Assessment of Envelope- and Machine Learning-Based Electrical Fault Type Detection Algorithms for Electrical Distribution Grids

IF 2.6 3区 工程技术 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Electronics Pub Date : 2024-09-14 DOI:10.3390/electronics13183663
Ozgur Alaca, Emilio Carlos Piesciorovsky, Ali Riza Ekti, Nils Stenvig, Yonghao Gui, Mohammed Mohsen Olama, Narayan Bhusal, Ajay Yadav
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Abstract

This study introduces envelope- and machine learning (ML)-based electrical fault type detection algorithms for electrical distribution grids, advancing beyond traditional logic-based methods. The proposed detection model involves three stages: anomaly area detection, ML-based fault presence detection, and ML-based fault type detection. Initially, an envelope-based detector identifying the anomaly region was improved to handle noisier power grid signals from meters. The second stage acts as a switch, detecting the presence of a fault among four classes: normal, motor, switching, and fault. Finally, if a fault is detected, the third stage identifies specific fault types. This study explored various feature extraction methods and evaluated different ML algorithms to maximize prediction accuracy. The performance of the proposed algorithms is tested in an emulated software–hardware electrical grid testbed using different sample rate meters/relays, such as SEL735, SEL421, SEL734, SEL700GT, and SEL351S near and far from an inverter-based photovoltaic array farm. The performance outcomes demonstrate the proposed model’s robustness and accuracy under realistic conditions.
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评估基于包络和机器学习的配电网电气故障类型检测算法
本研究介绍了基于包络和机器学习(ML)的配电网电气故障类型检测算法,超越了传统的基于逻辑的方法。所提出的检测模型包括三个阶段:异常区域检测、基于 ML 的故障存在检测和基于 ML 的故障类型检测。最初,改进了基于包络的检测器,以识别异常区域,从而处理来自电表的噪声较大的电网信号。第二阶段充当开关,从正常、电机、开关和故障四个类别中检测是否存在故障。最后,如果检测到故障,第三阶段将识别具体的故障类型。本研究探索了各种特征提取方法,并评估了不同的多线程算法,以最大限度地提高预测精度。使用不同采样率的电表/继电器,如 SEL735、SEL421、SEL734、SEL700GT 和 SEL351S,在离基于逆变器的光伏阵列农场较近和较远的地方,在模拟软硬件电网测试平台上测试了所提算法的性能。性能结果表明了所提出模型在现实条件下的稳健性和准确性。
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来源期刊
Electronics
Electronics Computer Science-Computer Networks and Communications
CiteScore
1.10
自引率
10.30%
发文量
3515
审稿时长
16.71 days
期刊介绍: Electronics (ISSN 2079-9292; CODEN: ELECGJ) is an international, open access journal on the science of electronics and its applications published quarterly online by MDPI.
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