Genetic Algorithm Based Performance Analysis of Self Excited Induction Generator

Similar documents
CHAPTER 5 PERFORMANCE EVALUATION OF SYMMETRIC H- BRIDGE MLI FED THREE PHASE INDUCTION MOTOR

SYNCHRONOUS MACHINES

Steady State Operation of Self-Excited Induction Generator with Varying Wind Speeds

Teaching Of Self Excited Induction Generator For Standalone Wind Energy Conversation System Using MATLAB GUI

Analysis of Single Phase Self-Excited Induction Generator with One Winding for obtaining Constant Output Voltage

The Genetic Algorithm

CHAPTER 3 HARMONIC ELIMINATION SOLUTION USING GENETIC ALGORITHM

Eyenubo, O. J. & Otuagoma, S. O.

Simulation of Fuzzy Inductance Motor using PI Control Application

Dynamic Response of Wound Rotor Induction Generator for. Wind Energy Application

FOUR TOTAL TRANSFER CAPABILITY. 4.1 Total transfer capability CHAPTER

Fault Location Using Sparse Wide Area Measurements

Keywords- DC motor, Genetic algorithm, Crossover, Mutation, PID controller.

Total Harmonic Distortion Minimization of Multilevel Converters Using Genetic Algorithms

Coordination of overcurrent relay using Hybrid GA- NLP method

Optimal Placement of Unified Power Flow Controller for Minimization of Power Transmission Line Losses

Speed estimation of three phase induction motor using artificial neural network

Smart Grid Reconfiguration Using Genetic Algorithm and NSGA-II

EE 340L EXPERIMENT # 5.1 SYNCHRONOUS GENERATOR (STAND-ALONE OPERATION)

Application of genetic algorithm to the optimization of resonant frequency of coaxially fed rectangular microstrip antenna

VALLIAMMAI ENGINEERING COLLEGE

Characteristics of a Stand-Alone Induction Generator in Small Hydroelectric Plants

Study on Voltage Controller of Self-Excited Induction Generator Using Controlled Shunt Capacitor, SVC Magnetic Energy Recovery Switch

GENETIC ALGORITHM BASED SOLUTION IN PWM CONVERTER SWITCHING FOR VOLTAGE SOURCE INVERTER FEEDING AN INDUCTION MOTOR DRIVE

SECTOR SYNTHESIS OF ANTENNA ARRAY USING GENETIC ALGORITHM

INSTITUTE OF AERONAUTICAL ENGINEERING (Autonomous) Dundigal, Hyderabad

Speed control of switched reluctance motor using genetic algorithm and ant colony based on optimizing PID controller

EE 340L EXPERIMENT # 3 SYNCHRONOUS GENERATORS

A Hybrid Evolutionary Approach for Multi Robot Path Exploration Problem

Assessment of Energy Efficient and Standard Induction Motor in MATLAB Environment

CHAPTER 9. Sinusoidal Steady-State Analysis

ROTOR FLUX VECTOR CONTROL TRACKING FOR SENSORLESS INDUCTION MOTOR

Simulation Analysis of Control System in an Innovative Magnetically-Saturated Controllable Reactor

INSTITUTE OF AERONAUTICAL ENGINEERING (Autonomous) Dundigal, Hyderabad ELECTRICAL AND ELECTRONICS ENGINEERING

Wire Layer Geometry Optimization using Stochastic Wire Sampling

GA Optimization for RFID Broadband Antenna Applications. Stefanie Alki Delichatsios MAS.862 May 22, 2006

3. What is hysteresis loss? Also mention a method to minimize the loss. (N-11, N-12)


Objective: Study of self-excitation characteristics of an induction machine.

CHAPTER 3 EQUIVALENT CIRCUIT AND TWO AXIS MODEL OF DOUBLE WINDING INDUCTION MOTOR

Steven Carl Englebretson

Optimal Allocation of TCSC Devices Using Genetic Algorithms

Aligarh College of Engineering & Technology (College Code: 109) Affiliated to UPTU, Approved by AICTE Electrical Engg.

Code No: R Set No. 1

Optimized Modeling of Transformer in Transient State with Genetic Algorithm

IMPLEMENTATION OF NEURAL NETWORK IN ENERGY SAVING OF INDUCTION MOTOR DRIVES WITH INDIRECT VECTOR CONTROL

The Simulated Location Accuracy of Integrated CCGA for TDOA Radio Spectrum Monitoring System in NLOS Environment

Optimal Power flow with FACTS devices using Genetic Algorithm

CS 441/541 Artificial Intelligence Fall, Homework 6: Genetic Algorithms. Due Monday Nov. 24.

Chapter 5 OPTIMIZATION OF BOW TIE ANTENNA USING GENETIC ALGORITHM

Course ELEC Introduction to electric power and energy systems. Additional exercises with answers December reactive power compensation

Creating a Dominion AI Using Genetic Algorithms

Load Frequency Controller Design for Interconnected Electric Power System

Practical Transformer on Load

EE42: Running Checklist of Electronics Terms Dick White

A Novel PSS Design for Single Machine Infinite Bus System Based on Artificial Bee Colony

Electric Power Systems 2: Generators, Three-phase Power, and Power Electronics

Achieving Desirable Gameplay Objectives by Niched Evolution of Game Parameters

Submitted November 19, 1989 to 2nd Conference Economics and Artificial Intelligence, July 2-6, 1990, Paris

Biologically Inspired Embodied Evolution of Survival

Design, Implementation, and Dynamic Behavior of a Power Plant Model

Questions Bank of Electrical Circuits

Energy Saving of AC Voltage Controller Fed Induction Motor Drives Using Matlab/Simulink

EE 350: Electric Machinery Fundamentals

Hours / 100 Marks Seat No.

Accurate Fault Location in Transmission Networks Using Modeling, Simulation and Limited Field Recorded Data

Design Of PID Controller In Automatic Voltage Regulator (AVR) System Using PSO Technique

HARMONIC REDUCTION IN CASCADED MULTILEVEL INVERTER WITH REDUCED NUMBER OF SWITCHES USING GENETIC ALGORITHMS

Design and Development of an Optimized Fuzzy Proportional-Integral-Derivative Controller using Genetic Algorithm

NUMERICAL SIMULATION OF SELF-STRUCTURING ANTENNAS BASED ON A GENETIC ALGORITHM OPTIMIZATION SCHEME

A comparison of a genetic algorithm and a depth first search algorithm applied to Japanese nonograms

PID Controller Tuning using Soft Computing Methodologies for Industrial Process- A Comparative Approach

Reg. No. : BASIC ELECTRICAL TECHNOLOGY (ELE 101)

Spec Information. Reactances Per Unit Ohms

Optimizing Broadband Harmonic Filter Design for Adjustable Speed Drive Systems

HISTORY: How we got to where we are. March 2015 Roy Boyer 1

CHAPTER 2 D-Q AXES FLUX MEASUREMENT IN SYNCHRONOUS MACHINES

CHAPTER 5 SYNCHRONOUS GENERATORS

Bimal K. Bose and Marcelo G. Simões

IN MANY industrial applications, ac machines are preferable

Evolution of Sensor Suites for Complex Environments

A Genetic Algorithm-Based Controller for Decentralized Multi-Agent Robotic Systems

INSTITUTE OF AERONAUTICAL ENGINEERING (Autonomous) Dundigal, Hyderabad

PERFORMANCE EVALUATION OF A THREE-PHASE INDUCTION MACHINE WITH AUXILIARY WINDING FED BY A LEADING REACTIVE CURRENT

ARRANGING WEEKLY WORK PLANS IN CONCRETE ELEMENT PREFABRICATION USING GENETIC ALGORITHMS

DISTRIBUTION NETWORK RECONFIGURATION FOR LOSS MINIMISATION USING DIFFERENTIAL EVOLUTION ALGORITHM

LECTURE NOTES ON ELECTRICAL MACHINE-II. Subject Code-PCEL4302

Developing Frogger Player Intelligence Using NEAT and a Score Driven Fitness Function

Question Paper Profile

COMPARATIVE ANALYSIS OF SELECTIVE HARMONIC ELIMINATION OF MULTILEVEL INVERTER USING GENETIC ALGORITHM

The synchronous machine as a component in the electric power system

Module 1. Introduction. Version 2 EE IIT, Kharagpur

GENERATOR INTERCONNECTION APPLICATION FOR ALL PROJECTS WITH AGGREGATE GENERATOR OUTPUT OF MORE THAN 2 MW

CHAPTER 3 VOLTAGE SOURCE INVERTER (VSI)

2. Simulated Based Evolutionary Heuristic Methodology

Multi-Objective Optimal Design of a NEMA Design D Three-phase Induction Machine Utilizing Gaussian-MOPSO Algorithm

DIAGNOSIS OF STATOR FAULT IN ASYNCHRONOUS MACHINE USING SOFT COMPUTING METHODS

An Optimized Performance Amplifier

Optimum Coordination of Overcurrent Relays: GA Approach

COMPARISON OF TUNING METHODS OF PID CONTROLLER USING VARIOUS TUNING TECHNIQUES WITH GENETIC ALGORITHM

Transcription:

Engineering, 2011, 3, 859-864 doi:10.4236/eng.2011.38105 Published Online August 2011 (http://www.cip.org/journal/eng) Genetic Algorithm Based Performance Analysis of elf Excited Induction Generator Abstract Hassan Ibrahim, ostafa etwaly Department of Electrical and Computer Control Engineering, Arab Academy for cience, Technology and aritime Transport, Cairo, Egypt E-mail: {hibrahim_eg, mostafiii}@yahoo.com eceived June 8, 2011; revised July 6, 2011; accepted July 20, 2011 This paper investigates the effects of various parameters on the terminal voltage and frequency of self excited induction generator using genetic algorithm. The parameters considered are speed, capacitance, leakage reactance, stator and rotor resistances. imulated results obtained using genetic algorithm facilitates in exploring the performance of self-excited induction generator. The paper henceforth establishes the application of user friendly genetic algorithm for studying the behaviour of self-excited induction. Keywords: elf-excited Induction Generator, Genetic Algorithm Toolbox, Frequency, Terminal Voltage 1. Introduction The self-excited induction generators (EIG) have been found suitable for energy conversion for remote locations. uch generators may be commonly used in the remote areas. These machines can be used to meet the local demand of remote areas in the absence of a grid. EIG has many advantages such as simple construction, absence of DC power supply for excitation, reduced maintenance cost, good over speed capability self short-circuit protection capability and no synchronizing problem [1]. In the last two decades self excited induction generator has attached considerable attention due to its application as a standalone generator using conventional and non conventional energy sources. elf excitation in an induction machine occurs when the rotor is driven by a prime mover and a suitable capacitance is connected across the stator terminals the machine operating in this mode is called a self excited induction generator (EIG) which has been increasingly utilized in stand-alone generation systems that employ wind or hydro power. The frequency and value of the voltage generated by these generators are highly dependent on speed, excitation capacitance and load [2,3]. The performance characteristics of a self-excited induction generator can be obtained after the determination of two unknown parameters, such as the magnetizing reactance and frequency. Usually, Newton-aphson method and Nodal-Admittance. ethod are used to determine the generator s un- known parameters which are the conventional methods used since three decades. If either of these two methods is used, lengthy mathematical derivations should be carried out to formulate the required equations in a suitable simplified form. The real and imaginary term separations are carried out by hand [4]. Genetic algorithm (GA) is a stochastic optimization technique. It is simple, powerful, reliable, derivative-free stochastic global optimization technique (search algorithm) inspired by the laws of natural selection and genetic. This algorithm is derivative-free in the sense that it does not need functional derivative information to search for a set solution that minimizes (or maximizes) a given objective function [5]. This paper deals with the implementation of intelligent approach, based on genetic algorithm, for the performance analysis of self-excited induction generator. Unlike conventional methods of analysis, lengthy algebraic derivations or accurate initial estimates are not required. In addition, the same objective function is to be minimized irrespective of the unknown parameters. The other important feature of the present approach is the possibility of determining more than two unknown parameters simultaneously. Therefore, it can be used to obtain the performance characteristics of three-phase self-excited induction generator 2. Analysis of EIG The steady-state operation of the self excited generator

860 H. IBAHI ET A. may be analyzed by using genetic algorithm, the equivalent circuit representation [6] is shown in Figure 1.,, are the stator, rotor and load resistances respectively. X, X, X, X C are the stator, rotor, and mag-netizing and excitation reactance respectively. Y, Y, Y, Y, Y C are the stator, rotor, magnetizing, load and excitation admittances respectively. F is the P.U frequency. v is the P.U speed which is the ratio between rotor speed and synchronous speed. I, I, I, are the stator, rotor and load currents respectively. V g, V T, E 1 are the P.U air gap, terminal voltage and air gap voltage at rated frequency respectively. The total current at node a in Figure 1 can be written as in the following Equation (1): where 1 1 0 E Y Y Y (1) YC Y Y 1 Y1 Y YC Y Y F 1 1 Y Y YC 2 jx jxc F 1 1 Y F jx jx F v Under self-excitation E 1 0, therefore the sum of total admittance connected across the air gap must be zero [7,8], i.e. Y Y Y (3) 1 0 1 (2) eal Y Y Y 0 (4) 1 Imag Y Y Y 0 (5) For given value of the shaft speed, generator parameters, excitation capacitance and load impedance, solution of Equation (4) gives the frequency F in P.U. Then, corresponding value of magnetizing reactance X can be calculated from Equation (5) using the value of F obtained from Equation (4). After determining the values of F and X, the air gap voltage E 1 can be determined from the experimentally obtained magnetization curve, which relates V g /F and X. By applying mesh current method, to the model given in Figure 1, the stator current (I ) and the current of the load (I ) can be determined from the following equation (6), Eg F I jxc jx 2 F F jfxc (6) jx CI I Vt I F jxc Figure 1. Per phase equivalent circuit of EIG. 3. Genetic Algorithm Different from conventional optimization methods, the GA was developed based on the Darwinian evolution theory of survival of the fittest. It has produced good results in many practical problems and has become a powerful tool for solving nonlinear equations. The GA manipulates strings of binary digits and measures each string s strength with a fitness value. The main idea is that stronger strings advance and mate with other strong strings to produce offspring. Finally, one string emerges as the best. Another important advantage is that it offers parallel search, which can overcome local optima and then finally find the globally optimal solution. The mechanics of the GAs are elementary, involving nothing more than copying strings, random number generation, and swapping partial strings. A common GA is mainly composed of three operators: reproduction, crossover, and mutation. GA for this particular problem has the following components [9]: 1) Genetic representation for potential solutions to the problem. 2) A way to create an initial population of potential solutions. 3) Evaluation function that plays the role of the environmental rating solutions in terms of their fitness. This is because the population undergoes a simulated evolution at each generation. This role of an environment helps relatively good solutions to reproduce, while relatively bad solutions die. 4) Genetic operators then alter the composition of children. The multidirectional search is performed by maintaining a population of potential solutions and encourages information exchange between these directions. 5) Values for various control parameters that the GA uses (e.g., population size, probabilities of applying GA). Genetic Algorithm Based odeling of EIG The genetic algorithm [10] has been implemented to find the optimum value of the frequency (F) and magnetic

H. IBAHI ET A. 861 reactance (X ), Equation (3) can be considered to be the objective (Fitness) function for the GA. Y Y Y 1 0 ubject to 0.9 F 0.99 100 X m 200 The objective function is minimized subjected to constrain shown in Equation (7). The first constrain involves that the induction generator must operate in the saturation region which means the magnetizing reactance is always less than the unsaturated value and the second constraint involves that the obtained frequency must be less than the prime mover s speed. The 1st step comes with GA optimization started with a population of randomly generated individuals representing a set of solutions for the problem. Each individual is composed of the problem s variables the population size is chosen to be 160. The 2nd step comes with computing the fitness function for the entire available elements for such parameter. The 3rd step select two parents from a population according to their fitness (the better fitness, the bigger chance to get selected) which the roulette wheel selection is applied followed by uniform cross over with probability of 0.8. The 4th step is the death process eliminate all population, which have bad fitness according to a crossover probability of 0.8 the 5th step is the crossover process to generate offspring to keep up the same number of population and to have improved parameters values. The crossover process uses the parents with best fitness, a binary coding is used to express weight s magnitudes, and single-point crossover method is used in our case. The 6th step is the mutation process with mutation probability of 0.05, finally, the new population is formed and procedures repeated until reaching the accuracy < 0.001 [11-13]. After determining the values of F and X, the air gap voltage V g can be determined from the experimentally obtained magnetization curve, which relates V g /F and X. By applying mesh current method, to the model given in Figure 1, the stator current (I ) and the current of the load (I ) can be determined from the Equation (6). The flowchart describing the GA optimization technique implemented in this paper is shown in Figure 2. 4. ystem esults and imulation The simulated results are obtained by using GA toolbox on machine with specifications given in Appendix, Table 1 gives the details of each data set taken on test machine the range of speed and value of terminal capacitance have been chosen to enable the machine to supply power to the connected load at rated voltage. The resistive load is not sensitive to the changes in frequency. (7) Therefore, the two values of load resistance were chosen arbitrarily. Figures 3 and 4 show the variation of terminal voltage and generated frequency with different speed values with capacitance (36 µf) and different value of resistive load (160 Ω, 220 Ω), it is shown that the value of terminal voltage and generated frequency increase with increasing the speed. tart Input EIG circuit parameters and its magnetization curve andomly generated initial population chromosome [X m, F] Evaluate the fitness function for all the population space Genetic operators 1- eproduction 2-Cross over 3-utation Convergence Y 1 + Y + Y < = 00 Obtain EIG performance top Figure 2. flow chart of GA for steady state analysis of EIG. et No. Table 1. The input data (N, C, ). From peed P To C (µf) (Ω) No. of amples 1 1435 1570 36 160 6 2 1275 1435 51 160 6 3 1410 1565 36 220 6 4 1290 1425 51 220 6

862 H. IBAHI ET A. Figure 5 shows the best fitness value and average fitness versus the iterations at C = 36 µf, = 160 Ω and N = 1435 r.p.m, the best fitness reach to zero at iteration number 51. Figure 6 shows the values of the best individuals at F = 0.9451 P.U, X = 102.8225 Ω (that having the best fitness values) in each generation at C = 36 µf, = 160 Ω and N = 1435 r.p.m. Figure 7 shows the minimum, maximum and mean fitness function values versus the iterations. The vertical line shows the range from the smallest to the largest fitness value, at C = 36 µf, = 160 Ω and N = 1435 r.p.m. Figure 8 shows the average distance between the individuals versus the iterations, which is a good measure of the diversity of a population at C = 51 µf, = 160 Ω and N = 1435 r.p.m. Figure 9 shows the variation of terminal voltage and generated frequency with different speed values with capacitance (51 µf) and different value of resistive load (160 Ω), as shown that the value of terminal voltage and generated frequency increase with increasing the speed. Figure 3. Voltage and frequency versus speed at C = 36 µf and = 160 Ω. Figure 6. The best individuals values at last iteration (number 51) at C = 36 µf and = 160 Ω. Figure 4. Voltage and frequency versus speed at C = 36 µf and = 220 Ω. Figure 5. Best fitness value and average fitness value versus iteration at C = 36 µf and = 160 Ω. Figure 7. The minimum maximum and mean of fitness function versus iterations at C = 36 µf and = 160 Ω.

H. IBAHI ET A. 863 using a certain fitness function. 5. Conclusions In this application, intelligent approach, based on genetic algorithm optimization procedure, has been implemented successfully for steady state analysis of self-excited induction generators under different operating speed, capacitance and resistive load conditions. The proposed technique has shown that, it is reliable accurate and simple compared to the conventional methods. 6. eferences Figure 8. The average distance of individuals versus iterations at C = 36 µf and = 160 Ω. Figure 9. Voltage and frequency versus speed at C = 51 µf and = 160 Ω. Genetic algorithms have been used for difficult problems for machine learning and also for evolving simple programs. The result obtain from GA is more accurate from another conventional method because the GA work to find the optimum value of magnetization reactance and frequency. Genetic algorithm (GA) is becoming a popular method for optimization because it has several advantages over other optimization methods. It is robust, able to find global and local minimum, and does not require accurate initial estimates. In addition, detailed derivations of analytical equations to reformulate an optimization problem into an appropriate forms are not required GA can be directly implemented to acquire the optimum solution [1] D. Joshi, K. andhu and. oni, Voltage Control of elf-excited Induction Generator Using Genetic Algorithm, Turkish Journal of Electrical Engineering and Computer ciences, Vol. 17, No. 1, 2009, pp. 87-97. [2]. Vadhera and K. andhu, Genetic Algorithm Toolbox Based Investigation of Terminal Voltage and Frequency of elf Excited Induction Generator, International Journal of Advanced Engineering & Application, Vol. 1, No. 1, 2010, pp. 243-250. [3] K. andhu and D. Joshi, A imple Approach to Estimate the teady-tate Performance of elf-excited Induction Generator, Wseas Transactions on ystems and Control, Vol. 3, No. 3, 2008, pp. 208-218. [4]. ahley and Y. Chauhan, teady tate Analysis of Three-Phase elf-excited Induction Generator, aster Thesis, Department of Power ystems & Electric Drives, Thapar University, Patiala, 2008. [5] Y. Cao and Q. Wu, Teaching Genetic Algorithm Using atlab, International Journal of Electrical Engineering Education, Vol. 36, No. 2, 1999, pp. 139-153. [6]. Vadhera and K. andhu, Constant Voltage Operation of elf Excited Induction Generator Using Optimization Tools, International Journal of Energy and Environment, Vol. 2, No. 4, 2008, pp. 191-198. [7] A.. Alolah and. A. Alkanhal, Optimization Based teady tate Analysis of Three Phase elf-excited Induction Generator, IEEE Transactions on Energy Conversion, Vol. 15, No. 1, 2000, pp. 61-65. doi:10.1109/60.849117 [8] H. E. A. Ibrahim,. etwaly and. erag, Analysis of elf Excited Induction Generator Using ymbolic Toolbox and Artificial Neural Network, Ain hams Journal of Electrical Engineering, Vol. 3, No. 8, 2010, pp. 17-28. [9] D. Joshi and K. andhu, Excitation Control of elf Excited Induction Generator Using Genetic Algorithm and Artificial Neural Network, International Journal of athematical odela and ethods In applied ciences, Vol. 3, No. 1, 2009, pp. 68-75. [10] K. andhu and D. Joshi, teady ate Analysis of elf Excited Induction Generator Using Phasor Diagram Based Iterative odel, Wseas Transactions on Power ystems,

864 H. IBAHI ET A. Vol. 3, No. 12, 2008, pp. 715-724. [11] A.-F. Attia, H. oliman and. abry, Genetic Algorithm Based Control ystem Design of a elf-excited Induction Generator, Czech Technical University in Prague Acta Polytechnica, Vol. 46, No. 2, 2006, pp. 11-22. [12] D. Joshi, K. andhu and. oni, Constant Voltage Constant Frequency Operation for a elf-excited Induction Generator, IEEE Transactions on Energy Conversion, Vol. 21, No. 1, 2006, pp. 228-234. doi:10.1109/tec.2005.858074 [13] H. E. A. Ibrahim, Design Parameters for icro achined Tunneling Accelerometer Using Genetic Optimization, Ain hams Journal of Electrical Engineering, Vol. 40, No. 4, 2005, pp. 787-806. Appendix achine pecifications: 3-Phase, 50 Hz, 2.2 kw/3.0 HP, 4-pole, 230 Volts, 8.6 Amp. Delta connected squirrel cage induction machine. achine Parameters: = 3.35 Ω =1.76 Ω X =4.85 Ω X =4.85 Ω agnetization characteristics of machine for determination of air gap voltage: E1 = 344.411 1.610 X X < 82.292 E1 = 465.120 3.077 X 5.569 > X > = 82.292 E1 = 579.897 4.278 X 08.00 > X > = 95.569 E1 = 0 X > 108.00