Load Frequency Control of Interconnected Power Systems Using Hybrid Algorithm Based Particle Swarm and Grey Wolf Optimizers

M. A. Sobhy, M. Abdelrahman, H. Hasanien, A. Abdelaziz, A. Zobaa
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引用次数: 1

Abstract

This study introduces a new hybrid optimization technique into the research field of load frequency control. The new technique is a hybrid technique that combines two metaheuristic-based algorithms: Particle Swarm Optimizer (PSO) and Grey Wolf Optimization (GWO). This new technique facilitates the selection of the best gain values of the controller used in the power system under study. The controller utilized in this study is the classical proportional-integral-derivative (PID) controller. This classical controller is selected in this study to make a reliable comparison with other applied techniques. The study’s main goal is to retain the system frequency and tie-line power within permissible limits after applying a load disturbance to one of the system areas. The system under test is built as a three area network with thermal power generation units. The hybrid PSO-GWO (HPSOGWO) algorithm is applied to the system under test. The results obtained are verified by comparing them with other techniques, including the bacterial foraging technique (BFOA) and harmony search technique (HS). The results show that the HPSOGWO algorithm can preserve the frequency and tie-line power within the permissible bounds faster and with better transient specifications than that obtained using the other algorithms under comparison. The three area system is simulated in MATLAB environment for an easier interface.
基于粒子群和灰狼优化器的互联电力系统负荷频率控制
本研究将一种新的混合优化技术引入负载频率控制研究领域。该方法是结合粒子群优化算法(PSO)和灰狼优化算法(GWO)两种元启发式算法的混合技术。这种新技术有利于所研究的电力系统中控制器最佳增益值的选择。本研究使用的控制器是经典的比例-积分-导数(PID)控制器。本研究选择这种经典控制器是为了与其他应用技术进行可靠的比较。该研究的主要目标是在对某一系统区域施加负载扰动后,将系统频率和联络线功率保持在允许的范围内。被测系统是一个带火电机组的三区域网络。将混合PSO-GWO (HPSOGWO)算法应用于待测系统。通过与细菌觅食技术(BFOA)和和谐搜索技术(HS)的比较,验证了所得结果。结果表明,与其他算法相比,HPSOGWO算法能更快地将频率和联络线功率保持在允许范围内,并具有更好的暂态性能。为了方便界面使用,在MATLAB环境下对三区系统进行了仿真。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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