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Verification of Directed Self-Assembly (DSA) Guide Patterns through Machine Learning

机译:通过机器学习验证定向自组装(DSA)指南图案

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Verification of full-chip DSA guide patterns (GPs) through simulations is not practical due to long runtime. We develop a decision function (or functions), which receives n geometry parameters of a GP as inputs and predicts whether the GP faithfully produces desired contacts (good) or not (bad). We take a few sample GPs to construct the function; DSA simulations are performed for each GP to decide whether it is good or bad, and the decision is marked in n-dimensional space. The hyper-plane that separates good marks and bad marks in that space is determined through machine learning process, and corresponds to our decision function. We try a single global function that can be applied to any GP types, and a series of functions in which each function is customized for different GP type; they are then compared and assessed in 10nm technology.
机译:由于长时间运行时,通过模拟验证全芯片DSA指南模式(GPS)并不实际。我们开发了一个决策功能(或函数),其接收GP的N个几何参数作为输入,并预测GP是否忠实地产生所需的触点(好的)或不产生(坏)。我们采取一些样本GPS来构建功能;对每个GP执行DSA模拟以决定它是否好或坏,并且该决定标记在N维空间中。通过机器学习过程确定分隔良好标记和错误标记的超平面,并对应于我们的决策功能。我们尝试一个可以应用于任何GP类型的单个全局函数,以及一系列功能,其中每个功能都是针对不同的GP类型定制的;然后在10nm技术中进行比较和评估它们。

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