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2019 | OriginalPaper | Chapter

Optimal H Control for a Variable-Speed Wind Turbine Using PSO Evolutionary Algorithm

Authors : Fatima Ez-zahra Lamzouri, El-Mahjoub Boufounas, Aumeur El Amrani

Published in: Recent Advances in Electrical and Information Technologies for Sustainable Development

Publisher: Springer International Publishing

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Abstract

This paper presents an optimal tracking and robust controller for a variable-speed wind turbine (VSWT). The main objective of the controller is to optimize the energy captured from the wind at below rated power, and minimize the mechanical stress in the system. In order to guarantee the wind power capture optimization without any chattering behavior, this study proposes to combine the H control with particle swarm optimization (PSO) algorithm. The PSO technique with efficient global search is used to optimize the H controller parameters simultaneously to control the system trajectories, which determines the system performance. The stability of the system using this controller is analyzed by Lyapunov theory. In present work, the simulation results of the proposed method (PSO-H) are compared with the conventional sliding mode control (SMC). The comparison results reveal that the proposed controller is more effective in reducing the tracking error and chattering.

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Metadata
Title
Optimal H∞ Control for a Variable-Speed Wind Turbine Using PSO Evolutionary Algorithm
Authors
Fatima Ez-zahra Lamzouri
El-Mahjoub Boufounas
Aumeur El Amrani
Copyright Year
2019
DOI
https://doi.org/10.1007/978-3-030-05276-8_6