Distribution Network Anomaly Detection Algorithm Based on VAE

Zhilu Wang, Yunfeng Ding, Tianwu Zhang
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Abstract

With the booming development of economy and technology, China's electric industry has gradually realized intelligent, has developed into a comprehensive network including computer network, power network, information network. The current power information monitoring technology is mainly aimed at the power generation, transmission and transformation stage, and the lack of effective power information detection means in the power distribution stage. Therefore, a distribution network anomaly detection algorithm based on variational auto-encoder is proposed to solve the problem of anomaly detection of distribution terminal data. The input time series power load data is compressed and reconstructed, and the anomaly degree of samples is detected by reconstruction error. Experimental results show that the proposed algorithm has high detection rate and accuracy, as well as high robustness.
基于VAE的配电网异常检测算法
随着经济和科技的蓬勃发展,中国的电力工业已逐步实现智能化,已发展成为包括计算机网、电力网、信息网在内的综合性网络。目前的电力信息监测技术主要针对发电、输变电阶段,在配电阶段缺乏有效的电力信息检测手段。为此,提出了一种基于变分自编码器的配电网异常检测算法来解决配电网终端数据异常检测问题。对输入的时间序列电力负荷数据进行压缩重构,利用重构误差检测样本的异常程度。实验结果表明,该算法具有较高的检测率和准确率,并且具有较强的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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