基于多域深度特征关联的串联电弧故障检测

IF 1.3 4区 工程技术 Q3 ENGINEERING, ELECTRICAL & ELECTRONIC
Na Qu, Wenlong Wei, Congqiang Hu, Shang Shi, Han Zhang
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引用次数: 0

摘要

在低压配电系统中,串联故障电弧电流小且隐蔽,传统的电路保护装置无法有效识别。针对这一问题,本文提出了一种基于多域深度特征关联的串联故障电弧检测方法。通过搭建实验平台,获得了不同负载下正常状态和故障电弧状态的电流信号数据。提取电流信号的时域特征、频域特征和小波包能量特征。为了提高数据质量,使用四种不同的树形技术对每个域特征的重要性进行排序,并选择最有用的特征。为进一步提取各域的深度特征,构建了一维堆叠神经网络(1D-SNN)故障检测模型。为了实现串联弧缺陷检测,深度特征被组合起来并输入一个全连接神经网络。Radam 算法用于优化检测模型。然后将其与 Adam、SGD 和 RMSprop 优化算法进行比较,验证了 Radam 在优化圆弧检测模型方面具有更好的效果。实验结果表明,平均检测准确率为 99.63%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Series arc fault detection based on multi-domain depth feature association

Series arc fault detection based on multi-domain depth feature association

In low voltage distribution systems, series arc fault current is small and hidden, and traditional circuit protection devices cannot effectively identify it. To address this problem, a series arc fault detection method based on multi-domain depth feature association is proposed in this paper. By building an experimental platform, the current signal data on normal and arc fault states under different loads are obtained. The time-domain features, frequency-domain features and wavelet packet energy features of the current signal are extracted. To enhance the quality of the data, the importance of each domain characteristic is ranked using four distinct tree techniques, and the most useful features are chosen. A one-dimensional stacked neural network (1D-SNN) fault detection model is constructed to further extract the depth features of each domain. To achieve series arc defect detection, the depth features are combined and fed into a fully connected neural network. The Radam algorithm is used to optimize the detection model. It is then compared with Adam, SGD, and RMSprop optimization algorithms, which verifies that Radam has a better effect on the optimization of the arc detection model. Experimental results show that the average detection accuracy is 99.63%.

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来源期刊
Journal of Power Electronics
Journal of Power Electronics 工程技术-工程:电子与电气
CiteScore
2.30
自引率
21.40%
发文量
195
审稿时长
3.6 months
期刊介绍: The scope of Journal of Power Electronics includes all issues in the field of Power Electronics. Included are techniques for power converters, adjustable speed drives, renewable energy, power quality and utility applications, analysis, modeling and control, power devices and components, power electronics education, and other application.
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