Title
Bayesian Calibration of the Community Land Model Using Surrogates
Abstract
We present results from the Bayesian calibration of hydrological parameters of the Community Land Model (CLM), which is often used in climate simulations and Earth system models. A statistical inverse problem is formulated for three hydrological parameters, conditioned on observations of latent heat surface fluxes over 48 months. Our calibration method uses polynomial and Gaussian process surrogates of the CLM and solves the parameter estimation problem using a Markov chain Monte Carlo sampler. Posterior probability densities for the parameters are developed for two sites with different soil and vegetation covers. Our method also allows us to examine the structural error in the CLM under two error models. We find that accurate surrogate models could be created for the CLM in three out of the four cases we investigated. The posterior distributions lead to better prediction than the default parameter values in CLM. Climatologically averaging the observations does not modify the parameters' distributions significantly. The structural error model reveals a correlation time-scale which can potentially be used to identify physical processes that could be contributing to the structural error. While the calibrated CLM has a higher predictive skill, the calibration is underdispersive.
Year
DOI
Venue
2015
10.1137/140957998
SIAM-ASA JOURNAL ON UNCERTAINTY QUANTIFICATION
Keywords
Field
DocType
Bayesian calibration,community land model,surrogate models,structural error models,Markov chain Monte Carlo
Applied mathematics,Polynomial,Markov chain Monte Carlo,Posterior probability,Gaussian process,Inverse problem,Estimation theory,Statistics,Geography,Calibration,Bayesian probability
Journal
Volume
Issue
ISSN
3
1
2166-2525
Citations 
PageRank 
References 
5
1.23
7
Authors
5
Name
Order
Citations
PageRank
Jaideep Ray119824.42
zhenyu hou251.23
min huang351.23
Khachik Sargsyan46911.29
Laura Swiler531024.51