Reducing uncertainty in ecosystem service modelling through weighted ensembles

Hooftman, D. A. P., Bullock, J. M., Jones, L., Eigenbrod, F., Barredo, J. I., Forrest, M., Kindermann, G., Thomas, Amy and Willcock, SimonORCID logo (2021) Reducing uncertainty in ecosystem service modelling through weighted ensembles. Ecosystem Services, 53 (Februa). p. 101398. 10.1016/j.ecoser.2021.101398
Copy

Over the last decade many ecosystem service (ES) models have been developed to inform sustainable land and water use planning. However, uncertainty in the predictions of any single model in any specific situation can undermine their utility for decision-making. One solution is creating ensemble predictions, which potentially increase accuracy, but how best to create ES ensembles to reduce uncertainty is unknown and untested. Using ten models for carbon storage and nine for water supply, we tested a series of ensemble approaches against measured validation data in the UK. Ensembles had at minimum a 5–17% higher accuracy than a randomly selected individual model and, in general, ensembles weighted for among model consensus provided better predictions than unweighted ensembles. To support robust decision-making for sustainable development and reducing uncertainty around these decisions, our analysis suggests various ensemble methods should be applied depending on data quality, for example if validation data are available.

visibility_off picture_as_pdf

picture_as_pdf
WeightedEnsembles_Rev_v4_CLEAN_named.pdf
subject
Accepted Version
lock
Restricted to Repository staff only
Available under Creative Commons: Attribution 4.0

visibility_off picture_as_pdf

Published Version
lock
visibility_off picture_as_pdf

Supplemental Material
lock

Atom BibTeX OpenURL ContextObject in Span OpenURL ContextObject Dublin Core MPEG-21 DIDL Data Cite XML EndNote HTML Citation METS MODS RIOXX2 XML Reference Manager Refer ASCII Citation
Export

Downloads