Abstract

Species distribution models (SDMs) can help to describe potential occurrence areas and habitat requirements of a species. These data represent key information in ecology and conservation, particularly for rare or endangered species. Presence absence (PA) and presence only (PO) records of European Turtle Doves Streptopelia turtur in Germany were used to run SDMs, whilst climate and land coverage variables provided environmental information. GLM (Generalised Linear model), GBM (Generalised Boosted model), CTA (Classification Tree analysis), SRE (Surface Range Envelope) and RF (Random Forests) algorithms were run with both datasets. Best model quality was obtained with PO in the RF algorithm (AUC 0.83). PA and PO probability maps differed substantially, but both excluded mountainous regions as potential occurrence areas. However, PO probability maps were more discriminatory and highlighted a possible distribution of Turtle Doves near Saarbrucken, west of Dusseldorf, in the Black Forest lowlands and Lusatia. Mainly, the climate variables ‘minimum temperature in January’ and ‘precipitation of the warmest quarter’ shaped these results, but variables like soil type or agricultural management strategy could improve future SDMs to specify local habitat requirements and develop habitat management strategies. Eventually, the study demonstrated the utility of PO data in SDMs, particularly for scarce species.

Highlights

  • Knowledge about species distributions and their habitat requirements is a key subject in ecology and conservation

  • There were more Turtle Dove presence points registered in the presence only (PO) dataset (1168 presence points) than in the Presence absence (PA) dataset (293 presence points)

  • Model qualities, response curves and probability maps drawn for PA and PO data were different, but results agreed regarding the importance of climatic variables Bio 6 and Bio 18

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Summary

Introduction

Knowledge about species distributions and their habitat requirements is a key subject in ecology and conservation. Others study current distributions and the characteristics of the occupied habitats[4,5,6], which provides important information for conservation management of detected key habitats[7], such as assignment of nature reserves or special protection areas to provide localities where endangered or vulnerable species might be able to persist[8]. To analyse those questions, different databases with spatial information about species distributions can be used. For PO data Ecological Niche Factor Analysis (ENFA27,28) and Maximum Entropy Method (MAXENT29) have been widely used, because these algorithms do not require absence data

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