Fault Classification in Power Distribution Systems using PMU Data and Machine Learning

F. L. Grando, A. Lazzaretti, M. Moreto, H. S. Lopes
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引用次数: 5

Abstract

This work presents the analysis of machine learning methods for fault (short-circuit) classification in electrical distribution networks using data from PMUs (Phasor Measurement Units) installed along the network. The Alternative Transient Program was used to simulate 26,928 different instances distributed into 33 types of faults – single and multi-phase, including or not the ground and different wire breakages – and one normal condition of the system. The IEEE 123-bus distribution system was used as the test system. We compared five machine learning methods for classification: Linear Discriminant Analysis (LDA), Artificial Neural Networks (ANN), Support Vector Machines (SVM), k-Nearest Neighbors (kNN), and Decision Trees (DTs). The best result was achieved by the SVM with Gaussian kernel and ANN. The input data (feature extraction) was also varied, testing data from one or several PMUs, ABC sequence phasors and symmetrical sequence phasors. We obtained slightly better results for symmetrical components and multiple PMUs in the network. Finally, classes of the same short-circuit with different wire breakages were grouped, raising the overall classification accuracy, showing the feasibility of this approach for fault classification using PMU-data in a distribution network.
基于PMU数据和机器学习的配电系统故障分类
这项工作介绍了使用安装在电网上的pmu(相量测量单元)的数据分析配电网络故障(短路)分类的机器学习方法。利用备用暂态程序模拟了分布在33种故障类型(单相和多相,包括接地或不接地和各种断线)和系统的一种正常状态的26,928种不同实例。测试系统采用IEEE 123总线配电系统。我们比较了五种机器学习分类方法:线性判别分析(LDA)、人工神经网络(ANN)、支持向量机(SVM)、k近邻(kNN)和决策树(dt)。采用高斯核支持向量机与人工神经网络相结合的方法得到了最好的结果。输入数据(特征提取)也多种多样,测试来自一个或多个pmu、ABC序列相量和对称序列相量的数据。对于网络中的对称组件和多个pmu,我们获得了稍好的结果。最后,对同一短路的不同断线进行分类,提高了整体分类精度,表明该方法在配电网中利用pmu数据进行故障分类是可行的。
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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