Machine learning for prognostics and health management of industrial mechanical systems and equipment: A systematic literature review

IF 4.9 Q1 BUSINESS
Lorenzo Polverino, R. Abbate, P. Manco, D. Perfetto, Francesco Caputo, R. Macchiaroli, M. Caterino
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引用次数: 1

Abstract

In the last decade, the adoption of technological tools in manufacturing industry, such as the use of the Internet of Things (IoT) and Machine Learning (ML), has led to the advent of the industry 4.0 (I4.0). In this scenario, intelligent devices can generate large volumes of data about industrial machinery and equipment that can be used to make maintenance more efficient. Prognostics and Health Management (PHM) is an emerging maintenance strategy that uses systems’ Condition Monitoring through IoT sensors installed on machinery to diagnose their faults or estimate their Remaining Useful Life (RUL). This study aims to conduct a Systematic Literature Review (SLR) on the use of ML techniques in the field of PHM of industrial mechanical systems and equipment. 50 studies resulted eligible for the above-mentioned SLR. Diagnostics and prognostics approach and the ML algorithm types used in the 50 analyzed papers have been analyzed together with the Key Performance Indicators (KPIs) used for their validation. From the analyses, it was found that Shallow Learning and Deep Learning (DL) algorithms are the most applied ones, while KPIs are used differently according to the type of task classification or regression. Moreover, results highlighted that many authors still use artificial datasets to test their algorithms, instead of datasets based on real data retrieved by their components. For the last type of datasets, this paper also introduces a schematic framework to standardize the step-by-step diagnostics and prognostics process carried out by the authors.
机器学习用于工业机械系统和设备的预测和健康管理:系统的文献综述
在过去十年中,在制造业中采用技术工具,例如物联网(IoT)和机器学习(ML)的使用,导致了工业4.0 (I4.0)的出现。在这种情况下,智能设备可以生成大量关于工业机械和设备的数据,这些数据可用于提高维护效率。预测和健康管理(PHM)是一种新兴的维护策略,它通过安装在机器上的物联网传感器使用系统状态监测来诊断故障或估计其剩余使用寿命(RUL)。本研究旨在对机器学习技术在工业机械系统和设备PHM领域的应用进行系统文献综述(SLR)。50项研究结果符合上述单反标准。50篇分析论文中使用的诊断和预测方法以及ML算法类型已与用于验证的关键绩效指标(kpi)一起进行了分析。从分析中发现,浅层学习和深度学习(DL)算法是应用最多的算法,而kpi的使用则根据任务分类或回归的类型而不同。此外,结果突出表明,许多作者仍然使用人工数据集来测试他们的算法,而不是基于其组件检索的真实数据集。对于最后一类数据集,本文还介绍了一个示意图框架,以标准化作者进行的逐步诊断和预测过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.50
自引率
6.10%
发文量
17
审稿时长
15 weeks
期刊介绍: The International Journal of Engineering Business Management (IJEBM) is an international, peer-reviewed, open access scientific journal that aims to promote an integrated and multidisciplinary approach to engineering, business and management. The journal focuses on issues related to the design, development and implementation of new methodologies and technologies that contribute to strategic and operational improvements of organizations within the contemporary global business environment. IJEBM encourages a systematic and holistic view in order to ensure an integrated and economically, socially and environmentally friendly approach to management of new technologies in business. It aims to be a world-class research platform for academics, managers, and professionals to publish scholarly research in the global arena. All submitted articles considered suitable for the International Journal of Engineering Business Management are subjected to rigorous peer review to ensure the highest levels of quality. The review process is carried out as quickly as possible to minimize any delays in the online publication of articles. Topics of interest include, but are not limited to: -Competitive product design and innovation -Operations and manufacturing strategy -Knowledge management and knowledge innovation -Information and decision support systems -Radio Frequency Identification -Wireless Sensor Networks -Industrial engineering for business improvement -Logistics engineering and transportation -Modeling and simulation of industrial and business systems -Quality management and Six Sigma -Automation of industrial processes and systems -Manufacturing performance and productivity measurement -Supply Chain Management and the virtual enterprise network -Environmental, legal and social aspects -Technology Capital and Financial Modelling -Engineering Economics and Investment Theory -Behavioural, Social and Political factors in Engineering
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