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Modelling bird species richness with neural networks for forest landscape management in NE Spain

机译:使用神经网络为西班牙东北部森林景观管理建模鸟类物种丰富度

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摘要

For preserving biodiversity of European-Mediterranean forest ecosystems in current and future scenarios of global change by means of sustainable forest management it is necessary to determine how environment and forest characteristics correlate with biodiversity. For this purpose, neural networks were used to model forest bird species richness as a function of environment and forest structure and composition at the lxl km scale in Catalonia (NE Spain). Univariate and multivariate models respectivelyallowed exploring individual variable response and obtaining a parsimonious (ecologically meaningful) and accurate neural network. Forest area (with a canopy cover above 5%), mean forest canopy cover, mean annual temperature and summer precipitation werethe best predictors of forest bird species richness. The resultant multivariate network had a good generalization capacity that failed however in the locations with highest species richness. Additionally, those forests with different degrees of canopy closure that were more mature and presented a more diverse tree species composition were also associated with higher bird species richness. This allowed us to provide management guidelines for forest planning in order to promote avian diversity in this European-Mediterranean region.
机译:为了通过可持续森林管理在全球变化的当前和未来情况下保护欧洲-地中海森林生态系统的生物多样性,有必要确定环境和森林特征如何与生物多样性相关。为此,在加泰罗尼亚(西班牙东北部),以1xl km的规模,将神经网络用于模拟森林鸟类物种丰富度随环境,森林结构和组成的变化。单变量和多变量模型分别允许探索个体变量响应并获得简约的(在生态上有意义的)准确的神经网络。森林面积(林冠覆盖率高于5%),平均林冠覆盖率,年平均温度和夏季降水是林鸟物种丰富度的最佳预测指标。所得的多元网络具有良好的泛化能力,但是在物种丰富度最高的位置失败了。另外,那些具有不同程度的树冠封闭性的森林更成熟,呈现出更多的树种组成,也与更高的鸟类物种丰富度有关。这使我们能够为森林规划提供管理指南,以促进该欧洲-地中海地区鸟类的多样性。

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