多机电力系统网络LFO阻尼的平衡优化

Sayed Md.Abrar Gani, Md. Rashidul Islam, M. Shafiullah, Jahid Hasan Tayeb, M. Hossain, Amjad Ali
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引用次数: 0

摘要

提出了一种基于进化算法的电力系统稳定器(PSS)设计,用于多机电力系统网络(MMPSNs)的低频振荡阻尼。为了提高系统的阻尼,提出了一种基于阻尼比的目标函数,并在此基础上考虑了广泛应用的超前-滞后型PSS。均衡优化器(EO)是最近发展起来的一种能够在复杂工程问题中找到最优解的元启发式算法。该算法的弹性证明了它能够导致最佳的PSS设计,而不管用户最初做出的假设。本研究采用了2区4机和IEEE 10机39总线两种不同的多机网络。将基于eo的PSS结果与传统的PSS结果进行比较,以研究哪一种PSS结果的稳定性更好。仿真结果表明,与其他技术相比,EO技术显著减少了沉降时间和超调量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Equilibrium Optimizer for LFO Damping in Multimachine Power System Networks
An evolutionary algorithm-based power system stabilizers (PSS) design for low-frequency oscillations (LFO) damping in multi-machine power system networks (MMPSNs) is presented in this paper. A damping ratio-based objective function is developed to enhance the system damping where the widely employed lead-lag type PSS is considered in the problem formulation. The equilibrium Optimizer (EO), a recently developed metaheuristic algorithm that is capable of finding optimal solutions in complex engineering problems, is employed in this article. The algorithm's resilience is demonstrated by its ability to lead to the best PSS design regardless of the initial assumption made by the user. Two distinct multi-machine networks 2-area 4-machine and IEEE 10-machine 39-bus are used in this research. EO-based PSS results are compared with traditional PSS results to investigate which one yields better results for stability. According to the simulation findings, the EO technique reduces the settling time and overshoot significantly over the other techniques.
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