Automotive Fault Nowcasting with Machine Learning and Natural Language Processing

Abstract

Automated fault diagnosis can facilitate diagnostics assistance, speedier troubleshooting, and better-organised logistics. Currently, most AI-based prognostics and health management in the automotive industry ignore textual descriptions of the experienced problems or symptoms. With this study, however, we propose an ML-assisted workflow for automotive fault nowcasting that improves on current industry standards. We show that a multilingual pre-trained Transformer model can effectively classify the textual symptom claims from a large company with vehicle fleets, despite the task’s challenging nature due to the 38 languages and 1357 classes involved. Overall, we report an accuracy of more than 80% for high-frequency classes and above 60% for classes with reasonable minimum support, bringing novel evidence that automotive troubleshooting management can benefit from multilingual symptom text classification.

Cite

Text

Pavlopoulos et al. "Automotive Fault Nowcasting with Machine Learning and Natural Language Processing." Machine Learning, 2024. doi:10.1007/S10994-023-06398-7

Markdown

[Pavlopoulos et al. "Automotive Fault Nowcasting with Machine Learning and Natural Language Processing." Machine Learning, 2024.](https://mlanthology.org/mlj/2024/pavlopoulos2024mlj-automotive/) doi:10.1007/S10994-023-06398-7

BibTeX

@article{pavlopoulos2024mlj-automotive,
  title     = {{Automotive Fault Nowcasting with Machine Learning and Natural Language Processing}},
  author    = {Pavlopoulos, John and Romell, Alv and Curman, Jacob and Steinert, Olof and Lindgren, Tony and Borg, Markus and Randl, Korbinian},
  journal   = {Machine Learning},
  year      = {2024},
  pages     = {843-861},
  doi       = {10.1007/S10994-023-06398-7},
  volume    = {113},
  url       = {https://mlanthology.org/mlj/2024/pavlopoulos2024mlj-automotive/}
}