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Machine Learning for industrial applications: A comprehensive literature review

机译:工业应用机器学习:全面的文献综述

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摘要

Machine Learning (ML) is a branch of artificial intelligence that studies algorithms able to learn autonomously, directly from the input data. Over the last decade, ML techniques have made a huge leap forward, as demonstrated by Deep Learning (DL) algorithms implemented by autonomous driving cars, or by electronic strategy games. Hence, researchers have started to consider ML also for applications within the industrial field, and many works indicate ML as one the main enablers to evolve a traditional manufacturing system up to the Industry 4.0 level. Nonetheless, industrial applications are still few and limited to a small cluster of international companies. This paper deals with these topics, intending to clarify the real potentialities, as well as potential flaws, of ML algorithms applied to operation management. A comprehensive review is presented and organized in a way that should facilitate the orientation of practitioners in this field. To this aim, papers from 2000 to date are categorized in terms of the applied algorithm and application domain, and a keyword analysis is also performed, to details the most promising topics in the field. What emerges is a consistent upward trend in the number of publications, with a spike of interest for unsupervised and especially deep learning techniques, which recorded a very high number of publications in the last five years. Concerning trends, along with consolidated research areas, recent topics that are growing in popularity were also discovered. Among these, the main ones are production planning and control and defect analysis, thus suggesting that in the years to come ML will become pervasive in many fields of operation management.
机译:机器学习(ML)是人工智能的分支,即研究能够直接从输入数据自动学习的算法。在过去的十年中,ML技术已经向前发展了巨大的飞跃,如自主驾驶汽车的深度学习(DL)算法,或通过电子战略游戏所示。因此,研究人员已经开始考虑产业领域内的应用程序,并且许多作品将ML作为主要的推动者推动传统制造系统的一个达到行业4.0水平。尽管如此,工业应用仍然很少,仅限于一小群国际公司。本文涉及这些主题,打算澄清应用于运营管理的ML算法的实际潜力以及潜在的缺陷。以综合审查提供了全面的审查,以促进该领域的从业者的定位。为此目的,从2000年到迄今为止的论文分类为应用算法和应用程序域,也进行了关键字分析,以详细介绍该领域最有前途的主题。出现的出版物数量是一致的出版物的一致上升趋势,对于无人监督,特别是深度学习技术的兴趣飙升,这在过去五年中录得很多出版物。关于趋势,以及综合研究领域,也发现了普遍存​​在普及的历史议题。其中,主要是生产规划和控制和缺陷分析,从而表明在未来的岁月中将在许多运营管理领域变得普遍存在。

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