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Applications of machine learning to machine fault diagnosis: A review and roadmap

机译:机器学习在机器故障诊断中的应用:回顾与路线图

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Intelligent fault diagnosis (1FD) refers to applications of machine learning theories to machine fault diagnosis. This is a promising way to release the contribution from human labor and automatically recognize the health states of machines, thus it has attracted much attention in the last two or three decades. Although IFD has achieved a considerable number of successes, a review still leaves a blank space to systematically cover the development of IFD from the cradle to the bloom, and rarely provides potential guidelines for the future development. To bridge the gap, this article presents a review and roadmap to systematically cover the development of IFD following the progress of machine learning theories and offer a future perspective. In the past, traditional machine learning theories began to weak the contribution of human labor and brought the era of artificial intelligence to machine fault diagnosis. Over the recent years, the advent of deep learning theories has reformed IFD in further releasing the artificial assistance since the 2010s, which encourages to construct an end-to-end diagnosis procedure. It means to directly bridge the relationship between the increasingly-grown monitoring data and the health states of machines. In the future, transfer learning theories attempt to use the diagnosis knowledge from one or multiple diagnosis tasks to other related ones, which prospectively overcomes the obstacles in applications of IFD to engineering scenarios. Finally, the roadmap of IFD is pictured to show potential research trends when combined with the challenges in this field.
机译:智能故障诊断(1FD)是指机器学习理论在机器故障诊断中的应用。这是释放人力的贡献并自动识别机器的健康状态的一种有前途的方法,因此在最近的两到三十年中,它引起了很多关注。尽管IFD已取得了相当大的成功,但审查仍然为系统地涵盖IFD从摇篮到繁荣的发展留下了空白,并且很少为将来的发展提供潜在的指导。为了弥合差距,本文提出了一个回顾和路线图,以随着机器学习理论的发展系统地涵盖IFD的发展并提供未来的前景。过去,传统的机器学习理论开始削弱人工的贡献,并为人工智能带来了机器故障诊断的时代。近年来,深度学习理论的出现对IFD进行了改革,自2010年代以来进一步释放了人工协助,这鼓励了端到端诊断程序的构建。这意味着直接桥接日益增长的监视数据与机器的健康状态之间的关系。将来,转移学习理论试图将诊断知识从一个或多个诊断任务转移到其他相关任务,从而有望克服将IFD应用到工程场景中的障碍。最后,对IFD的路线图进行了图示,以显示与该领域的挑战相结合时的潜在研究趋势。

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