Zheng Boming, Lin Xijie, Qi Xinhua
Institute of Geography, Fujian Normal University, Fuzhou 350007, China.
School of Geographical Sciences, Fujian Normal University, Fuzhou 350007, China.
Animals (Basel). 2023 Oct 12;13(20):3186. doi: 10.3390/ani13203186.
The objectives of this study were to identify the risk regions of wild boar incidents in China and to draw a risk map. Risk maps can be used to plan the prioritization of preventive measures, increasing management effectiveness from both a short- and a long-term perspective. We used a web crawler (web information access technology) to obtain reports of wild boar incidents from China's largest search engine (Baidu) and obtained 196 valid geographic locations of wild boar incidents from the reports. Subsequently, a system of environmental variables-with climate, topography, landscape, and human disturbance as the main variable types-was constructed, based on human-land-system thinking. Finally, the Maxent model was applied to predict the risk space of wild boar incidents in China by integrating the geographic location information for wild boar incidents with the environmental variables. We observed that the types of environmental variables that contributed to wild boar incidents were in the descending order of climate (40.5%) > human disturbance (25.2%) > landscape (24.4%) > topography (9.8%). Among the 14 environmental variables, annual precipitation, the GDP index, and the mean annual temperature were the main environmental variables. The distance from woodland, distance from cultivated land, and elevation were the secondary environmental variables. The response curves of the environmental variables demonstrated that the highest probability of wild boar incidents occurred when the annual average temperature was 16 °C, the annual precipitation was 800 mm, and the altitudes were 150 m and 1800 m. The probability of wild boar incidents decreased with an increase in the distance from cultivated and forested land, and increased sharply and then levelled off with an increase in the GDP index. Approximately 12.18% of China was identified as being at a high risk of wild boar incidents, mainly on the eastern side of the Huhuanyong Line.
本研究的目的是识别中国野猪肇事的风险区域并绘制风险地图。风险地图可用于规划预防措施的优先级,从短期和长期角度提高管理效率。我们使用网络爬虫(网络信息访问技术)从中国最大的搜索引擎(百度)获取野猪肇事报告,并从这些报告中获得了196个有效的野猪肇事地理位置。随后,基于人地系统思想构建了一个以气候、地形、景观和人为干扰为主要变量类型的环境变量系统。最后,通过将野猪肇事的地理位置信息与环境变量相结合,应用最大熵模型预测中国野猪肇事的风险空间。我们观察到,对野猪肇事有贡献的环境变量类型按以下顺序递减:气候(40.5%)>人为干扰(25.2%)>景观(24.4%)>地形(9.8%)。在14个环境变量中,年降水量、GDP指数和年均温度是主要环境变量。距林地距离、距耕地距离和海拔是次要环境变量。环境变量的响应曲线表明,当年均温度为16℃、年降水量为800毫米、海拔为150米和1800米时,野猪肇事的概率最高。野猪肇事的概率随着距耕地和林地距离的增加而降低,并随着GDP指数的增加而急剧上升然后趋于平稳。中国约12.18%的地区被确定为野猪肇事的高风险区域,主要位于胡焕庸线东侧。