Ensembles of ecosystem service models can improve accuracy and indicate uncertainty
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In: Science of the Total Environment, Vol. 747, 141006, 10.12.2020.
Research output: Contribution to journal › Article › peer-review
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T1 - Ensembles of ecosystem service models can improve accuracy and indicate uncertainty
AU - Willcock, Simon
AU - Hooftman, Danny
AU - Blanchard, Ryan
AU - Dawson, Terence P.
AU - Hickler, Thomas
AU - Lindeskog, Mats
AU - Martinez-Lopez, Javier
AU - Reyers, Belinda
AU - Watts, Sophie M.
AU - Eigenbrod, Felix
AU - Bullock, James
PY - 2020/12/10
Y1 - 2020/12/10
N2 - Many ecosystem services (ES) models exist to support sustainable development decisions. However, most ES studies use only a single modelling framework and, because of a lack of validation data, rarely assess model accuracy for the study area. In line with other research themes which have high model uncertainty, such as climate change, ensembles of ES models may better serve decision-makers by providing more robust and accurate estimates, as well as provide indications of uncertainty when validation data are not available. To illustrate the benefits of an ensemble approach, we highlight the variation between alternative models, demonstrating that there are large geographic regions where decisions based on individual models are not robust. We test if ensembles are more accurate by comparing the ensemble accuracy of multiple models for six ES against validation data across sub-Saharan Africa with the accuracy of individual models. We find that ensembles are better predictors of ES, being 5.0-6.1% more accurate than individual models. We also find that the uncertainty (i.e. variation among constituent models) of the model ensemble is negatively correlated with accuracy and so can be used as a proxy for accuracy when validation is not possible (e.g. in data-deficient areas or when developing scenarios). Since ensembles are more robust, accurate and convey uncertainty, we recommend that ensemble modelling should be more widely implemented within ES science to better support policy choices and implementation.
AB - Many ecosystem services (ES) models exist to support sustainable development decisions. However, most ES studies use only a single modelling framework and, because of a lack of validation data, rarely assess model accuracy for the study area. In line with other research themes which have high model uncertainty, such as climate change, ensembles of ES models may better serve decision-makers by providing more robust and accurate estimates, as well as provide indications of uncertainty when validation data are not available. To illustrate the benefits of an ensemble approach, we highlight the variation between alternative models, demonstrating that there are large geographic regions where decisions based on individual models are not robust. We test if ensembles are more accurate by comparing the ensemble accuracy of multiple models for six ES against validation data across sub-Saharan Africa with the accuracy of individual models. We find that ensembles are better predictors of ES, being 5.0-6.1% more accurate than individual models. We also find that the uncertainty (i.e. variation among constituent models) of the model ensemble is negatively correlated with accuracy and so can be used as a proxy for accuracy when validation is not possible (e.g. in data-deficient areas or when developing scenarios). Since ensembles are more robust, accurate and convey uncertainty, we recommend that ensemble modelling should be more widely implemented within ES science to better support policy choices and implementation.
KW - Africa
KW - Carbon
KW - Charcoal
KW - Firewood
KW - Grazing
KW - Model validation
KW - Natural capital
KW - Poverty alleviation
KW - Sustainable development
KW - Water
U2 - 10.1016/j.scitotenv.2020.141006
DO - 10.1016/j.scitotenv.2020.141006
M3 - Article
VL - 747
JO - Science of the Total Environment
JF - Science of the Total Environment
SN - 0048-9697
M1 - 141006
ER -