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  4. Fast and accurate lithography simulation using cluster analysis in resist model building
 
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Fast and accurate lithography simulation using cluster analysis in resist model building

Source
Journal of Micro Nanolithography MEMS and Moems
ISSN
19325150
Date Issued
2015-04-01
Author(s)
Kumar, Pardeep
Srinivasan, Babji
Mohapatra, Nihar R.  
DOI
10.1117/1.JMM.14.2.023506
Volume
14
Issue
2
Abstract
As technology nodes continue to shrink, optical proximity correction (OPC) has become an integral part of mask design to improve the subwavelength printability. The success of lithography simulation to perform OPC on an entire chip relies heavily on the performance of lithography process models. Any small enhancement in the performance of process models can result in a valuable improvement in the yield. We propose a robust approach for lithography process model building. The proposed scheme uses the clustering algorithm for model building and thereby improves the accuracy and computational efficiency of lithography simulation. The effectiveness of the proposed method is verified by simulating some critical layers in 14- and 22-nm complementary metal oxide semiconductor technology nodes. Experimental results show that compared with a conventional approach, the proposed method reduces the simulation time by 50× with ~5% improvement in accuracy.
Unpaywall
URI
http://repository.iitgn.ac.in/handle/IITG2025/21481
Subjects
clustering algorithm | compact model | density peak clustering | empirical resist model | K-means clustering | lithography simulation | optical proximity correction | randomization
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