Distribution System Anomaly Detection Based on AnoGAN Embedded with Cross-Stitch Units

Yue Wang, Ye Guo, Zheng Xu, Hongbin Sun
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Abstract

We consider the anomaly detection problem in distribution systems. Many distribution systems are not observable due to their limited numbers of real-time meters, thus state estimation based approaches are not applicable. Moreover, the number of abnormal samples are usually small comparing to the diversity of anomalies, imposing challenges to machine learning based methods as well. To this end, AnoGAN, an unsupervised learning method, is applied to the distribution system anomaly detection in this paper. Only normal samples are needed during its training process. In the testing process, it generates corresponding samples based on its knowledge trained from normal ones, which are compared against real measurements to detect if there are possible anomalies. To achieve better granularity, we propose to partition a large distribution system into sub-networks, establish parallel AnoGANs, and employ Cross-stitch units to incorporate their correlations. Simulations have been done to show the satisfactory accuracy and efficiency of the proposed approach in detecting anomalies in distribution system.
基于嵌入十字绣单元AnoGAN的配电系统异常检测
研究了配电系统中的异常检测问题。由于实时仪表的数量有限,许多配电系统是不可观测的,因此基于状态估计的方法不适用。此外,与异常的多样性相比,异常样本的数量通常较少,这也给基于机器学习的方法带来了挑战。为此,本文将无监督学习方法AnoGAN应用到配电系统异常检测中。在训练过程中只需要正常样本。在测试过程中,它根据从正常样本中训练出来的知识生成相应的样本,并与实际测量结果进行比较,以检测是否存在可能的异常。为了获得更好的粒度,我们建议将一个大型配电系统划分为子网络,建立并行anogan,并使用十字绣单元来合并它们的相关性。仿真结果表明,该方法对配电系统异常检测具有良好的准确性和有效性。
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