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A Hybrid Approach to Estimating National Scale Spatiotemporal Variability of PM2.5 in the Contiguous United States

机译:估算美国连续国家PM2.5的国家尺度时空变异的混合方法

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摘要

Airborne fine particulate matter exhibits spatiotemporal variability at multiple scales, which presents challenges to estimating exposures for health effects assessment. Here we created an model to predict ambient particulate matter less than 2.5 microns in aerodynamic diameter (PM2.5) across the contiguous United States to be applied to health effects modeling. We developed a hybrid approach combining a land use regression model (LUR) selected with a machine learning method, and Bayesian Maximum Entropy (BME) interpolation of the LUR space-time residuals. The PM2.5 dataset included 104,172 monthly observations at 1,464 monitoring locations with approximately 10% of locations reserved for cross-validation. LUR models were based on remote sensing estimates of PM2.5, land use and traffic indicators. Normalized cross-validated R2 values for LUR were 0.63 and 0.11 with and without remote sensing, respectively, suggesting remote sensing is a strong predictor of ground-level concentrations. In the models including the BME interpolation of the residuals, cross-validated R2 were 0.79 for both configurations; the model without remotely sensed data described more fine-scale variation than the model including remote sensing. Our results suggest that our modeling framework can predict ground-level concentrations of PM2.5 at multiple scales over the contiguous U.S.
机译:空气中的细颗粒物在多个尺度上表现出时空变异性,这对估算健康影响评估的暴露提出了挑战。在这里,我们创建了一个模型来预测整个美国的空气动力学直径(PM2.5)小于2.5微米的环境颗粒物,并将其应用于健康影响建模。我们开发了一种混合方法,将通过机器学习方法选择的土地利用回归模型(LUR)与LUR时空残差的贝叶斯最大熵(BME)插值相结合。 PM2.5数据集包括在1,464个监视位置的104,172个每月观测值,其中约10%的位置保留用于交叉验证。 LUR模型基于PM2.5,土地使用和交通指标的遥感估计。在有遥感和无遥感的情况下,LUR的标准化交叉验证R 2 值分别为0.63和0.11,这表明遥感是地面浓度的有力预测指标。在包括残差的BME插值的模型中,两种配置的交叉验证的R 2 均为0.79;与包含遥感的模型相比,没有遥感数据的模型描述的尺度变化更小。我们的结果表明,我们的建模框架可以预测连续美国境内多个尺度的地面PM2.5浓度。

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