Ab'/> Assessing spatial distribution of <ce:italic>Coffea arabica</ce:italic> L. in Ethiopia's highlands using species distribution models and geospatial analysis methods
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Assessing spatial distribution of Coffea arabica L. in Ethiopia's highlands using species distribution models and geospatial analysis methods

机译:评估咖啡阿拉伯的空间分布 l。使用物种分布模型和地理空间分析方法在埃塞俄比亚的高地在埃塞俄比亚的高地

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AbstractThough there is an increase in popularity of predictive modelling for assessing the geographical distribution of species, there is still a clear gap on explaining geospatial methods to derive the presence/absence of species in terms of geospatial extent besides the ambiguity of robust models. In this paper, we evaluate four major species distribution modelling methods: Artificial Neural Network (ANN), Support Vector Machines (SVM), Maximum Entropy (MaxEnt) and Generalized Linear Model (GLM) with pseudo absence and background absence data. To investigate the efficacy of these models, we present a case study usingCoffea arabicaL. species in Ethiopia as there was no species distribution modelling that has been done at a local scale especially in the coffee growing areas. We made predictions on 75% subsets and validation on 25% of the 112 presence of the species records that were collected from field observation and 0.5m spatial resolution of true colour aerial photographs. Twelve biophysical explanatory variables; climatic, remote sensing based and landscape variables were employed in modelling. The results show that MaxEnt with pseudo absence data and SVM with background absence have highest area of understory coffee presence prediction with 12.2% and 23.1% area coverage of indigenous forest, respectively. The result from the model performance test using True Positive Rate (TPR) shows that GLM and SVM with pseudo absence data performed highest (TPR=0.821). MaxEnt and SVM were the robust modelling methods (TPR=0.964) using background absence data.展开▼
机译:<![cdata [ 抽象 虽然预测模型的普及普及用于评估物种的地理分布,但仍然是一个明确的除了鲁棒模型的模糊之外,在地理空间范围内解释地理空间方法的差距。在本文中,我们评估了四种主要物种分布建模方法:人工神经网络(ANN),支持向量机(SVM),最大熵(MAXENT)和具有伪缺失和背景缺席数据的广义线性模型(GLM)。为了调查这些模型的功效,我们使用咖啡阿拉伯语 l。埃塞俄比亚的物种由于没有物种分布建模,这些模拟已经以当地规模进行,特别是在咖啡种植区域。我们对75%的子集和验证的预测结果是从现场观察和0.5米的真实彩色空中照片中收集的物种记录中的25%的25%的验证。十二个生物物理解释性变量;在建模中采用气候,遥感基于和横向变量。结果表明,具有伪缺席数据和具有背景缺失的SVM的最大值,分别具有最高的培制咖啡存在预测的区域,分别具有12.2%和23.1%的土着森林面积覆盖率。使用真正的阳性率(TPR)的模型性能测试结果显示了具有最高(TPR = 0.821)的伪缺席数据的GLM和SVM。 MaxEnt和SVM是使用背景缺席数据的鲁棒建模方法(TPR = 0.964)。

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