DocumentCode :
2634887
Title :
High performance lithographic hotspot detection using hierarchically refined machine learning
Author :
Ding, Duo ; Torres, Andres J. ; Pikus, Fedor G. ; Pan, David Z.
Author_Institution :
ECE Dept., Univ. of Texas at Austin, Austin, TX, USA
fYear :
2011
fDate :
25-28 Jan. 2011
Firstpage :
775
Lastpage :
780
Abstract :
Under real and continuously improving manufacturing conditions, lithography hotspot detection faces several key challenges. First, real hotspots become less but harder to fix at post-layout stages; second, false alarm rate must be kept low to avoid excessive and expensive post-processing hotspot removal; third, full chip physical verification and optimization require fast turn-around time. To address these issues, we propose a high performance lithographic hotspot detection flow with ultra-fast speed and high fidelity. It consists of a novel set of hotspot signature definitions and a hierarchically refined detection flow with powerful machine learning kernels, ANN (artificial neural network) and SVM (support vector machine). We have implemented our algorithm with industry-strength engine under real manufacturing conditions in 45nm process, and showed that it significantly outperforms previous state-of-the-art algorithms in hotspot detection false alarm rate (2.4X to 2300X reduction) and simulation run-time (5X to 237X reduction), meanwhile archiving similar or slightly better hotspot detection accuracies. Such high performance lithographic hotspot detection under real manufacturing conditions is especially suitable for guiding lithography friendly physical design.
Keywords :
electronic engineering computing; learning (artificial intelligence); lithography; neural nets; semiconductor process modelling; support vector machines; ANN; SVM; artificial neural network; excessive post-processing hotspot removal; expensive post-processing hotspot removal; full chip physical verification; hierarchically refined detection flow; hierarchically refined machine learning; high performance lithographic hotspot detection; hotspot detection accuracy; hotspot detection false alarm rate; hotspot signature definitions; industry-strength engine; lithography friendly physical design; lithography hotspot detection; machine learning kernels; optimization; post-layout stages; real manufacturing conditions; simulation run-time; state-of-the-art algorithms; support vector machine; ultra-fast speed; Accuracy; Artificial neural networks; Kernel; Layout; Manufacturing; Predictive models; Support vector machines;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Design Automation Conference (ASP-DAC), 2011 16th Asia and South Pacific
Conference_Location :
Yokohama
ISSN :
2153-6961
Print_ISBN :
978-1-4244-7515-5
Type :
conf
DOI :
10.1109/ASPDAC.2011.5722294
Filename :
5722294
Link To Document :
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