Shanghai Key Lab for Urban Ecological Processes and Eco-restoration, School of Ecological and Environmental Sciences, East China Normal University, Shanghai, China; Department of Environmental Health, Rollins School of Public Health, Emory University, Atlanta, GA, USA.
Department of Atmospheric Sciences, Yonsei University, Seoul, Republic of Korea.
Chemosphere. 2020 Jan;239:124678. doi: 10.1016/j.chemosphere.2019.124678. Epub 2019 Aug 26.
In the developing countries such as China, most well-developed areas have suffered severe haze pollution, which was associated with increased premature morbidity and mortality and attracted widespread public concerns. Since ground-based PM monitoring has limited temporal and spatial coverage, satellite aerosol remote sensing data has been increasingly applied to map large-scale PM characteristics through advanced spatial statistical models. Although most existing research has taken advantage of the polar orbiting satellite instruments, a major limitation of the polar orbiting platform is its limited sampling frequency (e.g., 1-2 times/day), which is insufficient for capturing the PM variability during short but intense heavy haze episodes. As the first attempt, we quantitatively investigated the feasibility of using the aerosol optical depth (AOD) data retrieved by the Geostationary Ocean Color Imager (GOCI) to estimate hourly PM concentrations during winter haze episodes in the Yangtze River Delta (YRD). We developed a three-stage spatial statistical model, using GOCI AOD and fine mode fraction, as well as corresponding monitoring PM concentrations, meteorological and land use data on a 6-km modeling grid with complete coverage in time and space. The 10-fold cross-validation R was 0.72 with a regression slope of 1.01 between observed and predicted hourly PM concentrations. After gap filling, the R value for the three-stage model was 0.68. We further analyzed two representative large regional episodes, i.e., a "multi-process diffusion episode" during December 21-26, 2015 and a "Chinese New Year episode" during February 7-8, 2016. We concluded that AOD retrieved by geostationary satellites could serve as a new valuable data source for analyzing the heavy air pollution episodes.
在中国等发展中国家,大多数发达地区都遭受了严重的雾霾污染,这与过早发病和死亡的增加有关,并引起了广泛的公众关注。由于地面 PM 监测的时间和空间覆盖范围有限,卫星气溶胶遥感数据已越来越多地通过先进的空间统计模型应用于绘制大规模 PM 特征图。尽管大多数现有研究都利用了极轨卫星仪器,但极轨平台的一个主要限制是其采样频率有限(例如,每天 1-2 次),不足以捕捉到短时间但强度大的重度雾霾期间的 PM 变化。作为首次尝试,我们定量研究了使用地球静止海洋彩色成像仪(GOCI)获取的气溶胶光学厚度(AOD)数据来估算长江三角洲(YRD)冬季雾霾期间每小时 PM 浓度的可行性。我们开发了一个三阶段空间统计模型,使用 GOCI AOD 和细模态分数,以及相应的监测 PM 浓度、气象和土地利用数据,在具有完整时空覆盖的 6 公里建模网格上进行建模。10 倍交叉验证的 R 值为 0.72,观测到的和预测到的每小时 PM 浓度之间的回归斜率为 1.01。经过间隙填充后,三阶段模型的 R 值为 0.68。我们进一步分析了两个具有代表性的大型区域性事件,即 2015 年 12 月 21 日至 26 日的“多过程扩散事件”和 2016 年 2 月 7 日至 8 日的“中国新年事件”。我们得出结论,地球静止卫星获取的 AOD 可以作为分析重度空气污染事件的新的有价值的数据来源。