An efficient epistemic uncertainty quantification algorithm for a class of stochastic models: A post-processing and domain decomposition framework

10/15/2020
by   Mahadevan Ganesh, et al.
0

Partial differential equations (PDEs) are fundamental for theoretically describing numerous physical processes that are based on some input fields in spatial configurations. Understanding the physical process, in general, requires computational modeling of the PDE. Uncertainty in the computational model manifests through lack of precise knowledge of the input field or configuration. Uncertainty quantification (UQ) in the output physical process is typically carried out by modeling the uncertainty using a random field, governed by an appropriate covariance function. This leads to solving high-dimensional stochastic counterparts of the PDE computational models. Such UQ-PDE models require a large number of simulations of the PDE in conjunction with samples in the high-dimensional probability space, with probability distribution associated with the covariance function. Those UQ computational models having explicit knowledge of the covariance function are known as aleatoric UQ (AUQ) models. The lack of such explicit knowledge leads to epistemic UQ (EUQ) models, which typically require solution of a large number of AUQ models. In this article, using a surrogate, post-processing, and domain decomposition framework with coarse stochastic solution adaptation, we develop an offline/online algorithm for efficiently simulating a class of EUQ-PDE models.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/13/2022

Generalized dimension truncation error analysis for high-dimensional numerical integration: lognormal setting and beyond

Partial differential equations (PDEs) with uncertain or random inputs ha...
research
06/02/2022

Stochastic Deep-Ritz for Parametric Uncertainty Quantification

Scientific machine learning has become an increasingly popular tool for ...
research
03/31/2023

Lattice-based kernel approximation and serendipitous weights for parametric PDEs in very high dimensions

We describe a fast method for solving elliptic partial differential equa...
research
04/12/2023

Stochastic Domain Decomposition Based on Variable-Separation Method

Uncertainty propagation across different domains is of fundamental impor...
research
03/06/2017

Probabilistic Reduced-Order Modeling for Stochastic Partial Differential Equations

We discuss a Bayesian formulation to coarse-graining (CG) of PDEs where ...
research
08/23/2022

Domain Decomposition of Stochastic PDEs: Development of Probabilistic Wirebasket-based Two-level Preconditioners

Realistic physical phenomena exhibit random fluctuations across many sca...
research
03/01/2022

E-LMC: Extended Linear Model of Coregionalization for Predictions of Spatial Fields

Physical simulations based on partial differential equations typically g...

Please sign up or login with your details

Forgot password? Click here to reset