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Spatial conservation planning framework for assessing conservation opportunities in the Atlantic Forest of Brazil

机译:评估巴西大西洋森林保护机会的空间保护规划框架

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Historic rates of habitat change and growing exploitation of natural resources threaten avian biodiversity in the Brazilian Atlantic Forest, a global biodiversity hotspot. We implemented a twostage framework for conservation planning in the Atlantic Forest. First, we used ecological niche modeling to predict the distributions of 23 endemic bird species using 19 climatic metrics and 12 spectral and radar remote sensing metrics. Second, we utilized the principle of complementarity to prioritize new sites to augment the Atlantic Forest's existing reserves. The best predictors of bird distributions were precipitation metrics (the seasonality of rainfall) and radar remote sensing metrics (QSCAT). The existing protected areas do not include 10% of the habitat of each of the 23 endemic species. We propose a more economical set of protected areas by reducing the extent to which new sites duplicate the biodiversity content of existing protected areas. There is a high concordance between the proposed conservation areas that we designed using computerized algorithms and Important Bird Areas prioritized by BirdLife International. Insofar as deforestation in the Atlantic Forest is similar to land conversion in other biodiversity hotspots, our methodology is applicable to conservation efforts elsewhere in the world. (C) 2014 Elsevier Ltd. All rights reserved.
机译:栖息地变化的历史速度和对自然资源的日益利用威胁着全球生物多样性热点巴西大西洋森林的鸟类生物多样性。我们在大西洋森林保护区规划中实施了一个两阶段框架。首先,我们使用生态位模型,使用19个气候指标以及12个光谱和雷达遥感指标来预测23种特有鸟类的分布。其次,我们利用互补性原则对新站点进行优先排序,以增加大西洋森林的现有保护区。鸟类分布的最佳预测指标是降水量指标(降雨的季节性)和雷达遥感指标(QSCAT)。现有的保护区不包括23种特有物种中每一种的10%的栖息地。通过减少新站点复制现有保护区生物多样性内容的程度,我们提出了一套更经济的保护区。我们使用计算机算法设计的拟议保护区与国际鸟类保护组织优先的重要鸟类保护区之间存在高度一致性。由于大西洋森林中的森林砍伐类似于其他生物多样性热点地区的土地转化,因此我们的方法适用于世界其他地方的保护工作。 (C)2014 Elsevier Ltd.保留所有权利。

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