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Top-of-the-atmosphere shortwave flux estimation from satellite observations: an empirical neural network approach applied with data from the A-train constellation

机译:来自卫星观测的大气顶短波通量估计:一种经验神经网络方法,结合了A列星座的数据

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Estimates of top-of-the-atmosphere (TOA) radiative flux are essential for the understanding of Earth's energy budget and climate system. Clouds, aerosols, water vapor, and ozone (O-3) are among the most important atmospheric agents impacting the Earth's shortwave (SW) radiation budget. There are several sensors in orbit that provide independent information related to these parameters. Having coincident information from these sensors is important for understanding their potential contributions. The A-train constellation of satellites provides a unique opportunity to analyze data from several of these sensors. In this paper, retrievals of cloud/aerosol parameters and total column ozone (TCO) from the Aura Ozone Monitoring Instrument (OMI) have been collocated with the Aqua Clouds and Earth's Radiant Energy System (CERES) estimates of total reflected TOA outgoing SW flux (SWF). We use these data to develop a variety of neural networks that estimate TOA SWF globally over ocean and land using only OMI data and other ancillary information as inputs and CERES TOA SWF as the output for training purposes. OMI-estimated TOA SWF from the trained neural networks reproduces independent CERES data with high fidelity. The global mean daily TOA SWF calculated from OMI is consistently within +/- 1aEuro-% of CERES throughout the year 2007. Application of our neural network method to other sensors that provide similar retrieved parameters, both past and future, can produce similar estimates TOA SWF. For example, the well-calibrated Total Ozone Mapping Spectrometer (TOMS) series could provide estimates of TOA SWF dating back to late 1978.
机译:大气顶(TOA)辐射通量的估算对于理解地球的能源预算和气候系统至关重要。云,气溶胶,水蒸气和臭氧(O-3)是影响地球短波(SW)辐射预算的最重要的大气因子。轨道上有多个传感器可提供与这些参数有关的独立信息。来自这些传感器的一致信息对于理解其潜在贡献很重要。卫星的A列星座为分析来自其中几个传感器的数据提供了独特的机会。本文将Aura臭氧监测仪(OMI)的云/气溶胶参数和总柱臭氧(TCO)的检索与水云和地球辐射能系统(CERES)的总反射TOA输出SW通量估算值结合在一起( SWF)。我们使用这些数据来开发各种神经网络,这些神经网络仅使用OMI数据和其他辅助信息作为输入,并使用CERES TOA SWF作为训练目的,来估计海洋和陆地上的TOA SWF。来自训练有素的神经网络的OMI估计TOA SWF可高保真地再现独立的CERES数据。从OMI计算得出的全球平均每日TOA SWF值在2007年始终保持在CERES的+/- 1aEuro-%以内。将我们的神经网络方法应用于在过去和将来提供相似检索参数的其他传感器可以产生相似的TOA估算SWF。例如,经过良好校准的总臭氧图谱仪(TOMS)系列可以提供可追溯到1978年末的TOA SWF估算值。

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