基于深度子域自适应网络的模拟电路故障诊断迁移学习方法

Weizheng Chen, Xu Han, Guangquan Zhao, Xiyuan Peng
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引用次数: 0

摘要

大多数数据驱动的模拟电路故障诊断方法在数据满足独立、均匀分布假设的情况下都能取得较好的诊断效果,而这在现实场景中很难实现。为了解决这一问题,提出了一种基于深度子域自适应网络的模拟电路故障诊断方法。该方法将局部最大平均差异损失的优化方法引入到一维卷积神经网络的训练中,可以自适应地对齐源域和目标域的特征表示,而无需在目标域进行标记。设计了Sallen-Key带通滤波器和四运放双通滤波器的仿真实验。选取两组不同分量参数作为源域和目标域的数据源,在目标域数据中加入噪声和随机偏移,模拟实际场景。通过对比实验,验证了本文提出的模拟电路故障诊断方法训练稳定,准确率高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Transfer Learning Method for Fault Diagnosis of Analog Circuit Using Deep Subdomain Adaptation Network
Most data-driven fault diagnosis methods for analog circuits achieve good results when the data satisfies the assumption of independent and equal distribution, which is difficult to achieve in real-world scenarios. To solve this problem, a fault diagnosis method for analog circuits based on Deep Subdomain Adaptation Network is presented. By incorporating the optimization of Local Maximum Mean Discrepancy loss into the training of One-dimensional Convolutional Neural Network, this method can adaptively align the feature representation of the source and target domains without labeling in the target domain. The simulation experiments of Sallen-Key band-pass filter and four-opamp biquad high-pass filter are designed. Two groups of different component parameters are selected as the data sources of source domain and target domain, noise and random offset are added to the target domain data to simulate the actual scene. Through comparative experiments, it is verified that the analog circuit fault diagnosis method presented in this paper has steady training and high accuracy.
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