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Retrieval snow depth by artificial neural network methodology from integrated AMSR-E and in-situ data—A case study in Qinghai-Tibet Plateau

机译:利用人工神经网络方法结合AMSR-E和原位数据反演积雪深度-以青藏高原为例

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摘要

On the basis of artificial neural network (ANN) model, this paper presents an algorithm for inversing snow depth with use of AMSR-E (Advanced Microwave Scanning Radiometer-Earth Observing System (EOS)) dataset, i.e., brightness temperature at 18.7 and 36.5GHz in Qinghai-Tibet Plateau during the snow season of 2002–2003. In order to overcome the overfitting problem in ANN modeling, this methodology adopts a Bayesian regularization approach. The experiments are performed to compare the results obtained from the ANN-based algorithm with those obtained from other existing algorithms, i.e., Chang algorithm, spectral polarization difference (SPD) algorithm, and temperature gradient (TG) algorithm. The experimental results show that the presented algorithm has the highest accuracy in estimating snow depth. In addition, the effects of the noises in datasets on model fitting can be decreased due to adopting the Bayesian regularization approach.
机译:在人工神经网络(ANN)模型的基础上,本文提出了一种利用AMSR-E(高级微波扫描辐射计-地球观测系统(EOS))数据集进行雪深反演的算法,即亮度温度分别为18.7和36.5。 2002-2003年雪季期间青藏高原的GHz。为了克服人工神经网络建模中的过拟合问题,该方法采用贝叶斯正则化方法。进行实验以比较从基于ANN的算法获得的结果与从其他现有算法(即Chang算法,光谱偏振差(SPD)算法和温度梯度(TG)算法)获得的结果进行比较。实验结果表明,该算法在估计雪深方面具有最高的精度。另外,由于采用了贝叶斯正则化方法,可以减少数据集中噪声对模型拟合的影响。

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