A Discussion on Uncertainty Representation and Interpretation in Model-based Prognostics Algorithms based on Kalman Filter Estimation Applied to Prognostics of Electronics Components
Author(s) -
José Celaya,
Abhinav Saxena,
Kai Goebel
Publication year - 2012
Publication title -
infotech@aerospace
Language(s) - English
Resource type - Conference proceedings
DOI - 10.2514/6.2012-2422
Subject(s) - prognostics , kalman filter , representation (politics) , algorithm , extended kalman filter , interpretation (philosophy) , computer science , electronics , ensemble kalman filter , engineering , data mining , artificial intelligence , electrical engineering , politics , political science , law , programming language
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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