气溶胶
环境科学
归一化差异植被指数
人工神经网络
自相关
植被(病理学)
卷积神经网络
空间分析
线性回归
遥感
卫星
气象学
期限(时间)
统计
计算机科学
地理
数学
叶面积指数
机器学习
工程类
医学
生态学
物理
病理
量子力学
航空航天工程
生物
作者
Qian Di,Itai Kloog,Petros Koutrakis,Alexei Lyapustin,Yujie Wang,Joel Schwartz
标识
DOI:10.1021/acs.est.5b06121
摘要
A number of models have been developed to estimate PM2.5 exposure, including satellite-based aerosol optical depth (AOD) models, land-use regression, or chemical transport model simulation, all with both strengths and weaknesses. Variables like normalized difference vegetation index (NDVI), surface reflectance, absorbing aerosol index, and meteoroidal fields are also informative about PM2.5 concentrations. Our objective is to establish a hybrid model which incorporates multiple approaches and input variables to improve model performance. To account for complex atmospheric mechanisms, we used a neural network for its capacity to model nonlinearity and interactions. We used convolutional layers, which aggregate neighboring information, into a neural network to account for spatial and temporal autocorrelation. We trained the neural network for the continental United States from 2000 to 2012 and tested it with left out monitors. Ten-fold cross-validation revealed a good model performance with a total R2 of 0.84 on the left out monitors. Regional R2 could be even higher for the Eastern and Central United States. Model performance was still good at low PM2.5 concentrations. Then, we used the trained neural network to make daily predictions of PM2.5 at 1 km × 1 km grid cells. This model allows epidemiologists to access PM2.5 exposure in both the short-term and the long-term.
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