimensions of top electrode in this model. When the SCGM program operates, the variables are automatically updated to find the maximum value of the objective function. In this process, X variable and Y variable increase linearly. But at the end segment of two optimal curves, there have some X values and Y values raise no steady to find the optimal value. The optimization program converges after 469 iterations, and the values of optimal variables are x = 0.006248m and y = 0.00394m. The increasing percentage of X variable and Y variable are 22.53% and 23.87%. And the result proves that the influence of X, Y variable is the same in the improving temperature variation rate of this model. Fig. 37 (b) describes the relationship between the variation of the variable and the iteration of case 2 with the second initial value. In this case, X variable starts at 0.00519m and Y variable begins at 0.0033m, these variables are the width and the length of top electrode. From this figure, we also see that the variation of X variable linearly develops through the boundary, beside that Y variable linearly develops and just has a little no stable at the end of the process, . In this process, the SCGM program needs 344 iterations to get the maximum 50 value of the objective function, and two variables are converged at x = 0.006213m and y = 0.003974m. The percentage of the optimal value is higher than of initial guess value about 16.4% with X variable and 19.6% with Y variable. The result shows that, the increasing percentage of Y variable is higher than of X variable. However, when we compare the optimal values of X variable and Y variable between case 1 and case 2, there have the inconsiderable differences in values. Thus, the big difference of percentage between X variable and Y variable has the reason from the initial guess. Because the X initial value is nearer with the optimal location than Y initial value, therefore, there has the increase of X variable is lower than of Y variable. And, this result demonstrates that the impact of X, Y variable to the temperature variation rate in the optimization of this case is the same. The variation of third initial value is verified in Fig. 37 (c). This optimization process needs the number of iteration being 334 times. In general, the variation of X, Y variable also has the similar trend to case 1 and case 2. But, from about the 280th iteration, X and Y variable fluctuate with small magnitude to find the optimal dimension. Two curves of X, Y variables begin at x = 0.005325m, y = 0.00331m and finish at x = 0.006219m, y = 0.003914m. The percentage of the optimal value is higher than of initial guess value about 14.3% and 15.4% correlative with X variable and Y variable. In this case, following the result from the optimization process, we also see that the effect of two variables in this model to the increasing temperature variation rate is the same. The variation of variable in the initial guess and optimal process is shown in table 4. The X variable for case 1, case 2 and case 3 are raised from 0.00484m, 0.00519m and 0.005325m to 0.006248m, 0.006213m and 0.006219m, respectively. Beside that, the Y variable varies from 0.003m, 0.0033m and 0.00331m to 0.00394m, 0.003974m and 0.003914m, respectively. The optimization makes the width and the length of top electrode become larger. And, those 51 dimensions reach to the restriction of the boundary to obtain the maximum value of temperature variation rate. The expansion of top electrode makes the top electrode area which contacts with heat source become bigger. So, it increases the ability for absorption the heat of pyroelectric film sensor. Thus, it has the raise of temperature variation rate in the optimization process. 4-3-4 Web model Fig. 38 (a) - 38 (b) show the temperature distribution of initial guess and optimal result on the top electrode of case 1. Through these figures, we can see that the distribution of temperature color has a lot of variations. In (b) the red color, yellow color spread wider and the blue color reduces smaller than in (a), it points out there has the increasing of temperature in (b) compare with (a). And, the detail of temperature value is presented in next figures. Fig.39 (a) - 39 (c) show out the temperature profile in initial guess and optimal result of Web ZnO pyroelectric sensor. At t = 0.1s, the temperature value of initial guess in case 1, case 2 and case 3 are 300.767K, 300.826K and 300.846K, respectively. After optimization, at t = 0.1s, the temperature value of optimal results are 300.948K, 300.949K and 300.951K correlative with case 1, case 2, and case 3, respectively. We can evidently see that the temperature curves of the optimal result are also higher and more uniform than of the initial guess in three cases. From Fig. 40 (a) - 40 (c), it present the temperature variation rate (dT/dt) profiles of initial guess and optimal result. Here, the value of optimal result curve decreases from 0s to 0.3s, and after 0.3s, it starts converging to 0. In case 1, we show the comparison between the result of the initial guess and the final result through the optimization process with the initial guess condition, it is clear to see that the temperature variation rate is 7.67K/s at t = 0.1s, and after the optimization, there has improved the temperature variation rate to 9.48K/s. In case 2, 52 it is apparently to see that the highest temperature variation rate is 8.26K/s at t = 0.1s in the initial guess condition and the temperature variation rate has been raised to 9.49K/s after the optimization. In case 3, the optimal result shows that at t = 0.1s the temperature variation rate increase from 8.46K/s to 9.51K/s. Those results obviously see that the temperature response of optimal results is faster than of initial guesses. On the other hand, the second order derivative of temperature (d2T/dt2) is presented in Fig. 41 (a) - 41 (c). From case (a), (b) and (c), as can be seen, the second order derivative of optimal results has the lower value than of initial guesses at 0s, but increase and get the biggest value at 0.25s. Where the slope of the optimal curves has the highest value from 0s to 0.1s. At 0.1s, the second order derivative of temperature of optimal result is bigger than of initial guess in case 1, case 2 and case 3 are 35.5%, 24.75% and 21.25%. In the application scope, the response speed is an important factor to verify the effect of film temperature sensor. So, with the increase the second order derivative of temperature value as above in the interval of response time from 0s to 0.1s, it proves that the dimension value of top electrode after optimization process can improve the quality of the ZnO pyroelectric sensor in our study. Fig. 42 (a) shows the convergence of the objective function in the optimization process for the first initial guess. From this map, we can see that the objective function has the continuously upward phenomenon and fluctuates troublous through the boundary. Where, from 1 iteration to about the 270th iteration, the increasing property of objective function likes st a linear line, and after 270th iteration, it still increases but the trend like a curve. Finally, this program stops at the 437th iteration. At this time, the objective function varies from 13.3K/s to 18.46 K/s. The increasing percentage of this maximum value is 27.95%. Fig. 42 (b) presents the optimal result of case 2 with the second initial guess. In general, the objective function curve has the trend linear increase and always fluctuates through the 53 boundary. This process needs 317 iterations to gain the optimal result .The objective function increases from 14.98K/s to 18.49K/s. The percentage of the optimal value is higher than of initial guess value about 18.98%. Fig. 42 (c) illustrates another optimal result with the third initial guess. We can see that the convergence map has similar trend to case 2. When the optimization program is at the 267th iteration, the maximum value of objective function is 18.62K/s with the initial value being 15.49K/s. The increasing percentage of this maximum value is 16.8%. The results of case 1, case 2 and case 3 show that this optimization program can effectively increase the objective function value. In this research, following the conclusion of the results from the Rectangle model and the Criss-cross model, we know that the window in the top electrode of ZnO pyroelectric sensor does not effect to the improving the temperature variation rate. Therefore, the optimal values of Target model and Web model will reach to the same optimal value after the optimization because they have same optimal conditions; those are geometry property of the model, the definition of design variable and the restriction of the boundary. However, the optimal result of Web model is smaller than of Target model. From the optimization, we can see that, when the variables near the boundary, the updated model cannot simulate. So, the SCGM stops at those dimensions. This problem comes from the geometrical property of the Web model. This model has some windows in the top electrode whose the dimensions are very small, and the thickness of top electrode is 1µm. Thus, this model gets the difficulty to create the mesh in the simulation process. When the variables are updated by SCGM program and reach to the restriction of the boundary, at this time, in this location, there exist these dimensions make the degenerated tetrahedrons appear inside the model. So, Comsol software cannot mesh in the simulation process. And, we get the optimal values at this place. From Fig 42 (a) - Fig 42 (c), 54 we can see that with different initial values, the numbers of iterations required to reach the optimal designs are roughly 437, 317 and 267 for case 1, case 2 and case 3, respectively. And, the maximum values of objective functions in every case in turn are 18.46K/s, 18.49K/s and 18.62K/s, respectively. Next, we discuss about the variation of variable and the iteration. In the first initial guess, the convergence process of variable is showed in Fig. 43 (a). Here, the initial values are x = 0.00479m and y = 0.003m, these dimensions also are the original dimensions of the top electrode in this model. When the SCGM program operates, the variables are automatically updated to find the optimal value. In this process, X variable and Y variable increase linearly, but in the optimal lines, we see that, there have some X values and Y values raise no steady. And after 469 iterations, this program finishes the optimization process at x = 0.006075m and y = 0.003846m. The increasing percentages of X, Y variables are 20.32% and 21.99% and the result proves that the influence of X, Y variable is the same in the improving the temperature variation rate of this model. Fig. 43 (b) describes the relationship between the variation of variable and iteration of the case 2 with the second initial value. In this case, X variable starts at 0.005115m and Y variable starts at 0.00319m, these variables are the width and the length of top electrode shape. From this figure, we also see that the variations of X, Y variables develop linearly through the optimization process. The program needs 317 iterations to reach the maximum value of objective function. At this time, the variable values are x = 0.006067m and y = 0.00383m. The percentage of the optimal value is higher than of initial guess value about 15.69% with X variable and 16.71% with Y variable. The result demonstrates that the impact of X, Y variable to the temperature variation rate in the optimization is the same. 55 The variation of third initial value is verified in Fig. 43 (c). This optimization process needs the number of iteration being 267 times. In general, the variation of X, Y variable also has the similar trend to case 2. Two curves of X, Y variables begin at x = 0.005245m, y = 0.00333m and the optimization program obtain the optimal value when two variables are x = 0.006091m, y = 0.003894m. The percentage of the optimal value is higher than of initial guess value about 13.88% and 14.48% correlative with X variable and Y variable. In this case, following the result from the optimization process, we also see that the effect of two variables in this model to the increase temperature variation rate is the same. The variation of variable in the initial guess and optimal process is shown in table 5. The variables X for case 1, case 2 and case 3 are raised from 0.00479m, 0.005115m and 0.005245m to 0.006075m, 0.006067m and 0.006091m, respectively. Beside that, the variable Y varies from 0.003m, 0.00319m and 0.00333m to 0.003846m, 0.00383m and 0.003894m, respectively. The optimization makes the width and the length of top electrode become larger. And, those dimensions reach to the restriction of the boundary to obtain the maximum value of temperature variation rate. The expansion of top electrode makes the top electrode area which contacts with heat source become bigger. So, it increases the ability for absorption the heat of pyroelectric film sensor. Thus, it has the raise of temperature variation rate in the optimization process. In this optimization part, we can divide four models become two groups by the geometry property of top electrode for convenient in the comparison the optimal result and the phenomena occur in the ZnO pyroelectric film sensor. The first group includes Rectangle and Criss-cross model with the top electrode is rectangular shape. The second group includes Target and Web type; they have the top electrode being rectangular shape combine with cylinder shape. After the optimization, we can see the variations of X variable and Y variable 56 in the first group are different, X linearly increase through the boundary, but Y just varies with a small cycle or periodicity. Beside that, in the second group X variable and Y variable, together, varies linearly through the boundary. Thus, we can realize that the influence of Y variable in group 1 to the temperature variation rate is smaller than in group 2. That the reason, the objective function values in the group 1 always fluctuate with the magnitude bigger than in the group 2 to find the optimal value. In addition, the optimal results of group 1 are smaller than of group 2. When we build up the variable for the SCGM program, although we consider that the variable form for four models is similar, in two groups, they have different about the geometry property in the top electrode. So, the combination between X variable and Y variable to create the new updated model in the optimization process make the length of top electrode shape in the group 2 has the update value bigger than of group 1. Therefore, SCGM program can broaden the area of top electrode in group 2 bigger than in group 1 and that is why the optimal values of group 2 are bigger than of group 1. 57 Table 2 The variable variation in the initial guess and optimal process of Rectangle type Variable (m) X Y Initial 0.0051 0.0032 Optimal 0.005748 0.003048 Initial 0.0048 0.003 Optimal 0.005792 0.00313 Initial 0.0048 0.0035 Optimal 0.00572 0.003448 Case 1 Case 2 Case 3 58 Table 3 The variable variation in the initial value and optimal process of Criss-cross type Variable (m) X Y Initial 0.00505 0.00325 Optimal 0.005744 0.003256 Initial 0.0048 0.0035 Optimal 0.005742 0.003618 Initial 0.0048 0.003 Optimal 0.005768 0.00321 Case 1 Case 2 Case 3 59 Table 4 The variable variation in the initial guess and optimal process of Target type Variable (m) X Y Initial 0.00484 0.003 Optimal 0.006248 0.00394 Initial 0.00519 0.0033 Optimal 0.006213 0.003974 Initial 0.005325 0.00331 Optimal 0.006219 0.003914 Case 1 Case 2 Case 3 60 Table 5 The variable variation in the initial guess and optimal process of Web type Variable (m) X Y Initial 0.00479 0.003 Optimal 0.006075 0.003846 Initial 0.005115 0.00319 Optimal 0.006067 0.00383 Initial 0.005245 0.00333 Optimal 0.006091 0.003894 Case 1 Case 2 Case 3 61 Fig. 14 The voltage response profile and temperature profile with the fitting curve from the multinomial function 62 (a) Rectangle type (b) Criss cross type (c) Target type (d) Web type Fig. 15 The temperature distribution of top electrode in the pyroelectric film sensor at 0.1s 63 Fig. 16 The temperature profiles of pyroelectric film sensor with different shape type of top electrode 64 Fig. 17 The temperature variation rate of pyroelectric film sensor with different shape type of top electrode 65 Fig. 18 The second order derivative of temperature in the pyroelectric film sensor with different shape type of top electrode 66 (a) Rectangle type (b) Criss-cross type (c) Target type (d) Web type Fig. 19 The design variable in different kinds of ZnO pyroelectric sensor 67 (a) Initial guess (b) Optimal Fig. 20 The temperature distribution in the initial guess and optimal of Rectangle type at 0.05s 68 (a) Case 1 (b) Case 2 (c) Case 3 Fig. 21 The temperature profile in the initial guess and optimal of Rectangle type 69 (a) Case 1 (b) Case 2 (c) Case 3 Fig. 22 The temperature variation rate profile in the initial guess and optimal of Rectangle type 70 (a) Case 1 (b) Case 2 (c) Case 3 Fig. 23 The second order derivative of temperature profile in the initial guess and optimal of Rectangle type 71 (a) Case 1 (b) Case 2 (c) Case 3 Fig.24 Convergence process of the objective function in different initial value for Rectangle type 72 (a) Case 1 (b) Case 2 (c) Case 3 Fig. 25 The variation of the design variable through the optimal process for Rectangle type 73 ` (a) Initial guess (b) Optimal Fig. 26 The temperature distribution in the initial guess and optimal of Criss-cross type at 0.05s 74 (a) Case 1 (b) Case 2 (c) Case 3 Fig. 27 The temperature profile in the initial guess and optimal of Criss-cross type 75 (a) Case 1 (b) Case 2 (c) Case 3 Fig. 28 The temperature variation rate profile in the initial guess and optimal of Criss-cross type 76 (a) Case 1 (b) Case 2 (c) Case 3 Fig. 29 The second order derivative of temperature profile in the initial guess and optimal of Criss-cross type 77 (a) Case 1 (b) Case 2 (c) Case 3 Fig.30 Convergence process of the objective function in different initial value for Criss-cross type. 78 (a) Case 1 (b) Case 2 (c) Case 3 Fig. 31 The variation of the design variable through the optimal process for Criss-cross type 79 (a) Initial guess (b) Optimal Fig. 32 The temperature distribution in the initial guess and optimal of Target type at 0.05s 80 (a) Case 1 (b) Case 2 (c) Case 3 Fig. 33 The temperature profile in the initial guess and optimal of Target type 81 (a) Case 1 (b) Case 2 (c) Case 3 Fig. 34 The temperature variation rate profile in the initial guess and optimal of Target type 82 (a) Case 1 (b) Case 2 (c) Case 3 Fig. 35 The second order derivative of temperature profile in the initial guess and optimal of Target type 83 (a) Case 1 (b) Case 2 (c) Case 3 Fig.36 Convergence process of the objective function in different initial value for Target type. 84 (a) Case 1 (b) Case 2 (c) Case 3 Fig. 37 The variation of the design variable through the optimal process for Target type 85 (a) Initial guess (b) Optimal Fig. 38 The temperature distribution in the initial guess and optimal of Web type at 0.05s . 86 (a) Case 1 (b) Case 2 (c) Case 3 Fig. 39 The temperature profile in the initial guess and optimal of Web type 87 (a) Case 1 (b) Case 2 (c) Case 3 Fig. 40 The temperature variation rate profile in the initial guess and optimal of Web type 88 (a) Case 1 (b) Case 2 (c) Case 3 Fig. 41 The second order derivative of temperature profile in the initial guess and optimal of Web type 89 (a) Case 1 (b) Case 2 (c) Case 3 Fig.42 Convergence process of the objective function in different initial value for Web type. 90 (a) Case 1 (b) Case 2 (c) Case 3 Fig. 43 The variation of the design variable through the optimal process for Web type 91 5. CONCLUSION In this study, a transfer function between voltage response and temperature is presented. The result demonstrates that voltage response is an important factor to detect the temperature in the film temperature sensor. Although the experiment data are just collected from one sample (Rectangle ZnO pyroelectric film sensor), they can reflect the right phenomena of pyroelectric effect in pyroelectric film sensor. However, this experiment result is still not enough to gain the success in exact verification the relationship between voltage response and temperature. This problem can be continuingly studied in the next researches to find out the real substance of ZnO pyroelectric film temperature sensor. Beside that, the temperature variation rate of pyroelectric film sensor is simulated by the finite element method in this study. The simulated results prove that the shape of top electrode of pyroelectric film sensor affects the temperature variation rate. And, it also shows that the response variation value of dT/dt and d2T/dt2 obviously varies from 0s to 0.1s. In general, the temperature variation rate is an important problem on the ZnO pyroelectric film sensor. In order to obtain the different response, it presents the simulation for the different kinds of shapes design of the top electrode in this study. It shows that the thermal response of the ZnO pyroelectric film sensor can be affected and improved by the different kinds of the electrode. In addition, we combine SCGM method and Comsol software to gain the greatest benefits in the shape design of top electrode on the ZnO pyroelectric film sensor for four models. Where the Rectangle type, the Criss-cross type, the Target type, and the Web type have the raising of the temperature variation rate about 15.26%, 17.79%, 27.22% and 27.95%, respectively. On the other hand, the optimal results also show out the second order derivative of temperature has the increasing percentage in Rectangle type, Criss-cross type, Target type 92 and Web type in turn about 19.35%, 22.4%, 34.71% and 35.5%. Beside that with the interval of response time from 0s to 0.1s; the slope of the second order derivative temperature curve has the highest value. These results prove that this optimization can obtain the desire top electrode shape to develop the quality of ZnO pyroelectric film sensor in the application field. And, through the optimal results, we explore the different effects of top electrode shape to the temperature variation rate. Where the cycle shape in creation the highest temperature variation rate of this film sensor type has the trend more broaden than the rectangle shape has in the optimization process. But the influence of the window in top electrode has not found out yet in this study. 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