Screening of Machine Learning Techniques on Predictive Maintenance: a Scoping Review
IF 0.8 4区 工程技术Q3 ENGINEERING, MULTIDISCIPLINARYDynaPub Date : 2023-10-26DOI:10.6036/10950
DANIEL CAMPOS OLIVARES, Alejandro Carrasco Muñoz, MIRKO MAZZOLENI, ANTONIO FERRAMOSCA, AMALIA LUQUE SENDRA
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引用次数: 0
Abstract
Predictive maintenance (PdM) is a set of actions and techniques to early detect failures and defects on machines before they occur, and the usage of machine learning and deep learning techniques in predictive maintenance has increased during the last years. Even with this increase of the literature, there is still a gap concerning the application of such techniques for PdM in the industry, as there are no clear guidelines about which information to use for a PdM system, how to process the information, and what machine learning techniques should be used in order to obtain acceptable results. This scoping review is performed in order to observe the current status on the use of Machine Learning and Deep Learning in predictive maintenance in academia and provide answer to the questions related to these guidelines. For this purpose, a literature review of the last five years is carried out, using those articles that cover information about sources of information used for PdM, the treatment given to such data and the machine learning (ML) methods or techniques used. The Web of Science: Core Collection database is used as a source of information, specifically the Science Citation Index Expanded (SCIE). The review shows that there are different information sources used for machine learning and deep learning in PdM, depending on the origin of the data and the availability of it, and as well whether the data sets are private or public. Also, we can observe that data used for both training and making predictions does not only use traditional pre-processing techniques, but that about one fifth of the articles even propose new techniques in this field. Additionally, we compare a wide range of techniques and algorithms which are used in Deep Learning -being ANN the most used- and in Machine Learning, being SVM the most used algorithm, closely followed by Random Forest. Based on the results, we provide indications about how to apply ML for PdM in industry. Keywords: machine learning, predictive maintenance, artificial intelligence, deep learning, data processing, data collection
预测性维护(PdM)是一组用于在机器发生故障和缺陷之前早期检测故障和缺陷的操作和技术,机器学习和深度学习技术在预测性维护中的使用在过去几年中有所增加。即使有了文献的增加,关于这些技术在PdM行业中的应用仍然存在差距,因为对于PdM系统使用哪些信息,如何处理信息以及应该使用哪些机器学习技术以获得可接受的结果,没有明确的指导方针。进行范围审查是为了观察学术界在预测性维护中使用机器学习和深度学习的现状,并提供与这些指南相关的问题的答案。为此,对过去五年的文献进行综述,使用那些涵盖PdM使用的信息源信息的文章,对这些数据的处理以及所使用的机器学习(ML)方法或技术。Web of Science: Core Collection数据库被用作信息来源,特别是科学引文索引扩展(SCIE)。回顾表明,PdM中的机器学习和深度学习有不同的信息源,这取决于数据的来源和可用性,以及数据集是私有的还是公共的。此外,我们可以观察到用于训练和预测的数据不仅使用传统的预处理技术,而且大约五分之一的文章甚至提出了该领域的新技术。此外,我们比较了深度学习中使用的各种技术和算法——最常用的人工神经网络——和机器学习中使用最多的支持向量机算法,紧随其后的是随机森林。在此基础上,提出了机器学习在PdM工业中的应用。关键词:机器学习,预测性维护,人工智能,深度学习,数据处理,数据采集
期刊介绍:
Founded in 1926, DYNA is one of the journal of general engineering most influential and prestigious in the world, as it recognizes Clarivate Analytics.
Included in Science Citation Index Expanded, its impact factor is published every year in Journal Citations Reports (JCR).
It is the Official Body for Science and Technology of the Spanish Federation of Regional Associations of Engineers (FAIIE).
Scientific journal agreed with AEIM (Spanish Association of Mechanical Engineering)
In character Scientific-technical, it is the most appropriate way for communication between Multidisciplinary Engineers and for expressing their ideas and experience.
DYNA publishes 6 issues per year: January, March, May, July, September and November.