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- Title
Neural adaptive global stability control for robot manipulators with time‐varying output constraints.
- Authors
Fan, Yongqing; Kang, Tongtong; Wang, Wenqing; Yang, Chenguang
- Abstract
Summary: In this paper, a novel adaptive control scheme is proposed based on radial basis function neural network (RBFNN). The considered system is deduced by the structure of RBFNN with nonzero time‐varying parameter that installed in the fore‐end and terminal of RBFNN. With this structure and the Taylor expansion of any smooth continuous nonlinear function, a universal approximation of RBFNN is addressed according to the analysis of the character of continuous homogenous function and the Euler's theorem. The approximation accuracies can be adjusted online by the nonzero time‐varying parameter in the device with the degree of continuous homogenous function, which expand the semiglobally stability to global stability over conventional neural controller design approaches. Based on the theory analysis of barrier Lyapunov function, the violation of time‐varying constraints can be subjugated without wrecked. Finally, simulation results are carried out to verify the effectiveness by the design methods.
- Subjects
EULER theorem; ROBOT control systems; MANIPULATORS (Machinery); RADIAL basis functions; NONLINEAR functions; CONTINUOUS functions
- Publication
International Journal of Robust & Nonlinear Control, 2019, Vol 29, Issue 16, p5765
- ISSN
1049-8923
- Publication type
Article
- DOI
10.1002/rnc.4690