高分辨率地理空间数据库:2016-2020年美国连续地区空气污染物浓度国家标准

IF 3.3 3区 地球科学 Q2 GEOSCIENCES, MULTIDISCIPLINARY
Tianjun Lu, Sun-Young Kim, Julian D. Marshall
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引用次数: 0

摘要

环境空气污染浓度估计广泛用于环境流行病学、健康影响评估、城市规划、环境公平和可持续性等领域。本研究基于以往的努力,开发了一个更新的高分辨率地理空间数据库,该数据库包含美国连续5年(2016-2020年)期间六种标准空气污染物(PM2.5、PM10、CO、NO2、SO2、O3)的人口加权年平均浓度。我们在部分最小二乘通用克里格框架内通过结合几个土地利用、地理空间和基于卫星的预测变量开发了土地利用回归(LUR)模型。使用传统和聚类交叉验证对LUR模型进行了验证,前者在捕获空气质量的可变性方面始终显示出优越的性能。大多数模型表现出可靠的性能(例如,基于均方误差的R2 >; 0.8,标准化均方根误差<; 0.1)。我们使用最好的建模方法来根据人口普查区进行估计,然后在人口普查区组、人口普查区和县的地理位置上进行人口加权平均。我们的数据库提供了有关空气污染动态的宝贵见解,对环境风险评估、公共卫生、政策和城市规划具有实用价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

High-Resolution Geospatial Database: National Criteria-Air-Pollutant Concentrations in the Contiguous U.S., 2016–2020

High-Resolution Geospatial Database: National Criteria-Air-Pollutant Concentrations in the Contiguous U.S., 2016–2020

Concentration estimates for ambient air pollution are used widely in fields such as environmental epidemiology, health impact assessment, urban planning, environmental equity and sustainability. This study builds on previous efforts by developing an updated high-resolution geospatial database of population-weighted annual-average concentrations for six criteria air pollutants (PM2.5, PM10, CO, NO2, SO2, O3) across the contiguous U.S. during a five-year period (2016–2020). We developed Land Use Regression (LUR) models within a partial-least-squares–universal kriging framework by incorporating several land use, geospatial and satellite–based predictor variables. The LUR models were validated using conventional and clustered cross-validation, with the former consistently showing superior performance in capturing the variability of air quality. Most models demonstrated reliable performance (e.g., mean squared error—based R2 > 0.8, standardised root mean squared error < 0.1). We used the best modelling approach to develop estimates by Census Block, which were then population-weighted averaged at Census Block Group, Census Tract and County geographies. Our database provides valuable insights into the dynamics of air pollution, with utility for environmental risk assessment, public health, policy and urban planning.

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来源期刊
Geoscience Data Journal
Geoscience Data Journal GEOSCIENCES, MULTIDISCIPLINARYMETEOROLOGY-METEOROLOGY & ATMOSPHERIC SCIENCES
CiteScore
5.90
自引率
9.40%
发文量
35
审稿时长
4 weeks
期刊介绍: Geoscience Data Journal provides an Open Access platform where scientific data can be formally published, in a way that includes scientific peer-review. Thus the dataset creator attains full credit for their efforts, while also improving the scientific record, providing version control for the community and allowing major datasets to be fully described, cited and discovered. An online-only journal, GDJ publishes short data papers cross-linked to – and citing – datasets that have been deposited in approved data centres and awarded DOIs. The journal will also accept articles on data services, and articles which support and inform data publishing best practices. Data is at the heart of science and scientific endeavour. The curation of data and the science associated with it is as important as ever in our understanding of the changing earth system and thereby enabling us to make future predictions. Geoscience Data Journal is working with recognised Data Centres across the globe to develop the future strategy for data publication, the recognition of the value of data and the communication and exploitation of data to the wider science and stakeholder communities.
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