Two Machine Learning Based Schemes for Solving Direct and Inverse Problems of Radiative Transfer Theory

D. Efremenko, Himani Jain, Jian Xu
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Abstract

Artificial neural networks (ANNs) are used to substitute computationally expensive radiative transfer models (RTMs) and inverse operators (IO) for retrieving optical parameters of the medium. However, the direct parametrization of RTMs and IOs by means of ANNs has certain drawbacks, such as loss of generality, computations of huge training datasets, robustness issues etc. This paper provides an analysis of different ANN-related methods, based on our results and those published by other authors. In particular, two techniques are proposed. In the first method, the ANN substitutes the eigenvalue solver in the discrete ordinate RTM, thereby reducing the computational time. Unlike classical RTM parametrization schemes based on ANN, in this method the resulting ANN can be used for arbitrary geometry and layer optical thicknesses. In the second method, the IO is trained by using the real measurements (preprocessed Level-2 TROPOMI data) to improve the stability of the inverse operator. This method provides robust results even without applying the Tikhonov regularization method.
两种基于机器学习的辐射传递理论正反问题求解方案
人工神经网络(ann)被用来代替计算代价高昂的辐射传递模型(RTMs)和逆算子(IO)来获取介质的光学参数。然而,利用人工神经网络对rtm和IOs进行直接参数化存在一定的缺点,如缺乏通用性、需要计算庞大的训练数据集、鲁棒性问题等。本文根据我们的结果和其他作者发表的结果,对不同的人工神经网络相关方法进行了分析。特别提出了两种技术。在第一种方法中,人工神经网络替代了离散坐标RTM中的特征值求解器,从而减少了计算时间。与基于神经网络的经典RTM参数化方案不同,该方法得到的神经网络可以用于任意几何形状和层光学厚度。在第二种方法中,使用实际测量值(预处理的2级TROPOMI数据)来训练IO,以提高逆算子的稳定性。该方法即使不应用Tikhonov正则化方法也能提供鲁棒性结果。
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