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Hybrid fuzzy-neural network-based composite contingency ranking employing fuzzy curves for feature selection

机译:基于模糊神经网络的混合模糊排序方法的模糊曲线特征选择

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Maintaining power system security in the deregulated and unbundled electricity market is a challenging task for power system engineers. The idea is to short-list critical contingencies from a large list of contingencies and to rank the contingencies expected to drive the system towards instability. Timely corrective measures can then be planned to save the system from collapse and blackout. This paper presents a simple multi-output fuzzy-neural network for contingency ranking in a power system. A fuzzy composite performance index (FCPI), formulated by combining (ⅰ) voltage violations, (ⅱ) line flow violations and ( ⅲ) voltage stability margin is being proposed in this paper for composite ranking of contingencies. The proposed approach is very effective in handling contingencies lying on the boundary between two severity classes. Feature selection using fuzzy curves has been employed to reduce the dimension of the network. The performance of the proposed method has been tested on a 69-bus practical Indian power system.
机译:对于电力系统工程师而言,在不受管制和不捆绑的电力市场中维护电力系统安全是一项艰巨的任务。这个想法是从大量的意外事件中选择关键的意外事件,并对可能导致系统不稳定的意外事件进行排名。然后可以计划及时的纠正措施,以防止系统崩溃和停电。本文提出了一种简单的多输出模糊神经网络,用于电力系统的突发事件排名。针对突发事件的综合排名,本文提出了一种模糊综合性能指标(FCPI),该指标由(ⅰ)电压违规,(ⅱ)线路流量违规和(combining)电压稳定裕度结合而成。所提出的方法在处理两个严重性等级之间的边界上的突发事件方面非常有效。已经使用使用模糊曲线的特征选择来减小网络的尺寸。该方法的性能已经在69总线实用的印度电力系统上进行了测试。

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