Litcius/Paper detail

System Transformation-Based Neural Control for Full-State-Constrained Pure-Feedback Systems via Disturbance Observer

Min Wang, Yongtao Zou, Chenguang Yang

2020IEEE Transactions on Cybernetics68 citationsDOI

Abstract

In this article, a novel disturbance observer-based adaptive neural control (ANC) scheme is proposed for full-state-constrained pure-feedback nonlinear systems using a new system transformation method. A nonlinear transformation function in a uniformed design framework is constructed to convert the original states with constrained bounds into the ones without any constraints. By combining an auxiliary first-order filter, an augmented nonlinear system without any state constraint is derived to circumvent the difficulty of the controller design caused by the nonaffine input signal. Based on the augmented nonlinear system, a nonlinear disturbance observer (NDO) is designed to enhance the disturbance rejection ability. Subsequently, the NDO-based ANC scheme is presented by combining the second-order filters with backstepping. The proposed scheme confines all states within the predefined bounds, eliminates the condition on both the known sign and bounds of control gains, improves the robustness of the closed-loop system, and alleviates the computational burden. Two simulation examples are performed to show the validity of the presented scheme.

Topics & Concepts

Control theory (sociology)BacksteppingNonlinear systemRobustness (evolution)Computer scienceTransformation (genetics)State observerObserver (physics)MathematicsAdaptive controlControl (management)Artificial intelligencePhysicsBiochemistryChemistryQuantum mechanicsGeneAdaptive Control of Nonlinear SystemsAdaptive Dynamic Programming ControlDistributed Control Multi-Agent Systems