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Simulations of spatial patterns and species distributions in sandy land using unmanned aerial vehicle images

机译:使用无人空中车辆图像模拟砂土中的空间模式和种类分布

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摘要

The spatial distribution of vegetation in sandy lands is closely related to micro-topography. Point pattern analysis of vegetation distribution from ground surveys and satellite images is a commonly used method but does not capture the influence of spatial heterogeneity at small scales. This study examined long-term ecological observation sites of elm (Ulmus pumila) sparse forest in the Otindag Sandy Land, China. Elevation models from unmanned aerial vehicles (UAVs) and ground survey data on vegetation structure from 3768 elms were used to classify the terrain of sampled sites using a decision tree classification. It combined terrain factors, including slope, aspect, and small-scale altitude differences. Plots were divided into five topographic types: sand flat (53%), sand lowland (17%), sunny slope (13%), shady slope (10%), and sandy ridges (7%). Elm densities varied from 141.7 trees hm(-2) on shady slopes to 17.0 trees hm(-2) on sand lowland. A 2D Poisson fitting method was applied to the diameter at breast height, crown width, and other vegetation growth characteristics to simulate and verify the distribution of elms in the plots. Multivariate analysis was undertaken to confirm the effect of topographic factors on variation of tree characteristics. The integrated terrain approach could better characterize the spatial distribution of sparse forests. This research demonstrated that UAVs were a useful tool to measure spatial heterogeneity of sand micro-topography. Simulations of the distribution of plant characteristics indicated that the terrain classification matched the spatial pattern analysis of elms in semi-arid regions. Simulation of vegetation distribution is a useful technique for analyzing arid regions. This study will assist with further research on ecological restoration and vegetation protection in semi-arid areas.
机译:砂土植被的空间分布与微观形貌密切相关。从地面调查和卫星图像点分析植被分布的分析是一种常用的方法,但不捕获小尺度的空间异质性的影响。本研究审查了中国奥特林格桑迪土地的榆树(Ulmus Pumila)稀疏森林的长期生态观察网站。来自无人驾驶飞行器(无人机)和地面调查数据的高程模型,3768伊尔姆斯的植被结构的数据用于使用决策树分类来分类采样网站的地形。它结合了地形因素,包括坡度,方面和小规模的高度差异。地块分为五种地形类型:沙子平(53%),沙低地(17%),阳光斜坡(13%),阴凉斜坡(10%)和沙质脊(7%)。榆树密度从阴暗斜坡上的141.7棵树(-2)米(-2)变化为17.0棵树HM(-2)在沙子低地上。将2D泊松配合方法应用于乳房高度,表冠宽度和其他植被生长特性的直径,以模拟和验证榆树中榆树的分布。进行多元分析以确认地形因素对树木特征变异的影响。综合地形方法可以更好地表征稀疏森林的空间分布。这项研究表明,无人机是测量砂微型形貌的空间异质性的有用工具。植物特征分布的模拟表明,地形分类符合半干旱区榆树的空间模式分析。植被分布的仿真是一种分析干旱地区的有用技术。本研究将有助于进一步研究半干旱地区生态恢复和植被保护。

著录项

  • 来源
    《Journal of arid environments》 |2021年第3期|104410.1-104410.10|共10页
  • 作者单位

    Capital Normal Univ Beijing Key Lab Resource Environm & Geog Informat Beijing 100048 Peoples R China;

    Capital Normal Univ Beijing Key Lab Resource Environm & Geog Informat Beijing 100048 Peoples R China;

    Chinese Acad Forestry Inst Desertificat Studies Beijing 100091 Peoples R China;

    Capital Normal Univ Beijing Key Lab Resource Environm & Geog Informat Beijing 100048 Peoples R China;

    Chinese Acad Forestry Inst Desertificat Studies Beijing 100091 Peoples R China;

  • 收录信息 美国《科学引文索引》(SCI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    UAV; Vegetation pattern; Micro-topography; 2D Poisson simulation; Otindag sandy land;

    机译:UAV;植被模式;微型地形;2D Poisson模拟;Otindag砂土;

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