基于关联分析的对数模式提取用于电能质量干扰检测

D. Feng, Tongxun Wang, Chen Liu, Shen Su
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引用次数: 4

摘要

根据系统日志进行异常检测是近年来的研究热点。对于电网谐波监测系统,异常检测的常用做法是进行机器学习。利用历史异常数据对学习模型进行训练,并用于在线检测。该方法的前提是预先定义一组指标作为机器学习模型的输入特征。然而,现有方法主要依靠业务经验提取此类指标,这限制了用于数据分析的指标范围,也限制了电能质量摄动分析的准确性。本文提出了一种电能质量干扰检测算法,该算法研究谐波监测指标之间的相关性,提取频繁并发的异常指标作为电能质量干扰检测定位的特征。通过对历史扰动记录的验证,证明了该算法能够有效地检测出电能质量扰动事件。
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Extracting Log Patterns Based on Association Analysis for Power Quality Disturbance Detection
To detect anomalies according to system log is a hot topic recently. For the harmonic monitoring system of the power grid, the common practice of anomaly detection is to conduct machine learning. The learning model is trained with the historical anomaly data, and used for online detection. The premise of this method is to predefine a set of indicators as the input features of the machine learning model. However, existing methods rely mainly on business experience to extract such indicators, which limits the scope of the indicators used for data analysis, but also limits the accuracy of power quality perturbation analysis. In this paper, we propose an algorithm for power quality disturbance detection which investigates the correlation among the harmonic monitoring indicators, and extract the frequently concurrent abnormal indicators as the features to locate power quality disturbance detection. With the verification of the historical disturbance records, we prove that our algorithm can effectively detect the power quality disturbing events.
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