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タイトルAdvanced Methods for Determining Prediction Uncertainty in Model-Based Prognostics with Application to Planetary Rovers
本文(外部サイト)http://hdl.handle.net/2060/20140009121
著者(英)Sankararaman, Shankar; Daigle, Matthew J.
著者所属(英)NASA Ames Research Center
発行日2013-10-14
言語eng
内容記述Prognostics is centered on predicting the time of and time until adverse events in components, subsystems, and systems. It typically involves both a state estimation phase, in which the current health state of a system is identified, and a prediction phase, in which the state is projected forward in time. Since prognostics is mainly a prediction problem, prognostic approaches cannot avoid uncertainty, which arises due to several sources. Prognostics algorithms must both characterize this uncertainty and incorporate it into the predictions so that informed decisions can be made about the system. In this paper, we describe three methods to solve these problems, including Monte Carlo-, unscented transform-, and first-order reliability-based methods. Using a planetary rover as a case study, we demonstrate and compare the different methods in simulation for battery end-of-discharge prediction.
NASA分類Cybernetics, Artificial Intelligence and Robotics; Physics (General)
レポートNOARC-E-DAA-TN11276
権利Copyright, Distribution as joint owner in the copyright
URIhttps://repository.exst.jaxa.jp/dspace/handle/a-is/71732


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