Inverse modeling of hydrologic systems with adaptive multi-fidelity Markov chain Monte Carlo simulations

12/06/2017
by   Jiangjiang Zhang, et al.
0

Markov chain Monte Carlo (MCMC) simulation methods are widely used to assess parametric uncertainties of hydrologic models conditioned on measurements of observable state variables. However, when the model is CPU-intensive and high-dimensional, the computational cost of MCMC simulation will be prohibitive. In this situation, a CPU-efficient while less accurate low-fidelity model (e.g., a numerical model with a coarser discretization, or a data-driven surrogate) is usually adopted. Nowadays, multi-fidelity simulation methods that can take advantage of both the efficiency of the low-fidelity model and the accuracy of the high-fidelity model are gaining popularity. In the MCMC simulation, as the posterior distribution of the unknown model parameters is the region of interest, it is wise to distribute most of the computational budget (i.e., the high-fidelity model evaluations) therein. Based on this idea, in this paper we propose an adaptive multi-fidelity MCMC algorithm for efficient inverse modeling of hydrologic systems. In this method, we evaluate the high-fidelity model mainly in the posterior region through iteratively running MCMC based on a Gaussian process (GP) system that is adaptively constructed with multi-fidelity simulation. The error of the GP system is rigorously considered in the MCMC simulation and gradually reduced to a negligible level in the posterior region. Thus, the proposed method can obtain an accurate estimate of the posterior distribution with a small number of the high-fidelity model evaluations. The performance of the proposed method is demonstrated by three numerical case studies in inverse modeling of hydrologic systems.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/06/2017

Inverse modeling of hydrologic systems with adaptive multi-fidelity simulations

Markov chain Monte Carlo (MCMC) simulation methods are widely used to as...
research
08/28/2018

A transport-based multifidelity preconditioner for Markov chain Monte Carlo

Markov chain Monte Carlo (MCMC) sampling of posterior distributions aris...
research
10/04/2022

Multi-fidelity Monte Carlo: a pseudo-marginal approach

Markov chain Monte Carlo (MCMC) is an established approach for uncertain...
research
11/20/2019

An adaptive surrogate modeling based on deep neural networks for large-scale Bayesian inverse problems

It is popular approaches to use surrogate models to speed up the computa...
research
04/20/2018

A Bayesian Framework for Assessing the Strength Distribution of Composite Structures with Random Defects

This paper presents a novel stochastic framework to quantify the knock d...
research
07/10/2018

Surrogate-Based Inverse Modeling of the Hydrological System: An Adaptive Approach Considering Surrogate Structural Error

Inverse modeling is vital for an improved hydrological prediction. Howev...
research
07/10/2018

Surrogate-Based Bayesian Inverse Modeling of the Hydrological System: An Adaptive Approach Considering Surrogate Structural Error

Inverse modeling is vital for an improved hydrological prediction. Howev...

Please sign up or login with your details

Forgot password? Click here to reset