Adaptive Tracker Design with Identifier for Pendulum System by Conditional LMI Method and IROA
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概要
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This paper proposes a robust adaptive fuzzy PID control scheme augmented with a supervisory controller for unknown systems. In this scheme, a generalized fuzzy model is used to describe a class of unknown systems. The control strategy allows each part of the control law, i.e., a supervisory controller, a compensator, and an adaptive fuzzy PID controller, to be designed incrementally according to different guidelines. The supervisory controller in the outer loop aims at enhancing system robustness in the face of extra disturbances, variation in system parameters, and parameter drift in the adaptation law. Furthermore, an H∞ control design method using the fuzzy Lyapunov function is presented for the design of the initial control gains that guarantees transient performance at the start of closed-loop control, which is generally overlooked in many adaptive control systems. This design of the initial control gains is a compound search strategy called conditional linear matrix inequality (CLMI) approach with IROA (Improved random optimal algorithm), it leads to less complex designs than a standard LMI method by fuzzy Lyapunov function. Numerical studies of the tracking control of an uncertain inverted pendulum system demonstrate the effectiveness of the control strategy. From results of this simulation, the generalized fuzzy model reduces the rule number of T-S fuzzy model indeed.
- 2009-09-01
著者
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Hwang Jiing-dong
Department Of Electronic Engineering Jinwen University Of Science And Technology
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TSAI Zhi-Ren
Department of Computer Science & Information Engineering, Asia University
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Tsai Zhi-ren
Department Of Computer Science & Information Engineering Asia University
関連論文
- Fuzzy Tracker with Self-Tuning PID and Identifier Design Using Conditional-LMI and Improved Random Optimal Algorithm(Systems and Control)
- Adaptive Tracker Design with Identifier for Pendulum System by Conditional LMI Method and IROA