A Novel Improved Sea-Horse Optimizer for Tuning Parameter Power System Stabilizer

Widi Aribowo
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引用次数: 1

Abstract

Power system stabilizer (PSS) is applied to dampen system oscillations so that the frequency does not deviate beyond tolerance. PSS parameter tuning is increasingly difficult when dealing with complex and nonlinear systems. This paper presents a novel hybrid algorithm developed from incorporating chaotic maps into the sea-horse optimizer. The algorithm developed is called the chaotic sea-horse optimizer (CSHO). The proposed method is adopted from the metaheuristic method, namely the sea-horse optimizer (SHO). The SHO is a method that duplicates the life of a sea-horse in the ocean when it moves, looks for prey and breeds.  In This paper, The CSHO method is used to tune the power system stabilizer parameters on a single machine system. The proposed method validates the benchmark function and performance on a single machine system against transient response. Several metaheuristic methods are used as a comparison to determine the effectiveness and efficiency of the proposed method. From the research, it was found that the application of the logistics Tent map from the chaotic map showed optimal performance. In addition, the application of the PSS shows effective and efficient performance in reducing overshoot in transient conditions.
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一种用于电力系统稳定器参数整定的改进海马优化器
电力系统稳定器(PSS)的作用是抑制系统的振荡,使其频率偏差不超过允许范围。在处理复杂非线性系统时,PSS参数整定变得越来越困难。本文提出了一种将混沌映射引入海马优化器的新型混合算法。该算法被称为混沌海马优化器(CSHO)。提出的方法采用了元启发式方法,即海马优化器(SHO)。SHO是一种复制海马在海洋中移动、寻找猎物和繁殖的生活的方法。本文采用CSHO方法对单机系统的电力系统稳定器参数进行整定。该方法在单机系统上针对暂态响应验证了基准函数和性能。使用几种元启发式方法进行比较,以确定所提出方法的有效性和效率。研究发现,从混沌图中提取物流帐篷图的应用具有最优的性能。此外,PSS的应用在瞬态条件下显示出有效的超调性能。
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