Identification and interpretation of patterns in rocket engine data
Abstract
A prototype software system was constructed to detect anomalous Space Shuttle Main Engine (SSME) behavior in the early stages of fault development significantly earlier than the indication provided by either redline detection mechanism or human expert analysis. The major task of the research project is to analyze ground test data, to identify patterns associated with the anomalous engine behavior, and to develop a pattern identification and detection system on the basis of this analysis. A prototype expert system which was developed on both PC and Symbolics 3670 lisp machine for detecting anomalies in turbopump vibration data was checked with data from ground tests 902-473, 902-501, 902-519, and 904-097 of the Space Shuttle Main Engine. The neural networks method was also applied to supplement the statistical method utilized in the prototype system to investigate the feasibility in detecting anomalies in turbopump vibration of SSME. In most cases the anomalies detected by the expert system agree with those reported by NASA. On the neural networks approach, the results are given the successful detection rate higher than 95 percent to identify either normal or abnormal running condition based on the experimental data as well as numerical simulation.
- Publication:
-
Final Report
- Pub Date:
- October 1993
- Bibcode:
- 1993tenn.reptR....L
- Keywords:
-
- Engine Failure;
- Expert Systems;
- Fault Detection;
- Neural Nets;
- Pattern Recognition;
- Space Shuttle Main Engine;
- Anomalies;
- Ground Tests;
- Prototypes;
- Statistical Analysis;
- Turbine Pumps;
- Vibration;
- Spacecraft Propulsion and Power