Power System Stability Enhancement Based Optimized PID controller using Archimedes optimization algorithm

D. Osheba, Mahmoud G. Hemeida, T. Senjyu, M. Hussein
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Abstract

power system always suffering from sudden changes which affect power system stability. In this study, a single machine infinite bus (SMIB) power system based nonlinear model has been studied with and without optimized power system stabilized (PSS). A new metaheuristic algorithm inspired from physics lows named Archimedes optimization algorithm (AOA) has been used to tune parameters of PSS based proportional integral derivative (PSS-PID) controller. Two types of disturbances have been simulated to measure the efficiency of the proposed techniques, electrical three phase short circuit fault at generator terminals and a mechanical disturbance on the rotor shaft. The SMIB based optimized PSSPID provides a stable system with lower oscillation and fast response. AOA greatly improve the characteristics of the system under study compared to manually tune optimized PSS-PID controller.
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基于阿基米德优化算法的电力系统稳定性增强优化PID控制器
电力系统经常发生突变,影响系统的稳定性。本文研究了基于单机无限母线(SMIB)电力系统的非线性模型,并对有无优化电力系统稳定(PSS)进行了研究。提出了一种受物理学启发的元启发式算法——阿基米德优化算法(Archimedes optimization algorithm, AOA),用于基于比例积分微分(PSS- pid)控制器的参数整定。模拟了两种类型的干扰,即发电机终端的电气三相短路故障和转子轴上的机械干扰,以测量所提出技术的效率。基于SMIB优化的PSSPID系统具有稳定、振荡小、响应快的特点。与人工调优的PSS-PID控制器相比,AOA大大改善了被研究系统的特性。
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