期刊文献+

Adaptive adjustment of iterative learning control gain matrix in harsh noise environment 被引量:3

Adaptive adjustment of iterative learning control gain matrix in harsh noise environment
下载PDF
导出
摘要 For the robustness problem of open-loop P-type iterative learning control under the influence of measurement noise which is inevitable in actual systems, an adaptive adjustment algorithm of iterative learning nonlinear gain matrix based on error amplitude is proposed and two nonlinear gain functions are given. Then with the help of Bellman-Gronwall lemma, the robustness proof is derived. At last, an example is simulated and analyzed. The results show that when there exists measurement noise, the proposed learning law adjusts the learning gain matrix on line based on error amplitude, thus can make a compromise between learning convergence rate and convergence accuracy to some extent: the fast convergence rate is achieved with high gain in initial learning stage, the strong robustness and high convergence accuracy are achieved at the same time with small gain in the end learning stage, thus better learning results are obtained. For the robustness problem of open-loop P-type iterative learning control under the influence of measurement noise which is inevitable in actual systems, an adaptive adjustment algorithm of iterative learning nonlinear gain matrix based on error amplitude is proposed and two nonlinear gain functions are given. Then with the help of Bellman-Gronwall lemma, the robustness proof is derived. At last, an example is simulated and analyzed. The results show that when there exists measurement noise, the proposed learning law adjusts the learning gain matrix on line based on error amplitude, thus can make a compromise between learning convergence rate and convergence accuracy to some extent: the fast convergence rate is achieved with high gain in initial learning stage, the strong robustness and high convergence accuracy are achieved at the same time with small gain in the end learning stage, thus better learning results are obtained.
出处 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2013年第1期128-134,共7页 系统工程与电子技术(英文版)
基金 supported by the Specialized Research Fund for the Doctoral Program of Higher Education(20106102110032)
关键词 iterative learning control open-loop P-type learninglaw nonlinear gain measurement noise robustness. iterative learning control, open-loop P-type learninglaw, nonlinear gain, measurement noise, robustness.
  • 相关文献

参考文献3

二级参考文献15

  • 1孙明轩,陈阳泉,黄宝健.非线性时滞系统的高阶迭代学习控制[J].自动化学报,1994,20(3):360-365. 被引量:11
  • 2Wei Yanding,学位论文,1998年
  • 3Lin Hui,控制理论与应用,1995年,12卷,6期,742页
  • 4Zeng Nan,自动化学报,1992年,18卷,2期,168页
  • 5ARIMOTO S,KAWAMURA S,MIYAZAKI F.Bettering operation of robots by learning[J].J Robot Syst,1984,1:123-140.
  • 6TAYEBI A,ZAREMBA M B.Robust iterative learning control design is straightforward for uncertain LTI systems satisfying the robust performance condition[J].IEEE Trans Automat Contr,2003,48(1):101-106.
  • 7DOH T Y,MOONJ H,Jin K B,et al.Robust ILC with current feedback for uncertain linear systems[J].Int J Syst Sci,1999,30(1):39-47.
  • 8MOON J H,DOH T Y,CHUNG M J.A robust approach to ILC design for uncertain systems[J].Automatica,1998,34 (8):1001-1004.
  • 9HU Q P,XU J X,L.EE T H.Iterative learning control design for Smith predictor[J].Systems and Control Letters,2001,44:201-210.
  • 10NORRLOF M,GUNNARSSON S.Disturbance aspects of iterative learning control[J].Engineering Applications of Artificial Intelligence,2001,14:87-94.

共引文献22

同被引文献28

  • 1FUKAO T, NAKAGAWA H, ADACHI N. Adaptive tracking control of a nonholonomic mobile robot[J]. IEEE Transactions on Robotics and Automation, 2005, 16 (5) : 609 -615.
  • 2UMESH K, NAGARAJAN S. Backstepping based trajectory tracking control of a four wheeled mobile robot [ J] International Journal of Advanced Robotic Systems, 2008, 5(4) : 403-410.
  • 3CHEN N, SONG F, LI G, et al. An adaptive sliding mode backstepping control for the mobile manipulator with nonholonomic constraints [ J ]. Communications in Nonlinear Science and Numerical Simulation, 2013, 18 (10) : 2885-2899.
  • 4ROSSOMANDO F G, SORIA C, CARELLI R. Sliding mode neuro adaptive control in trajectory tracking for mobile robots [ J ]. Journal of Intelligent & Robotic Systems, 2014, 74: 931-944.
  • 5HAMERLAIN F, FLOQUET T, PERRUQUETTI W. Experimental tests of a sliding mode controller for trajectory tracking of a car-like mobile robot[ J]. Robotica, 2014, 32 ( 1 ) : 63-76.
  • 6SUN T, PEI H, PAN Y, et al. Robust adaptive neural network control for environmental boundary tracking by mobile robots [ J ]. International Journal of Robust and Nonlinear Control, 2013, 23 (2) : 123-136.
  • 7YE J. Tracking control of two-wheel driven mobile robot using compound sine function neural networks [ J ]. Connection Science, 2013, 25 (2/3) : 139-150.
  • 8RESENDEA C Z, CARELLIB R, SARCINELLI M. A nonlinear trajectory tracking controller for mobile robots with velocity limitation via fuzzy gains [ J ]. Control Engineering Practice, 2013, 21 (10) : 1302-1309.
  • 9CHEN Y H, LIT H S. PD type fuzzy trajectory tracking control design for mobile robots [ J ]. Journal of Science and Innovation, 2013, 3(2) : 45-51.
  • 10ARIMOTO S, KAWAMURA S, MIYAZAKI F. Bettering operation of robots by learning [ J ]. Journal of Robotic Systems, 1984, 1(2): 1:23-140.

引证文献3

二级引证文献16

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部