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Modelling the current fractional cover of an invasive alien plant and drivers of its invasion in a dryland ecosystem

机译:模拟外来入侵植物的当前部分覆盖及其在旱地生态系统中入侵的驱动因素

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摘要

The development of spatially differentiated management strategies against invasive alien plant species requires a detailed understanding of their current distribution and of the level of invasion across the invaded range. The objectives of this study were to estimate the current fractional cover gradient of invasive trees of the genus Prosopis in the Afar Region, Ethiopia, and to identify drivers of its invasion. We used seventeen explanatory variables describing Landsat 8 image reflectance, topography, climate and landscape structures to model the current cover of Prosopis across the invaded range using the random forest (RF) algorithm. Validation of the RF algorithm confirmed high model performance with an accuracy of 92% and a Kappa-coefficient of 0.8. We found that, within 35 years after its introduction, Prosopis has invaded approximately 1.17 million ha at different cover levels in the Afar Region (12.3% of the surface). Normalized difference vegetation index (NDVI) and elevation showed the highest explanatory power among the 17 variables, in terms of both the invader’s overall distribution as well as areas with high cover. Villages and linear landscape structures (rivers and roads) were found to be more important drivers of future Prosopis invasion than environmental variables, such as climate and topography, suggesting that Prosopis is likely to continue spreading and increasing in abundance in the case study area if left uncontrolled. We discuss how information on the fractional cover and the drivers of invasion can help in developing spatially-explicit management recommendations against a target invasive plant species.
机译:制定针对外来入侵植物物种的空间差异管理策略的方法,需要详细了解其当前分布以及整个入侵范围内的入侵水平。这项研究的目的是估计埃塞俄比亚阿法尔地区Prosopis属入侵树的当前覆盖率梯度,并确定其入侵的动因。我们使用17个解释性变量来描述Landsat 8的图像反射率,地形,气候和景观结构,从而使用随机森林(RF)算法对入侵范围内的Prosopis的当前覆盖率进行建模。 RF算法的验证确认了较高的模型性能,其准确度为92%,卡伯系数为0.8。我们发现,在引进后的35年内,Prosopis在阿法尔地区(占地表的12.3%)的不同覆盖水平下入侵了约117万公顷。就入侵者的总体分布以及高遮盖面积而言,归一化植被指数(NDVI)和海拔高度显示了17个变量中最高的解释力。发现村庄和线性景观结构(河流和道路)比环境变量(如气候和地形)更是未来Prosopis入侵的重要驱动因素,这表明Prosopis如果继续留在案例研究区域,可能会继续扩散并大量增加不受控制。我们讨论了关于分数覆盖率和入侵驱动因素的信息如何帮助制定针对目标入侵植物物种的空间明确管理建议。

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