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基于多模型结构的非线性鲁棒自适应跟踪控制 被引量:1

Robust adaptive control of complex nonlinear systems using multiple models
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摘要 针对复杂的非线性系统,提出一种基于多模型结构的鲁棒自适应控制方法,使得系统可以在不同的运行环境下跟踪给定的信号。由多个线性模型和一个模糊模型及其相应的控制器构成基本的多模型控制系统,再引入动态结构自适应神经网络以保证系统的稳定性及抑制由频繁切换引起的噪声。最后,对某小型飞机进行全包络飞行跟踪控制的仿真,验证所提控制方法是有效的。 For complex nonlinear systems, a kind of robust adaptive control method using multiple models is presented to track the given signal under different working conditions. The basic multiple-model control system is formed by several linear models and one fuzzy model with their corresponding controllers. And the dynamic structure adaptive neural network is introduced to stable the whole system and restrains the disturbance influence caused by frequent switching. The simulation results show the presented control method is effective by demonstrating the full envelope tracking control of a puddle-jumper.
作者 张敏 胡寿松
出处 《系统工程与电子技术》 EI CSCD 北大核心 2008年第11期2249-2254,共6页 Systems Engineering and Electronics
基金 国家自然科学基金重点项目(60234010) 航空科学基金(05E52031)资助课题
关键词 跟踪控制 鲁棒控制 多模型 自适应神经网络 动态结构神经网络 tracking control robust control multiple model adaptive neural network dynamic structure neural network
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参考文献13

  • 1Ge S S, Wang C. Direct adaptive NN control of a class nonlinear system[J]. IEEETrans. on Neural Networks, 2002, 13(1): 214-221.
  • 2Narendra K S, Cheng X. Adaptive control of discrete-time sys tems using multiple models[J]. IEEE Trans. on Automatic con trol, 2000, 45(9): 1669- 1686.
  • 3Chen L J, Kumpati S, Narendra K S. Nonlinear adaptive control using neural networks and multiple models[J]. Automatica, 2001, 37(8) : 1245- 1255.
  • 4Kumpati S, Narendra K S, Kosby G. Adaptive control of simple nonlinear systems using multiple models[C] // Proceedings of the American control conference, Anchorage, AK , 2002.
  • 5Sadati. N, Chadami. R. Adaptive fuzzy sliding mode control using multiple models approach[J]. Engineering of Intelligent Systems, 2006(4): 1 - 6.
  • 6Wang F Y, Bahri P, Lee P L, et al. A multiple model, state feedback strategy for robust control of non-linear processes[J]. Computers & Chemical Engineering, 2007, 31: 410- 418.
  • 7Li Y, Sundararajan N, Saratchandran P. Neuro-controller design for nonlinear fighter aircraft maneuver using fully tuned RBF networks[J]. Automatica, 2001, 37(8) : 1293 - 1301.
  • 8刘亚,胡寿松.基于模糊模型的时滞不确定系统的模糊H_∞鲁棒反馈控制[J].控制理论与应用,2003,20(4):497-502. 被引量:14
  • 9Hu S S, Liu Y. Robust H∞ control of multiple time delay uncertain nonlinear system using fuzzy model and adaptive neural network[J]. Fuzzy Sets and Systems, 2004, 146(3): 403 - 420.
  • 10Chang W, Park J B, Joo Y H, et al. Design of robust fuzzymodel-based controller with sliding mode control for SISO nonlinear systems[J]. Fuzzy Sets and Systems, 2002, 125(1) : 1 - 22.

二级参考文献16

  • 1TAKAGI T, SUGENO M. Fuzzy identification of systems and its applications to modeling and control [ J ]. IEEE Trans on Systems,Man and Cybernetics, 1985,15(1):116-163.
  • 2LEE H J, PARK J B, CHEN G. Robttst fuzzy control of nonlinear system with parametric uncertainties [ J ]. IEEE Trans on Fuzzy Systems, 2001,9(2) : 369 - 379.
  • 3WANG H O, TANAKA K, GRIFFIN M F. An appruach to fuzzy control of nonlinear systems: stability and design issues[J].IEEE Trans on Fuzzy Systems, 1996,4( 1 ) : 14 - 23.
  • 4WONG L K, LEUNG F H F, TAM P KS. Fuzzy model-based controller for inverted pendulum [ J ]. Eelctron Letters, 1996, 32(18) :1683 - 1685.
  • 5LIJ, WANG HO, NIEMANN D, et al. Dynamic parallel distributed compensation for Takagi-Sugeao fuzzy systems: An LMI approach[J]. Information Sciences, 2000,123(3,4) :201 - 221.
  • 6JEUNG E T, KIM JH, PARKH B. H∞ output feedback controllers for time delay systems [J]. IEEE Trans on Automatic Control, 1998,43(7) :971 - 974.
  • 7NARENDRA K. S, BALAKRISHNAN J. Adaptive control using multiple models [J]. IEEE Trans on Automatic Control, 1997,42(2):171 - 187.
  • 8NARENDRA K. S, XIANG C. Adaptive control of discrete-time systems using multiple models [J]. IEEE Trans on Automatic Control, 2000,45 (9) : 1669 - 1686.
  • 9LI Xiaoli, WANG Wei, WANG Shuning. Multiple model adaptive control for discrete time systems [C]//Proc of American Control Conference 2001, Arlington, Virginia, USA. Madison,Wisconsin: Omnipress, 2001:4820-4825.
  • 10CHEN Lingji, NARENDRA K S. Nonlinear adaptive control using neural networks and multiple models [J]. Automatica,2001,37 ( 8 ) : 1245 - 1255.

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