Utilization of Stockwell Transform and Random Forest Algorithm for Efficient Detection and Classification of Power Quality Disturbances

IF 1.1 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS Journal of Electrical and Computer Engineering Pub Date : 2023-10-07 DOI:10.1155/2023/6615662
T. Ravi, K. Sathish Kumar, C. Dhanamjayulu, Baseem Khan
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Abstract

Power quality disturbances (PQDs) can lead to significant operational and financial losses in power systems. Accurate detection and classification of PQDs are essential for maintaining power quality and preventing power system failures. This research article introduces an innovative approach for the precise detection and classification of single- and multiple-state power quality disturbances (PQDs) using the Stockwell transform (ST) and a random forest classifier. To create realistic PQD signals, seventeen distinct classes are generated in accordance with IEEE Standard 1159, employing mathematical equations implemented in MATLAB software. The ST is employed to extract relevant features from the PQD signals, which are subsequently utilized as input for the random forest classifier. The classifier employs bootstrapping sampling to generate multiple training sets from the original dataset. Each training set is used to construct a decision tree by recursively partitioning the data based on significant features. To mitigate overfitting and enhance robustness, a random subset of features is selected at each node of the decision tree, thereby reducing tree correlation. The performance of the random forest classifier is compared with other widely utilized machine learning classifiers. The results exhibit the efficacy of the proposed approach in accurately detecting and classifying PQ events, highlighting its superiority over alternative methods.
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利用斯托克韦尔变换和随机森林算法对电能质量扰动进行有效检测和分类
电能质量扰动(PQDs)会导致电力系统严重的运行和经济损失。pqd的准确检测和分类对于保持电能质量和防止电力系统故障至关重要。本文介绍了一种利用斯托克韦尔变换(ST)和随机森林分类器对单状态和多状态电能质量扰动(PQDs)进行精确检测和分类的创新方法。为了产生真实的PQD信号,根据IEEE标准1159,使用MATLAB软件实现的数学方程生成了17个不同的类。利用ST从PQD信号中提取相关特征,随后将其作为随机森林分类器的输入。分类器采用自举抽样从原始数据集生成多个训练集。每个训练集通过基于显著特征递归划分数据来构建决策树。为了减轻过拟合和增强鲁棒性,在决策树的每个节点上选择一个随机的特征子集,从而降低树的相关性。将随机森林分类器的性能与其他广泛使用的机器学习分类器进行了比较。结果表明,所提出的方法在准确检测和分类PQ事件方面的有效性,突出了其优于其他方法的优越性。
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来源期刊
Journal of Electrical and Computer Engineering
Journal of Electrical and Computer Engineering COMPUTER SCIENCE, INFORMATION SYSTEMS-
CiteScore
4.20
自引率
0.00%
发文量
152
审稿时长
19 weeks
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