A Bayesian ensemble data assimilation to constrain model parameters and land-use carbon emissions (original) (raw)
Research article
16 May 2018
Research article | | 16 May 2018
Abstract. A dynamic global vegetation model (DGVM) is applied in a probabilistic framework and benchmarking system to constrain uncertain model parameters by observations and to quantify carbon emissions from land-use and land-cover change (LULCC). Processes featured in DGVMs include parameters which are prone to substantial uncertainty. To cope with these uncertainties Latin hypercube sampling (LHS) is used to create a 1000-member perturbed parameter ensemble, which is then evaluated with a diverse set of global and spatiotemporally resolved observational constraints. We discuss the performance of the constrained ensemble and use it to formulate a new best-guess version of the model (LPX-Bern v1.4). The observationally constrained ensemble is used to investigate historical emissions due to LULCC (_E_LUC) and their sensitivity to model parametrization. We find a global _E_LUC estimate of 158 (108, 211) PgC (median and 90 % confidence interval) between 1800 and 2016. We compare _E_LUC to other estimates both globally and regionally. Spatial patterns are investigated and estimates of _E_LUC of the 10 countries with the largest contribution to the flux over the historical period are reported. We consider model versions with and without additional land-use processes (shifting cultivation and wood harvest) and find that the difference in global _E_LUC is on the same order of magnitude as parameter-induced uncertainty and in some cases could potentially even be offset with appropriate parameter choice.
Received: 31 Jan 2018
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Discussion started: 02 Feb 2018
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Revised: 13 Apr 2018
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Accepted: 25 Apr 2018
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Published: 16 May 2018