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arxiv 1911.04317 v1 pith:XHPQCU5M submitted 2019-11-01 stat.OT cs.LGeess.SPstat.ML

Machine Learning for high speed channel optimization

classification stat.OT cs.LGeess.SPstat.ML
keywords optimizationdesignstack-upefficienthighparametersspeedaccurate
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Design of printed circuit board (PCB) stack-up requires the consideration of characteristic impedance, insertion loss and crosstalk. As there are many parameters in a PCB stack-up design, the optimization of these parameters needs to be efficient and accurate. A less optimal stack-up would lead to expensive PCB material choices in high speed designs. In this paper, an efficient global optimization method using parallel and intelligent Bayesian optimization is proposed for the stripline design.

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