首页> 美国卫生研究院文献>International Journal of Environmental Research and Public Health >Application of a Fusion Method for Gas and Particle Air Pollutants between Observational Data and Chemical Transport Model Simulations Over the Contiguous United States for 2005–2014
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Application of a Fusion Method for Gas and Particle Air Pollutants between Observational Data and Chemical Transport Model Simulations Over the Contiguous United States for 2005–2014

机译:2005-2014年连续数据在美国连续气田间的观测数据与化学迁移模型模拟之间的融合方法的应用

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摘要

Accurate spatiotemporal air quality data are critical for use in assessment of regulatory effectiveness and for exposure assessment in health studies. A number of data fusion methods have been developed to combine observational data and chemical transport model (CTM) results. Our approach focuses on preserving the temporal variation provided by observational data while deriving the spatial variation from the community multiscale air quality (CMAQ) simulations, a type of CTM. Here we show the results of fusing regulatory monitoring observational data with 12 km resolution CTM simulation results for 12 pollutants (CO, NOx, NO2, SO2, O3, PM2.5, PM10, NO3, NH4+, EC, OC, SO42−) over the contiguous United States on a daily basis for a period of ten years (2005–2014). An annual mean regression between the CTM simulations and observational data is used to estimate the average spatial fields, and spatial interpolation of observations normalized by predicted annual average is used to provide the daily variation. Results match the temporal variation well (R2 values ranging from 0.84–0.98 across pollutants) and the spatial variation less well (R2 values 0.42–0.94). Ten-fold cross validation shows normalized root mean square error values of 60% or less and spatiotemporal R2 values of 0.4 or more for all pollutants except SO2.
机译:准确的时空空气质量数据对于评估监管有效性和健康研究中的暴露评估至关重要。已经开发了许多数据融合方法来结合观察数据和化学传输模型(CTM)结果。我们的方法着重于保留由观测数据提供的时间变化,同时从社区多尺度空气质量(CMAQ)模拟(一种CTM)得出空间变化。在这里,我们展示了将12种分辨率的CTM模拟结果与12种分辨率(CO,NOx,NO2,SO2,O3,PM2.5,PM10,NO3 -,NH4 < (sup> + ,EC,OC,SO4 2 − ),连续十年,每天(连续10年)(2005-2014年)。 CTM模拟和观测数据之间的年均回归用于估计平均空间场,而观测值的空间插值由预测的年平均归一化用于提供每日变化。结果与时间变化良好(跨污染物的R 2 值在0.84–0.98之间)匹配,而与空间变化的匹配则较小(R 2 值在0.42-0.94之间)。十倍交叉验证显示,除SO2外所有污染物的归一化均方根误差值均在60%以下,时空R 2 值在0.4以上。

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