Multiscale Sampling for the Inverse Modeling of Partial Differential Equations
Alsadig Ali, Abdullah Al-Mamun, Felipe Pereira, Arunasalam Rahunanthan

TL;DR
This paper introduces a multiscale sampling approach within a Bayesian framework to efficiently characterize subsurface formations by localizing stochastic sampling, improving convergence in inverse PDE problems.
Contribution
It proposes a novel multiscale sampling method combining domain decomposition and local KL expansions to enhance Bayesian inverse modeling of porous media.
Findings
Improved convergence rate of MCMC with multiscale sampling.
Effective localization of stochastic space improves computational efficiency.
Demonstrated success on inverse PDE problems in porous media.
Abstract
We are concerned with a novel Bayesian statistical framework for the characterization of natural subsurface formations, a very challenging task. Because of the large dimension of the stochastic space of the prior distribution in the framework, typically a dimensional reduction method, such as a Karhunen-Leove expansion (KLE), needs to be applied to the prior distribution to make the characterization computationally tractable. Due to the large variability of properties of subsurface formations (such as permeability and porosity) it may be of value to localize the sampling strategy so that it can better adapt to large local variability of rock properties. In this paper, we introduce the concept of multiscale sampling to localize the search in the stochastic space. We combine the simplicity of a preconditioned Markov Chain Monte Carlo method with a new algorithm to decompose the stochastic…
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Taxonomy
TopicsHydrocarbon exploration and reservoir analysis · Groundwater flow and contamination studies · Advanced Mathematical Modeling in Engineering
