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Adaptive deep feature learning network with Nesterov momentum and its application to rotating machinery fault diagnosis

机译:Nesterov动量的自适应深度特征学习网络及其在旋转机械故障诊断中的应用

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摘要

The effective fault diagnosis of rotating machinery is critical to ensure the continuous operation of equipment and is more economical than scheduled maintenance. Traditional signal processing-based and artificial intelligence-based methods, such as wavelet packet transform and support vector machine, have been proved effective in fault diagnosis of rotating machinery, which prevents unexpected machine breakdowns due to the failure of significant components. However, these methods have several disadvantages that make them unable to automatically and effectively extract valid fault features for the effective fault diagnosis of rotating machinery. A novel adaptive learning rate deep belief network combined with Nesterov momentum is developed in this study for rotating machinery fault diagnosis. Nesterov momentum is adopted to replace traditional momentum to enable declining in advance and to improve training performance. Then, an individual adaptive learning rate method is used to select a suitable step length for accelerating descent. To confirm the utility of the proposed deep learning network architecture, two examinations are implemented on datasets from gearbox and locomotive bearing test rigs. Results indicate that the method achieves impressive performance in fault pattern recognition. Comparisons with existing methods are also conducted to demonstrate that the proposed method is more accurate and robust. (C) 2018 Elsevier B.V. All rights reserved.
机译:旋转机械的有效故障诊断对于确保设备的连续运行至关重要,并且比定期维护更经济。传统的基于信号处理和基于人工智能的方法,例如小波包变换和支持向量机,已被证明对旋转机械的故障诊断有效,可以防止由于重要部件的故障而导致的意外机械故障。然而,这些方法具有几个缺点,使得它们不能自动有效地提取有效的故障特征以对旋转机械进行有效的故障诊断。本研究开发了一种结合Nesterov动量的新型自适应学习率深度置信网络,用于旋转机械故障诊断。采用Nesterov动量来代替传统的动量,以便提前下降并提高训练效果。然后,使用个体自适应学习速率方法来选择合适的步长以加速下降。为了确认所提出的深度学习网络架构的实用性,对变速箱和机车轴承试验台的数据集进行了两次检查。结果表明,该方法在故障模式识别中取得了令人印象深刻的性能。还与现有方法进行了比较,以证明所提出的方法更加准确和可靠。 (C)2018 Elsevier B.V.保留所有权利。

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