保育速成班:大草原地区野生动物与车辆碰撞的预测与缓解

IF 1.1 4区 环境科学与生态学 Q4 ECOLOGY
Nobert Tafadzwa Mukomberanwa, Patmore Ngorima
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引用次数: 0

摘要

野生动物与车辆碰撞(WVCs)的时间模式与动物的行为和生物学相对应,主要发生在繁殖和分散季节,以及动物的日常觅食和休息活动。因此,世界各地不同的分类群体受到车辆碰撞的影响,包括爬行动物、两栖动物、哺乳动物和鸟类。生态方面,WVC导致种群数量下降,并对动物种群产生不同程度的影响。然而,监测生物多样性和审查影响其变化的因素使社会能够在保护方面做出明智的决定,并加强对人类与野生动物冲突的管理。有效的缓解技术需要了解涉及野生动物的交通伤亡的地点和时间。本研究的目的如下:(i)分析野生生物多样性的趋势,(ii)预测位于津巴布韦赞比西河谷中部的Hurungwe野生动物保护区(HSA)野生生物多样性的未来情景。该研究旨在制定适合当地情况和可行性的循证战略,以减少WVC的频率和严重程度。我们使用了津巴布韦公园和野生动物管理局(ZPWMA)在马龙戈拉野外站收集的22种不同物种的WVC数据。本研究进行趋势分析,并利用时间序列方法预测未来的WVC。我们使用K-means来确定物种数据中的聚类。时间序列预测使用自回归综合移动平均(ARIMA)进行,这是一种常用的时间序列预测统计方法。结果表明,到2030年,果子狸、水牛、鬣狗和水羚等动物物种的WVC数量将呈指数增长。模拟道路交通风险趋势对保护野生动物、加强道路安全和降低经济成本具有重要意义。它为保护工作提供信息,指导有效的管理策略,如野生动物过境,并提高公众对驾驶对生态系统影响的认识。这些数据最终促进了人类与野生动物的共存。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Crash Course in Conservation: Predicting and Mitigating Wildlife–Vehicle Collisions in a Savannah Area

Temporal patterns in wildlife–vehicle collisions (WVCs) correspond with animal behaviour and biology, predominantly occurring during breeding and dispersion seasons, as well as daily foraging and resting activities of animals. As a result, diverse taxonomic groups worldwide are affected by vehicle collisions, including reptiles, amphibians, mammals and birds. Ecologically, WVC results in population declines and can differentially affect animal populations. Yet, monitoring biodiversity and examining the factors influencing its alterations enable society to make informed decisions on conservation and enhance the management of human–wildlife conflicts. Effective mitigation techniques necessitate knowledge about the location and timing of traffic casualties involving wildlife. The objectives of this study were as follows: (i) to analyse the trends in WVC and (ii) to forecast future scenarios of WVC in the Hurungwe Safari Area (HSA), located in the Mid Zambezi Valley, Zimbabwe. The study aims to develop evidence-based strategies tailored to the local context and feasibility for reducing WVC frequency and severity. We used WVC data for 22 different species collected by the Zimbabwe Parks and Wildlife Management Authority (ZPWMA), Marongora Field Station. This study performed a trend analysis and then forecast future WVC using time series methods. We used K-means to determine clusters in the species data. Time series forecasting was performed using the Autoregressive Integrated Moving Average (ARIMA), a popular statistical method used for time series forecasting. Our results indicated an exponential growth in the number of WVC for some animal species, that is, civet, buffalo, hyena and waterbuck by the year 2030. Modelling trends in WVC is important for protecting wildlife, enhancing road safety and reducing economic costs. It informs conservation efforts, guides effective management strategies like wildlife crossings, and raises public awareness about the impact of driving on ecosystems. This data ultimately promotes coexistence between humans and wildlife.

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来源期刊
African Journal of Ecology
African Journal of Ecology 环境科学-生态学
CiteScore
2.00
自引率
10.00%
发文量
134
审稿时长
18-36 weeks
期刊介绍: African Journal of Ecology (formerly East African Wildlife Journal) publishes original scientific research into the ecology and conservation of the animals and plants of Africa. It has a wide circulation both within and outside Africa and is the foremost research journal on the ecology of the continent. In addition to original articles, the Journal publishes comprehensive reviews on topical subjects and brief communications of preliminary results.
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