Fuzzy model predictive control

被引:106
作者
机构
[1] Department of Chemical Engineering and Materials Science, Wayne State University, Detroit
[2] Department of Chemical Engineering, University of Texas, Austin
基金
美国国家科学基金会;
关键词
Manuscript received February 12; 1999; revised July 12; 2000. This work was supported in part by ACS-PRF; the National Science Foundation under Contract CTS 9 414 944; the American Chemical Society—Petroleum Research Foundation; the Michigan Space Grant Program/NASA; and the Institute of Manufacturing Research at Wayne State University;
D O I
10.1109/91.890326
中图分类号
学科分类号
摘要
A highly nonlinear system controlled by a linear model predictive controller (MPC) may not exhibit a satisfactory dynamic performance. This has led to the development of a number of nonlinear MPC (NMPC) approaches that permit the use of first principles-based nonlinear models. Such models can be accurate over a wide range of operating conditions, but may be difficult to develop for many industrial cases. Moreover, an NMPC usually requires tremendous computational effort that may prohibit its on-line applications. In this paper, a fuzzy model predictive control (FMPC) approach is introduced to design a control system for a highly nonlinear process. In this approach, a process system is described by a fuzzy convolution model that consists of a number of quasi-linear fuzzy implications (FIs). In controller design, prediction errors and control energy are minimized through a two-layered iterative optimization process. At the lower layer, optimal local control policies are identified to minimize prediction errors in each subsystem. A near optimum is then identified through coordinating the subsystems to reach an overall minimum prediction error at the upper layer. The two-layered computing scheme avoids extensive on-line nonlinear optimization and permits the design of a controller based on linear control theory. The efficacy of the FMPC approach is demonstrated through three examples.
引用
收藏
页码:665 / 678
页数:13
相关论文
共 15 条
[1]  
Arulalan G.R., Deshpande P.B., Simplified model predictive control, Ind. Eng. Chem. Res., 26, pp. 356-362, (1987)
[2]  
Cutler C.R., Ramaker B.L., Dynamic matrix control - A computer control algorithm, AIChE Spring Nat. Meet., (1979)
[3]  
Eaton J.W., Rawlings J.B., Model-predictive control of chemical processes, Chem. Eng. Sci., 47, pp. 705-720, (1992)
[4]  
Garcia C.E., Prett D.M., Morari M., Model predictive control: Theory and practice - A survey, Automatica, 25, pp. 335-348, (1989)
[5]  
Liu Z.P., Huang Y.L., Fuzzy model-based optimal dispatching for NO<sub>x</sub> reduction in power plants, Int. J. Elect. Power Energy Syst., 20, 3, pp. 169-176, (1998)
[6]  
Lou H.H., Huang Y.L., Fuzzy logic based process modeling using limited experimental data, Int. J. Eng. Applicat. Artificial Intell., 13, 2, pp. 121-135, (2000)
[7]  
Jamshidi M., Large-Scale Systems: Modeling and Control, 9, (1983)
[8]  
Kim S.W., Kim E.T., Park M., A new adaptive fuzzy controller using the parallel structure of fuzzy controller and its application, Fuzzy Sets Syst., 81, pp. 205-226, (1996)
[9]  
Morningred J.D., Paden B.E., Seborg D.E., Mellichamp D.A., An adaptive nonlinear predictive controller, Chem. Eng. Sci., 47, pp. 755-762, (1992)
[10]  
Nakamori Y., Suzuki K., Yamanaka T., Model predictive control using fuzzy dynamic models, Proc. IFSA'91 Brussels, 135, (1991)