电力系统状态估计中假数据检测的神经网络模型

Adel Tabakhpour, M. Abdelaziz
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引用次数: 6

摘要

虚假数据注入是电力系统状态估计一直面临的问题。在这项工作中,训练神经网络来检测测量中是否存在错误数据。所提出的方法可以利用历史数据,如果有的话,通过使用它们在所提出的神经网络模型的训练集中。然而,本研究中感知器模型的输入是状态估计的残差元素,它们是高度相关的。因此,可以通过保留输入中信息量最大的特征来降低它们的维数。为此,使用了主成分分析(即数据预处理技术)。这种技术对于高度相关的数据集尤其有效,这就是电力系统测量的情况。不同的感知器模型的结果被提出的检测,比较一个简单的感知器,产生相同的结果,离群点检测方案。为了生成训练集,在13总线IEEE测试系统中对不同测量值的不同假数据进行状态估计,残差作为训练集的输入保存。测试结果表明,训练后的网络在检测测量中的虚假数据方面具有良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural Network Model for False Data Detection in Power System State Estimation
False data injection is an on-going concern facing power system state estimation. In this work, a neural network is trained to detect the existence of false data in measurements. The proposed approach can make use of historical data, if available, by using them in the training sets of the proposed neural network model. However, the inputs of perceptron model in this work are the residual elements from the state estimation, which are highly correlated. Therefore, their dimension could be reduced by preserving the most informative features from the inputs. To this end, principal component analysis is used (i.e., a data preprocessing technique). This technique is especially efficient for highly correlated data sets, which is the case in power system measurements. The results of different perceptron models that are proposed for detection, are compared to a simple perceptron that produces identical result to the outlier detection scheme. For generating the training sets, state estimation was run for different false data on different measurements in 13-bus IEEE test system, and the residuals are saved as inputs of training sets. The testing results of the trained network show its good performance in detection of false data in measurements.
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