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Fast real power contingency ranking using counter propagation network: feature selection by neuro-fuzzy model

机译:使用计数器传播网络快速进行有功偶然事件排序:通过神经模糊模型进行特征选择

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In deregulated operating regime power system security is an issue that needs due consideration from researchers in view of unbundling of generation and transmission. Real power contingency ranking is an integral part of security assessment. The objective of contingency screening and ranking is to quickly and accurately shortlist critical contingencies from a large list of credible contingencies and rank them according to their severity for further rigorous analysis. In the present work, modified counter propagation network (CPN) with neuro-fuzzy (NF) feature selector is used for real power contingency ranking of the transmission system. The CPN is trained to estimate the severity of a series of contingencies for given pre-contingencies line-flows. But for larger size system it becomes rather difficult to cope with the increased size of input pattern and network as well. And it adversely affected the performance of the network and computational overhead. The proposed NF feature selector prunes the size of input pattern by exploring the individual power of features to characterize/discriminate different clusters. The reduced set of discriminating inputs not only ensures saving in training time but also improves estimation accuracy and execution time and these are the deciding parameters in evaluating the performance of particular contingency ranking technique. The effectiveness of proposed approach is demonstrated on IEEE 30-bus test system and practical 75-bus Indian system.
机译:在解除管制的运行体制中,鉴于发电和输电的捆绑,研究人员应充分考虑电力系统的安全问题。有功事故应急等级是安全评估的组成部分。应急筛选和排名的目的是从大量可靠的突发事件中快速准确地将关键突发事件短名单化,并根据其严重性对它们进行排序,以进行更严格的分析。在当前的工作中,带有神经模糊(NF)特征选择器的改进的计数器传播网络(CPN)被用于传输系统的有功功率应急等级。对CPN进行了培训,以针对给定的突发事件前线流估计一系列突发事件的严重性。但是对于较大尺寸的系统,也很难应付输入模式和网络尺寸的增加。并且它不利地影响了网络的性能和计算开销。拟议的NF特征选择器通过探索特征的个体能力来表征/区分不同聚类来修剪输入模式的大小。减少的辨别输入集不仅可以确保节省训练时间,而且可以提高估计准确性和执行时间,这些是评估特定应急排序技术的性能时的决定性参数。在IEEE 30总线测试系统和实际的75总线印度系统上证明了该方法的有效性。

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