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タイトルImproving Computational Efficiency of Prediction in Model-Based Prognostics Using the Unscented Transform
本文(外部サイト)http://hdl.handle.net/2060/20110014230
著者(英)Daigle, Matthew John; Goebel, Kai Frank
著者所属(英)NASA Ames Research Center
発行日2010-10-11
言語eng
内容記述Model-based prognostics captures system knowledge in the form of physics-based models of components, and how they fail, in order to obtain accurate predictions of end of life (EOL). EOL is predicted based on the estimated current state distribution of a component and expected profiles of future usage. In general, this requires simulations of the component using the underlying models. In this paper, we develop a simulation-based prediction methodology that achieves computational efficiency by performing only the minimal number of simulations needed in order to accurately approximate the mean and variance of the complete EOL distribution. This is performed through the use of the unscented transform, which predicts the means and covariances of a distribution passed through a nonlinear transformation. In this case, the EOL simulation acts as that nonlinear transformation. In this paper, we review the unscented transform, and describe how this concept is applied to efficient EOL prediction. As a case study, we develop a physics-based model of a solenoid valve, and perform simulation experiments to demonstrate improved computational efficiency without sacrificing prediction accuracy.
NASA分類Computer Programming and Software
レポートNOARC-E-DAA-TN1684
ARC-E-DAA-TN2287
権利Copyright, Distribution as joint owner in the copyright
URIhttps://repository.exst.jaxa.jp/dspace/handle/a-is/246385


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