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タイトルTowards a machine learning framework for acquiring and exploiting monitoring and diagnostic knowledge
著者(英)Fisher, Doug; Kulkarni, Deepak; Manganaris, Stefanos
著者所属(英)NASA Ames Research Center
発行日1993-01-01
1993
言語eng
内容記述In this paper we address the problem of detecting and diagnosing faults in physical systems, for which neither prior expertise for the task nor suitable system models are available. We propose an architecture that integrates the on-line acquisition and exploitation of monitoring and diagnostic knowledge. The focus of the paper is on the component of the architecture that discovers classes of behaviors with similar characteristics by observing a system in operation. We investigate a characterization of behaviors based on best fitting approximation models. An experimental prototype has been implemented to test it. We present preliminary results in diagnosing faults of the Reaction Control System of the Space Shuttle. The merits and limitations of the approach are identified and directions for future work are set.
NASA分類CYBERNETICS
レポートNO93A33133
権利Copyright


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