Neural Network-Based Robust Tracking Control For Robots
Yaonan Wang, Wei Sun, Siyi Miao
- Year
- 2009
- Citations
- 27
Abstract
Abstract An adaptive robust tracking controller is proposed for robot systerns under plant uncertainties and external disturbances. Nonlinear robust control theory and neural network design aze combined to construct a hybrid adaptive-robust tracking control scheme which ensures that the joint positions track the desired reference signals. Neural network is used to identify the uncertainties, and the effects on tracking performance attributable to the approximation errors of NN aze regazded as external disturbances that aze attenuated to a prescribed level by robust controller. The neural network weights aze only tuned on-line without tedious and lengthy off-line leazning. A simple robust learning algorithm of neural network is derived such that the proposed adaptive controller can easily be implemented and the stability of the closed system can be ensured. A simulation example demonstrates the effectiveness of the proposed control strategy.
Keywords
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