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A Global-Local Dynamic Adversarial Network for Intelligent Fault Diagnosis of Spindle Bearing

机译:一种全球局部动态对抗网络,用于主轴轴承的智能故障诊断

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Transfer learning-based intelligent fault diagnosis methods for smart spindle bearings have been constantly developed in the recent years. The existing methods generally either assume different domains belong to the same label spaces or the number of fault categories in source and target domains are equal. Nevertheless, this assumption is unrealistic since the unknown fault class will unexpectedly occur when changing working condition. To solve this problem, a global-local dynamic adversarial network is proposed for unexpectedly fault detection of smart spindle bearing, in which global and local data alignment are introduced and the relative proportion of two distributions are dynamically calculated to extract domain-invariant features. In addition, new fault classifier is designed to separate unknown fault from known fault. Experimental on a smart spindle bearing dataset demonstrate the proposed method is promising for new fault detection.
机译:近年来,智能主轴轴承的转移基于学习的智能故障诊断方法已经不断开发。 现有方法通常是假设不同的域属于相同的标签空间,或者源极和目标域中的故障类别的数量相等。 然而,这种假设是不现实的,因为在更改工作条件时意外发生未知的故障类。 为了解决这个问题,提出了一种全局局部动态对抗网络,用于智能主轴轴承的意外故障检测,其中引入了全局和局部数据对准,并且动态地计算了两个分布的相对比例以提取域不变的特征。 此外,新的故障分类器旨在将未知故障与已知故障分别。 在智能主轴轴承数据集上的实验证明了所提出的方法是对新故障检测的承诺。

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