Litcius/Paper detail

Reinforcement Learning-Based Adaptive Finite-Time Performance Constraint Control for Nonlinear Systems

Yongming Li, Kewen Li, Shaocheng Tong

2023IEEE Transactions on Systems Man and Cybernetics Systems59 citationsDOI

Abstract

This article focuses on the issue of reinforcement learning (RL)-based adaptive optimal finite-time performance constraint control for nonlinear systems. By the aid of RL-based critic-actor neural networks (NNs) construction, an optimal finite-time adaptive performance constraint controller is constructed. Via the adding a power integrator and prescribed performance techniques, a performance constraint-based adaptive finite-time optimal control strategy is developed, which demonstrates the considered system is semi-global practical finite-time stability (SGPFS), and all state errors can remain within a preset error constraint in finite time. Meanwhile, the proposed optimal control strategy can minimum the corresponding cost function. Finally, a numerical example is implemented to verify the feasibility of the developed control strategy and theory.

Topics & Concepts

Reinforcement learningControl theory (sociology)Constraint (computer-aided design)Computer scienceIntegratorController (irrigation)Optimal controlNonlinear systemStability (learning theory)Artificial neural networkConstraint satisfactionAdaptive controlMathematical optimizationControl (management)MathematicsArtificial intelligenceMachine learningQuantum mechanicsBiologyBandwidth (computing)AgronomyPhysicsGeometryComputer networkProbabilistic logicAdaptive Dynamic Programming ControlAdaptive Control of Nonlinear Systems