Fuzzy Analysis of Steady State Security for On-Line Assessment

M. Matos, N. Hatziargyriou, J. Lopes, G. Contaxis
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引用次数: 3

Abstract

This paper reports the application of fuzzy classification procedures to the on-line steady state security assessment. The traditional "secure" or "insecure" deterministic classification, based on limit violation indices determined from the post-contingency state, is replaced by fuzzy classification procedures. Fuzzy clustering algorithms are used to identify clusters centers h a training set, previously generated, for each considered contingency. The proposed approach is applied on a realistic model of the Hellenic Interconnected power system for one selected contingency. Performance evaluation tests were performed and the quality of the proposed classification scheme is discussed.
用于在线评估的稳态安全模糊分析
本文报道了模糊分类方法在在线稳态安全评估中的应用。传统的“安全”或“不安全”的确定性分类是基于从事故后状态确定的极限违反指标,而被模糊分类程序所取代。模糊聚类算法用于识别先前生成的训练集的聚类中心,用于每个考虑的偶然性。本文将所提出的方法应用于希腊互联电力系统的一个实际模型中。进行了性能评价试验,并对所提出的分类方案的质量进行了讨论。
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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