Key Laboratory of Resource Plants, Beijing Botanical Garden, West China Subalpine Botanical Garden, Institute of Botany, Chinese Academy of Sciences, No. 20 Nanxincun, Xiangshan, Beijing, 100093, China.
University of Chinese Academy of Sciences, Beijing, 100049, China.
Environ Monit Assess. 2016 Jul;188(7):408. doi: 10.1007/s10661-016-5417-x. Epub 2016 Jun 15.
Mapping and modeling vegetation distribution are fundamental topics in vegetation ecology. With the rise of powerful new statistical techniques and GIS tools, the development of predictive vegetation distribution models has increased rapidly. However, modeling alpine vegetation with high accuracy in arid areas is still a challenge because of the complexity and heterogeneity of the environment. Here, we used a set of 70 variables from ASTER GDEM, WorldClim, and Landsat-8 OLI (land surface albedo and spectral vegetation indices) data with decision tree (DT), maximum likelihood classification (MLC), and random forest (RF) models to discriminate the eight vegetation groups and 19 vegetation formations in the upper reaches of the Heihe River Basin in the Qilian Mountains, northwest China. The combination of variables clearly discriminated vegetation groups but failed to discriminate vegetation formations. Different variable combinations performed differently in each type of model, but the most consistently important parameter in alpine vegetation modeling was elevation. The best RF model was more accurate for vegetation modeling compared with the DT and MLC models for this alpine region, with an overall accuracy of 75 % and a kappa coefficient of 0.64 verified against field point data and an overall accuracy of 65 % and a kappa of 0.52 verified against vegetation map data. The accuracy of regional vegetation modeling differed depending on the variable combinations and models, resulting in different classifications for specific vegetation groups.
制图和建模植被分布是植被生态学的基础课题。随着强大的新统计技术和 GIS 工具的兴起,预测植被分布模型的发展迅速增加。然而,由于环境的复杂性和异质性,在干旱地区精确地对高山植被进行建模仍然是一个挑战。在这里,我们使用了一组来自 ASTER GDEM、WorldClim 和 Landsat-8 OLI(地面反射率和光谱植被指数)数据的 70 个变量,结合决策树(DT)、最大似然分类(MLC)和随机森林(RF)模型,来区分祁连山脉黑河流域上游的 8 个植被群和 19 个植被类型。变量组合清楚地区分了植被群,但未能区分植被类型。不同的变量组合在每种模型中的表现不同,但在高山植被建模中,海拔是最一致的重要参数。与 DT 和 MLC 模型相比,最佳 RF 模型在该高山地区的植被建模中更准确,其对实地点数据的验证总体精度为 75%,kappa 系数为 0.64,对植被图数据的验证总体精度为 65%,kappa 系数为 0.52。区域植被建模的准确性取决于变量组合和模型,导致特定植被群的分类不同。