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Physics based feature vector design: A critical step towards machine learning based inverse lithography

机译:基于物理的特征向量设计:基于机器学习的逆光刻技术的关键一步

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Computational lithography has been playing a critical role in enabling the semiconductor industry. After source mask co-optimization (SMO). inverse lithography has become the ultimate frontier of computational lithography. Full chip implementation of rigorous inverse lithography remains impractical because of enormous computational hardware resource requirements and long computational time, the situation exacerbates for EUV computational lithography where mask 3D effect is more pronounced. One very promising technique to overcome the barrier is to take full advantage of the maturing machine learning techniques based on neural network architecture. Some success has been achieved using deep convolution neural network (DCNN) to obtain inverse lithography technology (ILT) solution with significantly less computational time. In DCNN, to extract features with sufficient resolution and nearly complete representation, the feature extract layers are very complicated and lack of physical meaning. More importantly, the training requires large number of well balanced samples, which makes the training more difficult and time consuming. To alleviate the difficulties relating to DCNN. we have proposed the physics based optimal feature vector design for machine learning based computational lithography. The innovative physics based feature vector design eliminates the need of feature extraction layers in neural network, only layers for mapping function construction are needed, which greatly reduces the NN training time and accelerates the NN model SRAF generation for full chip. In this paper, we will present our machine learning based inverse lithography results with adaptive and dynamical sampling scheme for neural network training.
机译:计算光刻在推动半导体产业发展中一直发挥着至关重要的作用。源掩模后共同优化(SMO)。反光刻技术已经成为计算光刻技术的终极领域。由于巨大的计算硬件资源要求和较长的计算时间,严格的反光刻的全芯片实施仍然不切实际,对于掩膜3D效果更为明显的EUV计算光刻而言,情况更加严峻。克服障碍的一项非常有前途的技术是充分利用基于神经网络架构的成熟机器学习技术。使用深度卷积神经网络(DCNN)获得反光刻技术(ILT)解决方案的计算时间大大减少,取得了一些成功。在DCNN中,要提取具有足够分辨率和几乎完整表示的特征,特征提取层非常复杂且缺乏物理意义。更重要的是,训练需要大量均衡的样本,这使得训练更加困难且耗时。减轻与DCNN相关的困难。我们提出了基于物理的最优特征向量设计,用于基于机器学习的计算光刻。基于物理学的创新性特征向量设计消除了神经网络中特征提取层的需要,仅需要用于映射功能构建的层,从而大大减少了NN训练时间,并加快了全芯片NN模型SRAF的生成。在本文中,我们将介绍基于机器学习的反光刻结果,以及用于神经网络训练的自适应和动态采样方案。

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