Design of an Improved Implicit Generalized Predictive Controller for Temperature Control Systems

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Abstract

In this study, an implicit proportional-integral-based generalized predictive controller (PIGPC) is proposed to effectively control temperatures of industrial systems with time-varying delay. The controller is designed to optimize the target function with the proportional-integral structure for improving the controlling performance of implicit PIGPC. Meanwhile, the recursive least square method is leveraged to directly identify the parameters of controller. Compared with the conventional implicit generalized predictive controller, the process of parameter identification converges faster. The Lagrange multiplier method is introduced to solve the optimal control law of implicit PIGPC by considering the input constraints of system. An approximate decoupling controller for multivariable systems is proposed to eliminate the coupling effects. Simulation and experimental results manifest the effectiveness and feasibility of the proposed controller in temperature control systems.

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Chen, Z., Cui, J., Lei, Z., Shen, J., & Xiao, R. (2020). Design of an Improved Implicit Generalized Predictive Controller for Temperature Control Systems. IEEE Access, 8, 13924–13936. https://doi.org/10.1109/ACCESS.2020.2965021

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