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Measurement-based frequency dynamic response estimation using geometric template matching and recurrent artificial neural network

机译:基于几何模板匹配和递归人工神经网络的基于测量的频率动态响应估计

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摘要

Understanding power system dynamics after an event occurs is essential for the purpose of online stability assessment and control applications. Wide area measurement systems (WAMS) based on synchrophasors make power system dynamics visible to system operators, delivering an accurate picture of overall operating conditions. However, in actual field implementations, some measurements can be inaccessible for various reasons, e.g., most notably communication failure. To reconstruct these inaccessible measurements, in this paper, the radial basis function artificial neural network (RBF-ANN) is used to estimate the system dynamics. In order to find the best input features of the RBF-ANN model, geometric template matching (GeTeM) and quality-threshold (QT) clustering are employed from the time series analysis to compute the similarity of frequency dynamic responses in different locations of the power system. The proposed method is tested and verified on the Eastern Interconnection (EI) transmission system in the United States. The results obtained indicate that the proposed approach provides a compact and efficient RBF-ANN model that accurately estimates the inaccessible frequency dynamic responses under different operating conditions and with fewer inputs.
机译:对于在线稳定性评估和控制应用而言,了解事件发生后的电源系统动力学至关重要。基于同步相量的广域测量系统(WAMS)使电力系统动态对系统操作员可见,从而准确显示整体运行状况。但是,在实际的现场实施中,由于各种原因,例如最显着的通信故障,可能无法访问某些测量值。为了重建这些难以接近的测量值,本文使用径向基函数人工神经网络(RBF-ANN)来估计系统动力学。为了找到RBF-ANN模型的最佳输入特征,从时间序列分析中采用几何模板匹配(GeTeM)和质量阈值(QT)聚类来计算电源不同位置的频率动态响应的相似性系统。在美国的东部互连(EI)传输系统上对提出的方法进行了测试和验证。获得的结果表明,所提出的方法提供了一种紧凑而有效的RBF-ANN模型,该模型可以准确估计在不同工作条件下且输入较少的情况下无法访问的频率动态响应。

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