Full-chip application of machine learning SRAFs on DRAM case using auto pattern selection

K. C. Chen, Andy Lan, Richer Yang, V. Chen, Shulu Wang, Stella Zhang, Xiang-ru Xu, A. Yang, Sam Liu, Xiaolong Shi, Angmar Li, S. Hsu, S. Baron, Gary Zhang, Rachit Gupta
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引用次数: 8

Abstract

As technology continues to scale aggressively, Sub-Resolution Assist Features (SRAF) are becoming an increasingly key resolution enhancement technique (RET) to maximize the process window enhancement. For the past few technology generations, lithographers have chosen to use a rules-based (RB-SRAF) or a model-based (MB-SRAF) approach to place assist features on the design. The inverse lithography solution, which provides the maximum process window entitlement, has always been out of reach for full-chip applications due to its very high computational cost. ASML has developed and demonstrated a deep learning SRAF placement methodology, Newron™ SRAF, which can provide the performance benefit of an inverse lithography solution while meeting the cycle time requirements for full-chip applications [1]. One of the biggest challenges for a deep learning approach is pattern selection for neural network training. To ensure pattern coverage for maximum accuracy while maintaining turn-around time (TAT,) a deep-learning-based Auto Pattern Selection (APS) tool is evaluated. APS works in conjunction with Newron SRAF to provide the optimal lithography solution. In this paper, Newron SRAF is used on a DRAM layer. A Deep Convolutional Neural Network (DCNN) is trained using the target images and Continuous Transmission Mask (CTM) images. CTM images are gray tone images that are fully optimized by the Tachyon inverse mask optimization engine. Representative patterns selected by APS are used to train the neural network. The trained neural network generates SRAFs on the full-chip and then Tachyon OPC+ is performed to correct main and SRAF simultaneously. The neural network trained by APS patterns is compared with those trained by patterns from manual selection and multiple random selections to demonstrate its robustness on pattern coverage. Tachyon Hierarchical OPC+ (HScan+) is used to apply Newron SRAF at full-chip level in order to keep consistency and increase speed. Full-chip simulation results from Newron SRAF are compared with the baseline OPC flow using RBSRAF and MB-SRAF. The Newron SRAF flow shows significant improvements in NILS and PV band over the baseline flows. This whole flow including APS, Newron SRAF and full-chip HScan+ OPC enables the inverse mask optimization on full-chip level to achieve superior mask performance with production-affordable TAT.
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采用自动模式选择的机器学习srf在DRAM上的全芯片应用
随着技术的不断扩展,亚分辨率辅助功能(SRAF)正成为一种越来越重要的分辨率增强技术(RET),以最大限度地提高工艺窗口。在过去的几代技术中,光刻工选择使用基于规则(RB-SRAF)或基于模型(MB-SRAF)的方法在设计中放置辅助功能。逆光刻解决方案提供了最大的进程窗口,由于其非常高的计算成本,一直无法实现全芯片应用。ASML已经开发并展示了一种深度学习SRAF放置方法Newron™SRAF,该方法可以提供逆光刻解决方案的性能优势,同时满足全芯片应用的周期时间要求[1]。深度学习方法面临的最大挑战之一是神经网络训练的模式选择。为了确保模式覆盖的最大准确性,同时保持周转时间(TAT),评估了基于深度学习的自动模式选择(APS)工具。APS与Newron SRAF一起工作,提供最佳光刻解决方案。本文将Newron SRAF应用于DRAM层。利用目标图像和连续传输掩码(CTM)图像训练深度卷积神经网络(DCNN)。CTM图像是由Tachyon反掩模优化引擎完全优化的灰度图像。利用APS选择的代表性模式对神经网络进行训练。训练后的神经网络在全芯片上生成SRAF,然后执行Tachyon OPC+同时校正主和SRAF。将APS模式训练的神经网络与人工选择模式和多重随机选择模式训练的神经网络进行了比较,验证了其对模式覆盖的鲁棒性。Tachyon Hierarchical OPC+ (HScan+)用于在全芯片级应用Newron SRAF,以保持一致性和提高速度。使用RBSRAF和MB-SRAF将Newron SRAF全芯片仿真结果与基准OPC流进行了比较。与基线气流相比,Newron SRAF气流在NILS和PV波段上有显著改善。整个流程包括APS, Newron SRAF和全芯片HScan+ OPC,可实现全芯片级的反向掩模优化,以生产负担得起的TAT实现卓越的掩模性能。
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