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基于随机森林模型的珠江三角洲30 m格网人口空间化
引用本文:谭敏,刘凯,柳林,朱远辉,王大山.基于随机森林模型的珠江三角洲30 m格网人口空间化[J].地理科学进展,2017,36(10):1304-1312.
作者姓名:谭敏  刘凯  柳林  朱远辉  王大山
作者单位:中山大学地理科学与规划学院 广东省城市化与地理环境空间模拟重点实验室综合地理信息研究中心,广州 510275
基金项目:国家自然科学基金重点项目(41531178);广州市科技计划项目(201510010081);国家自然科学基金项目(41001291)
摘    要:人口空间化是实现人口统计数据与其他环境资源空间数据融合分析的有效途径。本文选取夜间灯光数据、道路网数据、水域分布数据、建成区数据、数字高程模型和地形坡度数据作为影响珠江三角洲人口分布的变量因子,利用随机森林模型对珠江三角洲2010年人口数据进行了30 m格网空间化,并将模拟结果与三个公开数据集作精度对比,最后基于随机森林模型的变量因子重要性分析珠江三角洲人口空间分布的影响因素。结果表明:本文模拟整体精度达到82.32%,均优于WorldPop数据集以及中国公里网格人口数据集,接近GPW数据集,而且在人口密度中等区域模拟精度最高;通过对变量因子重要性进行度量,发现夜间灯光强度是珠江三角洲人口分布的最重要指示性指标,到水域的距离、到建成区的距离和路网密度对珠江三角洲人口分布均具有重要作用。利用随机森林模型结合多源信息能够实现高空间分辨率的人口空间化,可为精细化城市管理提供重要数据源,也可为相关政策决策制定提供支持。

关 键 词:人口空间化  随机森林  人口分布  影响因素  珠江三角洲  

Spatialization of population in the Pearl River Delta in 30 m grids using random forest model
Min TAN,Kai LIU,Lin LIU,Yuanhui ZHU,Dashan WANG.Spatialization of population in the Pearl River Delta in 30 m grids using random forest model[J].Progress in Geography,2017,36(10):1304-1312.
Authors:Min TAN  Kai LIU  Lin LIU  Yuanhui ZHU  Dashan WANG
Institution:Center of Integrated Geographic Information Analysis, Guangdong Key Laboratory for Urbanization and Geo-simulation, School of Geography and Planning, Sun Yat-sen University, Guangzhou 510275, China
Abstract:Grid population data can enable integrated analysis of population statistics with other spatial data on resources and the environment. Based on a Random Forest model and using nighttime lights, road network, surface water network, built-up area, slope, and DEM as control variables, the 2010 population data of the Pearl River Delta were distributed into 30 m grids. The estimation results were compared with three other public datasets. The importance of input variables was analyzed based on the results. The result shows that the accuracy of this simulation reached 83.32%, which is better than the WorldPop and the Population Grids of China datasets, and more close to the GPW dataset. Moreover, the 30 m resolution of our result furnishes detailed information of population density of the Pearl River Delta. According to the importance of covariates from the Random Forest model, strength of nighttime lights, distance to water, distance to built-up area, and density of roads are important factors in population distribution modeling in the Pearl River Delta. With the Random Forest model and multi-source data, high resolution population spatialization can be achieved. High spatial resolution grid data can provide important data source for high precision city management and policy making.
Keywords:population spatialization  random forest  population distribution  impact factors  the Pearl River Delta  
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