随机过程
极紫外光刻
随机建模
高斯分布
统计物理学
高斯过程
抵抗
计算机科学
领域(数学)
光子
算法
数学
物理
光学
材料科学
统计
纳米技术
量子力学
图层(电子)
纯数学
作者
Azat Latypov,Gurdaman Khaira,Germain Fenger,Shuling Wang,Marko Chew,Shumay Shang
摘要
Photon absorption statistics combined with a simple model of resist chemistry triggered by each absorbed photon leads to a family of stochastic models with a Gaussian Random Field deprotection. Two important aspects of such models are discussed. First, the generalizations to stochastic reaction-diffusion models, accounting for the effects of depletion, and to models accounting for both exposure-resist stochastic and other process parameter variations, are presented. Second, several options for the stochastic metrics of EUVL processes, both meaningful and useful for lithographers and fast enough to be applicable to the full chip OPC and verification, are described, and some details of their implementations for the full-chip OPC verification and the results of tests are presented. The relation of one of the introduced stochastic metrics to the stochastic-caused variability of the electrical conductance of vertical interconnects (vias) is explained.
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