Importance sampled circuit learning ensembles for robust analog IC design

2008 IEEE/ACM International Conference on Computer-Aided Design(2008)

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摘要
This paper presents ISCLEs, a novel and robust analog design method that promises to scale with Moorepsilas Law, by doing boosting-style importance sampling on digital-sized circuits to achieve the target analog behavior. ISCLEs consists of: (1) a boosting algorithm developed specifically for circuit assembly; (2) an ISCLEs-specific library of possible digital-sized circuit blocks; and (3) a recently-developed multi-topology sizing technique to automatically determine each blockpsilas topology and device sizes. ISCLEs is demonstrated on design of a sinusoidal function generator and a flash A/D converter, showing promise to robustly scale with shrinking process geometries.
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