Automatic Fault Detection in Industrial Smart Grids Using KNN and Ensemble Classifiers

Venkata Subbarao M., Challa Ram G., Ramesh Varma D., G. D., Prema Kumar M.
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Abstract

The use of sensitive electrical gadgets in industries, buildings, smart cities, and homes has increased drastically in recent years. PQ events such as interruptions, surges, and sags have a high impact on these sensitive devices. The failure of these delicate devices in real-time applications, particularly smart applications, may result in significant damage. The supply quality decreases because of the failure of internal transmission system elements, unbalanced loads, and other outdoor issues such as like weather. Several academics have proposed techniques to analyze these PQ disturbances, including wavelet packets, S-transform, rough sets and neural networks. In all the available algorithms, the classification procedure involves the extraction of a large set of features from the transformed outputs, training the classifier, and finally making a conclusion with the classifier. Because of the involvement of a large number of features, the computational cost of all these methods increases. To reduce complexity and enhance classification efficiency, the proposed method focuses on extracting fewer low-complexity wavelet features from signals. Pattern recognition (PR) methods, such as the wide variety of K-nearest neighbors (KNN) and ensemble classifiers, are used to classify PQ events in this study. The performance of the proposed ML approaches' performance is evaluated at various training and testing rates. Subsequently, the performance of the proposed strategies was compared to that of the current methods to determine the dominance of the proposed approaches.
基于KNN和集成分类器的工业智能电网故障自动检测
近年来,工业、建筑、智能城市和家庭中敏感电子设备的使用急剧增加。中断、浪涌和跌落等PQ事件对这些敏感设备有很大的影响。在实时应用中,特别是智能应用中,这些精密设备的故障可能会导致严重的损害。由于内部传输系统元件故障、负载不平衡以及其他室外问题(如天气),供电质量会下降。一些学者已经提出了分析这些PQ干扰的技术,包括小波包、s变换、粗糙集和神经网络。在所有可用的算法中,分类过程包括从转换后的输出中提取大量特征,训练分类器,最后用分类器得出结论。由于涉及到大量的特征,所有这些方法的计算成本都增加了。为了降低复杂度和提高分类效率,该方法侧重于从信号中提取更少的低复杂度小波特征。模式识别(PR)方法,如各种k近邻(KNN)和集成分类器,在本研究中用于对PQ事件进行分类。所提出的机器学习方法的性能在不同的训练和测试率下进行了评估。随后,将所提出策略的性能与当前方法的性能进行比较,以确定所提出方法的优势。
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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