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  4. Predictive maintenance enabled by machine learning: Use cases and challenges in the automotive industry
 
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2021
Journal Article
Title

Predictive maintenance enabled by machine learning: Use cases and challenges in the automotive industry

Abstract
Recent developments in maintenance modelling fuelled by data-based approaches such as machine learning (ML), have enabled a broad range of applications. In the automotive industry, ensuring the functional safety over the product life cycle while limiting maintenance costs has become a major challenge. One crucial approach to achieve this, is predictive maintenance (PdM). Since modern vehicles come with an enormous amount of operating data, ML is an ideal candidate for PdM. While PdM and ML for automotive systems have both been covered in numerous review papers, there is no current survey on ML-based PdM for automotive systems. The number of publications in this field is increasing - underlining the need for such a survey. Consequently, we survey and categorize papers and analyse them from an application and ML perspective. Following that, we identify open challenges and discuss possible research directions. We conclude that (a) publicly available data would lead to a boost in research activities, (b) the majority of papers rely on supervised methods requiring labelled data, (c) combining multiple data sources can improve accuracies, (d) the use of deep learning methods will further increase but requires efficient and interpretable methods and the availability of large amounts of (labelled) data.
Author(s)
Theissler, Andreas
Hochschule Aalen
Pérez-Velázquez, Judith
Technische Hochschule Ingolstadt
Kettelgerdes, Marcel
Technische Hochschule Ingolstadt
Elger, Gordon  
Fraunhofer-Institut für Verkehrs- und Infrastruktursysteme IVI  
Journal
Reliability engineering & system safety  
Open Access
DOI
10.1016/j.ress.2021.107864
Language
English
Fraunhofer-Institut für Verkehrs- und Infrastruktursysteme IVI  
Keyword(s)
  • predictive maintenance

  • artificial intelligence

  • machine learning

  • deep learning

  • vehicle

  • automotive

  • reliability

  • lifetime prediction

  • condition monitoring

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