共 5 条
Robust iterative learning control for nonlinear systems with measurement disturbances
被引:0
作者:
Xuhui Bu Fashan Yu Zhongsheng Hou and Haizhu Yang School of Electrical Engineering Automation Henan Polytechnic University Jiaozuo P R China Henan Provincial Open Laboratory for Control Engineering Key Discipline Henan Polytechnic University Jiaozuo P R China Advanced Control Systems Laboratory Beijing Jiaotong University Beijing P R China
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机构:
关键词:
iterative learning control (ILC);
nonlinear system;
measurement disturbance;
iteration-varying disturbance;
D O I:
暂无
中图分类号:
TP13 [自动控制理论];
学科分类号:
0711 ;
071102 ;
0811 ;
081101 ;
081103 ;
摘要:
The iterative learning control (ILC) has been demon-strated to be capable of considerably improving the tracking perfor-mance of systems which are affected by the iteration-independent disturbance. However, the achievable performance is greatly degraded when iteration-dependent, stochastic disturbances are pre-sented. This paper considers the robustness of the ILC algorithm for the nonlinear system in presence of stochastic measurement disturbances. The robust convergence of the P-type ILC algorithm is firstly addressed, and then an improved ILC algorithm with a decreasing gain is proposed. Theoretical analyses show that the proposed algorithm can guarantee that the tracking error of the nonlinear system tends to zero in presence of measurement dis-turbances. The analysis is also supported by a numerical example.
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页码:906 / 913
页数:8
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