Title :
Integrated Model-Based and Data-Driven Diagnosis of Automotive Antilock Braking Systems
Author :
Luo, Jianhui ; Namburu, Madhavi ; Pattipati, Krishna R. ; Qiao, Liu ; Chigusa, Shunsuke
Author_Institution :
Dept. of Electr. & Comput. Eng., Univ. of Connecticut, Storrs, CT, USA
fDate :
3/1/2010 12:00:00 AM
Abstract :
Model-based fault diagnosis, using statistical hypothesis testing, residual generation (by analytical redundancy), and parameter estimation, has been an active area of research for the past four decades. However, these techniques are developed in isolation, and generally, a single technique cannot address the diagnostic problems in complex systems. In this paper, we investigate a hybrid approach, which combines model-based and data-driven techniques to obtain better diagnostic performance than the use of a single technique alone, and demonstrate it on an antilock braking system. In this approach, we first combine the parity equations and a nonlinear observer to generate the residuals. Statistical tests, particularly the generalized likelihood ratio tests, are used to detect and isolate a subset of faults that are easier to detect. Support vector machines are used for fault isolation of less-sensitive parametric faults. Finally, subset selection (via fault detection and isolation) is used to accurately estimate fault severity.
Keywords :
braking; fault diagnosis; large-scale systems; parameter estimation; statistical testing; support vector machines; automotive antilock braking systems; complex systems; fault isolation; generalized likelihood ratio tests; model based fault diagnosis; parameter estimation; parametric faults; parity equations; residual generation; statistical hypothesis testing; subset selection; support vector machines; Antilock braking systems (ABSs); data-driven diagnosis; model-based diagnosis; nonlinear systems; parameter estimation; residuals; support vector machines (SVMs);
Journal_Title :
Systems, Man and Cybernetics, Part A: Systems and Humans, IEEE Transactions on
DOI :
10.1109/TSMCA.2009.2034481