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http://dx.doi.org/10.5573/IEIESPC.2016.5.5.358

Random Forest Model for Silicon-to-SPICE Gap and FinFET Design Attribute Identification  

Won, Hyosig (System LSI, Samsung Electronics)
Shimazu, Katsuhiro (System LSI, Samsung Electronics)
Publication Information
IEIE Transactions on Smart Processing and Computing / v.5, no.5, 2016 , pp. 358-365 More about this Journal
Abstract
We propose a novel application of random forest, a machine learning-based general classification algorithm, to analyze the influence of design attributes on the silicon-to-SPICE (S2S) gap. To improve modeling accuracy, we introduce magnification of learning data as well as randomization for the counting of design attributes to be used for each tree in the forest. From the automatically generated decision trees, we can extract the so-called importance and impact indices, which identify the most significant design attributes determining the S2S gap. We apply the proposed method to actual silicon data, and observe that the identified design attributes show a clear trend in the S2S gap. We finally unveil 10nm key fin-shaped field effect transistor (FinFET) structures that result in a large S2S gap using the measurement data from 10nm test vehicles specialized for model-hardware correlation.
Keywords
Random forest; Attribute; Importance; Impact; SPICE; FinFET;
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  • Reference
1 Hess, C. et al., "Direct probing characterization vehicle test chip," IEEE Conference on Microelectronic Test Structures 2014, pp. 219-223, 2014.
2 Breiman, L. "Random Forests," Machine Learning 45, pp. 5-32, 2001.   DOI
3 Breiman, Friedman, Olshen and Stone, "Classification and Regression Trees," Wadsworth, 1984.