基于双相似度的配电网主动故障检测方法

Yixian Liu, Yubin Wang, Yuanyi Chen, Qiang Yang, Haisheng Hong, Weichao Wang
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引用次数: 0

摘要

配电网的故障检测是保证供电安全可靠、系统高效维护的重要环节。然而,传统的基于逻辑和基于模型的故障检测方法由于测量的不充分和操作条件的复杂,给故障检测带来了困难。提出了一种基于双相似度的配电故障检测方法。它包括操作模式相似度和时间相似度。前者通过基于k-means的矩阵轮廓重构操作模式,并使用欧几里得距离度量操作模式的相似度。后者对时间相似度进行建模,采用LSTM方法利用高分辨率连续测量的优势进行故障检测。通过基于双相似度的方法,该方法能够有效地识别配电网中的典型异常,具有较高的准确率和召回率。基于实际数据集,对75台配电变压器的一系列脱扣事件进行了实验,对所提出的解决方案进行了广泛评估。数值结果表明,该方法优于传统的故障检测方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dual Similarity-based Method for Proactive Fault Detection in Power Distribution Networks
The fault detection of power distribution networks is of paramount importance to ensure power supply safety and reliability as well as efficient system maintenance. However, the inadequacy of measurements and complex operational conditions bring about difficulties for conventional logic-based and model-based fault detection methods. This paper proposed a dual similarity-based method (DSM) for power distribution fault detection. It contains the operation mode similarity and temporal similarity. The former reconstructs the operation mode by matrix profile based on k-means, and Euclidean distance is used to measure the similarity of the operating modes. The latter models the temporal similarity, and the LSTM is adopted to take the advantage of high-resolution continuous measurement for fault detection. Through the dual similarity-based method, the proposed solution can effectively identify the typical anomalies in the power distribution network with high accuracy and recall performance. The proposed solution is extensively assessed through experiments for a range of tripping events in 75 distribution transformers based on realistic datasets. The numerical results confirmed that it outperforms the conventional fault detection solutions.
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