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The second Southern African Bird Atlas Project: Causes and consequences of geographical sampling bias

机译:第二个南部非洲鸟类图集项目:地理抽样偏差的原因和后果

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摘要

Using the Southern African Bird Atlas Project (SABAP2) as a case study, we examine the possible determinants of spatial bias in volunteer sampling effort and how well such biased data represent environmental gradients across the area covered by the atlas. For each province in South Africa, we used generalized linear mixed models to determine the combination of variables that explain spatial variation in sampling effort (number of visits per 5′ × 5′ grid cell, or “pentad”). The explanatory variables were distance to major road and exceptional birding locations or “sampling hubs,” percentage cover of protected, urban, and cultivated area, and the climate variables mean annual precipitation, winter temperatures, and summer temperatures. Further, we used the climate variables and plant biomes to define subsets of pentads representing environmental zones across South Africa, Lesotho, and Swaziland. For each environmental zone, we quantified sampling intensity, and we assessed sampling completeness with species accumulation curves fitted to the asymptotic Lomolino model. Sampling effort was highest close to sampling hubs, major roads, urban areas, and protected areas. Cultivated area and the climate variables were less important. Further, environmental zones were not evenly represented by current data and the zones varied in the amount of sampling required representing the species that are present. SABAP2 volunteers' preferences in birding locations cause spatial bias in the dataset that should be taken into account when analyzing these data. Large parts of South Africa remain underrepresented, which may restrict the kind of ecological questions that may be addressed. However, sampling bias may be improved by directing volunteers toward undersampled regions while taking into account volunteer preferences.
机译:以南部非洲鸟类地图集项目(SABAP2)为例,我们研究了自愿性抽样工作中可能存在的空间偏差的决定因素,以及这些偏差数据如何很好地代表了地图集覆盖区域的环境梯度。对于南非的每个省,我们使用广义线性混合模型来确定变量组合,这些变量解释了采样工作量的空间变化(每5'×5'网格单元或“五单元格”的访问次数)。解释性变量包括到主要道路和特殊观鸟地点或“采样中心”的距离,保护区,城市区和耕种区的覆盖率,而气候变量表示年降水量,冬季温度和夏季温度。此外,我们使用气候变量和植物群落来定义五元组的子集,这些子集代表了南非,莱索托和斯威士兰的环境区。对于每个环境区域,我们都对采样强度进行了量化,并使用与渐近Lomolino模型拟合的物种积累曲线评估了采样完整性。采样中心,主要道路,市区和保护区附近的采样工作最高。耕地面积和气候变量不太重要。此外,当前数据并不能均匀地表示环境区,并且该区域在代表所存在物种所需的采样数量上也有所不同。 SABAP2志愿者对观鸟地点的偏爱会导致数据集中出现空间偏差,在分析这些数据时应予以考虑。南非大部分地区的代表性不足,这可能限制了可以解决的生态问题。但是,在考虑志愿者的偏爱的同时,可以通过将志愿者引导至采样不足的区域来改善采样偏差。

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