Forest models are tools for explaining and predicting the dynamics of forest ecosystems. They simulate forest behavior by integrating information on the underlying processes in trees, soil and atmosphere. Bayesian calibration is the application of probability theory to parameter estimation. It is a method, applicable to all models, that quantifies output uncertainty and identifies key parameters and variables. This study aims at testing the Bayesian procedure for calibration to different types of forest models, to evaluate their performances and the uncertainties associated with them. In particular,we aimed at 1) applying a Bayesian framework to calibrate forest models and test their performances in different biomes and different environmental conditions, 2) identifying and solve structure-related issues in simple models, and 3) identifying the advantages of additional information made available when calibrating forest models with a Bayesian approach. We applied the Bayesian framework to calibrate the Prelued model on eight Italian eddy-covariance sites in Chapter 2. The ability of Prelued to reproduce the estimated Gross Primary Productivity (GPP) was tested over contrasting natural vegetation types that represented a wide range of climatic and environmental conditions. The issues related to Prelued's multiplicative structure were the main topic of Chapter 3: several different MCMC-based procedures were applied within a Bayesian framework to calibrate the model, and their performances were compared. A more complex model was applied in Chapter 4, focusing on the application of the physiology-based model HYDRALL to the forest ecosystem of Lavarone (IT) to evaluate the importance of additional information in the calibration procedure and their impact on model performances, model uncertainties, and parameter estimation. Overall, the Bayesian technique proved to be an excellent and versatile tool to successfully calibrate forest models of different structure and complexity, on different kind and number of variables and with a different number of parameters involved

Bagnara, Maurizio (2015-05-18). Modelling biogeochemical cycles in forest ecosystems: a Bayesian approach. (Doctoral Thesis). Università degli studi di Bologna, a.y. 2014/2015, Dottorato di ricerca in Scienze e tecnologie agrarie, ambientali e alimentari Ciclo XXVII, IPP. handle: http://hdl.handle.net/10449/25094

Modelling biogeochemical cycles in forest ecosystems: a Bayesian approach

Bagnara, Maurizio
2015-05-18

Abstract

Forest models are tools for explaining and predicting the dynamics of forest ecosystems. They simulate forest behavior by integrating information on the underlying processes in trees, soil and atmosphere. Bayesian calibration is the application of probability theory to parameter estimation. It is a method, applicable to all models, that quantifies output uncertainty and identifies key parameters and variables. This study aims at testing the Bayesian procedure for calibration to different types of forest models, to evaluate their performances and the uncertainties associated with them. In particular,we aimed at 1) applying a Bayesian framework to calibrate forest models and test their performances in different biomes and different environmental conditions, 2) identifying and solve structure-related issues in simple models, and 3) identifying the advantages of additional information made available when calibrating forest models with a Bayesian approach. We applied the Bayesian framework to calibrate the Prelued model on eight Italian eddy-covariance sites in Chapter 2. The ability of Prelued to reproduce the estimated Gross Primary Productivity (GPP) was tested over contrasting natural vegetation types that represented a wide range of climatic and environmental conditions. The issues related to Prelued's multiplicative structure were the main topic of Chapter 3: several different MCMC-based procedures were applied within a Bayesian framework to calibrate the model, and their performances were compared. A more complex model was applied in Chapter 4, focusing on the application of the physiology-based model HYDRALL to the forest ecosystem of Lavarone (IT) to evaluate the importance of additional information in the calibration procedure and their impact on model performances, model uncertainties, and parameter estimation. Overall, the Bayesian technique proved to be an excellent and versatile tool to successfully calibrate forest models of different structure and complexity, on different kind and number of variables and with a different number of parameters involved
SOTTOCORNOLA, MATTEO
GIANELLE, DAMIANO
Bayesian calibration
Markov Chain Monte Carlo
Forest model
Carbon fluxes
Prelued
HYDRALL
Light-Use Efficiency
Lavarone
FLUXNET
Metropolis-Hastings
Adaptive Metropolis
DEMC
MCMC algorithms
Model uncertainties
Parameter estimation
Parameter uncertainties
Settore AGR/05 - ASSESTAMENTO FORESTALE E SELVICOLTURA
18-mag-2015
2014/2015
Dottorato di ricerca in Scienze e tecnologie agrarie, ambientali e alimentari Ciclo XXVII
IPP
Bagnara, Maurizio (2015-05-18). Modelling biogeochemical cycles in forest ecosystems: a Bayesian approach. (Doctoral Thesis). Università degli studi di Bologna, a.y. 2014/2015, Dottorato di ricerca in Scienze e tecnologie agrarie, ambientali e alimentari Ciclo XXVII, IPP. handle: http://hdl.handle.net/10449/25094
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