TY - JOUR
T1 - A Bayesian inversion framework to evaluate parameter and predictive inference of a simple soil respiration model in a cool-temperate forest in western Japan
AU - Toda, Motomu
AU - Doi, Kazuki
AU - Ishihara, Masae I.
AU - Azuma, Wakana A.
AU - Yokozawa, Masayuki
N1 - Funding Information:
We thank Hiroaki Ishii, Shinichiro Horikawa, Naoyuki Goshi, and technical staff in the Institute of Low Temperature Science of Hokkaido University for their helpful observational supports. We express our appreciation to Hiroshima district forest office for providing us a particular license of use for the forest assessment in the present research. MT acknowledges financial support from a grant-in-aid by the Ministry of Education, Culture, Sports, Science and Technology , Japan. MII acknowledges financial support from the Supporting Positive Activities for Female Researchers of Hiroshima University and from the Environmental Research Project of the Sumitomo Foundation . WAA acknowledges financial support from the Research Fellowships of Japan Society for the Promotion of Science for Young Scientists .
Publisher Copyright:
© 2020 Elsevier B.V.
PY - 2020/2/15
Y1 - 2020/2/15
N2 - Careful modelling of soil carbon sequestration is essential to evaluate future terrestrial feedback to the earth climate system through atmosphere–surface carbon exchange. Few studies have evaluated, in bio- and geo-applications, parameter and predictive uncertainty of soil respiration models by considering the difference between observations and model predictions; i.e. residual error, which is assumed neither to be independent nor to be described by a normal (i.e. Gaussian) probability distribution with a mean of zero and constant variance. In this paper, we use 2-year observations of soil carbon flux from 2017 to 2018 (hereafter referred to as ‘long-term simulation’) obtained with two open-top chambers to estimate parameter and predictive uncertainty of a simple soil respiration model based on Bayesian statistics in a cool-temperate forest in western Japan. We also use a Gaussian innovative residual error model in which a generalised likelihood uncertainty estimation that accounts for correlated, heteroscedastic, non-normally distributed (i.e. non-Gaussian) residual error flexibly handles statistics varying in skewness and kurtosis. Results show that the effects of correlation and heteroscedasticity were eliminated adequately. Additionally, the posterior distribution of the residuals had a pattern intermediate to those of Gaussian and Laplacian (or double-exponential) distributions. Consequently, the predicted soil respiration rate, and range of uncertainty therein, well-matched the observational data. Furthermore, we compare results of parameter and predictive inference of the soil respiration model from the long-term simulation with those constrained of short-term simulations (i.e. 4-month subsets of the 2-year dataset) to determine the extent to which the approach used affects the estimation of parameter and predictive uncertainty. No significant difference in parameter estimates was found between the long-term simulation versus any of the short-term simulations, whereas short-term simulation analysis of the uncertainty at 50 %—i.e. between the lower (25 %) and upper (75 %) quartiles of the probability range—indicated distinctive variations in model parameters in summer when more vigorous activity of trees and organisms promotes carbon cycling between the atmosphere and ecosystem. Overall we demonstrate that the Bayesian inversion approach is useful as a means by which to evaluate effectively parameter and predictive uncertainty of a soil respiration model with precise representation of residual errors.
AB - Careful modelling of soil carbon sequestration is essential to evaluate future terrestrial feedback to the earth climate system through atmosphere–surface carbon exchange. Few studies have evaluated, in bio- and geo-applications, parameter and predictive uncertainty of soil respiration models by considering the difference between observations and model predictions; i.e. residual error, which is assumed neither to be independent nor to be described by a normal (i.e. Gaussian) probability distribution with a mean of zero and constant variance. In this paper, we use 2-year observations of soil carbon flux from 2017 to 2018 (hereafter referred to as ‘long-term simulation’) obtained with two open-top chambers to estimate parameter and predictive uncertainty of a simple soil respiration model based on Bayesian statistics in a cool-temperate forest in western Japan. We also use a Gaussian innovative residual error model in which a generalised likelihood uncertainty estimation that accounts for correlated, heteroscedastic, non-normally distributed (i.e. non-Gaussian) residual error flexibly handles statistics varying in skewness and kurtosis. Results show that the effects of correlation and heteroscedasticity were eliminated adequately. Additionally, the posterior distribution of the residuals had a pattern intermediate to those of Gaussian and Laplacian (or double-exponential) distributions. Consequently, the predicted soil respiration rate, and range of uncertainty therein, well-matched the observational data. Furthermore, we compare results of parameter and predictive inference of the soil respiration model from the long-term simulation with those constrained of short-term simulations (i.e. 4-month subsets of the 2-year dataset) to determine the extent to which the approach used affects the estimation of parameter and predictive uncertainty. No significant difference in parameter estimates was found between the long-term simulation versus any of the short-term simulations, whereas short-term simulation analysis of the uncertainty at 50 %—i.e. between the lower (25 %) and upper (75 %) quartiles of the probability range—indicated distinctive variations in model parameters in summer when more vigorous activity of trees and organisms promotes carbon cycling between the atmosphere and ecosystem. Overall we demonstrate that the Bayesian inversion approach is useful as a means by which to evaluate effectively parameter and predictive uncertainty of a soil respiration model with precise representation of residual errors.
KW - Bayesian statistics
KW - DREAM algorithm
KW - Data-model fusion
KW - Generalised likelihood
KW - Soil carbon flux
KW - Uncertainty
UR - http://www.scopus.com/inward/record.url?scp=85077734121&partnerID=8YFLogxK
UR - http://www.scopus.com/inward/citedby.url?scp=85077734121&partnerID=8YFLogxK
U2 - 10.1016/j.ecolmodel.2019.108918
DO - 10.1016/j.ecolmodel.2019.108918
M3 - Article
AN - SCOPUS:85077734121
SN - 0304-3800
VL - 418
JO - Ecological Modelling
JF - Ecological Modelling
M1 - 108918
ER -