RULSurv: A probabilistic survival-based method for early censoring-aware prediction of remaining useful life in ball bearings
Christian Marius Lillelund, Fernando Pannullo, Morten Opprud Jakobsen,, Manuel Morante, Christian Fischer Pedersen

TL;DR
This paper introduces a survival analysis-based method for early fault detection and RUL prediction of ball bearings that effectively handles censored data, outperforming existing models in accuracy and reliability.
Contribution
The paper presents a novel survival analysis approach using KL divergence for early fault detection and RUL estimation that explicitly incorporates censored data, improving prediction accuracy.
Findings
Achieves lower MAE compared to non-censoring models.
Demonstrates superior accuracy over state-of-the-art baselines.
Effectively handles censored data in RUL prediction.
Abstract
Predicting the remaining useful life (RUL) of ball bearings is an active area of research, where novel machine learning techniques are continuously being applied to predict degradation trends and anticipate failures before they occur. However, few studies have explicitly addressed the challenge of handling censored data, where information about a specific event (\eg mechanical failure) is incomplete or only partially observed. To address this issue, we introduce a novel and flexible method for early fault detection using Kullback-Leibler (KL) divergence and RUL estimation using survival analysis that naturally supports censored data. We demonstrate our approach in the XJTU-SY dataset using a 5-fold cross-validation strategy across three different operating conditions. When predicting the time to failure for bearings under the highest load (C1, 12.0 kN and 2100 RPM) with 25% random…
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Taxonomy
TopicsInsurance, Mortality, Demography, Risk Management
