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Detecting and diagnosing SSME faults using an autoassociative neural network topologyAn effort is underway at the University of Tennessee Space Institute to develop diagnostic expert system methodologies based on the analysis of patterns of behavior of physical mechanisms. In this approach, fault diagnosis is conceptualized as the mapping or association of patterns of sensor data to patterns representing fault conditions. Neural networks are being investigated as a means of storing and retrieving fault scenarios. Neural networks offer several powerful features in fault diagnosis, including (1) general pattern matching capabilities, (2) resistance to noisy input data, (3) the ability to be trained by example, and (4) the potential for implementation on parallel computer architectures. This paper presents (1) an autoassociative neural network topology, i.e. the network input and output is identical when properly trained, and hence learning is unsupervised; (2) the training regimen used; and (3) the response of the system to inputs representing both previously observed and unkown fault scenarios. The effects of noise on the integrity of the diagnosis are also evaluated.
Document ID
19960022978
Acquisition Source
Headquarters
Document Type
Conference Paper
Authors
Ali, M.
(Tennessee Univ. Space Inst. Tullahoma, TN United States)
Dietz, W. E.
(Tennessee Univ. Space Inst. Tullahoma, TN United States)
Kiech, E. L.
(Tennessee Univ. Space Inst. Tullahoma, TN United States)
Date Acquired
August 17, 2013
Publication Date
October 26, 1989
Publication Information
Publication: Overview of the Center for Advanced Space Propulsion
Subject Category
Cybernetics
Accession Number
96N71349
Distribution Limits
Public
Copyright
Work of the US Gov. Public Use Permitted.
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