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Composite iterative learning controller design for gradually varying references with applications in an AFM system

Composite iterative learning controller design for gradually varying references with applications in an AFM system
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摘要 Learning control for gradually varying references in iteration domain was considered in this research, and a composite iterative learning control strategy was proposed to enable a plant to track unknown iteration-dependent trajectories. Specifically, by decoupling the current reference into the desired trajectory of the last trial and a disturbance signal with small magnitude, the learning and feedback parts were designed respectively to ensure fine tracking performance. After some theoretical analysis, the judging condition on whether the composite iterative learning control approach achieves better control results than pure feedback contro! was obtained for varying references. The convergence property of the closed-loop system was rigorously studied and the saturation problem was also addressed in the controller. The designed composite iterative learning control strategy is successfully employed in an atomic force microscope system, with both simulation and experimental results clearly demonstrating its superior performance. Learning control for gradually varying references in iteration domain was considered in this research,and a composite iterative learning control strategy was proposed to enable a plant to track unknown iteration-dependent trajectories.Specifically,by decoupling the current reference into the desired trajectory of the last trial and a disturbance signal with small magnitude,the learning and feedback parts were designed respectively to ensure fine tracking performance.After some theoretical analysis,the judging condition on whether the composite iterative learning control approach achieves better control results than pure feedback control was obtained for varying references.The convergence property of the closed-loop system was rigorously studied and the saturation problem was also addressed in the controller.The designed composite iterative learning control strategy is successfully employed in an atomic force microscope system,with both simulation and experimental results clearly demonstrating its superior performance.
出处 《Journal of Central South University》 SCIE EI CAS 2014年第1期180-189,共10页 中南大学学报(英文版)
基金 Projects(61127006,61325017)supported by the National Natural Science Foundation of China
关键词 iterative learning control SATURATION feedback control feedforward control atomic force microscope 迭代学习控制 控制器设计 原子力显微镜 闭环系统 复合 参考设计 应用 跟踪性能
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