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The Potential Impact of Satellite-Retrieved Cloud Parameters on Ground-Level PM2.5 Mass and Composition

机译:卫星反演云参数对地面PM2.5质量和成分的潜在影响

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摘要

Satellite-retrieved aerosol optical properties have been extensively used to estimate ground-level fine particulate matter (PM2.5) concentrations in support of air pollution health effects research and air quality assessment at the urban to global scales. However, a large proportion, ~70%, of satellite observations of aerosols are missing as a result of cloud-cover, surface brightness, and snow-cover. The resulting PM2.5 estimates could therefore be biased due to this non-random data missingness. Cloud-cover in particular has the potential to impact ground-level PM2.5 concentrations through complex chemical and physical processes. We developed a series of statistical models using the Multi-Angle Implementation of Atmospheric Correction (MAIAC) aerosol product at 1 km resolution with information from the MODIS cloud product and meteorological information to investigate the extent to which cloud parameters and associated meteorological conditions impact ground-level aerosols at two urban sites in the US: Atlanta and San Francisco. We find that changes in temperature, wind speed, relative humidity, planetary boundary layer height, convective available potential energy, precipitation, cloud effective radius, cloud optical depth, and cloud emissivity are associated with changes in PM2.5 concentration and composition, and the changes differ by overpass time and cloud phase as well as between the San Francisco and Atlanta sites. A case-study at the San Francisco site confirmed that accounting for cloud-cover and associated meteorological conditions could substantially alter the spatial distribution of monthly ground-level PM2.5 concentrations.
机译:卫星净化气溶胶的光学特性已被广泛用于估算地面细颗粒物(PM2.5)的浓度,以支持城市乃至全球范围内的空气污染健康影响研究和空气质量评估。但是,由于云层覆盖,地表亮度和雪覆盖,卫星观测到的气溶胶中有很大一部分(约占70%)丢失。因此,由于这种非随机数据丢失,最终的PM2.5估算值可能会产生偏差。尤其是云层,可能通过复杂的化学和物理过程影响地面PM2.5浓度。我们使用分辨率为1 km的多角度大气校正(MAIAC)气溶胶产品开发了一系列统计模型,该数据模型来自MODIS云产品和气象信息,以调查云参数和相关气象条件对地面的影响程度,美国两个城市站点:亚特兰大和旧金山的高水平气溶胶。我们发现温度,风速,相对湿度,行星边界层高度,对流可用势能,降水,云有效半径,云光学深度和云发射率的变化与PM2.5浓度和成分的变化有关,并且变更因立交时间和云阶段以及旧金山和亚特兰大站点之间的不同而异。在旧金山的一个案例研究证实,考虑云层覆盖和相关的气象条件可能会大大改变每月地面PM2.5浓度的空间分布。

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