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Modelling potential distribution of bramble (rubus cuneifolius) using topographic, bioclimatic and remotely sensed data in the KwaZulu-Natal Drakensberg, South Africa

机译:使用南非夸祖鲁德拉克森斯堡的地形,生物恐范和远程感测数据建模伯格(Rubus Cuneifolius)的潜在分布

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The American bramble (Rubus cuneifolius), a woody perennial invasive shrub, presents serious ecological and economic impacts, particularly in ecologically rich and protected landscapes. Since the ecological factors determining its geographic distribution are poorly understood, a comprehensive analysis and understanding of its potential distribution are essential to understand probable impacts and plan control interventions. Hence, this study sought to explore the use of Maximum Entropy (Maxent) modelling approach to determine the potential distribution of American bramble in the uKhahlamba Drakensberg Park (UDP), South Africa. Four sets of model scenarios based on topographic data, topographic and remotely sensed data, topographic and bioclimatic data and a composite of all variables were generated using 73 occurrence points. Model performance was evaluated using Area Under the Curve (AUC), True Skill Statistic (TSS) and Kappa statistic. The model built using a composite of all variables yielded the highest accuracies, AUC score (0.957), indicating the best prediction of suitable and unsuitable areas for bramble. The inclusion of remotely sensed data improved model performance with bramble reflecting highly on the red edge bands. Elevation and rainfall of driest quarter were the most important variables associated with bramble distribution. The models predicted low elevation, warm and moist eastern parts as most suitable for bramble establishment and growth. Overall, all the models matched in terms of the geographic extent predicted as probable bramble distribution. Our results demonstrate that an integration of topographic, bioclimatic and remotely sensed variables are useful in determining landscape vulnerability to bramble invasion and provide a valuable tool for planning control strategies.
机译:美国Bramble(Rubus Cuneifolius)是一种木质多年生侵入性灌木,呈现出严重的生态和经济影响,特别是在生态丰富和受保护的景观中。由于确定其地理分布的生态因素较差,因此对其潜在分布的综合分析和理解对于了解可能的影响和计划控制干预措施至关重要。因此,这项研究试图探讨使用最大熵(MaxEnt)建模方法,以确定南非UKHAHLAMBA DRAKENSBERG PARK(UDP)中的美国荆棘的潜在分布。使用73个出现点生成基于地形数据,地形和远程感测的数据,地形和远程感测数据,地形和生物化数据以及所有变量的复合的四组模型方案。使用曲线(AUC),真实技能统计(TSS)和Kappa统计的区域评估模型性能。使用所有变量的复合构建的模型产生了最高的精度,AUC分数(0.957),表示伯格的合适和不合适区域的最佳预测。将远程感测的数据改进了模型性能,用伯格反射在红色边缘频带上高度反射。最干燥季度的海拔和降雨是与Bramble分布相关的最重要的变量。该模型预测低海拔,温暖和潮湿的东部零件,最适合荆棘建立和生长。总体而言,所有模型都符合地理范围,预测为可能的荆棘分布。我们的结果表明,地形,生物融色和远程感测变量的整合可用于确定荆棘侵入的景观脆弱性,并为规划控制策略提供有价值的工具。

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