Nonparametric nonlinear model predictive control

被引:0
作者
Hiroshi Kashiwagi
Yun Li
机构
[1] Kumamoto University,Faculty of Engineering
[2] University of Glasgow,Department of Electronics and Electrical Engineering
来源
Korean Journal of Chemical Engineering | 2004年 / 21卷
关键词
Model Predictive Control; Process Control; Nonlinear Modeling; Volterra Kernels; M-Sequence;
D O I
暂无
中图分类号
学科分类号
摘要
Model Predictive Control (MPC) has recently found wide acceptance in industrial applications, but its potential has been much impeded by linear models due to the lack of a similarly accepted nonlinear modeling or databased technique. Aimed at solving this problem, the paper addresses three issues: (i) extending second-order Volterra nonlinear MPC (NMPC) to higher-order for improved prediction and control; (ii) formulating NMPC directly with plant data without needing for parametric modeling, which has hindered the progress of NMPC; and (iii) incorporating an error estimator directly in the formulation and hence eliminating the need for a nonlinear state observer. Following analysis of NMPC objectives and existing solutions, nonparametric NMPC is derived in discrete-time using multidimensional convolution between plant data and Volterra kernel measurements. This approach is validated against the benchmark van de Vusse nonlinear process control problem and is applied to an industrial polymerization process by using Volterra kernels of up to the third order. Results show that the nonparametric approach is very efficient and effective and considerably outperforms existing methods, while retaining the original data-based spirit and characteristics of linear MPC.
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页码:329 / 337
页数:8
相关论文
共 66 条
[1]  
Ahn S.-M.(1999)Extended Kalman Filter Based Model Predictive Control for a Continuous MMA Polymerization Reactor Ind. Eng. Chem. Res. 38 3942-3942
[2]  
Park M.-J.(2002)Modelbased Control Strategies for a Chemical Batch Reactor with Exothermic Reactions Korean J. Chem. Eng. 19 221-221
[3]  
Rhee H.-K.(1980)Identification of Nonlinear Systems Using Correlation Analysis Pseudorandom Inputs Int. J. Systems Sci. 11 C261-C261
[4]  
Arpornwichanop A.(1985)Fading Memory and the Problem of Approximating Nonlinear Operators with Volterra Series IEEE Trans. Circuits and Systems 32 1150-1150
[5]  
Kittisupakorn P.(2002)Model Predictive Control of a Fixed-bed Reactor with Nonlinear Quality Inference Korean J. Chem. Eng. 19 213-213
[6]  
Hussain M. A.(1999)Fuzzy Model Predictive Control of Nonlinear pH Process Korean J. Chem. Eng. 16 208-208
[7]  
Billings S.A.(1995)Nonlinear Modelbased Control Using Second-order Volterra Models Automatica 31 697-697
[8]  
Fakhouri S.Y.(1997)Nonlinear Model Predictive Control Using Hammerstein Models J. Process Control 7 31-31
[9]  
Boyd S.(1989)Model Predictive Control: Theory and Practice — A Survey Automatica 25 335-335
[10]  
Chua L.O.(1995)Design of Robust Constrained Modelpredictive Controllers with Volterra Series AIChE J. 41 2098-2098