Polynomial chaos-based methods have been extensively applied in electrical and other engineering problems for the stochastic simulation of systems with uncertain parameters. Most of the implementations are based on either the intrusive stochastic Galerkin method or on non-intrusive collocation approaches, of which a very common example is the pseudo-spectral method based on Gaussian quadrature rules. This paper shows that, for the important class of linear differential algebraic equations, the latter can be cast as an approximate factorization of the stochastic Galerkin approach, thus generalizing recent discussions in literature in this regard. Consistently with this literature, we show that the factorization turns out to be exact for firs...
This letter proposes a general and effective decoupled technique for the stochastic simulation of no...
The aim of this article is to provide an overview of polynomial chaos (PC) based methods for the sta...
This paper presents a methodology to quantify computationally the uncertainty in a class of differen...
Polynomial chaos-based methods have been extensively applied in electrical and other engineering pro...
This paper discusses the relationship between two standard methods for the stochastic analysis of li...
Uncertainties have become a major concern in integrated circuit design. In order to avoid the huge n...
This paper presents an iterative and decoupled perturbative stochastic Galerkin (SG) method for the ...
This letter proposes a general and effective decoupled technique for the stochastic simulation of no...
This paper presents a systematic approach for the statistical simulation of nonlinear networks with ...
This paper presents a systematic approach for the statistical simulation of nonlinear networks with ...
Linear dynamical systems are considered in the form of ordinary differential equations or differenti...
Due to significant manufacturing process variations, the performance of integrated circuits (ICs) ha...
The first graduate-level textbook to focus on fundamental aspects of numerical methods for stochasti...
Stochastic spectral methods are efficient techniques for uncertainty quantification. Recently they h...
One widely used and computationally efficient method for uncertainty quantification using spectral s...
This letter proposes a general and effective decoupled technique for the stochastic simulation of no...
The aim of this article is to provide an overview of polynomial chaos (PC) based methods for the sta...
This paper presents a methodology to quantify computationally the uncertainty in a class of differen...
Polynomial chaos-based methods have been extensively applied in electrical and other engineering pro...
This paper discusses the relationship between two standard methods for the stochastic analysis of li...
Uncertainties have become a major concern in integrated circuit design. In order to avoid the huge n...
This paper presents an iterative and decoupled perturbative stochastic Galerkin (SG) method for the ...
This letter proposes a general and effective decoupled technique for the stochastic simulation of no...
This paper presents a systematic approach for the statistical simulation of nonlinear networks with ...
This paper presents a systematic approach for the statistical simulation of nonlinear networks with ...
Linear dynamical systems are considered in the form of ordinary differential equations or differenti...
Due to significant manufacturing process variations, the performance of integrated circuits (ICs) ha...
The first graduate-level textbook to focus on fundamental aspects of numerical methods for stochasti...
Stochastic spectral methods are efficient techniques for uncertainty quantification. Recently they h...
One widely used and computationally efficient method for uncertainty quantification using spectral s...
This letter proposes a general and effective decoupled technique for the stochastic simulation of no...
The aim of this article is to provide an overview of polynomial chaos (PC) based methods for the sta...
This paper presents a methodology to quantify computationally the uncertainty in a class of differen...