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Bayesian Model Fusion: A statistical framework for efficient pre-silicon validation and post-silicon tuning of complex analog and mixed-signal circuits

Publication ,  Conference
Li, X; Wang, F; Sun, S; Gu, C
Published in: IEEE ACM International Conference on Computer Aided Design Digest of Technical Papers Iccad
December 1, 2013

In this paper, we describe a novel statistical framework, referred to as Bayesian Model Fusion (BMF), that allows us to minimize the simulation and/or measurement cost for both pre-silicon validation and post-silicon tuning of analog and mixed-signal (AMS) circuits with consideration of large-scale process variations. The BMF technique is motivated by the fact that today's AMS design cycle typically spans multiple stages (e.g., schematic design, layout design, first tape-out, second tape-out, etc.). Hence, we can reuse the simulation and/or measurement data collected at an early stage to facilitate efficient validation and tuning of AMS circuits with a minimal amount of data at the late stage. The efficacy of BMF is demonstrated by using several industrial circuit examples. © 2013 IEEE.

Duke Scholars

Published In

IEEE ACM International Conference on Computer Aided Design Digest of Technical Papers Iccad

DOI

ISSN

1092-3152

Publication Date

December 1, 2013

Start / End Page

795 / 802
 

Citation

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Li, X., Wang, F., Sun, S., & Gu, C. (2013). Bayesian Model Fusion: A statistical framework for efficient pre-silicon validation and post-silicon tuning of complex analog and mixed-signal circuits. In IEEE ACM International Conference on Computer Aided Design Digest of Technical Papers Iccad (pp. 795–802). https://doi.org/10.1109/ICCAD.2013.6691204
Li, X., F. Wang, S. Sun, and C. Gu. “Bayesian Model Fusion: A statistical framework for efficient pre-silicon validation and post-silicon tuning of complex analog and mixed-signal circuits.” In IEEE ACM International Conference on Computer Aided Design Digest of Technical Papers Iccad, 795–802, 2013. https://doi.org/10.1109/ICCAD.2013.6691204.
Li X, Wang F, Sun S, Gu C. Bayesian Model Fusion: A statistical framework for efficient pre-silicon validation and post-silicon tuning of complex analog and mixed-signal circuits. In: IEEE ACM International Conference on Computer Aided Design Digest of Technical Papers Iccad. 2013. p. 795–802.
Li, X., et al. “Bayesian Model Fusion: A statistical framework for efficient pre-silicon validation and post-silicon tuning of complex analog and mixed-signal circuits.” IEEE ACM International Conference on Computer Aided Design Digest of Technical Papers Iccad, 2013, pp. 795–802. Scopus, doi:10.1109/ICCAD.2013.6691204.
Li X, Wang F, Sun S, Gu C. Bayesian Model Fusion: A statistical framework for efficient pre-silicon validation and post-silicon tuning of complex analog and mixed-signal circuits. IEEE ACM International Conference on Computer Aided Design Digest of Technical Papers Iccad. 2013. p. 795–802.

Published In

IEEE ACM International Conference on Computer Aided Design Digest of Technical Papers Iccad

DOI

ISSN

1092-3152

Publication Date

December 1, 2013

Start / End Page

795 / 802