定向自组装(DSA)模板模式验证

Zigang Xiao, Yuelin Du, Haitong Tian, Martin D. F. Wong, H. Yi, H. Wong, Hongbo Zhang
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引用次数: 28

摘要

定向自组装(DSA)是一种很有前途的接触/过孔图图化技术,其中通过指导模板对接触/过孔组进行图图化。由于模板采用传统的光刻技术,其形状可能会因工艺变化而变化,这最终会影响到接触/过孔,即使是同一类型的模板。由于DSA过程的复杂性,严格的过程模拟对于全芯片验证来说是不可接受的缓慢。本文阐述了DSA验证中的几个关键问题,并提出了一种由数据准备和模型学习阶段组成的设计自动化方法。提出了一种具有点对应和段距离特征的鲁棒学习DSA模型。根据该方法,我们提出了一种有效的基于机器学习(ML)的DSA热点检测方法。我们的初步实验结果已经证明了我们基于ml的方法的高效率,检测准确率超过85%。与严谨方法的数分钟甚至数小时的模拟时间相比,本文的方法验证了这一方向的研究潜力。
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Directed Self-Assembly (DSA) Template Pattern Verification
Directed Self-Assembly (DSA) is a promising technique for contacts/vias patterning, where groups of contacts/vias are patterned by guiding templates. As the templates are patterned by traditional lithography, their shapes may vary due to the process variations, which will ultimately affect the contacts/vias even for the same type of template. Due to the complexity of the DSA process, rigorous process simulation is unacceptably slow for full chip verification. This paper formulate several critical problems in DSA verification, and proposes a design automation methodology that consists of a data preparation and a model learning stage. We present a novel DSA model with Point Correspondence and Segment Distance features for robust learning. Following the methodology, we propose an effective machine learning (ML) based method for DSA hotspot detection. The results of our initial experiments have already demonstrated the high-efficiency of our ML-based approach with over 85% detection accuracy. Compared to the minutes or even hours of simulation time in rigorous method, the methodology in this paper validates the research potential along this direction.
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