A surrogate-based sensitivity quantification and Bayesian inversion of a regional groundwater flow model

Mingjie Chen, Azizallah Izady, Osman A. Abdalla, Mansoor Amerjeed

Research output: Contribution to journalArticle

5 Citations (Scopus)

Abstract

Bayesian inference using Markov Chain Monte Carlo (MCMC) provides an explicit framework for stochastic calibration of hydrogeologic models accounting for uncertainties; however, the MCMC sampling entails a large number of model calls, and could easily become computationally unwieldy if the high-fidelity hydrogeologic model simulation is time consuming. This study proposes a surrogate-based Bayesian framework to address this notorious issue, and illustrates the methodology by inverse modeling a regional MODFLOW model. The high-fidelity groundwater model is approximated by a fast statistical model using Bagging Multivariate Adaptive Regression Spline (BMARS) algorithm, and hence the MCMC sampling can be efficiently performed. In this study, the MODFLOW model is developed to simulate the groundwater flow in an arid region of Oman consisting of mountain-coast aquifers, and used to run representative simulations to generate training dataset for BMARS model construction. A BMARS-based Sobol’ method is also employed to efficiently calculate input parameter sensitivities, which are used to evaluate and rank their importance for the groundwater flow model system. According to sensitivity analysis, insensitive parameters are screened out of Bayesian inversion of the MODFLOW model, further saving computing efforts. The posterior probability distribution of input parameters is efficiently inferred from the prescribed prior distribution using observed head data, demonstrating that the presented BMARS-based Bayesian framework is an efficient tool to reduce parameter uncertainties of a groundwater system.

Original languageEnglish
Pages (from-to)826-837
Number of pages12
JournalJournal of Hydrology
Volume557
DOIs
Publication statusPublished - Feb 1 2018

Fingerprint

groundwater flow
Markov chain
inversion
groundwater
sampling
arid region
simulation
sensitivity analysis
aquifer
calibration
mountain
methodology
parameter
coast
modeling

Keywords

  • Bagging MARS
  • Bayesian
  • Inverse modeling
  • MODFLOW
  • Surrogate

ASJC Scopus subject areas

  • Water Science and Technology

Cite this

A surrogate-based sensitivity quantification and Bayesian inversion of a regional groundwater flow model. / Chen, Mingjie; Izady, Azizallah; Abdalla, Osman A.; Amerjeed, Mansoor.

In: Journal of Hydrology, Vol. 557, 01.02.2018, p. 826-837.

Research output: Contribution to journalArticle

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