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首页> 外文期刊>Philosophical Transactions of the Royal Society of London, Series B. Biological Sciences >What spatial data do we need to develop global mammal conservation strategies?
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What spatial data do we need to develop global mammal conservation strategies?

机译:我们需要什么空间数据来制定全球哺乳动物保护策略?

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摘要

Spatial data on species distributions are available in two main forms, point locations and distribution maps (polygon ranges and grids). The first are often temporally and spatially biased, and too discontinuous, to be useful (untransformed) in spatial analyses. A variety of modelling approaches are used to transform point locations into maps. We discuss the attributes that point location data and distribution maps must satisfy in order to be useful in conservation planning. We recommend that before point location data are used to produce and/or evaluate distribution models, the dataset should be assessed under a set of criteria, including sample size, age of data, environmental/geographical coverage, independence, accuracy, time relevance and (often forgotten) representation of areas of permanent and natural presence of the species. Distribution maps must satisfy additional attributes if used for conservation analyses and strategies, including mi nimizingcommission and omission errors, credibility of the source/assessors and availability for public screening. We review currently available databases for mammals globally and show that they are highly variable in complying with these attributes. The heterogeneity and weakness of spatial data seriously constrain their utility to global and also sub-global scale conservation analyses.
机译:有关物种分布的空间数据有两种主要形式:点位置和分布图(多边形范围和网格)。第一个常常在时间和空间上有偏差,并且太不连续了,以至于在空间分析中没有用处(未转换)。使用多种建模方法将点位置转换为地图。我们讨论点位置数据和分布图必须满足的属性,才能在保护规划中使用。我们建议在将点位置数据用于生成和/或评估分布模型之前,应根据一组标准对数据集进行评估,包括样本量,数据年龄,环境/地理覆盖范围,独立性,准确性,时间相关性和(常被遗忘)代表物种永久和自然存在的区域。如果将分布图用于保护性分析和策略,则必须满足其他属性,包括最小化委托和遗漏错误,源/评估者的信誉以及公众审查的可用性。我们审查了全球范围内哺乳动物的当前可用数据库,并显示它们在遵守这些属性方面存在很大差异。空间数据的异质性和弱点严重地限制了其在全球和亚全球范围内的养护分析中的效用。

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