Uncertainty representation and interpretation in model-based prognostics algorithms based on Kalman Filter estimation

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Abstract

This article discusses several aspects of uncertainty representation and management for model-based prognostics methodologies based on our experience with Kalman Filters when applied to prognostics for electronics components. In particular, it explores the implications of modeling remaining useful life prediction as a stochastic process and how it relates to uncertainty representation, management, and the role of prognostics in decision-making. A distinction between the interpretations of estimated remaining useful life probability density function and the true remaining useful life probability density function is explained and a cautionary argument is provided against mixing interpretations for the two while considering prognostics in making critical decisions.

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Celaya, J. R., Saxena, A., & Goebel, K. (2012). Uncertainty representation and interpretation in model-based prognostics algorithms based on Kalman Filter estimation. In Proceedings of the Annual Conference of the Prognostics and Health Management Society 2012, PHM 2012 (pp. 427–436). Prognostics and Health Management Society. https://doi.org/10.36001/phmconf.2012.v4i1.2110

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