This paper presents a new training method for fuzzy neural network (FNN) systems to approximate unknown nonlinear continuous functions. Fast terminal sliding mode combining the 3nite time convergent property of terminal attractor and exponential convergent property oflinear system has faster convergence to the origin in 3nite time. The proposed training algorithm uses the principle ofthe fast terminal sliding mode into the conventional gradient descent learning algorithm. The Lyapunov stability analysis in this paper guarantees that the approximation is stable and converges to the optimal approximation function with improved speed instead of3nite time convergence to unknown function. The proposed FNN approximator is then applied in the control ofan unstable nonlinear system and the Du5ng system. The simulation results demonstrate the effectiveness of the proposed method.
Funding
Category 1 - Australian Competitive Grants (this includes ARC, NHMRC)
History
Start Page
1257
End Page
1261
Number of Pages
5
Start Date
2002-11-18
Finish Date
2002-11-22
ISBN-10
9810475241
ISBN-13
9789810475246
Location
Singapore
Publisher
IEEE Service Center
Place of Publication
Singapore
Peer Reviewed
Yes
Open Access
No
External Author Affiliations
Monash University; Nanyang Technological University; Royal Melbourne Institute of Technology (Australia);
Era Eligible
Yes
Name of Conference
9th International Conference on Neural Information Processing
Parent Title
ICONIP'02: Proceedings of the 9th International Conference on Neural Information Processing : computational intelligence for the E-age : November 18-22, 2002, Orchid Country Club, Singapore / Lipo Wang [and others] (editors)