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首页> 外文期刊>Journal of Biogeography >Using the Mahalanobis distance statistic with unplanned presence-only survey data for biogeographical models of species distribution and abundance: a case study of badger setts
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Using the Mahalanobis distance statistic with unplanned presence-only survey data for biogeographical models of species distribution and abundance: a case study of badger setts

机译:将马氏距离统计与计划外的仅存在调查数据一起用于物种分布和丰度的生物地理模型:of种群的案例研究

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摘要

Project-specific data for biogeographical models are often logistically impractical to collect, forcing the use of existing data from a variety of sources. Use of these data is complicated when neither absence nor an estimate of the area sampled is available, as these are requirements of most analytical techniques. We demonstrate the Mahalanobis distance statistic (Dpo), which is a presence-only modelling technique and does not require information on species absence or the sampled area. We use badger (Meles meles) setts as the basis for this investigation, as their landscape associations are well understood, and survey data exist against which to compare estimates of sett distribution and abundance. England and Wales (151,403 kmpo). We used stratified random samples of sett locations, and landscape variables that are known to be important for choice of badger sett location within a geographic information system at a cell resolution of 100 x 100 m. Landscape conditions at two scales were extracted, at and around sett locations, and the Dpo was used to classify all cells in England and Wales into a sett suitability model. Comparison of this sett suitability model with known main sett densities allowed estimates of main sett density to be made across England and Wales, with associated uncertainty. The sett suitability model was shown through iterative sampling and model evaluation using independent data to be stable and accurate. Main sett density estimates were biologically plausible in comparison with previous field-derived estimates. We estimate 58,000 main setts within England and Wales, with 95% confidence intervals suggesting a value between 31,000 and 93,000. The Dpo, which could be applied to other species and locations, proved useful in our context, where absence data were not available and the sampled area could not be reliably established. We were able to predict sett suitability across a large area and at a fine resolution, and to generate plausible estimates of main sett density. The final model provides valuable information on probable badger sett distribution and abundance, and may contribute to future research on the spatial ecology of badgers in England and Wales.
机译:生物地理模型的特定于项目的数据通常在逻辑上是不切实际的,从而迫使使用来自各种来源的现有数据。当缺少或无法估计采样面积时,这些数据的使用会很复杂,因为这是大多数分析技术的要求。我们演示了马氏距离统计(Dpo),这是一种仅存在的建模技术,不需要有关物种缺失或采样区域的信息。我们使用badge(Meles meles)定居点作为本次调查的基础,因为它们的景观关联得到了很好的理解,并且存在调查数据可用来比较定居点分布和丰度的估计值。英格兰和威尔士(151,403 kmpo)。我们使用沉降位置的分层随机样本以及景观变量,这些变量对于在100 x 100 m的像元分辨率下选择地理信息系统中的r沉降位置非常重要。在沉降地点及其附近提取了两个尺度的景观条件,Dpo用于将英格兰和威尔士的所有小区分类为沉降适宜性模型。通过将该沉降适应性模型与已知的主要沉降密度进行比较,可以对英格兰和威尔士的主要沉降密度进行估算,并伴有相关的不确定性。通过迭代采样和使用独立数据进行的模型评估来显示沉降适应性模型的稳定性和准确性。与先前的田间估计相比,主要沉降密度的估计在生物学上是合理的。我们估计英格兰和威尔士境内有58,000个主要定居点,置信区间为95%,表明该值介于31,000和93,000之间。可以应用于其他物种和地点的Dpo在我们的背景下证明是有用的,因为缺少缺席数据并且无法可靠地建立采样区域。我们能够以较大的分辨率预测大范围的沉降适宜性,并得出合理的主要沉降密度估算值。最终模型提供了有关badge badge分布和数量的有价值的信息,并且可能有助于将来对英格兰和威尔士future的空间生态学进行研究。

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