Vegetation productivity summarized by the Dynamic Habitat Indices explains broad-scale patterns of moose abundance across Russia

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作者
Elena Razenkova
Volker C. Radeloff
Maxim Dubinin
Eugenia V. Bragina
Andrew M. Allen
Murray K. Clayton
Anna M. Pidgeon
Leonid M. Baskin
Nicholas C. Coops
Martina L. Hobi
机构
[1] University of Wisconsin-Madison,SILVIS Lab, Department of Forest and Wildlife Ecology
[2] NextGIS,Department of Forestry and Environmental Resources
[3] North Carolina State University,Department of Wildlife, Fish and Environmental Studies
[4] Swedish University of Agricultural Sciences,Department of Animal Ecology and Physiology, Institute for Water and Wetland Research
[5] Radboud University Nijmegen,Department of Statistics
[6] University of Wisconsin-Madison,Integrated Remote Sensing Studio, Department of Forest Resources Management
[7] Severtsov Institute of Ecology and Evolution,undefined
[8] University of British Columbia,undefined
[9] Swiss Federal Institute for Forest,undefined
[10] Snow and Landscape Research WSL,undefined
[11] Stand Dynamics and Silviculture Group,undefined
来源
Scientific Reports | / 10卷
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摘要
Identifying the factors that determine habitat suitability and hence patterns of wildlife abundances over broad spatial scales is important for conservation. Ecosystem productivity is a key aspect of habitat suitability, especially for large mammals. Our goals were to a) explain patterns of moose (Alces alces) abundance across Russia based on remotely sensed measures of vegetation productivity using Dynamic Habitat Indices (DHIs), and b) examine if patterns of moose abundance and productivity differed before and after the collapse of the Soviet Union. We evaluated the utility of the DHIs using multiple regression models predicting moose abundance by administrative regions. Univariate models of the individual DHIs had lower predictive power than all three combined. The three DHIs together with environmental variables, explained 79% of variation in moose abundance. Interestingly, the predictive power of the models was highest for the 1980s, and decreased for the two subsequent decades. We speculate that the lower predictive power of our environmental variables in the later decades may be due to increasing human influence on moose densities. Overall, we were able to explain patterns in moose abundance in Russia well, which can inform wildlife managers on the long-term patterns of habitat use of the species.
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