A Fuzzy-Matching Model With Grid Reduction for Lithography Hotspot Detection

IEEE Trans. on CAD of Integrated Circuits and Systems(2014)

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摘要
In advanced IC manufacturing, as the gap increases between lithography optical wavelength and feature size, it becomes challenging to detect problematic layout patterns called lithography hotspot. In this paper, we propose a novel fuzzy matching model which extracts appropriate feature vectors of hotspot and nonhotspot patterns. Our model can dynamically tune appropriate fuzzy regions around known hotspots. Based on this paper, we develop a fast algorithm for lithography hotspot detection with high accuracy of detection and low probability of false-alarm counts. In addition, since higher dimensional size of feature vectors can produce better accuracy but requires longer run time, this paper proposes a grid reduction technique to significantly reduce the CPU run time with very minor impact on the advantages of higher dimensional space. Our results are very encouraging, with average 94.5% accuracy and low false-alarm counts on a set of test benchmarks.
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关键词
Design for manufacturability,fuzzy reasoning,CPU run time reduction,fuzzy region,dimensionality reduction,fuzzy-matching model,layout pattern detection,feature vector dimensional size,advanced IC manufacturing,false-alarm count detection,lithography hotspot,lithography,fuzzy matching,lithography optical wavelength,false-alarm count probability,grid reduction technique,hotspot detection,machine learning,lithography hotspot detection,electronic engineering computing,test benchmark set
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