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Fault Diagnosis under Variable Working Conditions Based on STFT and Transfer Deep Residual Network

机译:基于STFT和转移深度剩余网络的可变工作条件下的故障诊断

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摘要

Fault diagnosis plays a very important role in ensuring the safe and reliable operations of machines. Currently, the deep learning-based fault diagnosis is attracting increasing attention. However, fault diagnosis under variable working conditions has been a significant challenge due to the domain discrepancy problem. This problem is also unavoidable in deep learning-based fault diagnosis methods. This paper contributes to the ongoing investigation by proposing a new approach for the fault diagnosis under variable working conditions based on STFT and transfer deep residual network (TDRN). The STFT was employed to convert vibration signal to time-frequency image as the input of the TDRN. To address the domain discrepancy problem, the TDRN was developed in this paper. Unlike traditional deep convolutional neural network (DCNN) methods, by combining with transfer learning, the TDRN can make a bridge between two different working conditions, thereby using the knowledge learned from a working condition to achieve a high classification accuracy in another working condition. Moreover, since the residual learning is introducing, the TDRN can overcome the problems of training difficulty and performance degradation existing in traditional DCNN methods, thus further improving the classification accuracy. Experiments are conducted on the popular CWRU bearing dataset to validate the effectiveness and superiority of the proposed approach. The results show that the developed TDRN outperforms those methods without transfer learning and/or residual learning in terms of the accuracy and feature learning ability for the fault diagnosis under variable working conditions.
机译:故障诊断在确保机器的安全可靠操作方面发挥着非常重要的作用。目前,基于深度学习的故障诊断是吸引越来越多的关注。然而,由于域差异问题,可变工作条件下的故障诊断是一个重大挑战。这种问题在基于深度学习的故障诊断方法中也是不可避免的。本文通过提出基于STFT和转移深度剩余网络(TDRN)的可变工作条件下的故障诊断新方法,有助于正在进行的调查。使用STFT将振动信号转换为时频图像作为TDRN的输入。为了解决域差异问题,本文开发了TDRN。与传统的深度卷积神经网络(DCNN)方法不同,通过与转移学习结合,TDRN可以在两个不同的工作条件之间制作桥梁,从而使用从工作条件中学到的知识来实现​​在另一个工作状态中的高分类精度。此外,由于剩余学习正在引入,TDRN可以克服传统DCNN方法中存在的训练难度和性能下降的问题,从而进一步提高了分类精度。实验在流行的CWRU轴承数据集上进行,以验证所提出的方法的有效性和优越性。结果表明,在可变工作条件下的故障诊断的准确性和特征学习能力方面,显影TDRN优于这些方法而不会转移学习和/或剩余学习。

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