Title :
Automotive fault diagnosis - part II: a distributed agent diagnostic system
Author :
Murphey, Yi L. ; Crossman, Jacob A. ; Chen, Zhihang ; Cardillo, John
Author_Institution :
Dept. of Electr. & Comput. Eng., Univ. of Michigan, Dearborn, MI, USA
fDate :
7/1/2003 12:00:00 AM
Abstract :
For pt.I see Crossman, J.A. et al., ibid., p.1063-75. We describe a novel diagnostic architecture, distributed diagnostics agent system (DDAS), developed for automotive fault diagnosis. The DDAS consists of a vehicle diagnostic agent and a number of signal diagnostic agents, each of which is responsible for the fault diagnosis of one particular signal using either a single or multiple signals, depending on the complexity of signal faults. Each signal diagnostic agent is developed using a common framework that involves signal segmentation, automatic signal feature extraction and selection, and machine learning. The signal diagnostic agents can concurrently execute their tasks; some agents possess information concerning the cause of faults for other agents, while other agents merely report symptoms. Together, these signal agents present a full picture of the behavior of the vehicle under diagnosis to the vehicle diagnostic agent. DDAS provides three levels of diagnostics decisions: signal-segment fault; signal fault; vehicle fault. DDAS is scalable and versatile and has been implemented for fault detection of electronic control unit (ECU) signals; experiment results are presented and discussed.
Keywords :
automotive electronics; fault diagnosis; feature extraction; learning (artificial intelligence); signal processing; software agents; automatic signal feature extraction; automatic signal feature selection; automotive fault diagnostics; distributed agent diagnostic system; fault diagnosis; machine learning; signal diagnostic agents; signal fault analysis; signal segmentation; vehicle diagnostic agent; Artificial intelligence; Automotive engineering; Fault detection; Fault diagnosis; Feature extraction; Instruments; Jacobian matrices; Machine learning; Statistics; Vehicles;
Journal_Title :
Vehicular Technology, IEEE Transactions on
DOI :
10.1109/TVT.2003.814236