Application of scatterometry-based machine learning to control multiple electron beam lithography: AM: Advanced metrology

N. Figueiro, Francisco Sanchez, R. Koret, Michael Shifrin, Yoav Etzioni, S. Wolfling, M. Sendelbach, Y. Blancquaert, Thibault Labbaye, G. Rademaker, J. Pradelles, L. Mourier, Stéphane Rey, L. Pain
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引用次数: 3

Abstract

The evaluation of scatterometry and machine learning for the monitoring of intended critical dimension (CD) variations within scatterometry targets is presented. Such variations mimic non-uniformities potentially caused by massively parallel e-beam Maskless Lithography (ML2). Although previous results [1] demonstrate that traditional model-based scatter-ometry can properly quantify these within-target variations, the current work shows that the application of scatterometry-based machine learning complements the model-based scatterometry results. While model-based scatterometry can provide information about structure profile, which can be used to detect parameter shifts even in the absence of a reference, machine learning provides superb correlation to a defined reference.
基于散射测量的机器学习在控制多电子束光刻中的应用:AM:先进的计量学
提出了对散射测量和机器学习的评估,以监测散射测量目标内的预期临界尺寸(CD)变化。这种变化模拟了大规模平行电子束无掩模光刻(ML2)可能引起的不均匀性。虽然先前的结果[1]表明传统的基于模型的散射测量可以适当地量化这些目标内的变化,但目前的工作表明,基于散射测量的机器学习的应用可以补充基于模型的散射测量结果。虽然基于模型的散射测量可以提供有关结构轮廓的信息,即使在没有参考的情况下也可以用于检测参数变化,但机器学习提供了与已定义参考的极好相关性。
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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