Des données fiables sur nos éléments vitaux

La diversité biologique est l’un des éléments vitaux de notre pays. C’est pourquoi il est important d’en connaître l’état et l’évolution. De plus, en signant la Convention sur la biodiversité de l’ONU, la Suisse s’est engagée à surveiller la diversité biologique à long terme. C’est dans ce but que l’Office fédéral de l’environnement (OFEV) a mis en place le Monitoring de la biodiversité en Suisse.

Ecologically meaningful predictors are often neglected in plant distribution studies, resulting in incomplete niche quantification and low predictive power of species distribution models (SDMs). Because environmental data are rare and expensive to collect, and because their relationship with local climatic and topographic conditions are complex, mapping them over large geographic extents and at high spatial resolution remains a major challenge.

Here, we propose to derive environmental data layers by mapping ecological indicator values in space. We combined ~6 million plant occurrences with expert-based plant ecological indicator values (EIVs) of 3600 species in Switzerland. EIVs representing local soil properties (pH, moisture, moisture variability, aeration, humus and nutrients) and climatic conditions (continentality, light) were modelled at 93 m spatial resolution with the Random Forest algorithm and 16 predictors representing mesoclimate, land use, topography and geology. Models were evaluated and predictions of EIVs were compared with soil inventory data. We mapped each EIV separately and evaluated EIV importance in explaining the distribution of 500 plant species using SDMs with a set of 30 environmental predictors. Finally, we tested how they improve an ensemble of SDMs compared to a standard set of predictors for ca 60 plant species.

All EIV models showed excellent performance (|r| > 0.9) and predictions were correlated reasonably (|r| > 0.4) to soil properties measured in the field. Resulting EIV maps were among the most important predictors in SDMs. Also, in ensemble SDMs overall predictive performance increased, mainly through improved model specificity reducing species range overestimation.

Combining large citizen science databases to expert-based EIVs is a powerful and cost–effective approach for generalizing local edaphic and climatic conditions over large areas. Producing ecologically meaningful predictors is a first step for generating better predictions of species distribution which is of main importance for decision makers in conservation and environmental management projects.

Descombes, P., Walthert, L., Baltensweiler, A., Meuli, R. G., Karger, D. N., Ginzler, C., Zurell, D., & Zimmermann, N. E. (2020). Spatial modelling of ecological indicator values improves predictions of plant distributions in complex landscapes. Ecography, 43(10), 1448–1463. https://doi.org/10.1111/ecog.05117

Hotspot Numéro spécial

Couverture du numéro spécial Hotspot sur les 20 ans du Monitoring de la biodiversité en Suisse.

Le numéro spécial de Hotspot consacré aux 20 ans du MBD montre qui se cache derrière les données et met en lumière les évolutions actuelles de la biodiversité.

Publications

BASES DE DONNÉES NATIONALES

Les données du MBD avec les preuves des espèces sont transmises au centre national de données et d’information concerné et intégrées dans ses bases de données. Les données sur les plantes vasculaires sont transmises à InfoFlora, celles sur les mousses à Swissbryophytes et celles sur les papillons diurnes, les gastéropodes et les invertébrés aquatiques à info fauna.