A Parallel Inverse-Model-Based Iterative Learning Control Method for a Master-Slave Wafer Scanner

Weike Liu, Runze Ding, Xiaofeng Yang, C. Ding, Feng Shu
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引用次数: 3

Abstract

Tracking and synchronization accuracies are key performance indicators for advanced wafer scanners. In this paper, we propose a new Parallel Inverse-Model-based Iterative Learning Control (PIMILC) method in which the tracking and synchronization accuracies of the master-slave wafer scanners are jointly considered. In PIMILC, a parallel ILC structure is adopted and the tracking error of the wafer stage filtered by a compensation filter is fed into the reticle stage to decouple the learning system. Furthermore, an inverse-model-based learning law with robustness enhancement techniques is used to trade-off among robustness, accuracy and convergence rate. Simulation results confirm that the PIMILC method can significantly reduce the tracking and synchronization errors compared to prior work.
基于并行逆模型的主从式晶圆扫描器迭代学习控制方法
跟踪和同步精度是先进晶圆扫描仪的关键性能指标。本文提出了一种基于并行逆模型的迭代学习控制(PIMILC)方法,该方法同时考虑了主从晶圆扫描器的跟踪精度和同步精度。在PIMILC中,采用并联ILC结构,将补偿滤波器滤波后的晶片级跟踪误差输入到十字级,实现了学习系统的解耦。此外,采用基于逆模型的鲁棒性增强学习律,在鲁棒性、精度和收敛速度之间进行权衡。仿真结果表明,与以往的方法相比,PIMILC方法可以显著减小跟踪和同步误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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