A flexible Bayesian model for describing temporal variability of N2O emissions from an Australian pasture


Autoria(s): Huang, Xiaodong; Grace, Peter; Rowlings, David; Mengersen, Kerrie
Data(s)

01/06/2013

Resumo

Soil-based emissions of nitrous oxide (N2O), a well-known greenhouse gas, have been associated with changes in soil water-filled pore space (WFPS) and soil temperature in many previous studies. However, it is acknowledged that the environment-N2O relationship is complex and still relatively poorly unknown. In this article, we employed a Bayesian model selection approach (Reversible jump Markov chain Monte Carlo) to develop a data-informed model of the relationship between daily N2O emissions and daily WFPS and soil temperature measurements between March 2007 and February 2009 from a soil under pasture in Queensland, Australia, taking seasonal factors and time-lagged effects into account. The model indicates a very strong relationship between a hybrid seasonal structure and daily N2O emission, with the latter substantially increased in summer. Given the other variables in the model, daily soil WFPS, lagged by a week, had a negative influence on daily N2O; there was evidence of a nonlinear positive relationship between daily soil WFPS and daily N2O emission; and daily soil temperature tended to have a linear positive relationship with daily N2O emission when daily soil temperature was above a threshold of approximately 19°C. We suggest that this flexible Bayesian modeling approach could facilitate greater understanding of the shape of the covariate-N2O flux relation and detection of effect thresholds in the natural temporal variation of environmental variables on N2O emission.

Identificador

http://eprints.qut.edu.au/62672/

Publicador

Elsevier BV

Relação

DOI:10.1016/j.scitotenv.2013.03.013

Huang, Xiaodong, Grace, Peter, Rowlings, David, & Mengersen, Kerrie (2013) A flexible Bayesian model for describing temporal variability of N2O emissions from an Australian pasture. Science of The Total Environment, 454-455, pp. 206-210.

Fonte

School of Earth, Environmental & Biological Sciences; Institute for Sustainable Resources; School of Mathematical Sciences; Science & Engineering Faculty

Palavras-Chave #Bayesian model selection #Bayesian modeling #Environmental variables #Multiple imputation #Piecewise polynomials #Reversible jump Markov chain Monte Carlo #RJMCMC #Soil temperature measurements
Tipo

Journal Article