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Deep learning enabled intelligent fault diagnosis: Overview and applications

机译:支持深度学习智能故障诊断:概述和应用

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摘要

With movement toward complication and automation, modern machinery equipment encounters the problems of diversity and complex origination of faults, incipient weak faults, complicated monitoring systems, and massive monitoring data, which are all challenging current fault diagnosis technologies. Conventional machine learning techniques, such as support vector machine and back propagation, have disadvantages in handling the non-linear relationships and complicated structure of massive data. Deep learning (DL) methods have a greater capability to address complex and heterogeneous machinery signals, and identify faults more accurately. This paper presents a review of DL methods in emerging research in the machinery fault diagnosis field. First, common DL models are briefly described. Then, the application of DL to machinery fault diagnosis is described in detail, including the problems DL aims to solve and the achievements it has accomplished thus far. To demonstrate the capability of DL to handle the multiplicity and complexity of equipment faults and massive data, we examine experimental results for typical reciprocating compressor and bearing. Finally, the limitations and trends of further DL development are discussed.
机译:随着对复杂性和自动化的运动,现代机械设备遇到了多样性和复杂的故障,初始故障,复杂的监测系统和大规模监测数据的问题,这都是挑战当前的故障诊断技术。传统的机器学习技术,例如支持向量机和后传播,在处理非线性关系和大规模数据的复杂结构方面具有缺点。深度学习(DL)方法具有更大的能力来解决复杂和异构的机械信号,并更准确地识别故障。本文提出了对机械故障诊断领域的新兴研究中DL方法的综述。首先,简要描述普通DL模型。然后,详细描述了DL到机械故障诊断的应用,包括DL旨在解决的问题以及它已经实现的成就。为了展示DL处理设备故障和大规模数据的多重性和复杂性的能力,我们研究典型往复式压缩机和轴承的实验结果。最后,讨论了进一步DL开发的局限性和趋势。

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