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<CreaDate>20240124</CreaDate>
<CreaTime>21220300</CreaTime>
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<idAbs>We calculated the habitat suitability raster map for territorial males (spatial resolution 100  100 m) using the model-building tool in ArcMap (ver. 9.2). Before the calculation we developed a land filter (total 8148 km2), based on Pedersen et al. (2007), consisting of land areas below 600 m (anticipated to be potential ptarmigan habitat) without glaciers and moraines (a buffer of 1 km was set around moraine areas). The map describes habitat suitability on a scale from 0 (not suitable) to 1 (highly suitable) and for visualization we categorized habitat suitability into four classes (marginal 0–0.099, low 0.10–0.399, medium 0.40–0.699, high 0.70–1.00). The flat valley bottoms and mountain plateaus ( 600 m) were natural borders between the lowest habitat suitability classes (classes marginal and low), and the remaining values from 0.1–1.0 were divided into three habitat suitability classes.</idAbs>
<searchKeys>
<keyword>Ptarmigan</keyword>
<keyword>Habitat</keyword>
<keyword>Svalbard</keyword>
</searchKeys>
<idPurp>Ptarmigan habitat modeling suitability Svalbard 2017</idPurp>
<idCredit>Åshild Ø. Pedersen, Eva Fuglei, Maria Hörnell-Willebrand, Martin Biuw, Jane U. Jepsen</idCredit>
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<idCitation>
<resTitle>F_Rypehabitat</resTitle>
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