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Random forest-based robust classification for lithographic hotspot detection

机译:基于随机森林的鲁棒分类用于光刻热点检测

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With continuous downscaling of feature sizes, potentially problematic patterns (hotspots) have become a major issue in generation of optimized mask design for better printability. The lithography process sensitive patterns in a design lead to degradation of both electrical performance and manufacturing yield of the integrated circuit. Due to sequential flow of very large-scale integration (VLSI) design and manufacturing, missing any hotspot has an adverse impact on product turnaround time and cost. The lithographic samples are generally defined using a combination of continuous variables (to represent aerial image and pattern density) and categorical variables (to represent allowed layout design rules). The conventional hotspot classification techniques suffer from suboptimum performance due to their inability to efficiently represent and use the above-mentioned feature metrics. In general, the number of hotspots in the lithographic data is much less compared to the total number of patterns in a full-chip design. It makes the input data imbalanced and adds additional difficulties in the decision making processes. We present a robust technique to detect the process sensitive patterns using random forest-based machine learning technique. The emphasis is put on the layout features extraction techniques to improve the performance of the proposed approach. The simulation results show that the patterns susceptible to variations under different dose and focus conditions undergo a drastic change in their aerial image characteristics even when the geometry is varied by a very small margin. We observed from our analysis that the minimum number of false negatives can be achieved with reasonable increase in the number false positives. Moreover, compared to conventional hotspot classification techniques, we are able to achieve a very low percentage of false negatives with a binary classifier trained on an imbalanced dataset. Another key observation from our analysis is that the random forest method can obtain the most representative heuristics required to define categories from the lithographic datasets with continuous and categorical variables. In addition, our proposed approach can easily be integrated with commercially available electronic design automation tools and in-house design simulators to make the process flow viable in terms of a business perspective.
机译:随着特征尺寸的不断缩小,潜在问题的图案(热点)已成为优化蒙版设计以提高可印刷性的主要问题。设计中的光刻工艺敏感图案会导致集成电路的电性能和制造成品率下降。由于超大规模集成(VLSI)设计和制造的顺序流程,错过任何热点都会对产品周转时间和成本产生不利影响。通常使用连续变量(代表航空影像和图案密度)和分类变量(代表允许的布局设计规则)的组合来定义光刻样品。常规热点分类技术由于无法有效表示和使用上述特征量度而遭受次优性能的困扰。通常,与全芯片设计中的图案总数相比,光刻数据中的热点数量要少得多。它使输入数据失衡,并在决策过程中增加了其他困难。我们提出了一种使用基于随机森林的机器学习技术来检测过程敏感模式的强大技术。重点放在布局特征提取技术上,以提高所提出方法的性能。仿真结果表明,即使几何形状变化幅度很小,在不同剂量和聚焦条件下易于变化的图案的航空图像特性也会发生急剧变化。从我们的分析中我们观察到,通过合理增加假阳性的数量,可以实现最小数量的假阴性。此外,与传统的热点分类技术相比,使用在不平衡数据集上训练的二进制分类器,我们能够实现极低的误报率。我们分析的另一个关键发现是,随机森林方法可以从具有连续变量和分类变量的光刻数据集中获得定义类别所需的最具代表性的启发式方法。此外,我们提出的方法可以轻松地与市售的电子设计自动化工具和内部设计仿真器集成,以从业务角度出发使流程可行。

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