Application of the ecosystem model and Markov Chain Monte Carlo for parameter estimation and productivity prediction
Type de ressource
Auteurs/contributeurs
- Li, Weizhong (Auteur)
- Peng, Changhui (Auteur)
- Zhou, Xiaolu (Auteur)
- Sun, Jianfeng (Auteur)
- Zhu, Qiuan (Auteur)
- Wu, Haibin (Auteur)
- St-Onge, Benoit (Auteur)
Titre
Application of the ecosystem model and Markov Chain Monte Carlo for parameter estimation and productivity prediction
Résumé
It is increasingly being recognized that global ecological research requires novel methods and strategies in which to combine process‐based ecological models and data in cohesive, systematic ways. In process‐based model applications, inherent spatial and temporal heterogeneities found within terrestrial ecosystems may lead to the uncertainties of model predictions. To reduce simulation uncertainties due to inaccurate model parameters, the Markov Chain Monte Carlo (MCMC) method was applied in this study to improve the estimations of four key parameters used in the process‐based ecosystem model of TRIPLEX‐FLUX. These four key parameters include a maximum photosynthetic carboxylation rate of 25°C (Vmax), an electron transport (Jmax) light‐saturated rate within the photosynthetic carbon reduction cycle of leaves, a coefficient of stomatal conductance (m), and a reference respiration rate of 10°C (R10). Seven forest flux tower sites located across North America were used to investigate and facilitate understanding of the daily variation in model parameters for three deciduous forests, three evergreen temperate forests, and one evergreen boreal forest. Eddy covariance CO
2
exchange measurements were assimilated to optimize the parameters in the year 2006. After parameter optimization and adjustment took place, net ecosystem production prediction significantly improved (by approximately 25%) compared to the CO
2
flux measurements taken at the seven forest ecosystem sites. Results suggest that greater seasonal variability occurs in broadleaf forests in respect to the selected parameters than in needleleaf forests. This study also demonstrated that the model‐data fusion approach by incorporating MCMC method is able to better estimate parameters and improve simulation accuracy for different ecosystems located across North America.
Publication
Ecosphere
Volume
6
Numéro
12
Pages
1-15
Date
12/2015
Abrév. de revue
Ecosphere
Langue
en
ISSN
2150-8925, 2150-8925
Consulté le
18/11/2024 16:56
Catalogue de bibl.
DOI.org (Crossref)
Autorisations
Référence
Li, W., Peng, C., Zhou, X., Sun, J., Zhu, Q., Wu, H., & St-Onge, B. (2015). Application of the ecosystem model and Markov Chain Monte Carlo for parameter estimation and productivity prediction. Ecosphere, 6(12), 1–15. https://doi.org/10.1890/ES15-00034.1
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