基于数据驱动的机械设备RUL预测方法研究进展

Yuefeng Liu, Gong Zhang, Chenrong Zhang, Yuhui Yang, Lina Zhang
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引用次数: 2

摘要

随着工业的发展,大型复杂系统的性能不断提高,复杂程度也越来越高。在机械设备的使用过程中,经常会出现停机的现象,大部分原因是相关部件出现故障。作为预测与健康管理(PHM)和基于状态维护(CBM)的首要任务之一,机械设备剩余使用寿命预测(RUL)越来越受到人们的重视。通过了解设备的RUL,可以提前对相关设备的维护起到重要的作用。它比传统的定期维护和维修后维护更有效,从而避免了故障的发生,减少了财产损失。本文重点介绍了基于人工智能的规则规则预测方法,并对每种方法的优缺点进行了阐述,并对近年来各种方法的最新文献进行了总结。最后,对现有的方法和未来的发展趋势进行了讨论,并指出了未来的研究热点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research Progress on Data Driven-based RUL Prediction Methods of Mechanical Equipment
With the development of the industry, the performance of large and complex systems is constantly increasing and the complexity is increasing. In the process of using mechanical equipment, there is often a phenomenon of downtime and the most of the reasons is that the related parts are faulty. As one of the foremost tasks of prognostic and health management (PHM) and condition based maintenance (CBM), the prediction of remaining useful life (RUL) for mechanical equipment is receiving more and more attention. By knowing the RUL of the equipment, it can play an important role in maintaining related equipment in advance. It is more effective than the traditional regular maintenance and post-repair maintenance, thus avoiding the occurrence of malfunctions and the reduction of property loss. This paper focuses on the AI-based RUL prediction methods and explains the strengths and weaknesses of each of these methods and summarizes the latest literature on various methods in the last few years. Finally, the present methods and future trends are discussed and hot spots for the future are given.
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