A'/> Full-coverage high-resolution daily PM<ce:inf loc='post'>2.5</ce:inf> estimation using MAIAC AOD in the Yangtze River Delta of China
首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Full-coverage high-resolution daily PM2.5 estimation using MAIAC AOD in the Yangtze River Delta of China
【24h】

Full-coverage high-resolution daily PM2.5 estimation using MAIAC AOD in the Yangtze River Delta of China

机译:全覆盖高分辨率每日PM 2.5 在中国长江三角洲使用MAIAC AOD的估计

获取原文
获取原文并翻译 | 示例
           

摘要

Abstract Satellite aerosol optical depth (AOD) has been used to assess population exposure to fine particulate matter (PM2.5). The emerging high-resolution satellite aerosol product, Multi-Angle Implementation of Atmospheric Correction (MAIAC), provides a valuable opportunity to characterize local-scale PM2.5 at 1-km resolution. However, non-random missing AOD due to cloud/snow cover or high surface reflectance makes this task challenging. Previous studies filled the data gap by spatially interpolating neighboring PM2.5 measurements or predictions. This strategy ignored the effect of cloud cover on aerosol loadings and has been shown to exhibit poor performance when monitoring stations are sparse or when there is seasonal large-scale missingness. Using the Yangtze River Delta of China as an example, we present a Multiple Imputation (MI) method that combines the MAIAC high-resolution satellite retrievals with chemical transport model (CTM) simulations to fill missing AOD. A two-stage statistical model driven by gap-filled AOD, meteorology and land use information was then fitted to estimate daily ground PM2.5 concentrations in 2013 and 2014 at 1km resolution with complete coverage in space and time. The daily MI models have an average R2 of 0.77, with an inter-quartile range of 0.71 to 0.82 across days. The overall model 10-fold cross-validation R2 (root mean square error) were 0.81 (25μg/m3) and 0.73 (18μg/m3) for year 2013 and 2014, respectively. Predictions with only observational AOD or only imputed AOD showed similar accuracy. Comparing with previous gap-filling methods, our MI method presented in this study performed better with higher coverage, higher accuracy, and the ability to fill missing PM2.5 predictions without ground PM2.5 measurements. This method can provide reliable PM2.5 predictions with complete coverage that can reduce bias in exposure assessment in air pollution and health studies. Highlights ? Fused satellite data, chemical transport model simulations and ground measurements ? Improved the annual coverage of PM2.5 prediction by about two-fold ? Provided PM2.5 predictions with complete-coverage high-accuracy at 1-km resolution ?
机译:<![cdata [ 抽象 卫星气溶胶光学深度(AOD)已被用于评估细颗粒物质的种群暴露(PM 2.5 )。新兴的高分辨率卫星气溶胶产品,大型大气矫正(MAIAC)的多角度实现,提供了一个有价值的机会,以表征本地尺度PM 2.5 在1- KM解决方案。然而,由于云/雪覆盖或高表面反射导致的非随机缺失AOD使得这项任务具有挑战性。以前的研究通过空间内插的PM 2.5 测量或预测来填充数据间隙。该策略忽略了云盖对气溶胶载荷的影响,并且当监测站稀疏或当有季节性大规模缺失时,已经表现出表现不佳。以中国的长江三角洲为例,我们介绍了一种多种归纳(MI)方法,将MAIAC高分辨率卫星检索与化学传输模型(CTM)模拟相结合,以填补缺失AOD。然后,由间隙填充AOD驱动,气象学和土地利用信息驱动的两级统计模型,以估计日常接地PM 2.5 浓度在1 km解决方案,空间和时间完全覆盖。每日MI型号的平均R 2 为0.77,间隔间距为0.71至0.82。 10型号10倍交叉验证R 2 (均均方误差)为0.81(25 μg/ m 3 )和0.73(18 μg/ m 3 )分别为2013年和2014年。仅具有观察AOD或仅避税AOD的预测显示了类似的准确性。与先前的差距填充方法相比,本研究中提出的MI方法更好地进行了更好的覆盖率,更高的准确性和填充丢失的能力 2.5 预测PM PM 2.5 测量。该方法可以提供可靠的PM 2.5 预测,完全覆盖可以减少空气污染和健康研究中的暴露评估中的偏差。 < / ce:abstract-sec> 亮点 融合卫星数据,化学传输模型模拟和地面测量 改进了PM 2.5 预测的年度覆盖范围大约两倍 提供PM 2.5 以1公里分辨率的完整覆盖高精度的预测< / ce:para>

著录项

相似文献

  • 外文文献
  • 专利
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