Affordable Wildlife Monitoring. A New Approach to Line Transects Sampling From Vehicles

IF 1.1 4区 环境科学与生态学 Q4 ECOLOGY
Stefano Focardi, Valentina La Morgia, Valerio Ventriglia, Edoardo Magherini, Mario Melletti
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Abstract

Monitoring is essential for evidence-based wildlife conservation and management. Conventional distance sampling (CDS) represents a methodology of election for population assessment of large herbivores. CDS requires that (1) animals' distribution is uniform around the transects and (2) transects must be randomly distributed over the study area. Monitoring costs are usually lower by using cars moving along dirty roads, instead of walking randomly located transects, but this choice may introduce biases in the estimate, as ungulates may avoid roads, which in their turn are not randomly distributed across the landscape. To address both problems, we used bivariate distance sampling (collecting both forward and perpendicular distances) to estimate detection probability, thus correcting for road avoidance. The resulting detection function is used as input for Density Surface Models to correct for non-random line placement. We demonstrate this methodology by considering a pilot survey of impala (Aepyceros melampus) and common duiker (Sylvicapra grimmia) in the Sandwe GMA (Zambia). Potentially, this approach can mitigate biases and increase the precision of estimates. We discuss the possibility of applying the proposed methodology for routine wildlife monitoring in underfunded areas, in Africa and elsewhere. To assist practitioners, we provide an easy-to-use R script which implements statistical procedures.

Abstract Image

负担得起的野生动物监测。车辆样线采样的新方法
监测对于以证据为基础的野生动物保护和管理至关重要。传统距离抽样(CDS)是大型食草动物种群评估的一种选择方法。CDS要求:(1)动物在样带周围的分布是均匀的;(2)样带在研究区域内必须是随机分布的。通过让汽车沿着肮脏的道路行驶,而不是在随机分布的横断面上行走,监测成本通常会降低,但这种选择可能会在估计中引入偏差,因为有蹄类动物可能会避开道路,而道路又不是随机分布在整个景观中。为了解决这两个问题,我们使用二元距离采样(收集前向和垂直距离)来估计检测概率,从而纠正道路回避。得到的检测函数用作密度表面模型的输入,以校正非随机的线位置。我们通过考虑在Sandwe GMA(赞比亚)对黑斑羚(Aepyceros melampus)和普通小羚羊(Sylvicapra grimia)的试点调查来证明这种方法。潜在地,这种方法可以减轻偏差并提高估计的精度。我们讨论了在非洲和其他地方资金不足的地区应用所提出的方法进行常规野生动物监测的可能性。为了帮助从业者,我们提供了一个易于使用的R脚本来实现统计过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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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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