Stochastic Collocation with Non-Gaussian Correlated Parameters via a New Quadrature Rule
arXiv: Numerical Analysis(2018)
摘要
This paper generalizes stochastic collocation methods to handle correlated non-Gaussian random parameters. The key challenge is to perform a multivariate numerical integration in a correlated parameter space when computing the coefficient of each basis function via a projection step. We propose an optimization model and a block coordinate descent solver to compute the required quadrature samples. Our method is verified with a CMOS ring oscillator and an optical ring resonator, showing 3000x speedup over Monte Carlo.
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关键词
multivariate numerical integration,correlated parameter space,projection step,nonGaussian correlated parameters,new quadrature rule,stochastic collocation methods,nonGaussian random parameters
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