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A Transfer Learning Strategy for Rotation Machinery Fault Diagnosis based on Cycle-Consistent Generative Adversarial Networks

机译:基于周期一致的生成对抗网络的旋转机械故障诊断转移学习策略

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Transfer learning has been an important aspect in recent years for labeled data are pretty rare in real application under different conditions. In modern industry systems, collected sample signals are usually not equally distributed, meaning the quantity of data from different working conditions are barely the same. Researchers have proposed a number of methods tackling the issue, most of which try to extract the features of the original data to unify them. Basic and valid algorithm is distribution adaption which include transfer component analysis (TCA), joint distribution adaptation (JDA), correlation alignment (CORAL) and other varieties. These methods have shown great effectiveness in practice. Generative adversarial networks (GANs) are newly developed generative models which can generate new sample data similar to original data through a special designed competitive training procedure. While distribution adaption unify the signal under all the conditions, GAN models are able to achieve approximate distribution functions and generate fake samples for different working conditions. In this paper, a new fault diagnosis transfer learning approach is proposed with a cycle-consistent GAN model. The designed GAN tries to generate new sample for unknown conditions based on known conditions and makes it possible to pre-train a classifier for fault diagnosis. Different experiments were carried out to demonstrate the performance of our proposed model, and other distribution adaption methods are compared. Experiments show that our strategy is superior to existing methods for fault diagnosis transfer learning.
机译:近年来,转移学习一直是重要的方面,因为标记数据在不同条件下的实际应用中很少见。在现代工业系统中,采集的样本信号通常分布不均,这意味着来自不同工作条件的数据量几乎相同。研究人员提出了许多解决此问题的方法,其中大多数尝试提取原始数据的特征以统一它们。基本有效的算法是分布自适应,包括传递成分分析(TCA),联合分布自适应(JDA),相关比对(CORAL)和其他变体。这些方法在实践中已显示出很大的效果。生成对抗网络(GAN)是新开发的生成模型,可以通过特殊设计的竞争训练程序来生成与原始数据相似的新样本数据。尽管分布自适应可以在所有条件下统一信号,但GAN模型能够实现近似的分布函数,并针对不同的工作条件生成伪造的样本。本文提出了一种基于周期一致的GAN模型的故障诊断转移学习新方法。设计的GAN尝试根据已知条件为未知条件生成新样本,并可能预先训练分类器以进行故障诊断。进行了不同的实验以证明我们提出的模型的性能,并比较了其他分布自适应方法。实验表明,我们的策略优于现有的故障诊断转移学习方法。

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