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Optimising CH4 simulations from the LPJ-GUESS model v4.1 using an adaptive MCMC algorithm.

Authors :
Kallingal, Jalisha T.
Lindström, Johan
Miller, Paul A.
Rinne, Janne
Raivonen, Maarit
Scholze, Marko
Source :
Geoscientific Model Development Discussions; 4/19/2023, p1-40, 40p
Publication Year :
2023

Abstract

The processes responsible for methane (CH<subscript>4</subscript>) emissions from boreal wetlands are complex, and hence their model representation is complicated by a large number of parameters and parameter uncertainties. The arctic-enabled dynamic global vegetation model LPJ-GUESS is one such model that allows quantification and understanding of the natural wetland CH<subscript>4</subscript> fluxes at various scales ranging from local to regional and global, but with several uncertainties. The model contains detailed descriptions of CH<subscript>4</subscript> production, oxidation, and transport controlled by several process parameters. Complexities in the underlying environmental processes, warming-driven alternative paths of meteorological phenomena, and changes in hydrological and vegetation conditions are highlight the need for a calibrated and optimised version of LPJGUESS. In this study we formulated the parameter calibration as a Bayesian problem, using knowledge of reasonable parameters values as priors. We then used an adaptive Metropolis Hastings (MH) based Markov Chain Monte Carlo (MCMC) algorithm to improve predictions of CH<subscript>4</subscript> emission by LPJ-GUESS and to quantify uncertainties. Application of this method on uncertain parameters allows greater search of their posterior distribution, leading to a more complete characterisation of the posterior distribution with reduced risk of sample impoverishment that can occur when using other optimisation methods. For assimilation, the analysis used flux measurement data gathered during the period 2005 to 2014 from the Siikaneva wetlands in southern Finland with an estimation of measurement uncertainties. The data are used to constrain the processes behind the CH<subscript>4</subscript> dynamics, and the posterior covariance structures are used to explain how the parameters and the processes are related. To further support the conclusions, the CH<subscript>4</subscript> flux and the other component fluxes associated with the flux are examined. The results demonstrate the robustness of MCMC methods to quantitatively assess the interrelationship between objective function choices, parameter identifiability, and data support. As a part of this work, knowledge about how the CH<subscript>4</subscript> data can constrain the parameters and processes is derived. Though the optimisation is performed based on a single site's flux data from Siikaneva, the algorithm is useful for larger-scale multi-site studies for more robust calibration of LPJ-GUESS and similar models, and the results can highlight where model improvements are needed. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
19919611
Database :
Complementary Index
Journal :
Geoscientific Model Development Discussions
Publication Type :
Academic Journal
Accession number :
163357986
Full Text :
https://doi.org/10.5194/gmd-2022-302