An Incipient Fault Diagnosis Method Based on Spatio-Temporal Center Network for Analog Circuits

Tianyu Gao, Ye Li, Xue Bai, Jingli Yang
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Abstract

With the rapid development of electronic technology, accurately identifying the incipient faults of analog circuits has become an important measure to improve the reliability and safety of electronic equipment. In recent years, deep learning is extensively applied to fault diagnosis because of its powerful feature mining ability. Therefore, a method based on spatio-temporal center network (STCN) is proposed to identify incipient faults for analog circuits, which includes a feature extraction module and a classification module. In the former, a spatio-temporal backbone network is designed to comprehensively mine the effective feature representation, including multi-scale spatial information and temporal information in the response signals of analog circuits. In the classification module, the spatio-temporal feature representation is imported into the Softmax layer for fault identification. Finally, in addition to the commonly used cross entropy loss, the central loss is also constructed for the STCN model. By reducing the intra class distance among similar feature representations, the discrimination of feature representation is further improved. In order to assess the effectiveness of the proposed method, the Sallen-key bandpass filter circuit is selected for experimental verification. Experimental results indicate that STCN is superior to some typical fault diagnosis approaches in incipient fault diagnosis of analog circuits.
基于时空中心网络的模拟电路早期故障诊断方法
随着电子技术的飞速发展,准确识别模拟电路的早期故障已成为提高电子设备可靠性和安全性的重要措施。近年来,深度学习因其强大的特征挖掘能力被广泛应用于故障诊断。为此,提出一种基于时空中心网络(STCN)的模拟电路早期故障识别方法,该方法包括特征提取模块和分类模块。前者设计了一个时空骨干网络,综合挖掘模拟电路响应信号中的有效特征表示,包括多尺度空间信息和时间信息;在分类模块中,将时空特征表示导入Softmax层进行故障识别。最后,除了常用的交叉熵损失外,还对STCN模型构造了中心熵损失。通过减小相似特征表示之间的类内距离,进一步提高了特征表示的识别能力。为了评估该方法的有效性,选择了萨伦键带通滤波电路进行实验验证。实验结果表明,在模拟电路的早期故障诊断中,STCN优于一些典型的故障诊断方法。
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