基于电弧波特性的连接器组件间歇性故障诊断

Xianzhe Cheng, K. Lv, Yong Zhang, Wenxiang Yang, Lei Wang, Weihu Zhao, Guanjun Liu, Jing Qiu
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引用次数: 0

摘要

间歇性故障广泛存在于航空电子设备中,尤其是各种电气连接器。通常很难诊断出间歇性故障的源头,这给设备的维修和维护带来了巨大的挑战。本文重点研究了冲击试验激活的典型航空电气连接器中的间歇性故障。在间歇性故障发生时,可观测到纳秒级的瞬态电弧波。本文构建了一个电弧信号模型来分析信号的影响因素。根据电弧波特性,对四类连接器组件进行了进一步的间歇性故障诊断分析:损坏的焊点、破裂的引脚连接、松动的导线连接和磨损的电气连接器。使用变异模式分解(VMD)提取了原始信号中的有效弧波成分,并对传统诊断方法和基于 CNN 的深度学习方法进行了比较。结果表明,VMD-CNN-SVM 的组合达到了最佳诊断效果。诊断结果反映出,所提出的电弧信号特征适用于诊断连接器组件的间歇性故障。
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Intermittent fault diagnosis in connector components based on arc wave characteristics
Intermittent faults are widely present in aviation electronic devices, especially in various electrical connectors. It is usually hard to diagnose the source of the intermittent faults, which brings a huge challenge to the repair and maintenance of equipment. This paper focuses on the intermittent faults in typical aviation electrical connectors activated by shock test. The transient arc wave is observed on a nanosecond scale during the occurrence of the intermittent faults. An arc signal model is constructed to analyze the impact factors of the signal. Based on the arc wave characteristics, further intermittent fault diagnostic analyses are conducted on four types of connector components: damaged solder joints, cracked pin connections, loose wire connections and worn electrical connectors. The effective arc wave components of the raw signals are extracted using Variational Mode Decomposition (VMD), and a comparison is made between traditional diagnostic method and CNN-based deep learning method. The results show that the combination of VMD-CNN-SVM achieves the optimal diagnostic effect. The diagnostic results reflect that the proposed arc signal features are suitable for diagnosing intermittent faults in connector components.
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