Predictive fault-finding system will protect future space shuttles

Knight, Helen
September 2003
Engineer (00137758);9/26/2003, Vol. 292 Issue 7636, p11
Reports on the development of an artificial intelligence system designed to detect faults in space shuttle components and allowing ground control engineers or the astronauts onboard to take immediate action in the U.S. Algorithm-based systems; Use of symbols to allow users to understand and interact with it; Machine learning techniques.


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