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首页> 外文期刊>Journal of Quantitative Spectroscopy & Radiative Transfer >Neural network radiative transfer solvers for the generation of high resolution solar irradiance spectra parameterized by cloud and aerosol parameters
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Neural network radiative transfer solvers for the generation of high resolution solar irradiance spectra parameterized by cloud and aerosol parameters

机译:神经网络辐射传递求解器,用于生成由云和气溶胶参数设置的高分辨率太阳辐照光谱

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This paper reports on the development of a neural network (NN) model for instantaneous and accurate estimation of solar radiation spectra and budgets geared toward satellite cloud data using a approximate to 2.4 M record, high-spectral resolution look up table (LUT) generated with the radiative transfer model libRadtran. Two NN solvers, one for clear sky conditions dominated by aerosol and one for cloudy skies, were trained on a normally-distributed and multiparametric subset of the LUT that spans a very broad class of atmospheric and meteorological conditions as inputs with corresponding high resolution solar irradiance target spectra as outputs. The NN solvers were tested by feeding them with a large (10 K record) "off-grid" random subset of the LUT spanning the training data space, and then comparing simulated outputs with target values provided by the LUT. The NN solvers demonstrated a capability to interpolate accurately over the entire multiparametric space. Once trained, the NN solvers allow for high-speed estimation of solar radiation spectra with high spectral resolution (1 nm) and for a quantification of the effect of aerosol and cloud optical parameters on the solar radiation budget without the need for a massive database. The doudy sky NN solver was applied to high spatial resolution (54 K pixel) cloud data extracted from the Spinning Enhanced Visible and Infrared Imager (SEVIRI) onboard the geostationary Meteosat Second Generation 3 (MSG3) satellite and demonstrated that coherent maps of spectrally-integrated global horizontal irradiance at this resolution can be produced on the order of 1 min. (C) 2015 Elsevier Ltd. All rights reserved.
机译:本文报告了神经网络(NN)模型的开发过程,该模型使用约2.4 M记录,高光谱分辨率查找表(LUT)生成的瞬时和准确估算太阳辐射光谱和针对卫星云数据的预算,辐射传递模型libRadtran。在LUT的正态分布和多参数子集上训练了两个NN解算器,一个用于气溶胶主导的晴朗天空条件,另一个用于多云天空,该子集跨越非常广泛的大气和气象条件类别,作为具有相应高分辨率太阳辐照度的输入目标光谱作为输出。通过为神经网络求解器提供跨训练数据空间的LUT的大(10 K记录)“离网”随机子集进行测试,然后将模拟输出与LUT提供的目标值进行比较,以进行测试。 NN解算器展示了在整个多参数空间上精确插值的能力。经过训练后,NN解算器可以快速估计具有高光谱分辨率(1 nm)的太阳辐射光谱,并且无需大量数据库即可量化气溶胶和云光学参数对太阳辐射预算的影响。双重天空NN解算器应用于从地球静止气象卫星第二代3(MSG3)上的旋转增强型可见光和红外成像仪(SEVIRI)中提取的高分辨率(54 K像素)云数据,并证明了光谱积分的相干图该分辨率下的全球水平辐照度可以产生大约1分钟。 (C)2015 Elsevier Ltd.保留所有权利。

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