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Joint distribution adaptation network with adversarial learning for rolling bearing fault diagnosis

机译:联合分布适应网络对滚动轴承故障诊断的对抗学习

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摘要

Numerous intelligent methods have been developed to approach the challenges of fault diagnosis. However, due to the different distributions of training samples and test samples, and the lack of information on test samples, most of these methods cannot directly handle the unsupervised cross-domain fault diagnosis issues. In this paper, a joint distribution adaptation network with adversarial learning is developed to effectively tackle the mentioned fault diagnosis issues. Firstly, deep convolutional neural network (CNN) is constructed to extract the features of training samples and test samples. Secondly, since the joint maximum mean discrepancy (JMMD) cannot precisely measure the joint distribution discrepancy between different domains, an improved joint maximum mean discrepancy (IJMMD) is proposed to accurately match the feature distributions. Finally, adversarial domain adaptation is also developed to help the constructed CNN to extract the domain-invariant features. Therefore, the proposed method can achieve precisely distribution matching, and extract the category-discriminative and domain-invariant features between the source and target domains. Substantial transfer fault diagnosis cases based on three rolling bearing datasets fully demonstrate the effectiveness and generalization ability of the proposed method. (C) 2021 Published by Elsevier B.V.
机译:已经开发了许多智能方法来接近故障诊断的挑战。但是,由于培训样本和测试样本的分布不同,以及缺乏关于测试样本的信息,大多数这些方法不能直接处理无监督的跨域故障诊断问题。在本文中,开发了一种具有对抗性学习的联合分布适应网络,以有效地解决上述故障诊断问题。首先,构建深度卷积神经网络(CNN)以提取训练样本和测试样品的特征。其次,由于关节最大平均差异(JMMD)不能精确地测量不同域之间的联合分布差异,因此提出了改进的关节最大平均差异(IJMMD),以便准确匹配特征分布。最后,还开发了对抗域适应,以帮助构建的CNN提取域不变的特征。因此,所提出的方法可以实现精确的分发匹配,并提取源和目标域之间的类别鉴别和域不变特征。基于三个滚动轴承数据集的大量传输故障诊断壳体充分证明了所提出的方法的有效性和泛化能力。 (c)2021由elsevier b.v发布。

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