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A Novel Approach of Position Estimation, Fuzzy based PFC Converter and Energy generation in BLDC Motor Drive Selamparasan.S 1, Shyamalagowri.M 2 1 PG Scholar, Erode Sengunthar Engineering College, Thudupathi. 2 Associate Professor / EEE, Erode Sengunthar Engineering College, Thudupathi. 1 [email protected],[email protected] 1 9965271383, 2 9842660908 Abstract— This paper describes a simple way to is carried out by fuzzy logic techniques to control the Brush Less DC Motor (BLDCM) improve the performance of the system. for electrical applications. This proposed approach makes the control of BLDC motor with sensorless motion control of BLDC motor, Keywords:- BLDC motor, Power Factor Correction, Fly wheel generator, Regenerative Braking. Bridgeless Buck-Boost Rectifier based power factor correction and regeneration of electric I. power from the motor at time of running condition as well as in braking condition. To control this machine it is generally required to OBJECTIVE The main objective of this paper is efficient way of Power Factor Correction (PFC). measure the speed and position of rotor by Position using the sensor because the inverter phases, industrial based BLDC drives and also acting at any time, must be commutated electrical energy conservation from the motor depending on the rotor position. The position at running time as well as braking time. sensors make the motor system estimation and controlling of more complicated and mechanically unreliable. A II. INTRODUCTION method for the estimation of the speed and Now a day’s PFC and BLDC motor drives rotor position of a BLDCM is presented in this becomes more popular in industries. Normally work. Fuzzy based PFC is employed to control BLDC motor has a rotor with permanent the power factor by using measurements of the power factor angle. Most existing PFC methods of the BLDC motor have low performance. To overcome this problem, the estimation of a PFC magnet and stator with windings. Brushless motors are not self-commutating, and hence are more complicated to control. BLDC motor control requires knowledge of the rotor position and mechanism to commutate the Fig.1 shows the block diagram of proposed motor. For closed-loop speed control it system .The proposed system consists of requires Fuzzy based two additional requirements, bridge less power factor measurement of the motor speed and/or motor Converter, Three Phase Inverter, BLDC Motor current and PWM signal to control the motor Fly Wheel Generator, Battery and Zero speed and power. BLDC motors can use edge- Crossing Detector. aligned or centre-aligned PWM signals depending on the application requirements. Most applications, that only require variable speed operation, will use six independent edge-aligned PWM signals. This provides the highest resolution. If the application requires servo-positioning, dynamic braking, or dynamic reversal, it is recommended that complementary centre-aligned PWM signals Fig. 1 Block diagram of Proposed System be used. To sense the rotor position BLDC IV. motors use Hall Effect sensors to provide CORRECTION IN INDUSTRY absolute position sensing, which results in more wires and higher cost. Sensorless BLDC control eliminates the need for Hall Effect sensors, using the back-EMF (electromotive force) of the motor instead to estimate the rotor position. Sensorless control is essential for low-cost variable speed applications such as fans and pumps. Refrigerator and air conditioning compressors also require sensorless control when using BLDC motors. NEDD OF POWER FACTOR A power factor of one or "unity power factor" is the goal of any electric utility company since if the power factor is less than one, they have to supply more current to the user for a given amount of power use. In so doing, they incur more line losses. They also must have larger capacity equipment in place than would be otherwise necessary. As a result, an industrial facility will be charged a penalty if its power factor is much different III. BLOCK DIAGRAM OF THE from 1. Industrial facilities tend to have a PROPOSED SYSTEM "lagging power factor", where the current lags the voltage (like an inductor). This is primarily the result of having a lot of electric induction motors - the windings of motors act as inductors as seen by the A. power Operation During Positive and Negative Half Cycle of Supply Voltage supply. Capacitors have the opposite effect In this mode converter switches Sw1 and Sw2 and can compensate for the inductive motor are operate in positive and negative half cycle windings. Some industrial sites will have large of banks of capacitors strictly for the purpose of positive half cycle switch SW1, inductor Li1 correcting the power factor back toward one to and diodes D1 and Dp are operated to transfer save on utility company charges. energy to DC link capacitor Cd. Similarly in supply voltage respectively. During negative half cycle of supply voltage switches V. POWER FACTOR CORRECTION Sw2, inductor Li2 and diode D2 and D2 CONVERTER conducts. In Discontinuous Inductor Current Mode(DICM) operation of converter current in the inductor Li the becomes discontinuous for certain duration in a switching period. B. Fig. 2 PFC based bridgeless Buck-Boost Operation During Complete Switching Cycle In this switching cycle there are three modes Converter of operation. In the proposed configuration of bridgeless buck-boost converter has the minimum number of components and least number of conduction devices during each half cycle of supply voltage which governs the choice of BL buck-boost converter for this application. The operation of the PFC bridgeless buckboost converter is classified into two parts which include the operation during the positive and negative half cycles of supply voltage and during the complete switching cycle. Mode I: In this mode, switch Sw1 conducts for charging the inductor Li1, hence the inductor current iLi1 increases in this mode. Diode Dp completes the input side and the DC link capacitor Cd is discharged by VSI fed BLDC motor. Mode II: In this mode of operation switch Sw1 is turned off and the stored energy from the inductor Li1 is transferred to DC link capacitor Cd till the inductor is fully discharged and current in the inductor is fully reduced to zero. Mode III: In this mode of operation inductor Li1 operate in discontinuous conduction mode and diodes and switch are in off condition. At this time DC link capacitor Cd starts discharging. This operation can be continue up Fig. 3 BLDC Motor Construction to switch Sw1 is turned on again. In the DC commutator motor, the current VI. BRUSHLESS DC MOTOR polarity is altered by the commutator and BLDC motors are very popular in a wide brushes. However, in the DC motor, polarity variety of applications. Compared with a DC reversal is performed by power transistors motor, electric switching in synchronization with the rotor mechanical position. Therefore, BLDC motors often commutator, so it is more reliable then the DC incorporate either internal or external position motor. In a BLDC motor, rotor magnets sensors to sense the actual position, or the generate the rotor’s magnetic flux, so VLDC position can be detected without sensors. BLDC commutator motor rather uses than a an motor achieve higher efficiency. Therefore, BLDC motors may be used in high-end white goods (refrigerators, washing VII. FUZZY LOGIC CONTROL machines, dishwashers, etc.), high end pumps, and fan and in other appliances which require high reliability and efficiency. BLDC motor has an stator with an three phase stator like that an induction motor, and the rotor has surface is a classic 3-phase stator like that of an induction motor, and the rotor Fig. 4 Fuzzy logic controller operation has surface-mounted permanent magnets are shown in Fig. 3 In this section, we will explain the main components of a fuzzy logic controller and also implement a simple fuzzy control program. The three main actions performed by controller. Fuzzification consists of two main a fuzzy logic controller are: components: fuzzification membership functions fuzzy processing labels defuzzification As shown in Figure 4, when the fuzzy VII.I. Membership Functions:- controller receives the input data, it translates During fuzzification, a fuzzy logic controller it into a fuzzy form. This process is called receives input data, also known as the fuzzy fuzzification. The controller then performs variable, and analyses it according to user- fuzzy the defined charts called membership functions. evaluation of the input information according Membership functions group input data into to IF…THEN rules created by the user during sets, such as temperatures that are too cold, the fuzzy control system’s programming and motor speeds that are acceptable, etc. The design stages. Once the fuzzy controller controller assigns the input data a grade from finishes the rule-processing stage and arrives 0 to 1 based on how well it fits into each at an outcome conclusion, it begins the membership function (e.g., 0.45 too cold, 0.7 defuzzification process. In this final step, the acceptable speed). Membership functions can fuzzy output have many shapes, depending on the data set, conclusions into “real” output data (e.g., but the most common are the S, Z, Λ, and Π analog counts) and sends this data to the shapes. Here we have use two membership process via an output module interface. If the functions namely input membership function fuzzy logic controller is located in the PLC and output membership function. Figure 5 rack and does not have a direct or built-in I/O shows the input membership functions. Here interface with the process, then it will send the we have take triangular membership functions defuzzification output to the PLC memory for both inputs as well as in output. processing, controller which involves converts the location that maps the process’s output interface module. VIII. The FUZZIFICATION COMPONENTS fuzzification process is the interpretation of input data by the fuzzy 5. Large Fig. 5 Input Membership Function Power Factor angle is taking as input. 6. Very large Output membership function is shown in 7. High figure number 6. Firing angle is taking as an 8. Very high output in output membership function. Inference Mechanism In this step, the value of the fuzzy output is determined using a rule base. A typical rule is described as: Power Factor Angle Firing Angle (Input) (Output) Very very small Very very small Very small Very small Small Small Medium Medium membership functions, with seven being the Large Large maximum and the norm, that define its Very large Very large conditions. Each membership function is Huge Huge defined by a name called a label. For example, Very huge Very huge Fig. 6 Output Membership Function VII.II. Labels Each fuzzy controller input can have several an input variable such as temperature might have five membership functions labelled as cold, cool, normal, warm, and hot. Generically, the seven membership functions have the following labels, which span from the data range’s minimum point (negative large) to its maximum point (positive large). In this paper we have take 8 labels namely 1. Very very small 2. Very small 3. Small 4. Medium Table I fuzzy rule base Table I shows the rule-base. The database contains descriptions of the input and output Variables. Fig. 9 Simulation Diagram of Fuzzy Based PFC Controlled BLDC Motor Drive Fig. 7 Rule Viewer Figure 7 shows the Rule Viewer of the Input and Output Membership Functions. Fig. 10 Simulation Diagram of Fuzzy Based PFC Figure 10 shows the simulation diagram of fuzzy based PFC. Fig. 8 Surface Viewer Figure 8 shows the surface viewer of the input and output membership functions. IX. RESULT Here MATLAB simulink is used as simulation platform. Figure 9 shows the existing method used for BLDC motor control. Fig. 11 Simulation Diagram of PFC With out Fuzzy Figure 11 shows the simulation diagram of BL PFC without fuzzy controller. Figure 13 shows the power factor range of fuzzy based PFC. Here power factor is maintain 0.9 to unity Mechanical out from the BLDC motor is connected to the flywheel generator. Flywheel generator has been used to generate the electrical output at time of BLDC motor running. Figure 14 shows the flywheel generator speed with respect to time. Fig. 12 Power Factor Range in BL PFC without fuzzy Figure 12 shows the simulation result BL Fig. 14 Flywheel generator speed PFC without fuzzy controller. Power Factor Range in BL PFC without fuzzy is maintain from 0.85 to unity. Fig. 13 Power Factor Range in Fuzzy based PFC Figure 15 shows the output three phase voltage from the flywheel generator. Fig. 15 Three phase Output Voltage from Flywheel Generator X. Control Strategy for Four-Switch CONCLUSION The estimation of the speed and rotor Three-Phase Brushless DC Motor position is determined by back-EMF observer Using Single Current Sensor,” which is carried out with the help of fuzzy ( IEEE Transaction on Industrial logic techniques to improve the Power Factor Electronics, Vo.,56, No 6, June of the system. The proposed algorithm using 2009) fuzzy based PFC observer is used to maintain the power factor range in unity. As a result, 2. M.Basezynski, and S.Pirog, Member, the proposed sensorless BLDC motor drive IEEE “ A Novel Speed Measurement method without an additional circuit has method for a high- speed BLDC higher motor based on the signals from the performance than conventional sensorless methods. In addition, this proposed rotor position sensorless method can be easily applied to Transaction industrial applications requiring low-cost and Electronics) sensor” on (IEEE Industrial reliable drive of the BLDC motor. With the help of a conventional speed controller, both 3. Sanjeev Singh, Member, IEEE, and sensor and sensorless drive have been Bhim Singh, Fellow, IEEE “A performed in Matlab/Simulink environment. Voltage-Controlled Simulation results show that the performance Converter-Based PMBLDCM Drive of the fuzzy based drive is similar to that of for the sensor based drive. Therefore, the fuzzy Transaction based drive can replace the sensor drive which Application, Vo.,48, No 2, March has lot of demerits. Electrical energy is /April 2012) PFC Air-Conditioners” on ( Cuk IEEE Industrial regenerated from the BLDC motor at running time and also in braking time by using fly wheel generator and regenerative braking. 4. Abbas A. Fardoun, Senior Member, IEEE, Esam H. Ismail, Senior Member, IEEE “ New Efficient XI. Bridgeless Cuk Rectifier for PFC REFERENCES Applications” (IEEE Transaction on Power Electronics, Vo.,27, No 7, 1. Changliang Xia, Member, IEEE, Zhiqiang Li, and Tingna Shi “A June 2012 ) informatics, vol. 7, no. 4, November 5. Mohammad Mahdavi, Member, IEEE, Farzanehfard, Student and 2011 Hosein Member, IEEE 8. Sheeba Joice, S. R. Paranjothi, and V. “Bridgeless SEPIC PFC Rectifier Jawahar Senthil Kumar “Digital With Reduced Components and Control Strategy for Four Quadrant (IEEE Operation of Three Phase BLDC ON Motor With Load Variations” IEEE Conduction Losses” TRANSACTIONS INDUSTRIAL ELECTRONICS, VOL. 58, NO. 9, September 2011 transactions on industrial informatics, vol. 9, no. 2, May 2013 4153) 9. Ahmad J. Sabzali, Member, IEEE, 6. Yie-Tone Chen, Member, IEEE, Esam H. Ismail, Senior Member, Chun-Lung Chiu, Yi-Ruey Jhang, IEEE, Zong-Hong Tang, and Ruey-Hsun Member, IEEE, and Abbas Liang, Member, IEEE “A Driver for Fardoun, the Single-Phase Brushless DC Fan “New Bridgeless DCM Sepic and Motor Winding Cuk PFC Rectifiers With Low Structure” IEEE Transactions on Conduction and Switching Losses” industrial electronics, vol. 60, no. 10, IEEE October 2013 applications, vol. 47, no. 2, March/ With Hybrid Mustafa A. Al-Saffar, Senior Member, transactions on A. IEEE industry April 2011 7. Bhim Singh, Fellow, IEEE, Sanjeev Singh, Member, IEEE, Ambrish 10. Laszlo Huber, Member, IEEE, Chandra, Senior Member, IEEE, and Yungtaek Jang, Senior Member, Kamal Al-Haddad, Fellow, IEEE IEEE, and Milan M. Jovanovic´, “Comprehensive Study of Single- Fellow, Phase Factor Evaluation of Bridgeless PFC Boost Corrected Converters With High- Rectifiers” IEEE transactions on Frequency power electronics, vol. 23, no. 3, AC-DC transactions Power Isolation” on IEEE industrial May 2008. IEEE “Performance BIOGRAPHY SELAMPARASAN.S received the diploma in electrical & electronics engineering Directorate of from Technical Education in 2008, and degree in electrical & electronics engineering from Anna University in 2012, Currently pursing Master of Engineering from Power Electronics And Drives in Anna university, Chennai. Prof. M.SHYAMALAGOWRI received the B.E degree in Electrical and Electronics Engineering from KSR College of Technology, Thiruchengodu in 2001 and M.E., Control Systems from PSG College of Technology, Coimbatore in