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Adaptive Neural Control for Hysteretic Nonlinear Systems With Hysteresis Neural Direct Inverse Compensator and Its Application

Xiuyu Zhang, Zhengyan Hu, Yue Wang, Fu Guo, Zhi Li, Chun‐Yi Su

2024IEEE Transactions on Cybernetics11 citationsDOI

Abstract

Aiming at high precision control for a class of hysteretic nonlinear systems, a new hysteresis direct inverse compensator-based adaptive output feedback control scheme is designed in this article. First, a novel long short-term memory neural network (LSTMNN)-based hysteresis inverse compensator is established to compensate the asymmetric hysteresis nonlinearity, where the LSTMNN is used as the prediction mechanism for model operator weights, rather than the overall mapping of hysteresis input and output. Second, by designing the modified high-gain K-Filter states observer and the error transformed function, the unmeasurable states are estimated with arbitrarily small estimation error and the prespecified tracking performance is achieved. Lastly, the biconical dielectric elastomer actuator (DEA) motion platform is constructed. Then, the effectiveness of the proposed LSTMNN-based hysteresis inverse compensator and control scheme are verified on the experimental platform. The experimental results illustrate the effectiveness and advantages of proposed control scheme.

Topics & Concepts

Control theory (sociology)Nonlinear systemHysteresisArtificial neural networkInverseAdaptive controlNeural systemComputer scienceControl (management)MathematicsNeurosciencePhysicsArtificial intelligenceBiologyQuantum mechanicsGeometryPiezoelectric Actuators and ControlIterative Learning Control SystemsMagnetic Properties and Applications