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Estimate the high-resolution distribution of ground-level particulate matter based on space observations and a physical-based model

机译:基于空间观测和基于物理模型来估计地面颗粒物质的高分辨率分布

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Atmospheric particulate matter estimated by using satellite data is gaining more attention due to their wide spatial coverage advantages. Here, instead of empirical statistical approach, we describe a physical-based approach that reduces the uncertainty of surface PM10 estimation from satellite data. In our approach, particulate matter mass concentration retrievals require the inclusion of optical properties of aerosol particles and meteorological parameters. We use one year of MODIS aerosol optical depth data at 550 nm and meteorological data to estimate surface level PM10 over China. As compared to regression coefficients obtained through simple correlation (R = 0.44) or multiple regression (R = 0.53) techniques, the physical-based approach derives hourly PM10 data that compared with ground-based measurements with R = 0.74. Although the degree of improvement varies over different sites and seasons in China, this study demonstrates the potential for using physical-based approach for operational air quality monitoring.
机译:由于其宽的空间覆盖范围优势,通过使用卫星数据估算的大气颗粒物质。这里,代替经验统计方法,我们描述了一种基于物理的方法,可以减少卫星数据的表面PM10估计的不确定性。在我们的方法中,颗粒物质质量检索需要包含气溶胶颗粒和气象参数的光学性质。我们在550nm和气象数据中使用一年的Modis Aerosol光学深度数据,以估算中国的表面级PM10。与通过简单相关(R = 0.44)或多元回归(R = 0.53)技术获得的回归系数相比,基于物理的方法导出了每小时PM10数据,与R = 0.74的基于基础测量相比。虽然改善程度在中国不同的地点而异,但本研究表明了利用基于物理的运营空气质量监测的潜力。

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