Spatial prediction of N2O emissions in pasture: a Bayesian model averaging analysis.

Nitrous oxide (N2O) is one of the greenhouse gases that can contribute to global warming. Spatial variability of N2O can lead to large uncertainties in prediction. However, previous studies have often ignored the spatial dependency to quantify the N2O - environmental factors relationships. Few resea...

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Main Authors: Xiaodong Huang, Peter Grace, Wenbiao Hu, David Rowlings, Kerrie Mengersen
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2013-01-01
Series:PLoS ONE
Online Access:https://www.ncbi.nlm.nih.gov/pmc/articles/pmid/23750227/pdf/?tool=EBI
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spelling doaj-b53f9a6627214433a9f874cc4f212dab2021-03-03T23:17:33ZengPublic Library of Science (PLoS)PLoS ONE1932-62032013-01-0186e6503910.1371/journal.pone.0065039Spatial prediction of N2O emissions in pasture: a Bayesian model averaging analysis.Xiaodong HuangPeter GraceWenbiao HuDavid RowlingsKerrie MengersenNitrous oxide (N2O) is one of the greenhouse gases that can contribute to global warming. Spatial variability of N2O can lead to large uncertainties in prediction. However, previous studies have often ignored the spatial dependency to quantify the N2O - environmental factors relationships. Few researches have examined the impacts of various spatial correlation structures (e.g. independence, distance-based and neighbourhood based) on spatial prediction of N2O emissions. This study aimed to assess the impact of three spatial correlation structures on spatial predictions and calibrate the spatial prediction using Bayesian model averaging (BMA) based on replicated, irregular point-referenced data. The data were measured in 17 chambers randomly placed across a 271 m(2) field between October 2007 and September 2008 in the southeast of Australia. We used a Bayesian geostatistical model and a Bayesian spatial conditional autoregressive (CAR) model to investigate and accommodate spatial dependency, and to estimate the effects of environmental variables on N2O emissions across the study site. We compared these with a Bayesian regression model with independent errors. The three approaches resulted in different derived maps of spatial prediction of N2O emissions. We found that incorporating spatial dependency in the model not only substantially improved predictions of N2O emission from soil, but also better quantified uncertainties of soil parameters in the study. The hybrid model structure obtained by BMA improved the accuracy of spatial prediction of N2O emissions across this study region.https://www.ncbi.nlm.nih.gov/pmc/articles/pmid/23750227/pdf/?tool=EBI
collection DOAJ
language English
format Article
sources DOAJ
author Xiaodong Huang
Peter Grace
Wenbiao Hu
David Rowlings
Kerrie Mengersen
spellingShingle Xiaodong Huang
Peter Grace
Wenbiao Hu
David Rowlings
Kerrie Mengersen
Spatial prediction of N2O emissions in pasture: a Bayesian model averaging analysis.
PLoS ONE
author_facet Xiaodong Huang
Peter Grace
Wenbiao Hu
David Rowlings
Kerrie Mengersen
author_sort Xiaodong Huang
title Spatial prediction of N2O emissions in pasture: a Bayesian model averaging analysis.
title_short Spatial prediction of N2O emissions in pasture: a Bayesian model averaging analysis.
title_full Spatial prediction of N2O emissions in pasture: a Bayesian model averaging analysis.
title_fullStr Spatial prediction of N2O emissions in pasture: a Bayesian model averaging analysis.
title_full_unstemmed Spatial prediction of N2O emissions in pasture: a Bayesian model averaging analysis.
title_sort spatial prediction of n2o emissions in pasture: a bayesian model averaging analysis.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2013-01-01
description Nitrous oxide (N2O) is one of the greenhouse gases that can contribute to global warming. Spatial variability of N2O can lead to large uncertainties in prediction. However, previous studies have often ignored the spatial dependency to quantify the N2O - environmental factors relationships. Few researches have examined the impacts of various spatial correlation structures (e.g. independence, distance-based and neighbourhood based) on spatial prediction of N2O emissions. This study aimed to assess the impact of three spatial correlation structures on spatial predictions and calibrate the spatial prediction using Bayesian model averaging (BMA) based on replicated, irregular point-referenced data. The data were measured in 17 chambers randomly placed across a 271 m(2) field between October 2007 and September 2008 in the southeast of Australia. We used a Bayesian geostatistical model and a Bayesian spatial conditional autoregressive (CAR) model to investigate and accommodate spatial dependency, and to estimate the effects of environmental variables on N2O emissions across the study site. We compared these with a Bayesian regression model with independent errors. The three approaches resulted in different derived maps of spatial prediction of N2O emissions. We found that incorporating spatial dependency in the model not only substantially improved predictions of N2O emission from soil, but also better quantified uncertainties of soil parameters in the study. The hybrid model structure obtained by BMA improved the accuracy of spatial prediction of N2O emissions across this study region.
url https://www.ncbi.nlm.nih.gov/pmc/articles/pmid/23750227/pdf/?tool=EBI
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