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Predictive Modeling of Ungulate–Vehicle Collision in the Republic of Korea

Title
Predictive Modeling of Ungulate–Vehicle Collision in the Republic of Korea
Authors
Kim K.Andersen D.Jang Y.
Ewha Authors
장이권
SCOPUS Author ID
장이권scopus
Issue Date
2023
Journal Title
Biology
ISSN
2079-7737JCR Link
Citation
Biology vol. 12, no. 8
Keywords
fragmentationroadkillseasonal behaviorspatial modelingungulate–vehicle collision
Publisher
Multidisciplinary Digital Publishing Institute (MDPI)
Indexed
SCIE; SCOPUS WOS scopus
Document Type
Article
Abstract
Animal–vehicle collisions (AVC) threaten animals as well as human life and property. AVC with ungulates, called ungulate–vehicle collision (UVC), often seriously endangers human safety because of the considerable body size of ungulates. In the Republic of Korea, three ungulate species, Capreolus pygargus, Hydropotes inermis, and Sus scrofa, account for a large proportion of AVC. This study aimed to understand the characteristics of UVC by examining various parameters related to habitat, traffic, and seasonality using MaxEnt. The results showed that the peak UVC seasons coincided with the most active seasonal behaviors of the studied ungulates. For the modeling results, in C. pygargus, habitat variables are most important for models across seasons, and UVC events are most likely to occur in high mountain chains. In H. inermis, habitat and traffic variables are most important for models across seasons. Although the important habitat for the models were different across seasons for S. scrofa, the maximum speed was consistently critical for models across all seasons. Factors critical to UVC in the Republic of Korea were different for the three ungulate species and across seasons, indicating that seasonal behavior should be considered along with landscape and traffic characteristics to mitigate UVC. © 2023 by the authors.
DOI
10.3390/biology12081068
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자연과학대학 > 생명과학전공 > Journal papers
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