2016
DOI: 10.1002/2015jd024339
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On the applicability of surrogate‐based Markov chain Monte Carlo‐Bayesian inversion to the Community Land Model: Case studies at flux tower sites

Abstract: Key Points:1. The feasibility of applying a Bayesian calibration technique to estimate CLM parameters is assessed; 2. CLM-simulated LH fluxes using the calibrated parameters are generally improved;3. The parameter values are likely transferable within the plant functional type. AbstractThe Community Land Model (CLM) has been widely used in climate and Earth system modeling. Accurate estimation of model parameters is needed for reliable model simulations and predictions under current and future conditions, resp… Show more

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Cited by 29 publications
(34 citation statements)
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“…In this study, we tested emulator calibration with number of parameters that are comparable to previous studies, if not higher (Ray et al, 2015, Huang et al, 2016Gong and Duan, 2017). However, running the emulator can also become infeasible,…”
Section: Approximation Error Vs Clock-timementioning
confidence: 79%
See 1 more Smart Citation
“…In this study, we tested emulator calibration with number of parameters that are comparable to previous studies, if not higher (Ray et al, 2015, Huang et al, 2016Gong and Duan, 2017). However, running the emulator can also become infeasible,…”
Section: Approximation Error Vs Clock-timementioning
confidence: 79%
“…1) where the model has been run. Previous studies on emulation of biosphere models mostly focused on emulating the model outputs (Kennedy et al, 2008, Ray et al, 2015, Huang et al, 2016. However, comparing model outputs to 'big data' requires emulating a large, nonlinear multivariate output space.…”
Section: Introductionmentioning
confidence: 99%
“…In this study, we focused on calibrating process-based mechanistic simulators (ecosystem models) using computationally cheaper emulators. Variations in emulator approach are many and can be found in Jandarov et al (2014), Aslanyan et al (2015), Huang et al (2016), Oakley and Youngman (2017), and the references therein. Here we adopted the version that emulates the likelihood surface with a GP, similar to previous studies including applications with a cosmological likelihood function (Aslanyan et al, 2015), a stochastic natural history model (Oakley and Youngman, 2017), the Hartmann function and a hydrologic model (Wang et al, 2014), and two land surface models (Li et al, 2018).…”
Section: Emulator Constructionmentioning
confidence: 99%
“…Emulators are constructed by interpolating a response surface between the knots where the model has been run. Previous studies on emulation of biosphere models mostly focused on emulating the model outputs (Kennedy et al, 2008;Ray et al, 2015;Huang et al, 2016). However, comparing model outputs to "big data" requires emulating a large, nonlinear multivariate output space.…”
mentioning
confidence: 99%
“…Several global optimization methods have been applied in land surface modeling. For example, Sun et al (2013) and Huang et al (2016) used Markov chain Monte Carlo (MCMC) sampling to calibrate hydrological parameters in the Community Land Model (CLM); the MCMC methods have also been applied for CLM-crop model calibration in Zeng et al (2013), and for terrestrial ecosystem model (TEM) optimization in Ricciuto et al (2008Ricciuto et al ( , 2011 and Safta et al (2015). Trudinger et al (2007) and Fox et al (2009) used Kalman filters for TEM parameter estimation.…”
Section: Introductionmentioning
confidence: 99%