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Chip Level Lithography Verification System with Artificial Neural Networks

机译:用人工神经网络芯片级光刻验证系统

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The lithography verification of critical dimension variation, pinching, and bridging becomes indispensable in synthesizing mask data for the photolithography process. In handling IC layout data, the software usually use the hierarchical information of the design to reduce execution time and to overcome peak memory usage. However, the layout data become flattened by resolution enhancement techniques, such as optical proximity correction, assist features insertion, and dummy pattern insertion. Consequently, the lithography verification software should take burden of processing the flattened data. This paper describes the hierarchy restructuring and artificial neural networks methods in developing a rapid lithography verification system. The hierarchy restructuring method is applied on layout patterns so that the lithography verification on the flattened layout data can attain the speed of hierarchical processing. Artificial neural networks are employed to replace lithography simulation. We define input parameters, which is major factors in determining patterns width, for the artificial neural network system. We also introduce a learning technique in the neural networks to achieve accuracy comparable to an existing lithography verification system. Failure detection with artificial neural networks outperforms the methods that use the convolution-based simulation. The proposed system shows 10 times better performance than a widely accepted system while it achieves the same predictability on lithography failures.
机译:临界尺寸的变化,所述的光刻验证捏,和桥接成为合成掩模数据的光刻工艺是必不可少的。在处理IC布局数据,该软件通常使用设计的分层信息,以减少执行时间,以克服峰值内存使用量。然而,布局数据变得被分辨率增强技术,如光学邻近校正平坦化,辅助特征的插入,和虚设图案插入。因此,光刻验证软件应采取处理扁平数据的负担。本文介绍了层次结构调整和发展迅速光刻验证系统,人工神经网络的方法。层次结构重组方法被应用在布局图案,以便在展平的布局数据的光刻验证可以达到分层处理的速度。人工神经网络被用来代替光刻仿真。我们定义输入参数,它是在确定图案宽度,对于人工神经网络系统的主要因素。我们还引进了神经网络学习技术来实现的精度相当于现有光刻验证系统。故障检测与人工神经网络优于使用基于卷积仿真的方法。不是一个被广泛接受的系统性能所提出的系统显示10倍的同时实现对平版印刷故障的相同预测。

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