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Modeling and optimization of thermal-flow lithography process using a neural-genetic approach

机译:使用神经遗传方法对热流光刻工艺进行建模和优化

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摘要

The lithography process is the most critical step in fabricating nanostructure for integrated circuit manufacturing. The most important variable in lithography process is the line width or critical dimension (CD), which perhaps is one of the most direct impact variables on the device performance and speed. This study presents a framework combining Taguchi orthogonal experiments, artificial neural network (ANN) modeling technique and genetic algorithm for sub-100 nm contact holes fabrication in lithography process. The Taguchi method utilizes S/N ratio and ANOVA to analyze the significant process parameters related to the CD, whereas the ANN establishes the relationship between controllable parameters and quality responses. The proposed Neural-Genetic approach not only can find optimal or close-to-optimal solutions but also can obtain both better and more robust results than the ANN algorithm. The confirmation results clearly demonstrated both the smaller-the-better CD and nominal-is-best CD (target 50 nm) that the proposed procedure was effective and practicable from a production perspective.
机译:光刻工艺是制造用于集成电路制造的纳米结构的最关键步骤。光刻工艺中最重要的变量是线宽或临界尺寸(CD),它可能是对器件性能和速度的最直接影响变量之一。这项研究提出了一个框架,结合了Taguchi正交实验,人工神经网络(ANN)建模技术和遗传算法,用于在光刻工艺中制造100 nm以下的接触孔。 Taguchi方法利用信噪比和ANOVA分析与CD相关的重要过程参数,而ANN建立可控参数与质量响应之间的关系。所提出的神经遗传方法不仅可以找到最佳或接近最佳的解决方案,而且可以获得比ANN算法更好,更鲁棒的结果。确认结果清楚地表明,从生产的角度出发,建议的程序有效且可行的是较小的CD和标称最佳CD(目标50 nm)。

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