多机电力系统设计PSS增强小信号稳定性的优化算法比较研究

Vivek Prakash, B. Soni, Akash Saxena, Vikas Gupta
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引用次数: 4

摘要

电力系统稳定器(pss)用于大型、复杂和互联的电力系统中,以抑制低频振荡。因此,需要利用最有效的优化技术来简化小信号稳定性问题。从这个角度来看,许多成功而强大的优化方法和算法被用来制定和解决这个问题。本文比较了三种先进的优化技术在新英格兰测试系统(10个发电机,39个母线)PSS参数调优中的性能。为了有效地分析和设计多目标、多机电力系统的PSS,本文考虑的优化算法有:社会蜘蛛优化(SSO)、遗传算法(GA)和粒子群优化(PSO)。分析了该方法在不同工况下的鲁棒性。可以观察到,Social Spider Optimization (SSO)的性能优于其他两种算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparative study of optimization algorithms for enhancement of small signal stability by designing PSS for multi-machine power system
Power System Stabilizers (PSSs) are used in very large, complex & interconnected power system in order to damp out low frequency oscillations. Therefore, it is required to utilize most efficient optimization techniques to simplify the small signal stability problem. From this point of view, many successful and powerful optimization methods and algorithms have been employed in formulating and solving this problem. The comparison of performances of three advanced optimization techniques in tuning the parameters of PSS in a New England test system (10 Generator, 39 buses) is presented in this paper. The optimization algorithms considered in this paper for effective analysis and design of PSS for multi-objective, multi-machine power systems are: Social Spider Optimization (SSO), Genetic Algorithm (GA), and Particle Swarm Optimization (PSO). Robustness of proposed technique is analyzed over different type of operating conditions. It is observed that Social Spider Optimization (SSO) is performing better than the other two algorithms.
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