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Modeling the distribution of a rare Amazonian odonate in relation to future deforestation

机译:模拟与未来森林砍伐有关的亚马逊河流域稀有动物的分布

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The advance of the deforestation frontier in the Amazon forest, the largest tropical forest and one of the richest ecosystems in the world, has threatened several plant and animal species. A lack of good biogeographical information of their distributions and a shortage of basic knowledge on their ecology hinder the proper evaluation of the vulnerability of those species. We used species distribution modeling techniques to fill these gaps and to estimate the vulnerability of a forest-dwelling odonate endemic from the Amazon, Diastatops nigra. We used the MaxEnt algorithm and compared the efficiency of this method in relation to the type of environmental data set (climate-only and climate+hydrographic environmental variables). We also estimated the decrease in extension of occurrence of D. nigra in relation to a recently developed model for future deforestation also produced with the MaxEnt approach. Predicted suitable areas were isolated patches in the central Amazon and many peripheral areas. In general, those areas had stable climates with low seasonality in rainfall. The Amazon deforestation frontier is expanding mainly from the south. The core area of D. nigra distribution is in the central Amazon, so in the short-term projection, the main threat for this species was not the deforestation itself. However, deforestation may extirpate some peripheral populations of this species and increase isolation among those patches of suitable areas. We suggest the use of this model for prioritizing future odonate inventories targeting the other species of the group.
机译:亚马逊森林(世界上最大的热带森林和世界上最丰富的生态系统之一)森林砍伐前沿的发展已威胁到几种动植物物种。缺乏有关其分布的良好生物地理信息,以及缺乏有关其生态学的基础知识,妨碍了对这些物种的脆弱性的适当评估。我们使用物种分布建模技术填补了这些空白,并估计了亚马逊黑夜蛾Diastatops nigra在森林中居住的卵酸盐特有种的脆弱性。我们使用了MaxEnt算法,并将此方法的效率与环境数据集的类型(仅限气候和气候+水文环境变量)进行了比较。我们还估计了与最近开发的,用MaxEnt方法产生的未来森林砍伐模型相比,黑皮草的发生扩展范围的减少。预测的合适区域是亚马逊中部和许多外围地区的孤立地块。总体而言,这些地区气候稳定,降雨季节性较低。亚马逊砍伐森林的边界主要从南部扩展。黑腹果蝇分布的核心区域在亚马逊中部,因此在短期预测中,该物种的主要威胁不是森林砍伐本身。但是,森林砍伐可能会使该物种的一些外围种群灭绝,并增加那些适合地区的隔离度。我们建议使用此模型优先确定针对该组其他物种的未来odonate库存。

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