Counterfactual Faithful Data Generation Based on Disentangled Representation for Compound Fault Diagnosis of Rolling Bearings

Xu Ding, Qiang Zhu, Song Wang, Yiqi Zhang, Hong Wang, Juan Xu
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Abstract

Recently, deep learning and human-out-of-the-loop methods enjoy their prosperous applications in mechanical fault diagnosis. Nonetheless, the None-IID(independent and identically distributed) issue radicated in acquired data severely limits the stability and accuracy of compound fault diagnosis of rolling bearings. This paper proposes a sample augmentation method for generating simulated signals based on the concept of counterfactuals. Firstly, disentangled representations and counterfactual faithful theory are applied to classify the original signal into two categories of properties. One is the fault semantics encoded from the original vibration signal. And the other is the sample attribute encoded by the encoder of Variational Autoencoders (VAEs). Secondly, the counterfactual faithful pseudo-samples are conjured through the Generative Adversarial Network(GAN) using the seeds of the “factual” sample attributes and “counterfactual” fault semantics to compensate for the drawback of distribution shift. Finally, the original samples and pseudo-samples are used as the CNN classifier dataset to realize bearing fault diagnosis. Experiments show that this method can generate counterfactual signals that are highly consistent with the original data distribution and can achieve better classification accuracy after balancing the dataset.
基于解纠缠表示的滚动轴承复合故障诊断反事实忠实数据生成
近年来,深度学习和人离环方法在机械故障诊断中得到了广泛的应用。然而,采集数据中存在的非同分布问题严重限制了滚动轴承复合故障诊断的稳定性和准确性。本文提出了一种基于反事实概念的模拟信号的样本扩增方法。首先,应用解纠缠表示和反事实忠实度理论将原始信号分为两类性质。一种是从原始振动信号中编码的故障语义。另一个是由变分自编码器(VAEs)编码器编码的样本属性。其次,利用“事实”样本属性和“反事实”错误语义的种子,通过生成对抗网络(GAN)生成反事实忠实伪样本,以弥补分布偏移的缺点;最后,将原始样本和伪样本作为CNN分类器数据集,实现轴承故障诊断。实验表明,该方法可以生成与原始数据分布高度一致的反事实信号,并且在对数据集进行平衡后可以获得更好的分类精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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