Improved constrained min-max optimization for MPC tracking control in industrial networked process systems

Author:

Tao Jili1ORCID,Bai Yang1,Chen Zhuoyi1,Li Haisheng2,Wu Feng2

Affiliation:

1. School of Information Science and Engineering, NingboTech University, Ningbo, China

2. Information and Control Institute, Hangzhou Dianzi University, Hangzhou, China

Abstract

Based on a modified min-max optimization strategy, an improved design of model predictive tracking control (MPC) is proposed to guarantee the performance of industrial process control systems when the networked system suffers from communication faults. Packet losses and uncertainties exist in the networked control system, which may deteriorate the performance of the systems and even cause a safety accident. To handle with this problem, an extended state space model is utilized in the proposed MPC design for enhancing control performance firstly. Then an improved min-max optimization approach is adopted for obtaining the optimal solution of the corresponding MPC method, where two separate optimization steps are proposed to enhance the control system operation. Different from MPC strategies that employ traditional state space models, the state variables can be tuned additionally for the modified MPC design because the tracking error information and the state variables are united in the improved model. As a consequence, extra degree of freedom is acquired for the relevant MPC scheme, and then better control performance is expected. Simulations on the temperature regulation process under model/plant mismatches and packet losses are simulated to evaluate the validity of the proposed MPC method finally.

Funder

Ningbo Science and technology innovation 2025 major project

Publisher

SAGE Publications

Subject

Applied Mathematics,Control and Optimization,Instrumentation

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