首页> 美国卫生研究院文献>Environmental Health Perspectives >Comparison of Geostatistical Interpolation and Remote Sensing Techniques for Estimating Long-Term Exposure to Ambient PM2.5 Concentrations across the Continental United States
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Comparison of Geostatistical Interpolation and Remote Sensing Techniques for Estimating Long-Term Exposure to Ambient PM2.5 Concentrations across the Continental United States

机译:比较地统计插值法和遥感技术估算美国大陆各地PM2.5浓度的长期暴露

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摘要

Background: A better understanding of the adverse health effects of chronic exposure to fine particulate matter (PM2.5) requires accurate estimates of PM2.5 variation at fine spatial scales. Remote sensing has emerged as an important means of estimating PM2.5 exposures, but relatively few studies have compared remote-sensing estimates to those derived from monitor-based data.Objective: We evaluated and compared the predictive capabilities of remote sensing and geostatistical interpolation.Methods: We developed a space–time geostatistical kriging model to predict PM2.5 over the continental United States and compared resulting predictions to estimates derived from satellite retrievals.Results: The kriging estimate was more accurate for locations that were about 100 km from a monitoring station, whereas the remote sensing estimate was more accurate for locations that were > 100 km from a monitoring station. Based on this finding, we developed a hybrid map that combines the kriging and satellite-based PM2.5 estimates.Conclusions: We found that for most of the populated areas of the continental United States, geostatistical interpolation produced more accurate estimates than remote sensing. The differences between the estimates resulting from the two methods, however, were relatively small. In areas with extensive monitoring networks, the interpolation may provide more accurate estimates, but in the many areas of the world without such monitoring, remote sensing can provide useful exposure estimates that perform nearly as well.
机译:背景:要更好地了解长期暴露于细颗粒物(PM2.5)对健康的不利影响,就需要在精细的空间尺度上准确估算PM2.5的变化。遥感已经成为估计PM2.5暴露的重要手段,但是相对较少的研究将遥感估计值与基于监测器的数据进行了比较。目的:我们评估并比较了遥感和地统计插值的预测能力。方法:我们开发了时空地统计克里金模型来预测美国大陆上的PM2.5,并将所得预测与卫星取回的估计值进行比较。结果:克里金估计值对于距监测约100 km的位置更为准确站,而距监测站> 100 km的位置的遥感估算更为准确。基于此发现,我们开发了一种混合地图,结合了克里金法和基于卫星的PM2.5估算值。结论:我们发现,对于美国大陆大部分人口稠密的地区,地统计插值法比遥感法能提供更准确的估算值。但是,两种方法得出的估计值之间的差异相对较小。在具有广泛监视网络的区域中,插值法可能会提供更准确的估计值,但是在世界上许多没有此类监视的区域中,遥感可以提供几乎同样有效的有用曝光估计值。

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