A hierarchical Bayesian model averaging framework for groundwater prediction under uncertainty

Ground Water. 2015 Mar-Apr;53(2):305-16. doi: 10.1111/gwat.12207. Epub 2014 May 28.

Abstract

Groundwater prediction models are subjected to various sources of uncertainty. This study introduces a hierarchical Bayesian model averaging (HBMA) method to segregate and prioritize sources of uncertainty in a hierarchical structure and conduct BMA for concentration prediction. A BMA tree of models is developed to understand the impact of individual sources of uncertainty and uncertainty propagation to model predictions. HBMA evaluates the relative importance of different modeling propositions at each level in the BMA tree of model weights. The HBMA method is applied to chloride concentration prediction for the "1,500-foot" sand of the Baton Rouge area, Louisiana from 2005 to 2029. The groundwater head data from 1990 to 2004 is used for model calibration. Four sources of uncertainty are considered and resulted in 180 flow and transport models for concentration prediction. The results show that prediction variances of concentration from uncertain model elements are much higher than the prediction variance from uncertain model parameters. The HBMA method is able to quantify the contributions of individual sources of uncertainty to the total uncertainty.

Publication types

  • Research Support, U.S. Gov't, Non-P.H.S.

MeSH terms

  • Bayes Theorem
  • Chlorides / analysis
  • Geologic Sediments
  • Groundwater / chemistry*
  • Louisiana
  • Models, Theoretical*
  • Seawater / chemistry
  • Uncertainty
  • Water Movements

Substances

  • Chlorides