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Deep Residual Shrinkage Networks for Fault Diagnosis

机译:深度剩余收缩网络用于故障诊断

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This article develops new deep learning methods, namely, deep residual shrinkage networks, to improve the feature learning ability from highly noised vibration signals and achieve a high fault diagnosing accuracy. Soft thresholding is inserted as nonlinear transformation layers into the deep architectures to eliminate unimportant features. Moreover, considering that it is generally challenging to set proper values for the thresholds, the developed deep residual shrinkage networks integrate a few specialized neural networks as trainable modules to automatically determine the thresholds, so that professional expertise on signal processing is not required. The efficacy of the developed methods is validated through experiments with various types of noise.
机译:本文开发了新的深度学习方法,即深度剩余收缩网络,以改善高度发光振动信号的特征学习能力,实现高故障诊断精度。软阈值为非线性转换层插入深度架构中以消除不重要的功能。此外,考虑到为阈值设置适当的值通常具有挑战性,所发达的深度剩余收缩网络集成了一些专门的神经网络作为可训练模块,以自动确定阈值,从而不需要对信号处理的专业专业知识。通过具有各种类型噪声的实验验证了开发方法的功效。

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