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Using Niche-Based Models to Improve the Sampling of Rare Species
Authors:ANTOINE GUISAN††  OLIVIER BROENNIMANN  ROBIN ENGLER  MATHIAS VUST  NIGEL G YOCCOZ†  ANTHONY LEHMANN§  NIKLAUS E ZIMMERMANN‡
Institution:University of Lausanne, Department of Ecology and Evolution (DEE), Laboratory for Conservation Biology (LBC), Biology Building, CH-1015 Lausanne, Switzerland;Institute of Biology, University of Tromsø, 9037 Tromsø, Norway;Swiss Federal Research Institute WSL, Zürcherstrasse 111, CH-8903 Birmensdorf, Switzerland;Swiss Center for Faunal Cartography, Terreaux 14, CH-2000 Neuchâtel, Switzerland
Abstract:Abstract:  Because data on rare species usually are sparse, it is important to have efficient ways to sample additional data. Traditional sampling approaches are of limited value for rare species because a very large proportion of randomly chosen sampling sites are unlikely to shelter the species. For these species, spatial predictions from niche-based distribution models can be used to stratify the sampling and increase sampling efficiency. New data sampled are then used to improve the initial model. Applying this approach repeatedly is an adaptive process that may allow increasing the number of new occurrences found. We illustrate the approach with a case study of a rare and endangered plant species in Switzerland and a simulation experiment. Our field survey confirmed that the method helps in the discovery of new populations of the target species in remote areas where the predicted habitat suitability is high. In our simulations the model-based approach provided a significant improvement (by a factor of 1.8 to 4 times, depending on the measure) over simple random sampling. In terms of cost this approach may save up to 70% of the time spent in the field.
Keywords:efficiency  endangered species              Eryngium alpinum            habitat suitability maps  population discovery  predicted species distribution  prospective sampling
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