基于机器学习算法的电能质量干扰检测

Kavaskar Sekar, Sendil Kumar. S, K. K
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引用次数: 6

摘要

电能质量扰动(PQDs)的挑战现在被认为是电力系统网络的一个重要特征。对于结构化电能质量,必须识别和调节干扰原因。这是通过对不同pqd的检测和分类来实现的。本文提出了一种利用机器学习算法检测和分类pqd的方法。通过数学形态学滤波器提取信号的特征。这些特征被输入训练一种称为决策树(DT)的机器学习算法,并构建DT模型来测试和分类pqd。为了进行分类,本文考虑了十种不同类型的扰动。利用MATLAB对PQD模型生成的数据进行了验证。该方法在PQD检测中表现良好,准确率达到99.95%
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Power Quality Disturbance Detection using Machine Learning Algorithm
The challenge of Power Quality Disturbances (PQDs) is now admitted as a crucial characteristic of a power system network. For structured power quality, disturbance causes must be recognized and regulated. This is accomplished through detection and classification of different PQDs. This article suggests a methodology to detect and classify PQDs using machine learning algorithm. The features of the signals are extracted through a mathematical morphology filter. These features are input to train one of the machine learning algorithm called Decision Tree (DT) and builds DT model to test and classify PQDs. For the purpose of classification, ten different types of disturbances are considered in this work. The proposed method is demonstrated on a data which is generated through PQD model using MATLAB. The performance of the proposed approach is good in PQD detection with accuracy rate of 99.95%
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