GAN-OPC:光刻引导生成对抗网络的掩模优化

Haoyu Yang, Shuhe Li, Yuzhe Ma, Bei Yu, Evangeline F. Y. Young
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引用次数: 104

摘要

由于光刻系统与不断缩小的特征尺寸之间的不匹配,掩模优化一直是VLSI设计流程中的关键问题。光学接近校正(OPC)是目前流行的分辨率增强技术(ret)之一,可以显著提高掩模的可打印性。然而,在先进的技术节点上,掩码优化过程消耗的计算资源越来越多。在本文中,我们开发了一个生成对抗网络(GAN)模型来实现更好的掩模优化性能。我们首先开发了一个面向opc的GAN流,它可以从改进的架构和目标中学习目标-掩码映射,从而获得令人满意的掩码优化结果。为了简化训练过程并确保更好的收敛性,我们还提出了一种与逆光刻技术(ILT)联合训练神经网络的预训练过程。在收敛时,生成网络能够为给定的目标电路模式创建准最优掩模,并且生成高质量掩模所需的常规OPC步骤更少。实验结果表明,该流程可以简化掩模优化过程,并保证较好的印刷适性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GAN-OPC: Mask Optimization with Lithography-guided Generative Adversarial Nets
Mask optimization has been a critical problem in the VLSI design flow due to the mismatch between the lithography system and the continuously shrinking feature sizes. Optical proximity correction (OPC) is one of the prevailing resolution enhancement techniques (RETs) that can significantly improve mask printability. However, in advanced technology nodes, the mask optimization process consumes more and more computational resources. In this paper, we develop a generative adversarial network (GAN) model to achieve better mask optimization performance. We first develop an OPC-oriented GAN flow that can learn target-mask mapping from the improved architecture and objectives, which leads to satisfactory mask optimization results. To facilitate the training process and ensure better convergence, we also propose a pre-training procedure that jointly trains the neural network with inverse lithography technique (ILT). At convergence, the generative network is able to create quasi-optimal masks for given target circuit patterns and fewer normal OPC steps are required to generate high quality masks. Experimental results show that our flow can facilitate the mask optimization process as well as ensure a better printability.
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