Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
6858080 | Information Sciences | 2014 | 23 Pages |
Abstract
In this paper, (1) a new fuzzy model is presented to simulate two different chaotic systems with different numbers of nonlinear terms and (2) a new adaptive approach and a new control Lyapunov function are proposed to synchronize these two different fuzzy chaotic systems and speed up the convergence of errors. By using this new model, the numbers of fuzzy rules of chaotic systems can be reduced from 2N to 2ÃN and only 2 subsystems are needed, where N is the number of nonlinear terms. The fuzzy systems become much simpler. In addition, through the new fuzzy model, the new fuzzy systems are much simpler than T-S fuzzy systems (when nonlinear systems are complicated) and can be used to any other kind of application in fuzzy logic control or fuzzy modeling. Mathieu-Van der Pol system (which is called M-V system in this paper) and Quantum cellular neural networks nanosystem (which is called Q-CNN system in this paper) are used for illustrations in numerical simulation results to show the effectiveness and feasibility of our new adaptive approach and new control Lyapunov function. The T-S fuzzy modeling and traditional adaptive control are also given in Appendix B T-S fuzzy model of chaotic systems, Appendix C Traditional adaptive method for comparison.
Related Topics
Physical Sciences and Engineering
Computer Science
Artificial Intelligence
Authors
Shih-Yu Li, Hsien-Keng Chen, Lap-Mou Tam, Sheng-Chieh Huang, Zheng-Ming Ge,