Degradation-based residual life prediction under different environments
Rensheng Zhou, Nicoleta Serban, Nagi Gebraeel

TL;DR
This paper introduces a flexible statistical framework for predicting the residual life of components using degradation signals collected under varying and possibly unknown environmental conditions, even when data are sparse or fragmented.
Contribution
It extends traditional degradation modeling by accommodating different environmental conditions and incomplete data, incorporating classification and clustering for better residual life prediction.
Findings
Accurate residual life predictions demonstrated with simulated data.
Effective classification and clustering methods for environmental state identification.
Model performs well with vibration-based degradation signals from machinery.
Abstract
Degradation modeling has traditionally relied on historical signals to estimate the behavior of the underlying degradation process. Many models assume that these historical signals are acquired under the same environmental conditions and can be observed along the entire lifespan of a component. In this paper, we relax these assumptions and present a more general statistical framework for modeling degradation signals that may have been collected under different types of environmental conditions. In addition, we consider applications where the historical signals are not necessarily observed continuously, that is, historical signals are sparse or fragmented. We consider the case where historical degradation signals are collected under known environmental states and another case where the environmental conditions are unknown during the acquisition of these historical data. For the first…
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