McKee Jacob J, Rose Amy N, Bright Edward A, Huynh Timmy, Bhaduri Budhendra L
Geographic Information Science and Technology Group, Computational Sciences and Engineering Division, Oak Ridge National Laboratory, Oak Ridge, TN 37831
Geographic Information Science and Technology Group, Computational Sciences and Engineering Division, Oak Ridge National Laboratory, Oak Ridge, TN 37831.
Proc Natl Acad Sci U S A. 2015 Feb 3;112(5):1344-9. doi: 10.1073/pnas.1405713112. Epub 2015 Jan 20.
Localized adverse events, including natural hazards, epidemiological events, and human conflict, underscore the criticality of quantifying and mapping current population. Building on the spatial interpolation technique previously developed for high-resolution population distribution data (LandScan Global and LandScan USA), we have constructed an empirically informed spatial distribution of projected population of the contiguous United States for 2030 and 2050, depicting one of many possible population futures. Whereas most current large-scale, spatially explicit population projections typically rely on a population gravity model to determine areas of future growth, our projection model departs from these by accounting for multiple components that affect population distribution. Modeled variables, which included land cover, slope, distances to larger cities, and a moving average of current population, were locally adaptive and geographically varying. The resulting weighted surface was used to determine which areas had the greatest likelihood for future population change. Population projections of county level numbers were developed using a modified version of the US Census's projection methodology, with the US Census's official projection as the benchmark. Applications of our model include incorporating multiple various scenario-driven events to produce a range of spatially explicit population futures for suitability modeling, service area planning for governmental agencies, consequence assessment, mitigation planning and implementation, and assessment of spatially vulnerable populations.
局部不良事件,包括自然灾害、流行病学事件和人类冲突,凸显了量化和绘制当前人口数据的重要性。基于先前为高分辨率人口分布数据(LandScan Global和LandScan USA)开发的空间插值技术,我们构建了美国本土2030年和2050年预计人口的经验性空间分布,描绘了众多可能的人口未来情况之一。虽然目前大多数大规模、空间明确的人口预测通常依赖人口引力模型来确定未来增长区域,但我们的预测模型与之不同,它考虑了影响人口分布的多个因素。建模变量包括土地覆盖、坡度、到大城市的距离以及当前人口的移动平均值,这些变量在局部具有适应性且在地理上存在差异。由此产生的加权表面用于确定哪些地区未来人口变化的可能性最大。县级人口预测采用了美国人口普查预测方法的修改版本,并以美国人口普查的官方预测为基准。我们模型的应用包括纳入多种情景驱动事件,以生成一系列空间明确的人口未来情况,用于适宜性建模、政府机构的服务区规划、后果评估、减灾规划与实施以及对空间脆弱人群的评估。