首页> 外文期刊>Atmospheric Chemistry and Physics Discussions >Improved 1km resolution PM2.5 estimates across China using enhanced space–time extremely randomized trees
【24h】

Improved 1km resolution PM2.5 estimates across China using enhanced space–time extremely randomized trees

机译:利用增强的时效时间,在中国提高了1公里的分辨率PM2.5估计

获取原文
           

摘要

Fine particulate matter with aerodynamic diameters ≤2.5μm (PM2.5) has adverse effects on human health and the atmospheric environment. The estimation of surface PM2.5 concentrations has made intensive use of satellite-derived aerosol products. However, it has been a great challenge to obtain high-quality and high-resolution PM2.5 data from both ground and satellite observations, which is essential to monitor air pollution over small-scale areas such as metropolitan regions. Here, the space–time extremely randomized trees (STET) model was enhanced by integrating updated spatiotemporal information and additional auxiliary data to improve the spatial resolution and overall accuracy of PM2.5 estimates across China. To this end, the newly released Moderate Resolution Imaging Spectroradiometer Multi-Angle Implementation of Atmospheric Correction AOD product, along with meteorological, topographical and land-use data and pollution emissions, was input to the STET model, and daily 1km PM2.5 maps for 2018 covering mainland China were produced. The STET model performed well, with a high out-of-sample (out-of-station) cross-validation coefficient of determination (R2) of 0.89 (0.88), a low root-mean-square error of 10.33 (10.93)μgm?3, a small mean absolute error of 6.69 (7.15)μgm?3 and a small mean relative error of 21.28% (23.69%). In particular, the model captured well the PM2.5 concentrations at both regional and individual site scales. The North China Plain, the Sichuan Basin and Xinjiang Province always featured high PM2.5 pollution levels, especially in winter. The STET model outperformed most models presented in previous related studies, with a strong predictive power (e.g., monthly R2=0.80), which can be used to estimate historical PM2.5 records. More importantly, this study provides a new approach for obtaining high-resolution and high-quality PM2.5 dataset across mainland China (i.e., ChinaHighPM2.5), important for air pollution studies focused on urban areas.
机译:具有空气动力学直径的细颗粒物质≤2.5μm(PM2.5)对人体健康和大气环境具有不利影响。表面PM2.5浓度的估计已经采用了卫星衍生的气溶胶产物的密集使用。然而,从地面和卫星观察中获得高质量和高分辨率PM2.5数据一直是一个巨大的挑战,这对于监测大城市区域等小规模领域的空气污染至关重要。这里,通过集成更新的时空信息和额外的辅助数据来提高空时极其随机树木(Stet)模型,以提高中国估计PM2.5估计的空间分辨率和总体准确性。为此,新释放的适度分辨率成像分光辐射器多角度执行大气校正AOD产品,以及气象,地形和土地利用数据和污染排放,输入了STET模型,每日1km PM2.5地图2018年覆盖中国大陆。 STET模型良好,具有0.89(0.88)的高样本(r2)的横验验证系数(R2),低根均方误差为10.33(10.93)μgm ?3,小平均绝对误差为6.69(7.15)μgm?3和21.28%的小平均相对误差(23.69%)。特别是,该模型在区域和各个站点尺度上捕获了PM2.5浓度。中国华北平原,四川盆地和新疆省务始致高效的PM2.5污染水平,特别是在冬季。 STET模型在先前相关研究中提供的大多数模型表现出强烈的预测力(例如,每月R2 = 0.80),可用于估计历史PM2.5记录。更重要的是,本研究提供了一种新的中国大陆(I.,Chinahighpm2.5)获得高分辨率和高质量PM2.5数据集的新方法,对于专注于城市地区的空气污染研究很重要。

著录项

获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号