A hybrid method for the dynamic parameter identification of generators via on-line measurements

Yunzhi Cheng, Weijen Lee, Shun-Hsien Huang, John Adams
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引用次数: 7

Abstract

To maintain the reliability and security of power system, the Independent Power Producers (IPPs) are required to provide the accurate dynamic parameters of the generation facilities to the Independent System Operator (ISO) or Regional Transmission Organization (RTO). Dynamic parameter identification which aims at obtaining accurate dynamic parameters has been one of the central topics in power system studies for years. Sensitivity analysis is the most popular and traditional method in dynamic parameter identification of power system. However, its effectiveness is highly dependent on the preset initial guess. Some intelligent methods such as GA and ANN which can handle this problem usually require much more time and are complicated to be applied. This paper proposes a hybrid method combining particle swarm optimization and sensitivity analysis for dynamic parameter identification. The proposed hybrid method provides the right balance and trade-off between convergence and computation speed. Particle Swarm Optimization, a relatively new intelligent optimization method, is employed to find an approximate solution in the first step. Then the sensitivity analysis is run to achieve an accurate solution starting with the approximate solution obtained from PSO. This paper focuses on key parameters, pre-recognized by PSS/E simulation with historical data, to reduce the number of simulation cases. Also the parallel programming is used to take advantage of multiple core processors to significantly increase the computation speed. The simulation results show the validity and benefit of the hybrid method.
一种基于在线测量的发电机动态参数辨识混合方法
为了维护电力系统的可靠性和安全性,独立发电商(ipp)需要向独立系统运营商(ISO)或区域输电组织(RTO)提供准确的发电设施动态参数。以获取准确的动态参数为目标的动态参数辨识一直是电力系统研究的核心问题之一。灵敏度分析是电力系统动态参数辨识中最常用、最传统的方法。然而,其有效性高度依赖于预设的初始猜测。一些智能方法,如遗传算法和人工神经网络,可以处理这一问题,但通常需要更多的时间和复杂的应用。提出了一种粒子群优化与灵敏度分析相结合的动态参数辨识方法。所提出的混合方法在收敛性和计算速度之间提供了适当的平衡和权衡。第一步采用一种较新的智能优化方法——粒子群算法求解问题的近似解。然后从粒子群算法得到的近似解出发,进行灵敏度分析,得到精确解。本文针对关键参数,利用历史数据进行PSS/E仿真预识别,以减少仿真案例的数量。同时,利用多核处理器的优势,采用并行编程的方法大大提高了计算速度。仿真结果表明了该混合方法的有效性和优越性。
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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