Model Ensembles of Ecosystem Services Fill Global Certainty and Capacity Gaps
Sustaining ecosystem services (ES) critical to human wellbeing is hindered by many practitioners lacking access to ES models (‘the capacity gap’) or knowledge of the accuracy of available models (‘the certainty gap’), especially in the world’s poorer regions. We developed ensembles of multiple models at an unprecedented global scale for five ES of high policy relevance. Ensembles were 2-14% more accurate than individual models. Ensemble accuracy was not correlated with proxies for research capacity – indicating accuracy is distributed equitably across the globe and that countries less able to research ES suffer no accuracy penalty. By making these ES ensembles and associated accuracy estimates freely available, we provide globally consistent ES information that can support policy and decision making in regions with low data availability or low capacity for implementing complex ES models. Thus, we hope to reduce the capacity and certainty gaps impeding local to global-scale movement towards ES sustainability.
| Item Type | Article |
|---|---|
| Open Access | Gold |
| Additional information | This work took place under the following UKRI grants: NE/W005050/1, NE/T00391X/1, ES/R009279/1, ES/T007877/1, ES/V004077/1, ES/R006865/1, as well as UKCEH project 08695 and NSF GRFP Grant number DGE-2139899. J |
| Keywords | Accuracy, Ensemble, Implementation gap, Modelling, Nature’s contributions to people, Uncertainty |
| Project | AgZero+ |
| Date Deposited | 05 Dec 2025 10:35 |
| Last Modified | 19 Dec 2025 14:56 |
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- 10.1126/sciadv.adf5492 (DOI)


