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SSME fault monitoring and diagnosis expert system

Authors :
Ali, Moonis
Norman, Arnold M
Gupta, U. K
Source :
Overview of the Center for Advanced Space Propulsion.
Publication Year :
1989
Publisher :
United States: NASA Center for Aerospace Information (CASI), 1989.

Abstract

An expert system, called LEADER, has been designed and implemented for automatic learning, detection, identification, verification, and correction of anomalous propulsion system operations in real time. LEADER employs a set of sensors to monitor engine component performance and to detect, identify, and validate abnormalities with respect to varying engine dynamics and behavior. Two diagnostic approaches are adopted in the architecture of LEADER. In the first approach fault diagnosis is performed through learning and identifying engine behavior patterns. LEADER, utilizing this approach, generates few hypotheses about the possible abnormalities. These hypotheses are then validated based on the SSME design and functional knowledge. The second approach directs the processing of engine sensory data and performs reasoning based on the SSME design, functional knowledge, and the deep-level knowledge, i.e., the first principles (physics and mechanics) of SSME subsystems and components. This paper describes LEADER's architecture which integrates a design based reasoning approach with neural network-based fault pattern matching techniques. The fault diagnosis results obtained through the analyses of SSME ground test data are presented and discussed.

Subjects

Subjects :
Spacecraft Propulsion And Power

Details

Language :
English
Database :
NASA Technical Reports
Journal :
Overview of the Center for Advanced Space Propulsion
Notes :
NAG1-513
Publication Type :
Report
Accession number :
edsnas.19960022972
Document Type :
Report