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A New Deep Convolutional Domain Adaptation Network for Bearing Fault Diagnosis under Different Working Conditions

机译:用于不同工作条件下轴承故障诊断的新深度卷积域适应网络

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Effective fault diagnosis methods can ensure the safe and reliable operation of the machines. In recent years, deep learning technology has been applied to diagnose various mechanical equipment faults. However, in real industries, the data distribution under different working conditions is often different, which leads to serious degradation of diagnostic performance. In order to solve the issue, this study proposes a new deep convolutional domain adaptation network (DCDAN) method for bearing fault diagnosis. This method implements cross-domain fault diagnosis by using the labeled source domain data and the unlabeled target domain data as training data. In DCDAN, firstly, a convolutional neural network is applied to extract features of source domain data and target domain data. Then, the domain distribution discrepancy is reduced through minimizing probability distribution distance of multiple kernel maximum mean discrepancies (MK-MMD) and maximizing the domain recognition error of domain classifier. Finally, the source domain classification error is minimized. Extensive experiments on two rolling bearing datasets verify that the proposed method can implement accurate cross-domain fault diagnosis under different working conditions. The study may provide a promising tool for bearing fault diagnosis under different working conditions.
机译:有效的故障诊断方法可以确保机器的安全可靠。近年来,深入学习技术已应用于诊断各种机械设备故障。然而,在实际行业中,不同工作条件下的数据分布通常是不同的,这导致诊断性能的严重劣化。为了解决问题,本研究提出了一种新的深度卷积域适应网络(DCDAN)方法,用于轴承故障诊断。该方法通过使用标记的源域数据和未标记的目标域数据作为训练数据来实现跨域故障诊断。在DCDAN中,首先,应用卷积神经网络以提取源域数据和目标域数据的特征。然后,通过最小化多个内核最大平均差异(MK-MMD)的概率分布距离并最大化域分类器的域识别误差来降低域分布差异。最后,源域分类错误最小化。在两个滚动轴承数据集上进行广泛的实验,验证了该方法可以在不同的工作条件下实现精确的跨域故障诊断。该研究可以提供在不同工作条件下承载故障诊断的有希望的工具。

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