滚动轴承的早期故障检测:元学习方法

IF 2.5 Q2 ENGINEERING, INDUSTRIAL
Wenbin Song, Di Wu, Weiming Shen, Benoit Boulet
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引用次数: 0

摘要

滚动轴承的早期故障检测(EFD)旨在通过监测健康状态的微小偏差来检测故障的早期症状。精确的 EFD 可以实现预测性维护,并有助于提高机械系统的稳定性。近年来,基于机器学习的方法在 EFD 方面表现出色。目前大多数基于机器学习的方法都假定了大量数据的可用性。然而,在实践中,作者可能只有非常有限的训练数据,因此很难学习到可靠的机器学习模型。为了解决这个问题,作者在这项工作中提出通过元学习来解决 EFD 问题。具体来说,作者首先将 EFD 表述为一个少量学习问题,然后提出用一种基于度量的元学习方法来解决这个问题。此外,还进一步利用集合学习来提高检测的鲁棒性。所提出的方法考虑了工作条件和轴承的分布差异。在两个轴承数据集上的实验结果表明,与几种常用的 EFD 方法相比,所提出的方法可以实现更好的 EFD 性能,即更早地检测到初期故障,同时降低误报率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Early fault detection for rolling bearings: A meta-learning approach

Early fault detection for rolling bearings: A meta-learning approach

Early fault detection (EFD) of rolling bearings aims at detecting the early symptoms of faults by monitoring small deviations of health states. Accurate EFD enables predictive maintenance and contributes to the stability of mechanical systems. In recent years, machine learning based methods have shown impressive performance on EFD. Most of the current machine learning-based methods assume the availability for a large amount of data. However, in practice, the authors may only have a very limited amount of training data, which makes it hard to learn a reliable machine learning model. To address this concern, in this work, the authors propose to tackle EFD via meta learning. Specifically, the authors first formulate EFD as a few-shot learning problem and then propose to tackle this problem with a metric-based meta learning method. Furthermore, ensemble learning is further leveraged to improve the detection robustness. For the proposed method, the distribution difference from the working conditions and the bearings are considered. The experimental results on two bearing datasets show that the proposed method can achieve better EFD performance, that is, detecting incipient faults earlier while bringing in lower false alarms, compared with several frequently used EFD methods.

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来源期刊
IET Collaborative Intelligent Manufacturing
IET Collaborative Intelligent Manufacturing Engineering-Industrial and Manufacturing Engineering
CiteScore
9.10
自引率
2.40%
发文量
25
审稿时长
20 weeks
期刊介绍: IET Collaborative Intelligent Manufacturing is a Gold Open Access journal that focuses on the development of efficient and adaptive production and distribution systems. It aims to meet the ever-changing market demands by publishing original research on methodologies and techniques for the application of intelligence, data science, and emerging information and communication technologies in various aspects of manufacturing, such as design, modeling, simulation, planning, and optimization of products, processes, production, and assembly. The journal is indexed in COMPENDEX (Elsevier), Directory of Open Access Journals (DOAJ), Emerging Sources Citation Index (Clarivate Analytics), INSPEC (IET), SCOPUS (Elsevier) and Web of Science (Clarivate Analytics).
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