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A neural network radiative transfer model approach applied to the Tropospheric Monitoring Instrument aerosol height algorithm

机译:一种神经网络辐射转移模型方法应用于对流层监测仪气溶胶高度算法

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摘要

To retrieve aerosol properties from satellite measurements of the oxygen A-band in the near-infrared, a line-by-line radiative transfer model implementation requires a large number of calculations. These calculations severely restrict a retrieval algorithm's operational capability as it can take several minutes to retrieve the aerosol layer height for a single ground pixel. This paper proposes a forward modelling approach using artificial neural networks to speed up the retrieval algorithm. The forward model outputs are trained into a set of neural network models to completely replace line-by-line calculations in the operational processor. Results comparing the forward model to the neural network alternative show an encouraging outcome with good agreement between the two when they are applied to retrieval scenarios using both synthetic and real measured spectra from TROPOMI (TROPOspheric Monitoring Instrument) on board the European Space Agency (ESA) Sentinel-5 Precursor mission. With an enhancement of the computational speed by 3 orders of magnitude, TROPOMI's operational aerosol layer height processor is now able to retrieve aerosol layer heights well within operational capacity.
机译:为了从近红外线测量中从阳性测量中检索气溶胶特性,逐行辐射转移模型实现需要大量的计算。这些计算严重限制了检索算法的操作能力,因为它需要几分钟才能检索单个地面像素的气溶胶层高度。本文提出了一种使用人工神经网络加快检索算法的前向建模方法。前向模型输出培训到一组神经网络模型中,以在操作处理器中完全替换逐行计算。结果将前向模型与神经网络替代方案进行比较,展示了两者之间良好一致性的令人鼓舞的结果,当使用欧洲航天局(ESA)船上的合成和真实测量光谱应用于使用合成和实际测量光谱的检索方案Sentinel-5前体任务。随着计算速度的增强,通过3个数量级,Tropomi的操作气溶胶层高度处理器现在能够在运行能力内井中检索气溶胶层高度。

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