AIHCLGJan 15, 2024

Explainable Predictive Maintenance: A Survey of Current Methods, Challenges and Opportunities

arXiv:2401.07871v176 citationsh-index: 27IEEE Access
Originality Synthesis-oriented
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It addresses the need for interpretability in predictive maintenance systems for human operators, but is incremental as it synthesizes existing literature.

This survey reviews explainable AI methods applied to predictive maintenance to enhance user trust, categorizing approaches and identifying challenges and future directions.

Predictive maintenance is a well studied collection of techniques that aims to prolong the life of a mechanical system by using artificial intelligence and machine learning to predict the optimal time to perform maintenance. The methods allow maintainers of systems and hardware to reduce financial and time costs of upkeep. As these methods are adopted for more serious and potentially life-threatening applications, the human operators need trust the predictive system. This attracts the field of Explainable AI (XAI) to introduce explainability and interpretability into the predictive system. XAI brings methods to the field of predictive maintenance that can amplify trust in the users while maintaining well-performing systems. This survey on explainable predictive maintenance (XPM) discusses and presents the current methods of XAI as applied to predictive maintenance while following the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) 2020 guidelines. We categorize the different XPM methods into groups that follow the XAI literature. Additionally, we include current challenges and a discussion on future research directions in XPM.

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