Tracking Performance Improvement of Repetitive Controller for Nano-Manipulating Systems With Time Delays

Pengbo Liu, P. Yan
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Abstract

This paper investigates the robust repetitive controller design with improved tracking performance for nano-manipulating systems with time delay. In order to handle the time delay caused by the analog-to-digital (A/D) conversion of the capacitive sensors with ultra high precision, we modify the conventional repetitive control structure where the design of low pass filter is formulated as an H∞ optimization problem. For the purpose of tracking performance improvement, we further modify the structure of the low pass filter by shaping the sensitivity functions of the closed-loop system. With consideration of the existing of model uncertainties, the design of the modified low pass filter is also formulated as an H∞ optimization of infinite dimensional systems. The effectiveness of the proposed repetitive control architecture is further verified by real time experiments on a piezo driven nano-stage, where significant tracking performance improvements are demonstrated comparing with the traditional repetitive controller.
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时滞纳米操纵系统重复控制器跟踪性能的改进
研究了具有改进跟踪性能的具有鲁棒重复控制器设计的时滞纳米操纵系统。为了解决高精度电容式传感器A/D转换带来的时间延迟问题,对传统的重复控制结构进行了改进,将低通滤波器的设计归结为一个H∞优化问题。为了提高跟踪性能,我们进一步修改了低通滤波器的结构,通过塑造闭环系统的灵敏度函数。考虑到模型不确定性的存在,改进的低通滤波器的设计也被表述为无限维系统的H∞优化。在压电驱动的纳米级上进行的实时实验进一步验证了所提出的重复控制体系结构的有效性,与传统的重复控制器相比,跟踪性能得到了显著改善。
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