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Predicting monthly high-resolution PM_(2.5) concentrations with random forest model in the North China Plain

机译:华北平原随机森林模型预测高分辨率每月PM_(2.5)浓度

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Exposure to fine particulate matter (PM2.5) remains a worldwide public health issue. However, epidemiological studies on the chronic health impacts of PM2.5 in the developing countries are hindered by the lack of monitoring data. Despite the recent development of using satellite remote sensing to predict ground-level PM2.5 concentrations in China, methods for generating reliable historical PM2.5 exposure, especially prior to the construction of PM2.5 monitoring network in 2013, are still very rare. In this study, a high-performance machine-learning model was developed directly at monthly level to estimate PM2.5 levels in North China Plain. We developed a random forest model using the latest Multi-angle implementation of atmospheric correction (MAIAC) aerosol optical depth (ADD), meteorological parameters, land cover and ground PM2.5 measurements from 2013 to 2015. A multiple imputation method was applied to fill the missing values of AOD. We used 10-fold cross-validation (CV) to evaluate model performance and a separate time period, January 2016 to December 2016, was used to validate our model's capability of predicting historical PM2.5 concentrations. The overall model CV R-2 and relative prediction error (RPE) were 0.88 and 18.7%, respectively. Validation results beyond the modeling period (2013-2015) shown that this model can accurately predict historical PM2.5 concentrations at the monthly (R-2 = 0.74, RPE = 27.6%), seasonal (R-2 = 0.78, RPE = 21.2%) and annual (R-2 = 0.76, RPE = 16.9%) level. The annual mean predicted PM2.5 concentration from 2013 to 2016 in our study domain was 67.7 mu g/m(3) and Southern Hebei, Western Shandong and Northern Henan were the most polluted areas. Using this computationally efficient, monthly and high-resolution model, we can provide reliable historical PM2.5 concentrations for epidemiological studies on PM2.5 health effects in China. (C) 2018 Elsevier Ltd. All rights reserved.
机译:接触细颗粒物(PM2.5)仍然是世界范围内的公共卫生问题。但是,缺乏监测数据阻碍了对发展中国家PM2.5的慢性健康影响的流行病学研究。尽管最近使用卫星遥感技术预测中国地面PM2.5浓度的方法有所发展,但产生可靠的历史PM2.5暴露的方法,尤其是在2013年建立PM2.5监测网络之前,仍然很少见。在这项研究中,直接按月开发了一种高性能的机器学习模型,以估算华北平原的PM2.5水平。我们采用了最新的多角度大气校正(MAIAC)气溶胶光学深度(ADD),气象参数,土地覆盖和地面PM2.5测量方法,从2013年至2015年开发了一个随机森林模型。采用了一种多插补方法来填充AOD的缺失值。我们使用10倍交叉验证(CV)评估模型性能,并使用一个单独的时间段(2016年1月至2016年12月)来验证我们的模型预测历史PM2.5浓度的能力。总体模型CV R-2和相对预测误差(RPE)分别为0.88和18.7%。超出建模期(2013-2015)的验证结果表明,该模型可以准确预测每月(R-2 = 0.74,RPE = 27.6%),季节性(R-2 = 0.78,RPE = 21.2)的历史PM2.5浓度%)和年度(R-2 = 0.76,RPE = 16.9%)水平。在我们研究范围内,2013年至2016年的年均预测PM2.5浓度为67.7μg / m(3),其中河南南部,山东西部和河南北部是污染最严重的地区。使用这种计算有效,每月和高分辨率的模型,我们可以为中国PM2.5健康影响的流行病学研究提供可靠的历史PM2.5浓度。 (C)2018 Elsevier Ltd.保留所有权利。

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