Mapping the habitat for the moose population in Northeast China by combining remote sensing products and random forests

Many wildlife species face the risks of habitat loss, habitat fragmentation or local extinction in response to climate change and anthropogenic disturbance. Moose (Alces alces) in Northeast China is on the southernmost edge of the geographical range of Eurasian moose, the distribution of this popula...

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Bibliographic Details
Published in:Global Ecology and Conservation
Main Authors: Xiaoliang Zhi, Hairong Du, Minghai Zhang, Zexu Long, Linqiang Zhong, Xue Sun
Format: Article in Journal/Newspaper
Language:English
Published: Elsevier 2022
Subjects:
Online Access:https://doi.org/10.1016/j.gecco.2022.e02347
https://doaj.org/article/bb4e7fa44c51407b857e45acf8deff08
Description
Summary:Many wildlife species face the risks of habitat loss, habitat fragmentation or local extinction in response to climate change and anthropogenic disturbance. Moose (Alces alces) in Northeast China is on the southernmost edge of the geographical range of Eurasian moose, the distribution of this population is retreating, and population number has been declining for the last several decades. However, little is known about its habitat suitability over a large spatial scale, which hinders further effective conservation of the moose in China. It is critical to explore the moose-habitat relationships and habitat suitability to understand moose habitat requirements, potential land use impacts, and effective management. In this paper, we combined remote sensing-derived predictors and machine learning methods (down-sampling random forests) to explore the moose-habitat associations and map moose habitat suitability. Results showed that our model performed well to excellently in terms of three evaluation metrics (AUCROC, AUCPR, CBI), which indicates the advantages of the combination of remote sensing and machine learning methods in predicting moose habitat. We identified the main factors driving moose distribution in Northeast China are the human footprint index, the mean monthly maximum temperature of the late spring, the percentage of coniferous forest, the minimum dynamic habitat index, the minimum temperature of the coldest month, and the distance from town. Moose responds to these variables nonlinearly. Generally, variables related to human disturbance and heat stress are the main drivers of moose occurrence and are negatively associated with moose occurrence probability. High suitability areas are mainly distributed in eastern and northern Greater Khingan Mountains. Highly suitable habitat covers only a small proportion of the study area. We identified 67,400 km2 of suitable habitat covering 13.6% of the study area. Our study can provide critical information for decision-makers when designing conservation and ...