Deep Learning-Based Model Predictive Control for Continuous Stirred-Tank Reactor System

被引:81
作者
Wang, Gongming [1 ]
Jia, Qing-Shan [1 ]
Qiao, Junfei [2 ]
Bi, Jing [2 ]
Zhou, MengChu [3 ,4 ]
机构
[1] Tsinghua Univ, Ctr Intelligent & Networked Syst CFINS, Dept Automat, Beijing 100084, Peoples R China
[2] Beijing Univ Technol, Fac Informat Technol, Beijing 100124, Peoples R China
[3] New Jersey Inst Technol, Dept Elect & Comp Engn, Newark, NJ 07102 USA
[4] King Abdulaziz Univ, Ctr Res Excellence Renewable Energy & Power Syst, Jeddah 21589, Saudi Arabia
基金
中国国家自然科学基金;
关键词
Predictive models; Feature extraction; Chemical reactors; Predictive control; Computational modeling; Training; Prediction algorithms; Continuous stirred-tank reactor (CSTR) system; growing deep belief network (GDBN) model; model predictive control; optimal controller; transfer learning; NEURAL-NETWORK; BELIEF NETWORK; OPTIMIZATION;
D O I
10.1109/TNNLS.2020.3015869
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
A continuous stirred-tank reactor (CSTR) system is widely applied in wastewater treatment processes. Its control is a challenging industrial-process-control problem due to great difficulty to achieve accurate system identification. This work proposes a deep learning-based model predictive control (DeepMPC) to model and control the CSTR system. The proposed DeepMPC consists of a growing deep belief network (GDBN) and an optimal controller. First, GDBN can automatically determine its size with transfer learning to achieve high performance in system identification, and it serves just as a predictive model of a controlled system. The model can accurately approximate the dynamics of the controlled system with a uniformly ultimately bounded error. Second, quadratic optimization is conducted to obtain an optimal controller. This work analyzes the convergence and stability of DeepMPC. Finally, the DeepMPC is used to model and control a second-order CSTR system. In the experiments, DeepMPC shows a better performance in modeling, tracking, and antidisturbance than the other state-of-the-art methods.
引用
收藏
页码:3643 / 3652
页数:10
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