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EVALUATING THE NOVEL METHODS ON SPECIES DISTRIBUTION MODELING IN COMPLEX FOREST

机译:评估复杂林种分布建模的新方法

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The prediction of species distribution has become a focus in ecology. For predicting a result more effectively and accurately, some novel methods have been proposed recently, like support vector machine (SVM) and maximum entropy (MAXENT). However, high complexity in the forest, like that in Taiwan, will make the modeling become even harder. In this study, we aim to explore which method is more applicable to species distribution modeling in the complex forest. Castanopsis carlesii (long-leaf chinkapin, LLC), growing widely in Taiwan, was chosen as the target species because its seeds are an important food source for animals. We overlaid the tree samples on the layers of altitude, slope, aspect, terrain position, and vegetation index derived from SOPT-5 images, and developed three models, MAXENT, SVM, and decision tree (DT), to predict the potential habitat of LLCs. We evaluated these models by two sets of independent samples in different site and the effect on the complexity of forest by changing the background sample size (BSZ). In the forest with low complex (small BSZ), the accuracies of SVM (kappa = 0.87) and DT (0.86) models were slightly higher than that of MAXENT (0.84). In the more complex situation (large BSZ), MAXENT kept high kappa value (0.85), whereas SVM (0.61) and DT (0.57) models dropped significantly due to limiting the habitat close to samples. Therefore, MAXENT model was more applicable to predict species' potential habitat in the complex forest; whereas SVM and DT models would tend to underestimate the potential habitat of LLCs.
机译:物种分布的预测已经成为生态的焦点。为更有效地和准确地预测结果,一些新颖的方法近来已经提出,如支持向量机(SVM)和最大熵(MAXENT)。然而,高复杂性的森林,像在台湾,会令造型更加困难成了。在这项研究中,我们的目标是探索哪种方法更适用于复杂的森林物种分布建模。槠(长叶chinkapin,LLC),在台湾广泛增长,被选为目标物种,因为它的种子是动物的重要食物来源。我们叠加在从SOPT-5的图像导出的高度,坡度,地形的位置,和植被指数的层中的树的样品,和开发了三种模式,MAXENT,SVM,以及决策树(DT),以预测的潜在生境有限责任公司。我们在不同的站点两套独立的样品,并通过更改背景样品尺寸(BSZ)对森林的复杂效果评估这些模型。在具有低复杂(小BSZ)森林,SVM的准确度(卡帕= 0.87)和DT(0.86)模型均高于MAXENT(0.84)的略高。在更复杂的情况(大BSZ),MAXENT保持高卡伯值(0.85),而SVM(0.61)和DT(0.57)模型显著由于限制了栖息地接近样品下降。因此,MAXENT模型更适用于预测物种在复杂的森林潜在栖息地;而SVM和DT模型往往会低估有限责任公司的潜在栖息地。

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