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首页> 外文期刊>Journal of Geophysical Research, D. Atmospheres: JGR >Estimating Regional Ground-Level PM2.5 Directly From Satellite Top-Of-Atmosphere Reflectance Using Deep Belief Networks
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Estimating Regional Ground-Level PM2.5 Directly From Satellite Top-Of-Atmosphere Reflectance Using Deep Belief Networks

机译:直接估算区域地面PM2.5从卫星Top-Of-Atmosphere反射使用深度信念网络

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摘要

Almost all remote sensing atmospheric PM_(2.5) estimation methods need satellite aerosol optical depth (AOD) products, which are often retrieved from top-of-atmosphere (TOA) reflectance via an atmospheric radiative transfer model. Then, is it possible to estimate ground-level PM_(2.5) directly from satellite TOA reflectance without a physical model? In this study, this challenging work was achieved based on a machine learning model. Specifically, we established the relationship between PM_(2.5), satellite TOA reflectance, observation angles, and meteorological factors in a deep learning architecture (denoted as Ref-PM modeling). This relationship was trained with station PM_(2.5) measurements, and then the PM_(2.5) values of those locations without stations could be retrieved. Taking the Wuhan Urban Agglomeration as a case study, the results demonstrate that, compared with AOD-PM modeling, the Ref-PM modeling obtains a competitive performance, with sample-based cross-validated R~2 and root-mean-square error values of 0.87 and 9.89 μg/m~3, respectively. Also, the TOA-reflectance-derived PM_(2.5) has a finer resolution and a larger spatial coverage than the AOD-derived PM_(2.5). This work provides an alternative technique to estimate ground-level PM_(2.5), and may have the potential to promote the application in atmospheric environmental monitoring.
机译:几乎所有的遥感大气PM_ (2.5)评估方法需要卫星气溶胶光学深度(AOD)产品,往往检索通过一个从top-of-atmosphere (TOA)反射率大气辐射传输模型。可能估算地面PM_ (2.5)直接从卫星TOA反射没有物理模型?工作是实现基于机器学习模型。关系PM_(2.5),卫星TOA反射,观察的角度和气象因素深入学习作为Ref-PM建模体系结构(表示)。关系是训练站PM_ (2.5)测量,然后PM_(2.5)的值这些位置没有站检索。作为一个案例研究,结果表明,与AOD-PM建模相比,Ref-PM建模取得竞争性能,纸浆包旨在R ~ 2均方根误差值为0.87和9.89μg / m ~ 3,分别。TOA-reflectance-derived PM_(2.5)有一个更好的分辨率和更大的空间比报道AOD-derived PM_(2.5)。替代技术估计地面PM_(2.5),并有可能推广的潜力大气环境中的应用程序监控。

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