Modeling and simulating depositional sequences using latent Gaussian random fields

03/25/2020
by   Denis Allard, et al.
0

Simulating a depositional (or stratigraphic) sequence conditionally on borehole data is a long-standing problem in hydrogeology and in petroleum geostatistics. This paper presents a new rule-based approach for simulating depositional sequences of surfaces conditionally on lithofacies thickness data. The thickness of each layer is modeled by a transformed latent Gaussian random field allowing for null thickness thanks to a truncation process. Layers are sequentially stacked above each other following the regional stratigraphic sequence. By choosing adequately the variograms of these random fields, the simulated surfaces separating two layers can be continuous and smooth. Borehole information is often incomplete in the sense that it does not provide direct information as to the exact layer some observed thickness belongs to. The latent Gaussian model proposed in this paper offers a natural solution to this problem by means of a Bayesian setting with a Markov Chain Monte Carlo (MCMC) algorithm that can explore all possible configurations compatible with the data. The model and the associated MCMC algorithm are validated on synthetic data and then applied to a subsoil in the Venetian Plain with a moderately dense network of cored boreholes.

READ FULL TEXT

page 9

page 19

page 20

page 27

research
03/24/2021

Sequential pCN-MCMC, an efficient MCMC method for Bayesian inversion of high-dimensional multi-Gaussian priors

In geostatistics, Gaussian random fields are often used to model heterog...
research
07/28/2020

Multilevel Hierarchical Decomposition of Finite Element White Noise with Application to Multilevel Markov Chain Monte Carlo

In this work we develop a new hierarchical multilevel approach to genera...
research
01/31/2022

The Curvature Effect in Gaussian Random Fields

Random field models are mathematical structures used in the study of sto...
research
11/05/2010

Gradient Computation In Linear-Chain Conditional Random Fields Using The Entropy Message Passing Algorithm

The paper proposes a numerically stable recursive algorithm for the exac...
research
05/17/2018

Efficient simulation of Gaussian Markov random fields by Chebyshev polynomial approximation

This paper presents an algorithm to simulate Gaussian random vectors who...
research
03/26/2019

An Exact Auxiliary Variable Gibbs Sampler for a Class of Diffusions

Stochastic differential equations (SDEs) or diffusions are continuous-va...
research
11/07/2005

Discrete Network Dynamics. Part 1: Operator Theory

An operator algebra implementation of Markov chain Monte Carlo algorithm...

Please sign up or login with your details

Forgot password? Click here to reset