School of Remote Sensing and Information Engineering, Wuhan University, Wuhan 430072, China.
State Key Laboratory of Information Engineering in Surveying, Mapping & Remote Sensing, Wuhan University, Wuhan 430072, China.
Sensors (Basel). 2018 Aug 4;18(8):2558. doi: 10.3390/s18082558.
Most of the currently mature methods that are used globally for population spatialization are researched on a single level, and are dependent on the spatial relationship between population and land covers (city, road, water area, etc.), resulting in difficulties in data acquisition and an inability to identify precise features on the different levels. This paper proposes a multi-level population spatialization method on the different administrative levels with the support of China's first national geoinformation survey, and then considers several approaches to verify the results of the multi-level method. This paper aims to establish a multi-level population spatialization method that is suitable for the administrative division of districts and streets. It is assumed that the same residential house has the same population density on the district level. Based on this assumption, the least squares regression model is used to obtain the optimized prediction model and accurate population space prediction results by dynamically segmenting and aggregating house categories.In addition, it is assumed that the distribution of the population is relatively regular in communities that are spatially close to each other, and that the population densities on the street level are similar, so the average population density is assessed by optimizing the community and surrounding residential houses on the street level. Finally, the scientificalness and rationality of the proposed method is proved by spatial autocorrelation analysis, overlay analysis, cross-validation analysis and accuracy assessment methods.
目前全球应用较为成熟的人口空间化方法大多停留在单一尺度的研究上,且依赖于人口与土地覆盖(城市、道路、水域等)之间的空间关系,导致数据获取困难,无法识别不同尺度上的精确特征。本研究以全国第一次地理国情普查成果为支撑,提出了一种多尺度的行政区和街道级人口空间化方法,并进一步考虑了几种方法来验证多尺度方法的结果。本研究旨在建立一种适合区、街道行政划分的多尺度人口空间化方法。假设在区级层面上,同一居民楼具有相同的人口密度。基于此假设,采用最小二乘回归模型,通过动态分割和聚合房屋类别,获得优化的预测模型和准确的人口空间预测结果。此外,假设空间上相邻的社区人口分布较为规则,街道级的人口密度相似,因此通过优化社区和周围住宅,评估街道级的平均人口密度。最后,通过空间自相关分析、叠置分析、交叉验证分析和精度评估方法,证明了所提出方法的科学性和合理性。