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A neural network preestimation filter for bad-data detection and identification in power system state estimation

机译:用于电力系统状态估计中不良数据检测和识别的神经网络预测滤波器

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摘要

Popular state estimation techniques in industry are mostly based on the weighted least squares (WLS) method and its derivatives. These estimators usually detect and identify multiple gross measurement errors by repeating a cycle of estimation-detection-elimination. It is rather time consuming for large systems. This paper presents a neural network preestimation filter to identify most forms of gross errors, including conforming bad data, in raw measurements before state estimation rather than afterwards. The proposed neural network model is trained to be a measurement estimator by using the correct measurements of typical system operating states. Once trained, the filter quickly identifies most forms of gross measurement errors simultaneously by comparing the square difference of the raw measurements and their corresponding estimated values with some given thresholds. System observability is maintained by replacing bad data with their reasonably accurate estimates. Using the proposed neural network preestimation filter, the efficiency of present state estimators is greatly improved. Results from several case studies are presented.
机译:工业上流行的状态估计技术主要基于加权最小二乘(WLS)方法及其派生工具。这些估算器通常通过重复估算-检测-消除循环来检测和识别多个总体测量误差。对于大型系统而言,这非常耗时。本文提出了一种神经网络预估计过滤器,用于在状态估计之前而不是之后识别原始测量中的大多数形式的总误差,包括符合条件的不良数据。通过使用典型系统运行状态的正确测量值,将建议的神经网络模型训练为测量估计值。训练后,过滤器通过将原始测量值的平方差及其对应的估计值与某些给定阈值进行比较,可以快速同时识别大多数形式的总测量误差。通过将不良数据替换为合理准确的估算值,可以保持系统的可观察性。使用所提出的神经网络估计滤波器,可以大大提高当前状态估计器的效率。介绍了一些案例研究的结果。

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