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首页> 外文期刊>IEEE Transactions on Geoscience and Remote Sensing >Inversion of snow parameters from passive microwave remote sensing measurements by a neural network trained with a multiple scattering model
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Inversion of snow parameters from passive microwave remote sensing measurements by a neural network trained with a multiple scattering model

机译:通过用多重散射模型训练的神经网络从被动微波遥感测量中反演雪参数

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The inversion of snow parameters from passive microwave remote sensing measurements is performed with a neural network trained with a dense-media multiple-scattering model. The input-output pairs generated by the scattering model are used to train the neural network. Simultaneous inversion of three parameters, mean-grain size of ice particles in snow, snow density, and snow temperature from five brightness temperatures, is reported. It is shown that the neural network gives good results for simulated data. The absolute percentage errors for mean-grain size of ice particles and snow density are less than 10%, and the absolute error for snow temperature is less than 3 K. The neural network with the trained weighting coefficients of the three-parameter model is also used to invert SSMI data taken over the Antarctic region.
机译:通过使用密集介质多重散射模型训练的神经网络,可以完成无源微波遥感测量中雪参数的反演。散射模型生成的输入输出对用于训练神经网络。据报道,从五个亮度温度同时反演三个参数,即雪中冰粒的平均粒径,雪密度和雪温。结果表明,神经网络对模拟数据给出了很好的结果。冰粒平均粒径和积雪密度的绝对百分比误差小于10%,积雪温度的绝对误差小于3K。具有三参数模型的训练加权系数的神经网络也是用于反转在南极地区获取的SSMI数据。

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