Li Lixin, Zhou Xiaolu, Kalo Marc, Piltner Reinhard
Department of Computer Sciences, Georgia Southern University, Statesboro, GA 30460, USA.
Department of Geology and Geography, Georgia Southern University, Statesboro, GA 30460, USA.
Int J Environ Res Public Health. 2016 Jul 25;13(8):749. doi: 10.3390/ijerph13080749.
Appropriate spatiotemporal interpolation is critical to the assessment of relationships between environmental exposures and health outcomes. A powerful assessment of human exposure to environmental agents would incorporate spatial and temporal dimensions simultaneously. This paper compares shape function (SF)-based and inverse distance weighting (IDW)-based spatiotemporal interpolation methods on a data set of PM2.5 data in the contiguous U.S. Particle pollution, also known as particulate matter (PM), is composed of microscopic solids or liquid droplets that are so small that they can get deep into the lungs and cause serious health problems. PM2.5 refers to particles with a mean aerodynamic diameter less than or equal to 2.5 micrometers. Based on the error statistics results of k-fold cross validation, the SF-based method performed better overall than the IDW-based method. The interpolation results generated by the SF-based method are combined with population data to estimate the population exposure to PM2.5 in the contiguous U.S. We investigated the seasonal variations, identified areas where annual and daily PM2.5 were above the standards, and calculated the population size in these areas. Finally, a web application is developed to interpolate and visualize in real time the spatiotemporal variation of ambient air pollution across the contiguous U.S. using air pollution data from the U.S. Environmental Protection Agency (EPA)'s AirNow program.
适当的时空插值对于评估环境暴露与健康结果之间的关系至关重要。对人类暴露于环境因素的有力评估将同时纳入空间和时间维度。本文在美国本土连续区域的PM2.5数据集上,比较了基于形状函数(SF)和基于反距离加权(IDW)的时空插值方法。颗粒物污染,也称为颗粒物(PM),由微小的固体或液滴组成,这些颗粒非常小,以至于它们可以深入肺部并导致严重的健康问题。PM2.5是指平均空气动力学直径小于或等于2.5微米的颗粒。基于k折交叉验证的误差统计结果,基于SF的方法总体上比基于IDW的方法表现更好。基于SF的方法生成的插值结果与人口数据相结合,以估计美国本土连续区域的人口对PM2.5的暴露情况。我们调查了季节变化,确定了年和日PM2.5超过标准的区域,并计算了这些区域的人口规模。最后,开发了一个网络应用程序,利用美国环境保护局(EPA)的AirNow计划的空气污染数据,对美国本土连续区域的环境空气污染的时空变化进行实时插值和可视化。