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Reinforcement Learning-Based Adaptive Optimal Control for Nonlinear Systems With Asymmetric Hysteresis

Licheng Zheng, Zhi Liu, Yaonan Wang, C. L. Philip Chen, Yun Zhang, Zongze Wu

2023IEEE Transactions on Neural Networks and Learning Systems14 citationsDOI

Abstract

This article investigates the adaptive optimal tracking problem for a class of nonlinear affine systems with asymmetric Prandtl-Ishlinskii (PI) hysteresis nonlinearities based on actor-critic (A-C) learning mechanisms. Considering the huge obstacles arising from the uncertainty of hysteresis nonlinearity in actuators, we develop a scheme for the conflict between the construction of Hamilton functions and hysteresis nonlinearity. The actuator hysteresis forces the input into a hysteresis delay, thus preventing the Hamilton function from getting the current moment's input instantly and thus making optimization impossible. In the first step, an inverse model is constructed to compensate for the hysteresis model with a shift factor. In the second step, we compensate for the control input by designing a feedback controller and incorporating the estimation and approximation errors into the Hamilton error. Optimal control, the other part of the actual control input, is obtained by taking partial derivatives of the Hamiltonian function after the nonlinearities have been circumvented. At the end, a simulation is given to validate the developed solution.

Topics & Concepts

Control theory (sociology)Nonlinear systemHysteresisActuatorOptimal controlHamiltonian (control theory)Controller (irrigation)Computer scienceMathematicsMathematical optimizationControl (management)PhysicsArtificial intelligenceAgronomyBiologyQuantum mechanicsPiezoelectric Actuators and Control
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