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Large-scale correlates of alien plant invasion in Catalonia (NE of Spain).

机译:加泰罗尼亚(西班牙东北)的外来植物入侵的大规模关联。

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Identification of the main correlates of the invasion process is a fundamental step in alien species management at the regional scale. This paper explores the main climatic, territorial, and anthropic correlates of alien plant species richness and percentage in Catalonia (NE of Spain), by means of GIS techniques. We used floristic data collected in FLORACAT per UTM 10 km x 10 km to set up the number and the percentage of alien species. The association of these variables with climate, topography, landscape, human settlement, and geographic position was explored by means of stepwise regression models applied on the axes obtained from principal component analysis. The significance of the resulting correlates was tested using the modified t test of Dutilleul to remove the effects of spatial autocorrelation. PCA reduced the 22 variables to 12 principal components (PC) that explained 90% of the cumulative variance. Regression models were highly significant and captured a high proportion of total variance (adjusted r2=0.70 for alien species richness and r2=0.56 for alien species percentage). Both alien species richness and percentage were mainly correlated to PC summarising variables concerning climate, habitat and landscape heterogeneity, and potential anthropogenic disturbance. However, while these PC exhibited similar weights on alien species richness, species percentage was mainly determined by climate. Implications for conservation are discussed considering a future scenario of climate warming and increasing land use change in Mediterranean areas.
机译:识别入侵过程的主要相关因素是区域范围内外来物种管理的基本步骤。本文利用GIS技术探索了加泰罗尼亚(西班牙东北部)外来植物物种丰富度和百分比的主要气候,地域和人类学相关性。我们使用每UTM 10 km x 10 km在FLORACAT中收集的植物学数据来确定外来物种的数量和百分比。通过对从主成分分析获得的轴应用逐步回归模型,探索了这些变量与气候,地形,景观,人类住区和地理位置的关系。使用Dutilleul的改良t检验来消除空间自相关的影响,从而测试了所得相关性的显着性。 PCA将22个变量减少为12个主要成分(PC),它们解释了90%的累积方差。回归模型具有很高的显着性,并且在总方差中占很高的比例(针对外来物种丰富度调整后的r2 = 0.70,对于外来物种百分比调整后的r2 = 0.56)。外来物种的丰富度和百分比都主要与PC汇总变量有关,这些变量涉及有关气候,栖息地和景观异质性以及潜在的人为干扰。但是,尽管这些PC在外来物种丰富度上的权重相似,但物种百分比主要由气候决定。考虑到未来气候变暖和地中海地区土地利用变化加剧的情况,讨论了保护的意义。

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