MOGA TUNED PI-FUZZY LOGIC CONTROL FOR 3 PHASE INDUCTION MOTOR WITH ENERGY EFFICIENCY FOR ELECTRIC VEHICLE APPLICATION

Similar documents
MOGA TUNED PI-FUZZY LOGIC CONTROL FOR 3 PHASE INDUCTION MOTOR WITH ENERGY EFFICIENCY FOR ELECTRIC VEHICLE APPLICATION

VECTOR CONTROL OF THREE-PHASE INDUCTION MOTOR USING ARTIFICIAL INTELLIGENT TECHNIQUE

Fuzzy Logic Controller for BLDC Permanent Magnet Motor Drives

Speed Control of BLDC motor using ANFIS over conventional Fuzzy logic techniques

Simulation Study of FPGA based Energy Efficient BLDC Hub Motor Driven Fuzzy Controlled Foldable E-Bike Abdul Hadi K 1 J.

Neuro-Fuzzy Controller of a Sensorless PM Motor Drive for Washing Machines

Fuzzy based STATCOM Controller for Grid connected wind Farms with Fixed Speed Induction Generators

Low Speed Control Enhancement for 3-phase AC Induction Machine by Using Voltage/ Frequency Technique

DIRECT TORQUE CONTROL OF A THREE PHASE INDUCTION MOTOR USING HYBRID CONTROLLER. RAJESHWARI JADI (Reg.No: M070105EE)

SPEED AND TORQUE CONTROL OF AN INDUCTION MOTOR WITH ANN BASED DTC

INTRODUCTION. I.1 - Historical review.

A Comprehensive Study on Speed Control of DC Motor with Field and Armature Control R.Soundara Rajan Dy. General Manager, Bharat Dynamics Limited

Simulation of Indirect Field Oriented Control of Induction Machine in Hybrid Electrical Vehicle with MATLAB Simulink

Project Summary Fuzzy Logic Control of Electric Motors and Motor Drives: Feasibility Study

Asian Journal on Energy and Environment ISSN Available online at

International Journal of Advance Research in Engineering, Science & Technology

ENHANCEMENT OF ROTOR ANGLE STABILITY OF POWER SYSTEM BY CONTROLLING RSC OF DFIG

Artificial-Intelligence-Based Electrical Machines and Drives

CHAPTER 1 INTRODUCTION

Keywords: DTC, induction motor, NPC inverter, torque control

Design And Analysis Of Artificial Neural Network Based Controller For Speed Control Of Induction Motor Using D T C

Wind Farm Evaluation and Control

DESIGN AND IMPLEMENTATION OF BRUSHLESS DC MOTOR BY USING FUZZY LOGIC PI CONTROLLER Shivhar S. Chawale* 1, Sankeswari S.S 1

PERFORMANCE ANALYSIS OF BLDC MOTOR SPEED CONTROL USING PI CONTROLLER

Piktronik d. o. o. Cesta k Tamu 17 SI 2000 Maribor, Slovenia Fax:

FUZZY LOGIC FOR SWITCHING FAULT DETECTION OF INDUCTION MOTOR DRIVE SYSTEM

INTERNATIONAL JOURNAL OF ENGINEERING SCIENCES & RESEARCH TECHNOLOGY

International Journal of Advance Research in Engineering, Science & Technology

Implementation of SMC for BLDC Motor Drive

Performance Analysis of 3-Ø Self-Excited Induction Generator with Rectifier Load

Speed Control of 3-Phase Squirrel Cage Induction Motor by 3-Phase AC Voltage Controller Using SPWM Technique

Sensor less Control of BLDC Motor using Fuzzy logic controller for Solar power Generation

Comparison between Optimized Passive Vehicle Suspension System and Semi Active Fuzzy Logic Controlled Suspension System Regarding Ride and Handling

837. Dynamics of hybrid PM/EM electromagnetic valve in SI engines

CHAPTER 1 INTRODUCTION

International Journal of Advance Research in Engineering, Science & Technology. Comparative Analysis of DTC & FOC of Induction Motor

Experimental Resultsofa Wind Energy Conversion Systemwith STATCOM Using Fuzzy Logic Controller

A FUZZY-BASED SPEED CONTROLLER FOR IMPROVEMENT OF INDUCTION MOTOR S DRIVE PERFORMANCE

Speed Control of Induction Motor using FOC Method

Comparative Performance of FE-FSM, PM-FSM and HE-FSM with Segmental Rotor Hassan Ali Soomro a, Erwan Sulaiman b and Faisal Khan c

Fuzzy based Adaptive Control of Antilock Braking System

Fuzzy logic controlled Bi-directional DC-DC Converter for Electric Vehicle Applications

Performance Analysis of Brushless DC Motor Using Intelligent Controllers and Minimization of Torque Ripples

Design of Hybrid Controller for Direct Torque Control of Induction Motor Drive

Design, Development & Simulation of Fuzzy Logic Controller to Control the Speed of Permanent Magnet Synchronous Motor Drive System

ENERGY STORAGE FOR A STAND-ALONE WIND ENERGY CONVERSION SYSTEM

Department of Electrical Power Engineering, UTHM,Johor, Malaysia

IDENTIFICATION OF INTELLIGENT CONTROLS IN DEVELOPING ANTI-LOCK BRAKING SYSTEM

Induction Motor Condition Monitoring Using Fuzzy Logic

Dynamic Behaviour of Asynchronous Generator In Stand-Alone Mode Under Load Perturbation Using MATLAB/SIMULINK

Modeling and Simulation of BLDC Motor using MATLAB/SIMULINK Environment

Fuzzy Based Unified Power Flow Controller to Control Reactive Power and Voltage for a Utility System in India

Model Predictive Control of Back-to-Back Converter in PMSG Based Wind Energy System

Using MATLAB/ Simulink in the designing of Undergraduate Electric Machinery Courses

PHY 152 (ELECTRICITY AND MAGNETISM)

Design and Control of Lab-Scale Variable Speed Wind Turbine Simulator using DFIG. Seung-Ho Song, Ji-Hoon Im, Hyeong-Jin Choi, Tae-Hyeong Kim

Robust Electronic Differential Controller for an Electric Vehicle

Comparative Study of Maximum Torque Control by PI ANN of Induction Motor

3rd International Conference on Material, Mechanical and Manufacturing Engineering (IC3ME 2015)

International Journal of Scientific & Engineering Research, Volume 7, Issue 6, June ISSN

Electrical Machines and Energy Systems: Overview SYED A RIZVI

Back EMF Observer Based Sensorless Four Quadrant Operation of Brushless DC Motor

Modeling and Simulation of Five Phase Inverter Fed Im Drive and Three Phase Inverter Fed Im Drive

CHAPTER 5 ACTIVE AND REACTIVE POWER CONTROL OF DOUBLY FED INDUCTION GENERATOR WITH BACK TO BACK CONVERTER USING DIRECT POWER CONTROL

TRANSIENT PERFORMANCE OF THREE PHASE INDUCTION MACHINE USING SYNCHRONOUSLY ROTATING REFERENCE FRAME

A Novel Hybrid Smart Grid- PV-FC V2G Battery Charging Scheme

General Purpose Permanent Magnet Motor Drive without Speed and Position Sensor

Smart Operation for AC Distribution Infrastructure Involving Hybrid Renewable Energy Sources

Torque Ripple Minimization of a Switched Reluctance Motor using Fuzzy Logic Control

INDUCTION motors are widely used in various industries

Wind Turbine Emulation Experiment

PLC Based Closed Loop Speed Control Of DC Shunt Motor

MODELING SUSPENSION DAMPER MODULES USING LS-DYNA

Transient Analysis of Offset Stator Double Sided Short Rotor Linear Induction Motor Accelerator

Speed Control of D.C. MOTOR Using Chopper

Sliding Mode Control of Boost Converter Controlled DC Motor

Fault Rid Through Protection of DFIG Based Wind Generation System

STUDY ON MAXIMUM POWER EXTRACTION CONTROL FOR PMSG BASED WIND ENERGY CONVERSION SYSTEM

Predicting Solutions to the Optimal Power Flow Problem

Power Electronics & Drives [Simulink, Hardware-Open & Closed Loop]

CHAPTER 6 DESIGN AND DEVELOPMENT OF DOUBLE WINDING INDUCTION GENERATOR

SOLAR PHOTOVOLTAIC ARRAY FED WATER PUMP RIVEN BY BRUSHLESS DC MOTOR USING KY CONVERTER

Modelling and Simulation of DFIG with Fault Rid Through Protection

Figure1: Kone EcoDisc electric elevator drive [2]

CHAPTER 2 SELECTION OF MOTORS FOR ELECTRIC VEHICLE PROPULSION

86400 Parit Raja, Batu Pahat, Johor Malaysia. Keywords: Flux switching motor (FSM), permanent magnet (PM), salient rotor, electric vehicle

Modeling, Design and Simulation of Active Suspension System Frequency Response Controller using Automated Tuning Technique

Induction Generator: Excitation & Voltage Regulation

EXPERIMENTAL VERIFICATION OF INDUCED VOLTAGE SELF- EXCITATION OF A SWITCHED RELUCTANCE GENERATOR

1.1 Block Diagram of Drive Components of Electric Drive & their functions. Power Processor / Modulator. Control. Unit

University of New South Wales School of Electrical Engineering & Telecommunications ELEC ELECTRIC DRIVE SYSTEMS.

CHAPTER 4 MODELING OF PERMANENT MAGNET SYNCHRONOUS GENERATOR BASED WIND ENERGY CONVERSION SYSTEM

Whitepaper Dunkermotoren GmbH

SENSORLESS CONTROL OF BLDC MOTOR USING BACKEMF BASED DETECTION METHOD

Universal computer aided design for electrical machines

QUESTION BANK SPECIAL ELECTRICAL MACHINES

Inverter control of low speed Linear Induction Motors

Rule-based Integration of Multiple Neural Networks Evolved Based on Cellular Automata

PERFORMANCE ANALYSIS OF D.C MOTOR USING FUZZY LOGIC CONTROLLER

Speed Control of Dual Induction Motor using Fuzzy Controller

Transcription:

www.arpnjournals.com MOGA TUNED PI-FUZZY LOGIC CONTROL FOR 3 PHASE INDUCTION MOTOR WITH ENERGY EFFICIENCY FOR ELECTRIC VEHICLE APPLICATION B.S.K.K. Ibrahim 1,2, M.K.Hat 1, N. Aziah M.A 2 and M.K. Hassan 3, 1 Department of Mechatronic and Robotic Engineering, Faculty of Electrical &Electronic Engineering, University Tun Hussein Onn Malaysia, Batu Pahat, 86400 Johor, Malaysia. 2 Perusahaan Otomobil Nasional Sdn. Bhd. HICOM Industrial Estate, 40918 Shah Alam, Selangor, Malaysia. 3 Department of Electrical and Electronic, Faculty of Engineering, Universiti Putra Malaysia,, UPM Serdang, E-Mail: babul@uthm.edu.my 1 mohdkamalhat@gmail.com 1, aziahma@proton.com 2, khair@eng.upm.edu.my 3 ABSTRACT Induction motor is one of the AC motor having simple and rugged structure; moreover, they are economical and immune to heavy overloads. However the use of induction motor also has its disadvantages, mainly the controllability, due to its complex mathematical model and its nonlinear behavior. The conventional controllers are unable to handle this problem. To overcome this problem a nonlinear PI- fuzzy logic controller and the used of MOGA optimization to minimizing the error is used to control the speed of electric vehicle traction motor. The development of this control strategy with Energy Efficiency is presented in this paper. The proposed controller has simple structure and also due to its modest fuzzy rule in rule- base is relatively easy for implementation. The control is performed by Matlab/Simulink software. The simulation test results have been satisfactory in simulation results and demonstrated to confirm the performance of the MOGA optimized fuzzy can reduce the power consumption with good tracking performance. This controller has high accuracy, suitable performance, high robustness and high tracking efficiency. Key words: 3 Phase Induction Motor, Fuzzy Logic Control, MOGA Optimization, Electric Vehicle INTRODUCTION AC induction motors are the most common motors used in industrial motion control systems, as well as in main powered home appliances. Simple and rugged design, lowcost, low maintenance and direct connection to an AC power source are the main advantages of AC induction motors (Rakesh Parekh., 2003). Although AC induction motors are easier to design than DC motors, the speed and the torque control in various types of AC induction motors require a greater understanding of the design and the characteristics of these motors(man Mohan et al, 2012). Like most motors, an AC induction motor has a fixed outer portion, called the stator and a rotor that spins inside with a carefully engineered air gap between the two. Virtually all electrical motors use magnetic field rotation to spin their rotors. A three-phase AC induction motor is the only type where the rotating magnetic field is created naturally in the stator because of the nature of the supply. DC motors depend either on mechanical or electronic commutation to create rotating magnetic fields. A singlephase AC induction motor depends on extra electrical components to produce this rotating magnetic field. Two sets of electromagnets are formed inside any motor. In an AC induction motor, one set of electromagnets is formed in the stator because of the AC supply connected to the stator windings. The alternating nature of the supply voltage induces an Electromagnetic Force (EMF) in the rotor (just like the voltage is induced in the transformer secondary) as per Lenz s law, thus generating another set of electromagnets; hence the name induction motor. Interaction between the magnetic field of these electromagnets generate twisting force, or torque. As a result, the motor rotates in the direction of the resultant Three-phase AC induction motors are widely used in industrial and commercial applications. At present, induction motor drives are the mature technology among commutatorless motor drives. Compared with DC motor drives, the AC induction motor drive has additional advantages such as lightweight nature, small volume, low cost, and high efficiency. These advantages are particularly important for EV and HEV applications. There are two types of induction motors, namely, wound-rotor and squirrel cage motors. Because of the high cost, need for maintenance, and lack of sturdiness, wound-rotor induction motors are less attractive than their squirrel-cage counterparts, especially for electric propulsion in EVs and HEVs (Ali Emasi, Yimin Gao,and Mehrdad Ehsanl, 2009). Controlling the speed of a motor using modern AC drives not only provides users with much improved process control, but can also reduce wear on machines, increase power factor and provide large energy savings [http://www.emersonindustrial.com]. AC drives can significantly reduce energy consumption by varying the speed of the motor to precisely match the effort required for the application. To vary the speed of the motor dynamically, a closed-loop regulator (or control loop) that takes into account the measured output of a process is required. The most common method of regulation is the PI (Proportional-Integral) and PID (Proportional-Integral- Derivative) control loop. Conventional PID approach in vector control is to use PID control schemes to operate the static and dynamic performance of control system (D. Y. Ohm, 1994) Due to the derivatives of the signals are difficult to pick up, the PI control becomes the most widespread control combination. In recent years, extensive

deficiency of conventional PI controller and improve its performance (D. Y. Ohm, 1994). However, the nonlinear effects of motor system and model uncertainty such as external disturbances, unpredictable parameter perturbations and un-modeled plant nonlinear dynamics, the common PI and PID control is not able to get good transient response and small overshoot. Moreover, induction motor is a complex higher-order, nonlinear, strong coupling, and multi-variable control target. The fuzzy control is proved to an efficient way to implement engineering heuristics into control solution (B.S.K.K. Ibrahim e al, 2012). MATERIALS AND METHOD Modeling, and hence simulation study can greatly facilitate to test and tune various controllers. The role of simulation was to design, test, and tune the control strategies, thus reducing time-consuming trial and error adjustments during real experiments. Induction Motor The main advantages of IM include: (1) Robust structure and relatively low cost; (2) Good dynamic performance which can be achieved by for example vector control and direct torque control; (3) Light weight, small volume and high efficiency. The disadvantages include: (1) The constant power range can only extend to 2-3 times the base speed. But in EV machines, it requires an expansion of 4-5 times above the base one. Hence, the design of IM is more complicated to satisfy the EV demand; (2) the control schemes are a little difficult due to the variable equivalent parameters (Goldberg, D. E., 1989). Vector Control and AC Motor Drive The principle of vector control of electrical drives is based on the control of both the magnitude and the phase of each phase current and voltage. For as long as this type of control considers the three phase system as three independent systems the control will remain analog and thus present several drawbacks. The most common accurate vector control is Field Orientated Control, a digital implementation which demonstrates the capability of performing direct torque control, of handling system limitations and of achieving higher power conversion efficiency. The electrical drive controls become more accurate in the sense that not only are the DC current and voltage controlled but also the three phase currents and voltages are managed by so-called vector controls. This vector control scheme Field Oriented Control is discussed here. It is based on three major points: the machine current and voltage space vectors, the transformation of a three phase speed and time dependent system into a two co-ordinate time invariant system and effective Pulse Width Modulation pattern generation. This control structure, by achieving a very accurate steady state and transient control, leads to high dynamic performance in terms of response times. The Field Orientated Control (FOC) consists of controlling the stator currents represented by a vector. This control is based on projections which transform a three phase time and speed dependent system into a two coordinate (d and q co-ordinates) time invariant system. These projections lead to a structure similar to that of a DC machine control. Field orientated controlled machines need two constants as input references: the torque component (aligned with the q co-ordinate) and the flux component (aligned with d coordinate). Fuzzy Logic Control Recently, Fuzzy logic control has found many applications in the past decade. Fuzzy Logic, deals with problems that have vagueness, uncertainty and use membership functions with values varying between 0 and 1 (Man Mohan et al,2012). MATLAB Fuzzy logic Toolbox is used to design fuzzy logic controller. Basically, the Fuzzy Logic controller consists of four basic components: fuzzification, a knowledge base, inference engine, and a defuzzification interface. Each component affects the effectiveness of the fuzzy controller and the behavior of the controlled system. In the fuzzification interface, a measurement of inputs and a transformation, which converts input data into suitable linguistic variables, are performed which mimic human decision making. The results obtained by fuzzy logic depend on fuzzy inference rules and fuzzy implication operators. Fuzzy logic controller is also introduced to the system for keeping the motor speed to be constant when the load varies. Because of the low maintenance and robustness induction motors have many applications in the industries. The fuzzy logic is a technique to embody human-like thinking into a control system. A fuzzy controller can be designed to emulate human deductive thinking, that is, the process people use to infer conclusions from what they know. Fuzzy control has been primarily applied to the control of processes through fuzzy linguistic descriptions. Fuzzy logic is widely used in machine control. Fuzzy logic has the advantage that the solution to the problem can be cast in terms that human operators can understand, so that their experience can be used in the design of the controller. The knowledge base provides necessary information for linguistic control rules and the information for fuzzification and defuzzification. In the defuzzification interface, an actual control action is obtained from the results of fuzzy inference engine. In this controller, two input variables have been defined which are speed error and change of speed error. Meanwhile the output of this fuzzy logic controller is a demand current as shown in figure 1. The aim of this paper is that it shows the dynamics response of speed with design the fuzzy logic controller to control a speed of induction motor. Figure 1: Block diagram of discrete-time PI-FLC

Figure 2 shows the input and output memberships of the fuzzy controller. The fuzzy rules of 2 inputs and an output are in Table 1. with 7x7 fuzzy control rules. (Fonseca, C.and Fleming, P., 1993). Optimization of fuzzy logic controller using MOGA is shown in Figure 3. The automatic optimization was implemented in MATLAB with MOGA Toolbox. Figure 2: Inputs and output membership function Table 1: FLC rule table Figure 3: MOGA optimization with two objectives The first objective of MOGA optimization process is to minimize the error between the desired speed and actual speed. The error is defined as: NB=Negative big, NM=Negative medium, NS=Negative small, ZE=Zero, PS=Positive small, PM=Positive medium, PB=Positive big, Optimisation Process If a reliable expert knowledge is not available or if the controlled system is too complex to derive the required decision rules, development of a fuzzy logic controller become time consuming and tedious or sometimes impossible. In the case that the expert knowledge is available, fine-tuning of the controller might be time consuming as well. Therefore in this research, MOGA (Multi Objectives Genetic Algorithm) has been used for to tune the fuzzy controller s parameters with appropriate objectives. MOGA Optimization for Control with Energy Efficiency Mechanism MOGA differs from standard GA [6] in the way fitness is assigned to each solution in the population. Since these control design stages may not be independent, it is important to consider them simultaneously to find the optimal solution using MOGA. Fitness sharing technique as proposed by Fonseca and Fleming (1993) is applied e( = y( yˆ( where y( is the desired speed and yˆ ( is the actual speed. The goodness of fit of the identified model is determined using the objective function by minimizing the MSE: N 2 ( ) y( yˆ( i= 1 f1 = N The second objective function f 2 (y) is defined as the timeintegral of the power consumption of induction motor without compromising the first objective: f t ( y) = P( )dt 2 t 0 where P( is the total power consumption of induction motor for a cycle of simulation. GA Optimization for Control without Energy Efficiency Mechanism The same controller scheme without taking into account energy saving was developed as shown in Figure 4. The fuzzy controller was optimised with only one objective; minimizing the error. The performances of both control schemes were then investigated in terms of energy reduction.

MOGA optimized FLC able to reduce the power consumption. The computer simulation tests on the MOGA optimized FLC were performed. The tests were aimed to assess the capability of the controllers to track a desired speed. The good performance has been achieved without overshoot and oscillation and able to reach steady state at 3sec as can be seen in Figure 5. Figure 4: GA optimization of FLC for induction motor RESULTS AND DISCUSSION A new method comprising a MOGA to automatically design fuzzy controllers to obtain the less power consumption is assessed. MOGA with two point crossover and mutation operators was used to optimize 3 parameters. Population size was set to 50 and crossover and mutation probabilities were 0.8 and 0.001 respectively. A MOGA with 50 binary coded individuals was run for up to 100 generations for this control strategy. The best solution achieved from the optimization with the minimum MSE achieved as 2.51. Then the same control scheme without considering power consumption by using GA optimization process is assessed. The population size of GA was set to 50 and crossover and mutation probabilities were 0.8 and 0.001 respectively. The automatic GA optimization process was set to generate up to 100 generations of solutions. The minimum MSE achieved as 2.49. Finally a conventional control scheme based on PI control has been assessed to the same model. This comparative test has been conducted in term of the power consumption. The performances of these three controllers have been tested and the results are shown in Table 2. Figure 5: Step response of MOGA optimized FLC In another test, random changing has exerted in motor command speed based on NEDC (New European Driving Cycle). It can be noted that this MOGA optimized PI-Fuzzy speed control achieved the objective; to track the motor speed in very short rise time, without overshoot and thus maintain a steady speed without error as shown in Figure 6. Table 2: Results of three controllers performance Figure 6: NEDC speed command The results show that all these controllers show a good performance on tracking the desired speed. However MOGA optimized FLC has shown a reduction in the power consumption around 1.6% if compared with GA optimized FLC and 3.17% power reduction if compared with PI control. Therefore this simulation study has proven that CONCLUSION Three-phase induction motor speed control is a difficult task due to the highly nonlinear and time-variant nature of the system. In this study two control strategies; with and without energy efficiency mechanism have been developed. The control scheme with energy efficiency mechanism has been proposed to control the induction motor with less energy consumption. In these control design approach, PIfuzzy logic controller has been optimized using genetic optimization technique with multi objectives. The power consumption has been taken as the optimization criterion to design this controller. Simulation results are demonstrated

to confirm the performance of the MOGA optimized fuzzy can reduce the power consumption with good tracking performance. Future work will investigate the performance of this control approach in a practical environment. ACKNOWLEDGMENT This work was supported in part by the Perusahaan Otomobil Nasional Sdn. Bhd. under sabbatical program with University Tun Hussein Onn Malaysia. REFERENCES Rakesh Parekh., 2003. AC Induction Motor Fundamentals. Microchip Technology Inc. Man Mohan et al. A Comparative Study On Performance Of 3kW Induction Motor With Different Shapes Of Stator Slots, International Journal of Engineering Science and Technology (IJEST), June 2012 Ali Emadi, Yimin Gao, and Mehrdad Ehsan, Modern Electric, Hybrid Electric, and Fuel Cell Vehicles Fundamentals, Theory, and Design, Second Edition, CRC Press 2009. D. Y. Ohm "Analysis of PID and PDF Compensators for Motion Control Systems", IEEE IAS Annual Meeting, pp.1923-1929 1994. B.S.K.K. Ibrahim, N. Aziah M.A, Nizam H.M.I., M.K. Hassan, S.F. Toha, M. Azman Z.A. and N. Hazima F.I,.PI- Fuzzy Logic Control for 3 phase BLDC motor for Electric Vehicle, 2012 Sixth UKSim/AMSS European Symposium on Computer Modeling and Simulation (EMS), 14-16 Nov. 2012, Malta. Goldberg, D. E. (1989) Genetic algorithms in search, optimization and machine learning. Reading, MA:Addison- Wesley. Fonseca, C.and Fleming, P. (1993). Genetic algorithms for multiobjective optimization: formulation, discussion and generalization, Genetic Algorithms. Proceeding of the Fifth International Conference, San Mateo, CA. 416-423.