Adaptive finite-time fuzzy control of full-state constrained high-order nonlinear systems without feasibility conditions and its application
Neurocomputing(2020)
摘要
This paper investigates adaptive finite-time fuzzy control for full-state constrained high-order nonlinear systems. Fuzzy logic systems are employed to relax growth assumptions imposed on unknown system nonlinearities. By integrating a nonlinear state-dependent transformation into control design, full-state constraints can be handled without imposing feasibility conditions on virtual controllers. It is rigorously proved that fuzzy approximation is valid based on a compact set, full-state constraints aren’t violated for all time. Besides, the solution of the closed-loop system is semi-global practical finite-time stable, and the tracking error converges to an adjustable compact set around the origin in finite-time. Two examples show the advantages of this control scheme.
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关键词
High-order nonlinear systems,Full-state constraints,Adaptive finite-time fuzzy control,Feasibility conditions
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