Title of article :
Stochastic models for greenhouse gas emission rate estimation from hydroelectric reservoirs: a Bayesian hierarchical approach
Author/Authors :
Vinicius P. Israel&Hélio S. Migon، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Abstract :
Herein, we propose a fully Bayesian approach to the greenhouse gas emission problem. The goal of this
work is to estimate the emission rate of polluting gases from the area flooded by hydroelectric reservoirs.
We present models for gas concentration evolution in two ways: first, by proposing them from ordinary
differential equation solutions and, second, by using stochastic differential equations with a discretization
scheme. Finally, we present techniques to estimate the emission rate for the entire reservoir. In order to
carry out the inference, we use the Bayesian framework with Monte Carlo via Markov Chain methods.
Discretization schemes over continuous differential equations are used when necessary. These models
applied to greenhouse gas emission and Bayesian inference for this purpose are completely newin statistical
literature, as far as we know, and contribute to estimate the amount of polluting gases released from
hydroelectric reservoirs in Brazil. The proposed models are applied in a real data set and results are
presented.
Keywords :
hierarchical models , Diffusion process , Discretization , Bayesian framework , stochastic differential equations , gas emission rate estimation
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS