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Rolling Bearing Fault Diagnosis Using Improved Deep Residual Shrinkage Networks

机译:利用改进的深度残余收缩网络滚动轴承故障诊断

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摘要

To improve feature learning ability and accurately diagnose the faults of rolling bearings under a strong background noise environment, we present a new shrinkage function named leaky thresholding to replace the soft thresholding in the deep residual shrinkage networks (DRSNs). In this work, we discover that such improved deep residual shrinkage networks (IDRSNs) can be realized by using a group searching method to optimize the slope value of leaky thresholding, and leaky thresholding in the IDRSNs can more effectively eliminate the noise of signal features. We highlight that our techniques can significantly improve the performance on various fundamental tasks. Experimental results show that IDRSNs achieve better fault diagnosis results on noised vibration signals compared with DRSNs. Moreover, we also provide a normalized processing to further improve the fault diagnosing accuracy of rolling bearing under a strong background noise environment.
机译:为了提高特色学习能力,准确地诊断滚动轴承的滚动轴承在强大的背景噪声环境下,我们提出了一个名为Leaky阈值的新收缩函数,以替换深度残余收缩网络(DRSN)中的软阈值。 在这项工作中,我们发现这种改进的深度剩余收缩网络(IDRSNS)可以通过使用组搜索方法来实现优化泄漏阈值的斜率值,并且IDRSN中的泄漏阈值能力可以更有效地消除信号特征的噪声。 我们强调,我们的技术可以显着提高各种基本任务的性能。 实验结果表明,与DRSNS相比,IDRSNS实现了对出现振动信号的更好的故障诊断结果。 此外,我们还提供了一种规范化的处理,以进一步改善强大的背景噪声环境下滚动轴承的故障诊断精度。

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