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Electron beam lithographic modeling assisted by artificial intelligence technology

机译:人工智能技术辅助的电子束光刻建模

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We propose a new concept of tuning a point-spread function (a "kernel" function) in the modeling of electron beam lithography using the machine learning scheme. Normally in the work of artificial intelligence, the researchers focus on the output results from a neural network, such as success ratio in image recognition or improved production yield, etc. In this work, we put more focus on the weights connecting the nodes in a convolutional neural network, which are naturally the fractions of a point-spread function, and take out those weighted fractions after learning to be utilized as a tuned kernel. Proof-of-concept of the kernel tuning has been demonstrated using the examples of proximity effect correction with 2-layer network, and charging effect correction with 3-layer network. This type of new tuning method can be beneficial to give researchers more insights to come up with a better model, yet it might be too early to be deployed to production to give better critical dimension (CD) and positional accuracy almost instantly.
机译:我们提出了使用机器学习方案在电子束光刻建模中调整点扩展函数(“内核”函数)的新概念。通常,在人工智能工作中,研究人员专注于神经网络的输出结果,例如图像识别的成功率或提高的生产良率等。在这项工作中,我们将更多的精力放在连接节点上各个节点的权重上。卷积神经网络,自然是点扩散函数的分数,在学会用作调谐内核后将那些加权分数取出。已经使用2层网络的邻近效应校正和3层网络的电荷效应校正的示例演示了内核调整的概念验证。这种类型的新调整方法可能有益于为研究人员提供更多的见识,以提出更好的模型,但是现在将其部署到生产中以立即提供更好的临界尺寸(CD)和位置精度可能为时过早。

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