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首页> 外文期刊>IEE proceedings. Part C >Data visualisation and identification of anomalies in power system state estimation using artificial neural networks
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Data visualisation and identification of anomalies in power system state estimation using artificial neural networks

机译:使用人工神经网络的数据可视化和电力系统状态估计中的异常识别

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摘要

Bad data identification is one of the most important and complex problems to be addressed during power system state estimation, particularly when both analogical and topological errors (branch or bus misconfigurations) are to be considered. The paper proposes a new method that is capable of distinguishing between analogical and topological errors, and also of identifying which are the bad measurements or the misconfigured elements due to unreported or incorrectly reported line outages, bus splits etc. The method explores the discrimination capability of the normalised innovations (the differences between the latest acquired measurements and their corresponding predicted quantities), which are used as input variables to an artificial neural network that provides, in the output, the anomaly identification. Data projection techniques are also used to visualise and confirm the discrimination capability of the normalised innovations. The method is tested using the IEEE 24-bus test system, where several types of errors have been simulated, including single and multiple bad measurements, topology errors involving branches or buses etc.
机译:不良数据识别是电力系统状态估计期间要解决的最重要和最复杂的问题之一,尤其是在同时考虑类比和拓扑错误(分支或总线配置错误)的情况下。本文提出了一种新的方法,该方法能够区分类比和拓扑错误,还可以识别是由于未报告或错误报告的线路中断,总线分裂等原因导致的不良测量或配置错误的方法。归一化的创新(最新采集的测量值与其对应的预测量之间的差异)用作人工神经网络的输入变量,该人工神经网络在输出中提供异常标识。数据投影技术还用于可视化和确认标准化创新的区分能力。该方法使用IEEE 24-bus测试系统进行了测试,其中模拟了几种类型的错误,包括单个和多个错误的测量结果,涉及分支或总线的拓扑错误等。

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