Back to Search
Start Over
Learning and diagnosing faults using neural networks
- Source :
- Center for Advanced Space Propulsion Second Annual Technical Symposium Proceedings.
- Publication Year :
- 1990
- Publisher :
- United States: NASA Center for Aerospace Information (CASI), 1990.
-
Abstract
- Neural networks have been employed for learning fault behavior from rocket engine simulator parameters and for diagnosing faults on the basis of the learned behavior. Two problems in applying neural networks to learning and diagnosing faults are (1) the complexity of the sensor data to fault mapping to be modeled by the neural network, which implies difficult and lengthy training procedures; and (2) the lack of sufficient training data to adequately represent the very large number of different types of faults which might occur. Methods are derived and tested in an architecture which addresses these two problems. First, the sensor data to fault mapping is decomposed into three simpler mappings which perform sensor data compression, hypothesis generation, and sensor fusion. Efficient training is performed for each mapping separately. Secondly, the neural network which performs sensor fusion is structured to detect new unknown faults for which training examples were not presented during training. These methods were tested on a task of fault diagnosis by employing rocket engine simulator data. Results indicate that the decomposed neural network architecture can be trained efficiently, can identify faults for which it has been trained, and can detect the occurrence of faults for which it has not been trained.
- Subjects :
- Cybernetics
Subjects
Details
- Language :
- English
- Database :
- NASA Technical Reports
- Journal :
- Center for Advanced Space Propulsion Second Annual Technical Symposium Proceedings
- Publication Type :
- Report
- Accession number :
- edsnas.19960011790
- Document Type :
- Report