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A 6-year-long (2013–2018) high-resolution air quality reanalysis dataset in China based on the assimilation of surface observations from CNEMC

机译:基于来自CNEMC的表面观测的同化的中国高分辨率(2013-2018)高分辨率空气质量再分析数据集

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A 6-year-long high-resolution Chinese air quality reanalysis (CAQRA) dataset is presented in this study obtained from the assimilation of surface observations from the China National Environmental Monitoring Centre (CNEMC) using the ensemble Kalman filter (EnKF) and Nested Air Quality Prediction Modeling System (NAQPMS).This dataset contains surface fields of six conventional air pollutants in China (i.e. PM2.5, PM10, SO2, NO2, CO, and O3) for the period 2013–2018 at high spatial (15 km×15 km) and temporal (1 h) resolutions. This paper aims to document this dataset by providing detailed descriptions of the assimilation system and the first validation results for the above reanalysis dataset. The 5-fold cross-validation (CV) method is adopted to demonstrate the quality of the reanalysis. The CV results show that the CAQRA yields an excellent performance in reproducing the magnitude and variability of surface air pollutants in China from 2013 to 2018 (CV R 2 = 0.52–0.81, CV root mean square error (RMSE) = 0.54 mg/m3 for CO, and CV RMSE = 16.4–39.3 μg/m3 for the other pollutants on an hourly scale). Through comparison to the Copernicus Atmosphere Monitoring Service reanalysis (CAMSRA) dataset produced by the European Centre for Medium-Range Weather Forecasts (ECWMF), we show that CAQRA attains a high accuracy in representing surface gaseous air pollutants in China due to the assimilation of surface observations. The fine horizontal resolution of CAQRA also makes it more suitable for air quality studies on a regional scale. The PM2.5 reanalysis dataset is further validated against theindependent datasets from the US Department of State Air Quality Monitoring Program over China, which exhibits a good agreement with the independent observations (R2 = 0.74–0.86 and RMSE = 16.8–33.6 μg/m3indifferent cities). Furthermore, through the comparison to satellite-estimated PM2.5 concentrations, we show thatthe accuracy of the PM2.5 reanalysis is higher than that of most satellite estimates. The CAQRA is the firsthigh-resolution air quality reanalysis dataset in China that simultaneously provides the surface concentrationsof six conventional air pollutants, which is of great value for many studies, such as health impact assessmentof air pollution, investigation of air quality changes in China, model evaluation and satellite calibration, optimization of monitoring sites, and provision of training data for statistical or artificial intelligence (AI)-basedforecasting. All datasets are freely available at https://doi.org/10.11922/sciencedb.00053 (Tang et al., 2020a), anda prototype product containing the monthly and annual means of the CAQRA dataset has also been released athttps://doi.org/10.11922/sciencedb.00092 (Tang et al., 2020b) to facilitate the evaluation of the CAQRA datasetby potential users.
机译:这项研究中提出了6年长的高分辨率中国空气质量重新分析(CAQRA)数据集,从中国国家环境监测中心(CNEMC)的表面观察中的同化使用集团卡尔曼滤波器(ENKF)和嵌套空气获得质量预测建模系统(NAQPMS)。本数据集在高空间期间(即2013-2018期间六个常规空气污染物(即PM2.5,PM10,SO2,NO2,CO和O3)的表面田地(15公里× 15公里)和时间(1小时)分辨率。本文旨在通过提供同化系统的详细说明和上述重新分析数据集的第一个验证结果来记录此数据集。采用5倍交叉验证(CV)方法来证明重新分析的质量。 CV结果表明,CAQA在2013年至2018年的中国表面空气污染物的幅度和变异方面产生了出色的性能(CV R 2 = 0.52-0.81,CV源均方误差(RMSE)= 0.54 mg / m3 CO,CV RMSE =16.4-39.3μg/ m3在每小时规模的其他污染物)。通过与哥白尼大气监测服务重新分析(CAMSRA)数据集(CAMSRA)在欧洲中距离(ECWMF)生产的数据集(ECWMF),我们表明,由于表面的同化,CAQRA在中国代表中国的表面气态空气污染物达到了高精度观察。 CAQRA的细水平分辨率也使其更适合对区域规模的空气质量研究。 PM2.5 Reanalysicate DataSet进一步验证了来自美国国家空气质量监测计划的独立数据集,这与中国的国家空气质量监测计划展示良好的一致意见(R2 = 0.74-0.86和RMSE =16.8-33.6μg/ M3Indifferent城市)。此外,通过与卫星估计的PM2.5浓度的比较,我们表明PM2.5重新分析的准确性高于大多数卫星估算的精度。 CAQRA是中国的第一个分辨率的空气质量再分析数据集,同时提供了六种常规空气污染物的表面浓缩,这对于许多研究具有很大的价值,例如空气污染的健康影响评估,中国的空气质量变化调查,模型评估和卫星校准,监测网站的优化,以及提供统计或人工智能(AI)的培训数据 - 基础。所有数据集在HTTPS://do.org/10.11922/sciencedb.00053(唐等,2020A),Anda ProTotype产品的每月和年度手段都已易于使用,并已发布Athttps:// Doi .org / 10.11922 / sciencedbb.00092(唐等,2020b),以便于评估CAQRA Datasetby潜在用户。
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