AI RESEARCH
Towards a more realistic evaluation of machine learning models for bearing fault diagnosis
arXiv CS.LG
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ArXi:2509.22267v4 Announce Type: replace Reliable detection of bearing faults is essential for maintaining the safety and operational efficiency of rotating machinery. While recent advances in machine learning (ML), particularly deep learning, have shown strong performance in controlled settings, many studies fail to generalize to real-world applications due to methodological flaws, most notably data leakage. This paper investigates the issue of data leakage in vibration-based bearing fault diagnosis and its impact on model evaluation.