Abstract

This paper presents the double-layered nonlinear model predictive control method for a continuously stirred tank reactor and a pH neutralization process that are subject to input disturbances and output disturbances at the same time. The nonlinear systems can be described as a Hammerstein -Wiener model. Furthermore, two nonlinear parts of the Hammerstein -Wiener model should be transformed into linear combination of known input and unknown disturbances, respectively. By taking advantage of Kalman filter, disturbances and states can be estimated. The estimated disturbances and states can be considered to calculate steady-state target in steady-state target calculation layer. Moreover, the state feedback control law can be obtained in dynamic control layer. A simple proof for offset-free control is given in the proposed method. The simulation results show that the controlled variable can achieve the offset-free control. It can be seen that the proposed method has better disturbance rejection performance, strong robustness and practical value.

Highlights

  • Model predictive control (MPC) is the most popular advanced control method in industrial control technology and academics, which can effectively overcome the disturbance and uncertainty and handle the constrain of controlled variables and manipulated variables.1–5 It is a kind of model-based closed-loop optimization control strategy

  • A simple proof for offset-free control is given in the proposed method

  • For the nonlinear systems that have simultaneously input and output disturbances, a double-layered nonlinear model predictive control (NMPC) based on the Hammerstein–Wiener model has been proposed

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Summary

Introduction

Model predictive control (MPC) is the most popular advanced control method in industrial control technology and academics, which can effectively overcome the disturbance and uncertainty and handle the constrain of controlled variables and manipulated variables.1–5 It is a kind of model-based closed-loop optimization control strategy. Keywords Double-layered nonlinear model predictive control, offset-free control, disturbance rejection, Kalman filter When the control system is subject to these disturbances, it may lead to model mismatch and steady-state deviation.

Results
Conclusion

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