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Hybrid expert system neural network hierarchical architecture for classifying power system contingencies

机译:混合专家系统神经网络分层架构用于分类电力系统常规

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The authors present a hierarchical architecture which couples an expert system (ES) with multiple neural networks (NNs) for classifying power system contingencies. The ES performs the 'coarse' screening to decide if a contingency is potentially harmful and then determines its type of security limit violations. It uses a set of heuristic rules and a set of performance indicators to filter out the secure contingencies and direct the potentially harmful ones for further analysis in the appropriate NN. The NN's take the coarse classification outcome from the ES and perform a 'finer' screening by classifying the contingencies according to the severity of limit violations.
机译:作者介绍了一种分层体系结构,该架构将具有多个神经网络(NNS)的专家系统耦合,用于对电力系统造型进行分类。 ES执行“粗略”筛选以确定偶然性是否可能有害,然后确定其类型的安全限制违规。它使用一组启发式规则和一组性能指标来滤除安全的突发事件并引导潜在有害的毒性,以便在适当的NN中进一步分析。 NN采用ES的粗加分类结果,并通过根据限制违规的严重性对突发事件进行分类来执行“更精细”的筛选。

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