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A neural network technique for inversion of atmospheric observations from microwave limb sounders

机译:用神经网络技术对微波肢体发声器的大气观测值进行反演

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摘要

The limb sounder radiometer on board the satellite Odin will be the first instrument measuring emission from space in the sub-millimeter region to map atmospheric species. Nonlinear inversions of Odin spectra by traditional iterative approaches will be computationally very intensive, so this paper proposes a faster inversion technique based on training neural networks. The technique is described first in general terms and then applied to invert simulated observations in two of the Odin bands, around 501.4 GHz and 544.6 GHz. To deal with the large dimension of the measured spectra, a data reduction based on the eigenvectors of the measured space is first applied. The reduced spectra are then input to a set of multilayer perceptrons that, after training with a set of simulated spectra, do the inversions. The same spectra are also inverted by optimal estimation, and the performance from both techniques is compared. The neural network technique retrieves species profiles with errors and vertical resolutions comparable to optimal estimation, it can be made very robust against the uncertainties of the a priori information by including different learning terms during the training, and it is faster than optimal estimation if nonlinear inversions are required. Although final conclusions on processing time have to wait until Odin is operational, the simulations show that the neural network technique has the potential to make the Odin nonlinear inversions at least 1 order of magnitude faster than they are made by optimal estimation.
机译:奥丁卫星上的肢体测深仪将是第一个测量亚毫米范围内的空间发射以绘制大气物种图的仪器。用传统的迭代方法对Odin光谱进行非线性反演将需要大量的计算,因此本文提出了一种基于训练神经网络的快速反演技术。首先以一般术语描述该技术,然后将其应用于在501.4 GHz和544.6 GHz附近的两个Odin频段中对模拟观测值进行反演。为了处理测量光谱的大尺寸,首先应用基于测量空间特征向量的数据约简。然后将缩减后的光谱输入到一组多层感知器中,在使用一组模拟光谱进行训练后,进行反演。相同的光谱也可以通过最佳估计进行反转,并比较两种技术的性能。神经网络技术可检索具有与最佳估计值相当的误差和垂直分辨率的物种分布图,通过在训练过程中包含不同的学习术语,可以使其对先验信息的不确定性具有非常强的鲁棒性,并且如果进行非线性反演,则比最佳估计值要快是必要的。尽管关于处理时间的最终结论要等到Odin可以运行,但仿真表明,神经网络技术有可能使Odin非线性反演比最佳估计所产生的非线性反演至少快1个数量级。

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