Robust and Efficient Uncertainty Quantification and Validation of RFIC Isolation

被引:0
|
作者
Di Bucchianico, Alessandro [1 ]
Ter Maten, Jan [1 ,2 ]
Pulch, Roland [3 ]
Janssen, Rick [4 ]
Niehof, Jan [4 ]
Hanssen, Marcel [4 ]
Kpora, Sergei [4 ]
机构
[1] Eindhoven Univ Technol, CASA, STO, Dept Math & Comp Sci, NL-5600 MB Eindhoven, Netherlands
[2] Berg Univ Wuppertal, IMACM AMNA, FB C, Chair Appl Math & Numer Anal, D-42119 Wuppertal, Germany
[3] Univ Greifswald, Dept Math & Comp Sci, D-17487 Greifswald, Germany
[4] NXP Semicond, NL-5656 AE Eindhoven, Netherlands
关键词
Monte Carlo; importance sampling; tail probabilities; failure; yield estimation; uncertainty quantification; stochastic collocation; stochastic galerkin; sensitivity; variation aware; parameterized model order reduction; reliability; RFIC isolation; floor-plan modeling; isolation grounding; POLYNOMIAL CHAOS;
D O I
暂无
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
Modern communication and identification products impose demanding constraints on reliability of components. Due to this, statistical constraints more and more enter optimization formulations of electronic products. Yield constraints often require efficient sampling techniques to obtain uncertainty quantification also at the tails of the distributions. These sampling techniques should outperform standard Monte Carlo techniques, since these latter ones are normally not efficient enough to deal with tail probabilities. One such a technique, Importance Sampling, has successfully been applied to optimize Static Random Access Memories (SRAMs) while guaranteeing very small failure probabilities, even going beyond 6-sigma variations of parameters involved. Apart from this, emerging uncertainty quantifications techniques offer expansions of the solution that serve as a response surface facility when doing statistics and optimization. To efficiently derive the coefficients in the expansions one either has to solve a large number of problems or a huge combined problem. Here parameterized Model Order Reduction (MOR) techniques can be used to reduce the work load. To also reduce the amount of parameters we identify those that only affect the variance in a minor way. These parameters can simply be set to a fixed value. The remaining parameters can be viewed as dominant. Preservation of the variation also allows to make statements about the approximation accuracy obtained by the parameter-reduced problem. This is illustrated on an RLC circuit. Additionally, the MOR technique used should not affect the variance significantly. Finally we consider a methodology for reliable RFIC isolation using floor-plan modeling and isolation grounding. Simulations show good agreement with measurements.
引用
收藏
页码:308 / 318
页数:11
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