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Accurate Lithography Hotspot Detection based on PCA-SVM Classifier with Hierarchical Data Clustering

机译:基于PCA-SVM分类器的分层数据聚类精确光刻热点检测

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As technology nodes continues shrinking, layout patterns become more sensitive to lithography processes, resulting in lithography hotspots that need to be identified and eliminated during physical verification. In this paper, we propose an accurate hotspot detection approach based on PCA (principle component analysis)-SVM (support vector machine) classifier. Several techniques, including hierarchical data clustering, data balancing, and multi-level training, are provided to enhance performance of the proposed approach. Our approach is accurate and more efficient than conventional time-consuming lithography simulation; in the meanwhile, provides high flexibility to adapt to new lithography processes and rules.
机译:随着技术节点的不断缩小,布局图案对光刻工艺越来越敏感,导致需要在物理验证过程中识别并消除光刻热点。在本文中,我们提出了一种基于PCA(原理成分分析)-SVM(支持向量机)分类器的精确热点检测方法。提供了几种技术,包括分层数据聚类,数据平衡和多级训练,以增强所提出方法的性能。与传统的费时光刻模拟相比,我们的方法准确且高效。同时,提供了高度的灵活性以适应新的光刻工艺和规则。

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