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MODELING POST-LITHOGRAPHY STOCHASTIC CRITICAL DIMENSION VARIATION WITH MULTI-TASK NEURAL NETWORKS

机译:利用多任务神经网络对光刻后的随机临界尺寸变化进行建模

摘要

A method of modeling distributions of post-lithography critical dimensions includes the following steps. A plurality of aerial images of respective portions of a physical design layout of a semiconductor wafer are generated, and the plurality of aerial images are employed as training data. In the method, first and second portions of a neural network architecture are generated. The first portion includes a neural network which is shared by a plurality of output channels, and the second portion includes a plurality of neural networks, wherein each of the plurality of neural networks respectively correspond to one of the plurality of output channels. The method further includes training the first and second portions of the neural network architecture with the training data, and outputting the distributions of the post-lithography critical dimensions based on the plurality of output channels.
机译:对光刻后关键尺寸的分布进行建模的方法包括以下步骤。生成半导体晶片的物理设计布局的各个部分的多个航空图像,并且将该多个航空图像用作训练数据。在该方法中,生成了神经网络体系结构的第一和第二部分。第一部分包括由多个输出通道共享的神经网络,第二部分包括多个神经网络,其中多个神经网络中的每个分别对应于多个输出通道之一。该方法还包括用训练数据训练神经网络体系结构的第一和第二部分,并基于多个输出通道输出光刻后关键尺寸的分布。

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