Assessing uncertainties in global cropland futures using a conditional probabilistic modelling framework

We present a modelling framework to simulate probabilistic futures of global cropland areas that are conditional on the SSP (shared socio-economic pathway) scenarios. Simulations are based on the Parsimonious Land Use Model (PLUM) linked with the global dynamic vegetation model LPJ-GUESS (Lund–Potsd...

Full description

Bibliographic Details
Main Authors: K. Engström, S. Olin, M. D. A. Rounsevell, S. Brogaard, D. P. van Vuuren, P. Alexander, D. Murray-Rust, A. Arneth
Format: Article
Language:English
Published: Copernicus Publications 2016-11-01
Series:Earth System Dynamics
Online Access:http://www.earth-syst-dynam.net/7/893/2016/esd-7-893-2016.pdf
id doaj-3c8ef7b4b7ce4949a5d9a4c2c1240883
record_format Article
spelling doaj-3c8ef7b4b7ce4949a5d9a4c2c12408832020-11-24T21:42:54ZengCopernicus PublicationsEarth System Dynamics2190-49792190-49872016-11-017489391510.5194/esd-7-893-2016Assessing uncertainties in global cropland futures using a conditional probabilistic modelling frameworkK. Engström0S. Olin1M. D. A. Rounsevell2S. Brogaard3D. P. van Vuuren4P. Alexander5D. Murray-Rust6A. Arneth7Department of Physical Geography and Ecosystem Science, Lund University, Sölvegatan 12, 22362 Lund, SwedenDepartment of Physical Geography and Ecosystem Science, Lund University, Sölvegatan 12, 22362 Lund, SwedenSchool of GeoSciences, University of Edinburgh, Geography Building, Drummond Street, Edinburgh, EH89XP, UKCentre for Sustainability Studies, Lund University (LUCSUS), Biskopsgatan 5, 22362 Lund, SwedenPBL Netherlands Environmental Assessment Agency, Postbus 303, 3720 AH Bilthoven, the NetherlandsSchool of GeoSciences, University of Edinburgh, Geography Building, Drummond Street, Edinburgh, EH89XP, UKSchool of Informatics, University of Edinburgh Appleton Tower, 11 Crichton Street, Edinburgh, EH8 9LE, UKKarlsruhe Institute of Technology, Institute of Meteorology and Climate Research, Atmospheric Environmental Research (IMK-IFU), Kreuzeckbahnstr. 19, 82467 Garmisch-Partenkirchen, GermanyWe present a modelling framework to simulate probabilistic futures of global cropland areas that are conditional on the SSP (shared socio-economic pathway) scenarios. Simulations are based on the Parsimonious Land Use Model (PLUM) linked with the global dynamic vegetation model LPJ-GUESS (Lund–Potsdam–Jena General Ecosystem Simulator) using socio-economic data from the SSPs and climate data from the RCPs (representative concentration pathways). The simulated range of global cropland is 893–2380 Mha in 2100 (± 1 standard deviation), with the main uncertainties arising from differences in the socio-economic conditions prescribed by the SSP scenarios and the assumptions that underpin the translation of qualitative SSP storylines into quantitative model input parameters. Uncertainties in the assumptions for population growth, technological change and cropland degradation were found to be the most important for global cropland, while uncertainty in food consumption had less influence on the results. The uncertainties arising from climate variability and the differences between climate change scenarios do not strongly affect the range of global cropland futures. Some overlap occurred across all of the conditional probabilistic futures, except for those based on SSP3. We conclude that completely different socio-economic and climate change futures, although sharing low to medium population development, can result in very similar cropland areas on the aggregated global scale.http://www.earth-syst-dynam.net/7/893/2016/esd-7-893-2016.pdf
collection DOAJ
language English
format Article
sources DOAJ
author K. Engström
S. Olin
M. D. A. Rounsevell
S. Brogaard
D. P. van Vuuren
P. Alexander
D. Murray-Rust
A. Arneth
spellingShingle K. Engström
S. Olin
M. D. A. Rounsevell
S. Brogaard
D. P. van Vuuren
P. Alexander
D. Murray-Rust
A. Arneth
Assessing uncertainties in global cropland futures using a conditional probabilistic modelling framework
Earth System Dynamics
author_facet K. Engström
S. Olin
M. D. A. Rounsevell
S. Brogaard
D. P. van Vuuren
P. Alexander
D. Murray-Rust
A. Arneth
author_sort K. Engström
title Assessing uncertainties in global cropland futures using a conditional probabilistic modelling framework
title_short Assessing uncertainties in global cropland futures using a conditional probabilistic modelling framework
title_full Assessing uncertainties in global cropland futures using a conditional probabilistic modelling framework
title_fullStr Assessing uncertainties in global cropland futures using a conditional probabilistic modelling framework
title_full_unstemmed Assessing uncertainties in global cropland futures using a conditional probabilistic modelling framework
title_sort assessing uncertainties in global cropland futures using a conditional probabilistic modelling framework
publisher Copernicus Publications
series Earth System Dynamics
issn 2190-4979
2190-4987
publishDate 2016-11-01
description We present a modelling framework to simulate probabilistic futures of global cropland areas that are conditional on the SSP (shared socio-economic pathway) scenarios. Simulations are based on the Parsimonious Land Use Model (PLUM) linked with the global dynamic vegetation model LPJ-GUESS (Lund–Potsdam–Jena General Ecosystem Simulator) using socio-economic data from the SSPs and climate data from the RCPs (representative concentration pathways). The simulated range of global cropland is 893–2380 Mha in 2100 (± 1 standard deviation), with the main uncertainties arising from differences in the socio-economic conditions prescribed by the SSP scenarios and the assumptions that underpin the translation of qualitative SSP storylines into quantitative model input parameters. Uncertainties in the assumptions for population growth, technological change and cropland degradation were found to be the most important for global cropland, while uncertainty in food consumption had less influence on the results. The uncertainties arising from climate variability and the differences between climate change scenarios do not strongly affect the range of global cropland futures. Some overlap occurred across all of the conditional probabilistic futures, except for those based on SSP3. We conclude that completely different socio-economic and climate change futures, although sharing low to medium population development, can result in very similar cropland areas on the aggregated global scale.
url http://www.earth-syst-dynam.net/7/893/2016/esd-7-893-2016.pdf
work_keys_str_mv AT kengstrom assessinguncertaintiesinglobalcroplandfuturesusingaconditionalprobabilisticmodellingframework
AT solin assessinguncertaintiesinglobalcroplandfuturesusingaconditionalprobabilisticmodellingframework
AT mdarounsevell assessinguncertaintiesinglobalcroplandfuturesusingaconditionalprobabilisticmodellingframework
AT sbrogaard assessinguncertaintiesinglobalcroplandfuturesusingaconditionalprobabilisticmodellingframework
AT dpvanvuuren assessinguncertaintiesinglobalcroplandfuturesusingaconditionalprobabilisticmodellingframework
AT palexander assessinguncertaintiesinglobalcroplandfuturesusingaconditionalprobabilisticmodellingframework
AT dmurrayrust assessinguncertaintiesinglobalcroplandfuturesusingaconditionalprobabilisticmodellingframework
AT aarneth assessinguncertaintiesinglobalcroplandfuturesusingaconditionalprobabilisticmodellingframework
_version_ 1725916513966227456