LGFeb 11, 2025

Interpretable Rules for Online Failure Prediction: A Case Study on the Metro do Porto dataset

arXiv:2502.07394v1h-index: 4
Originality Incremental advance
AI Analysis

This work addresses the need for explainability in predictive maintenance applications, particularly for Metro train failures, providing an incremental solution for a specific domain.

This study tackled the problem of predicting failures on Metro trains in Porto, Portugal, and achieved a result where three specific sensors suffice to predict failures with simple rules. The approach led to straightforward and interpretable rules for online failure prediction.

Due to their high predictive performance, predictive maintenance applications have increasingly been approached with Deep Learning techniques in recent years. However, as in other real-world application scenarios, the need for explainability is often stated but not sufficiently addressed. This study will focus on predicting failures on Metro trains in Porto, Portugal. While recent works have found high-performing deep neural network architectures that feature a parallel explainability pipeline, the generated explanations are fairly complicated and need help explaining why the failures are happening. This work proposes a simple online rule-based explainability approach with interpretable features that leads to straightforward, interpretable rules. We showcase our approach on MetroPT2 and find that three specific sensors on the Metro do Porto trains suffice to predict the failures present in the dataset with simple rules.

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