Estimation of gross land-use change and its uncertainty using a Bayesian data assimilation approach

We present a method for estimating land-use change using a Bayesian data assimilation approach. The approach provides a general framework for combining multiple disparate data sources with a simple model. This allows us to constrain estimates of gross land-use change with reliable national-scale...

Full description

Bibliographic Details
Main Authors: P. Levy, M. van Oijen, G. Buys, S. Tomlinson
Format: Article
Language:English
Published: Copernicus Publications 2018-03-01
Series:Biogeosciences
Online Access:https://www.biogeosciences.net/15/1497/2018/bg-15-1497-2018.pdf
id doaj-a65ac8e895744ab4a003fc2194e5de48
record_format Article
spelling doaj-a65ac8e895744ab4a003fc2194e5de482020-11-24T22:25:17ZengCopernicus PublicationsBiogeosciences1726-41701726-41892018-03-01151497151310.5194/bg-15-1497-2018Estimation of gross land-use change and its uncertainty using a Bayesian data assimilation approachP. Levy0M. van Oijen1G. Buys2S. Tomlinson3Centre for Ecology & Hydrology, Edinburgh, UKCentre for Ecology & Hydrology, Edinburgh, UKCentre for Ecology & Hydrology, Edinburgh, UKCentre for Ecology & Hydrology, Edinburgh, UKWe present a method for estimating land-use change using a Bayesian data assimilation approach. The approach provides a general framework for combining multiple disparate data sources with a simple model. This allows us to constrain estimates of gross land-use change with reliable national-scale census data, whilst retaining the detailed information available from several other sources. Eight different data sources, with three different data structures, were combined in our posterior estimate of land use and land-use change, and other data sources could easily be added in future. The tendency for observations to underestimate gross land-use change is accounted for by allowing for a skewed distribution in the likelihood function. The data structure produced has high temporal and spatial resolution, and is appropriate for dynamic process-based modelling. Uncertainty is propagated appropriately into the output, so we have a full posterior distribution of output and parameters. The data are available in the widely used netCDF file format from <a href="http://eidc.ceh.ac.uk/" target="_blank">http://eidc.ceh.ac.uk/</a>.https://www.biogeosciences.net/15/1497/2018/bg-15-1497-2018.pdf
collection DOAJ
language English
format Article
sources DOAJ
author P. Levy
M. van Oijen
G. Buys
S. Tomlinson
spellingShingle P. Levy
M. van Oijen
G. Buys
S. Tomlinson
Estimation of gross land-use change and its uncertainty using a Bayesian data assimilation approach
Biogeosciences
author_facet P. Levy
M. van Oijen
G. Buys
S. Tomlinson
author_sort P. Levy
title Estimation of gross land-use change and its uncertainty using a Bayesian data assimilation approach
title_short Estimation of gross land-use change and its uncertainty using a Bayesian data assimilation approach
title_full Estimation of gross land-use change and its uncertainty using a Bayesian data assimilation approach
title_fullStr Estimation of gross land-use change and its uncertainty using a Bayesian data assimilation approach
title_full_unstemmed Estimation of gross land-use change and its uncertainty using a Bayesian data assimilation approach
title_sort estimation of gross land-use change and its uncertainty using a bayesian data assimilation approach
publisher Copernicus Publications
series Biogeosciences
issn 1726-4170
1726-4189
publishDate 2018-03-01
description We present a method for estimating land-use change using a Bayesian data assimilation approach. The approach provides a general framework for combining multiple disparate data sources with a simple model. This allows us to constrain estimates of gross land-use change with reliable national-scale census data, whilst retaining the detailed information available from several other sources. Eight different data sources, with three different data structures, were combined in our posterior estimate of land use and land-use change, and other data sources could easily be added in future. The tendency for observations to underestimate gross land-use change is accounted for by allowing for a skewed distribution in the likelihood function. The data structure produced has high temporal and spatial resolution, and is appropriate for dynamic process-based modelling. Uncertainty is propagated appropriately into the output, so we have a full posterior distribution of output and parameters. The data are available in the widely used netCDF file format from <a href="http://eidc.ceh.ac.uk/" target="_blank">http://eidc.ceh.ac.uk/</a>.
url https://www.biogeosciences.net/15/1497/2018/bg-15-1497-2018.pdf
work_keys_str_mv AT plevy estimationofgrosslandusechangeanditsuncertaintyusingabayesiandataassimilationapproach
AT mvanoijen estimationofgrosslandusechangeanditsuncertaintyusingabayesiandataassimilationapproach
AT gbuys estimationofgrosslandusechangeanditsuncertaintyusingabayesiandataassimilationapproach
AT stomlinson estimationofgrosslandusechangeanditsuncertaintyusingabayesiandataassimilationapproach
_version_ 1725758405161779200