Estimation of critical dimension and line edge roughness using a neural network

Dehua Li, Soo-Young Lee, Jin Choi, Seom-Beom Kim, Chan-uk Jeon
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引用次数: 1

Abstract

While electron-beam (e-beam) lithography is widely employed in the pattern transfer, the proximity effect makes features blurred, and the stochastic nature of the exposure and development processes causes the roughness in the feature boundaries. In an effort to reduce the proximity effect and line edge roughness (LER), it is often necessary to estimate the critical dimension (CD) and LER. In our previous study, the e-beam lithographic process was modeled using the information extracted from SEM images for the estimation of CD and LER. This modeling involves several parameters to be determined and tends to require a long computation time. In this study, the possibility of improving the accuracy of the CD and LER estimation using a neural network (NN) is investigated. In the NN-based estimation, the explicit modeling of the e-beam lithographic process can be avoided. This paper describes the method of estimating the CD and LER using a NN, including the issues of training, tuning, and sample reduction and presents results obtained through an extensive simulation.
用神经网络估计临界尺寸和线边缘粗糙度
电子束光刻技术广泛应用于图案转移,但邻近效应使特征模糊,曝光和显影过程的随机性导致特征边界粗糙。为了降低接近效应和线边缘粗糙度,通常需要估计临界尺寸和线边缘粗糙度。在我们之前的研究中,利用从扫描电镜图像中提取的信息对电子束光刻过程进行建模,以估计CD和LER。这种建模涉及到几个需要确定的参数,并且往往需要很长的计算时间。在本研究中,探讨了利用神经网络(NN)提高CD和LER估计精度的可能性。在基于神经网络的估计中,可以避免对电子束光刻过程进行显式建模。本文描述了使用神经网络估计CD和LER的方法,包括训练,调谐和样本缩减问题,并介绍了通过广泛模拟获得的结果。
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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