论文标题
可靠性工程和安全应用程序的机器学习:审查当前状态和未来机会
Machine Learning for Reliability Engineering and Safety Applications: Review of Current Status and Future Opportunities
论文作者
论文摘要
机器学习(ML)遍布越来越多的学术学科和行业。它的影响是深远的,例如,自治和计算机愿景从根本上改变了几个领域。可靠性工程和安全无疑将效仿。有关ML的可靠性和安全应用程序已经有很大但零散的文献,并且可以使努力和集成到一个连贯的整体中可能是压倒性的。在这项工作中,我们通过为这种不断扩展的分析格局提供合成和路线图来促进这项任务,并突出其主要地标和途径。我们首先提供了不同的ML类别,子类别或任务的概述,并记录了几种相应的模型和算法。然后,我们回顾一下ML在可靠性和安全应用中的使用。我们研究了每个类别/子类别中的几个出版物,我们包括有关使用深度学习来强调其日益普及和独特优势的简短讨论。最后,我们向前看,并概述了利用ML为提高可靠性和安全考虑的一些有希望的未来机会。总体而言,我们认为ML能够提供新颖的见解和机会,以解决可靠性和安全应用方面的重要挑战。与传统分析工具相比,它还能够从事故数据集中挑逗更准确的见解,这反过来又可以带来更好的明智的决策和更有效的事故预防。
Machine learning (ML) pervades an increasing number of academic disciplines and industries. Its impact is profound, and several fields have been fundamentally altered by it, autonomy and computer vision for example; reliability engineering and safety will undoubtedly follow suit. There is already a large but fragmented literature on ML for reliability and safety applications, and it can be overwhelming to navigate and integrate into a coherent whole. In this work, we facilitate this task by providing a synthesis of, and a roadmap to this ever-expanding analytical landscape and highlighting its major landmarks and pathways. We first provide an overview of the different ML categories and sub-categories or tasks, and we note several of the corresponding models and algorithms. We then look back and review the use of ML in reliability and safety applications. We examine several publications in each category/sub-category, and we include a short discussion on the use of Deep Learning to highlight its growing popularity and distinctive advantages. Finally, we look ahead and outline several promising future opportunities for leveraging ML in service of advancing reliability and safety considerations. Overall, we argue that ML is capable of providing novel insights and opportunities to solve important challenges in reliability and safety applications. It is also capable of teasing out more accurate insights from accident datasets than with traditional analysis tools, and this in turn can lead to better informed decision-making and more effective accident prevention.