Performance analysis of stand-alone six-phase induction generator using heuristic algorithms
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Date
2019
Journal Title
Journal ISSN
Volume Title
Publisher
Elsevier
Abstract
The paper exhibits the performance analysis of six-phase self-excited induction generator for stand-alone wind energy
generation system. The analysis is based essentially on solving the nonlinear equivalent circuit of the SP-SEIG, which is to
find the per-unit frequency F and the magnetizing reactance Xm minimizing the determinant of the nodal admittance matrix
Y instead of solving two non-linear equations with two unknowns. Hence, the equation-solving problem is converted to an
optimization problem. The obtained minimum yields the adequate magnetizing reactance and frequency which will be used
subsequently to compute the self-excitation process requirements in terms of the prime mover speed, the excitation capacitance
and the load impedance on the one hand and to predict the generator steady state performance parameters on the other. In
this work, the analysis is performed using three different global search algorithms, the genetic algorithm (GA), the particle
swarm optimization (PSO) technique and the Taguchi optimization method (TM). A study of some simulation results is carried
out using MatLab to compare between these three algorithms in terms of accuracy and guaranteed convergence in finding the
minimum of the admittance
Description
Keywords
Six-phase induction generator, Optimization, Heuristic algorithms, Self-excitation, Wind energy
