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Robust Deep Learning-Based Diagnosis of Mixed Faults in Rotating Machinery

机译:旋转机械混合断层的强大深度学习诊断

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摘要

Fault diagnosis for rolling elements in rotating machinery persistently receives high research interest due to the said machinery's prevalence in a broad range of applications. State-of-the-art methods in such setups focus on effective identification of faults that usually involve a single component while rejecting noise from limited sources. This article studies the data-based diagnosis of mixed faults coming from multiple components with an emphasis on model robustness against a wide spectrum of external perturbation. A dataset is collected on a rotor and bearing system by varying the levels and types of faults in both the rotor and bearing, which results in 48 machine health conditions. A duplet classifier is developed by combining two 1-D convolutional neural networks (CNNs) that are responsible for the diagnosis of the rotor and bearing faults, respectively. Experimental results show that the proposed classifier can reliably identify the onset and nature of mixed faults. In addition, one-vs-all classifiers are built using the features generated by the developed 1-D CNNs as predictors to recognize previously unlearned fault types. The effectiveness of such classifiers is demonstrated using data collected from four new fault types. Finally, the robustness and ability to reject external perturbation of the duplet classification model are analyzed using kernel density estimation. The code for the proposed classifiers is available at https://github.com/siyuanc2/machine-fault-diag.
机译:旋转机械中滚动元件的故障诊断持续接收高研究兴趣,因为上述机械在广泛的应用中的普遍存在。这种设置中的最先进方法专注于有效识别通常涉及单个组件的故障,同时抑制有限源的噪声。本文研究了来自多种组分的基于数据的混合故障诊断,重点是模型鲁棒性对抗广泛的外部扰动。通过改变转子和轴承中的故障的水平和类型,在转子和轴承系统上收集数据集,这导致48个机器健康状况。通过组合负责转子和轴承故障的两个1-D卷积神经网络(CNNS)来开发Duplet分类器。实验结果表明,所提出的分类器可以可靠地识别混合故障的发作和性质。此外,使用由开发的1-D CNNS生成的特征作为预测器来识别先前未解决的故障类型的特征,构建一VS-所有分类器。使用从四种新故障类型收集的数据进行说明此类分类器的有效性。最后,使用核密度估计分析了拒绝拒绝双重分类模型外部扰动的鲁棒性和能力。所提出的分类器的代码可在https://github.com/siyuanc2/machine-fault-diag中获得。

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