High-Dimensional Uncertainty Quantification of Electronic and Photonic IC with Non-Gaussian Correlated Process Variations

01/31/2019
by   Chunfeng Cui, et al.
0

Uncertainty quantification based on generalized polynomial chaos has been used in many applications. It has also achieved great success in variation-aware design automation. However, almost all existing techniques assume that the parameters are mutually independent or Gaussian correlated, which is rarely true in real applications. For instance, in chip manufacturing, many process variations are actually correlated. Recently, some techniques have been developed to handle non-Gaussian correlated random parameters, but they are time-consuming for high-dimensional problems. We present a new framework to solve uncertainty quantification problems with many non-Gaussian correlated uncertainties. Firstly, we propose a set of smooth basis functions to well capture the impact of non-Gaussian correlated process variations. We develop a tensor approach to compute these basis functions in a high-dimension setting. Secondly, we investigate the theoretical aspect and practical implementation of a sparse solver to compute the coefficients of all basis functions. We provide some theoretical analysis for the exact recovery condition and error bound of this sparse solver in the context of uncertainty quantification. We present three adaptive sampling approaches to improve the performance of the sparse solver. Finally, we validate our methods by synthetic and practical electronic/photonic ICs with 19 to 57 non-Gaussian correlated variation parameters. Our approach outperforms Monte Carlo by thousands of times in terms of efficiency. It can also accurately predict the output density functions with multiple peaks caused by non-Gaussian correlations, which are hard to capture by existing methods.

READ FULL TEXT
research
06/30/2018

Uncertainty Quantification of Electronic and Photonic ICs with Non-Gaussian Correlated Process Variations

Since the invention of generalized polynomial chaos in 2002, uncertainty...
research
11/06/2022

Recent Advances in Uncertainty Quantification Methods for Engineering Problems

In the last few decades, uncertainty quantification (UQ) methods have be...
research
03/31/2021

High-Dimensional Uncertainty Quantification via Rank- and Sample-Adaptive Tensor Regression

Fabrication process variations can significantly influence the performan...
research
08/25/2018

Stochastic Collocation with Non-Gaussian Correlated Parameters via a New Quadrature Rule

This paper generalizes stochastic collocation methods to handle correlat...
research
07/10/2019

Efficient Uncertainty Modeling for System Design via Mixed Integer Programming

The post-Moore era casts a shadow of uncertainty on many aspects of comp...
research
12/30/2022

Uncertainty quantification for sparse Fourier recovery

One of the most prominent methods for uncertainty quantification in high...
research
09/25/2017

A general framework for uncertainty quantification under non-Gaussian input dependencies

Uncertainty quantification (UQ) deals with the estimation of statistics ...

Please sign up or login with your details

Forgot password? Click here to reset