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首页> 外文期刊>Zoologischer Anzeiger >Maximum entropy modeling of geographic distributions of the flea beetle species endemic in Italy (Coleoptera: Chrysomelidae: Galerucinae: Alticini)
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Maximum entropy modeling of geographic distributions of the flea beetle species endemic in Italy (Coleoptera: Chrysomelidae: Galerucinae: Alticini)

机译:意大利特有的跳蚤甲虫物种的地理分布的最大熵模型(鞘翅目:金眼科:Galerucinae:Alticini)

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Maximum entropy modeling for predicting the potential suitability distribution of species using presence-only occurrence records and associated environmental factors is one of the most widely used tools in ecology and biogeography. The aim of this study is to identify the potential suitable habitat for 17 Italian endemic species of flea beetles (Coleoptera, Chrysomelidae) by assessing which environmental factors are mostly responsible for current distributions. Potential species distributions were reconstructed by using Maxent application with nineteen bioclimatic variables and three topographic factors. We evaluated the model accuracy by AUC values based on test data, training data and total records, highlighting the high power of Maxent to create potential habitat distribution. Presence records were used to build the final habitat map to obtain the best estimate of the species distribution. To distinguish unsuitable from suitable areas, a reclassification of the probability maps was performed using a 10th percentile training presence logistic threshold. The results of our analysis indicate that species occurrences are significantly associated with bioclimatic factors mainly characterized by annual trend, such as "temperature seasonality" (BIO4) and "precipitation seasonality" (BIO15), and to a lesser extent by variables with quarterly intervals, such as the "mean temperature of driest quarter" (BIO9). Furthermore we performed a cluster analysis finding significant correlation between the distribution of the species considered in the Maxent models and the bioclimatic and topographic variables used for the predictions. Potential suitability distribution modeling of endemic flea beetle species is an appropriate method to identify particular environmental situations that require maximum attention both for the conservation of particular species and the protection of their habitat. (C) 2015 Elsevier GmbH. All rights reserved.
机译:利用仅存在事件记录和相关的环境因素来预测物种的潜在适宜性分布的最大熵模型是生态学和生物地理学中使用最广泛的工具之一。这项研究的目的是通过评估哪些环境因素是造成当前分布最主要的原因,从而为意大利的17种地方性跳蚤甲虫(鞘翅目,葫芦科)确定潜在的合适栖息地。利用Maxent应用程序,利用19种生物气候变量和3种地形因子,重建了潜在的物种分布。我们根据测试数据,训练数据和总记录通过AUC值评估了模型的准确性,突出了Maxent创建潜在栖息地分布的强大能力。存在记录用于构建最终栖息地图,以获得物种分布的最佳估计。为了区分不合适的区域和合适的区域,使用第10个百分位数的训练在场逻辑阈值对概率图进行了重新分类。我们的分析结果表明,物种的出现与主要以年度趋势为特征的生物气候因素显着相关,例如“温度季节性”(BIO4)和“降水季节性”(BIO15),而在较小程度上则是按季度间隔的变量,例如“最干燥季度的平均温度”(BIO9)。此外,我们进行了聚类分析,发现在Maxent模型中考虑的物种分布与用于预测的生物气候和地形变量之间存在显着相关性。地方性跳蚤甲虫物种的潜在适宜性分布建模是一种识别特定环境状况的适当方法,这种环境状况对于保护特定物种及其栖息地都需要给予最大的关注。 (C)2015 Elsevier GmbH。版权所有。

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