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A Neural Network Algorithm to Retrieve Near-surface Air Temperature from Landsat ETM+ Imagery over the Hanjiang River Basin, China

机译:神经网络算法从汉江流域哈尔斯特ETM +图像取回近地表空气温度

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An algorithm based on a BP neural network for retrieval of near-surface daily mean, maximum and minimum air temperature from remotely sensed data was developed in this paper. The algorithm was tested to map air temperature by integrating Landsat Enhanced Thematic Mapper Plus (ETM+) derived surface information with GIS provided meteorological parameters with a BP neural network over the upstream Basin of the Hanjiang River, Southwestern China. The parameters involved in the training of the BP neural network for inversion of air temperature can be subdivided into six groups, each was used to represent different data sources for testing the sensitivity of these variables on the near-surface air temperature retrieved. These parameters are remotely sensed albedo, NDVI, layered meteorological data of station observed daily mean, maximum and minimum are temperature provided by GIS as well as the DEM of the study site. Five criterions, namely Mean Error (ME), Mean Absolute Error (MAE), Root Mean Squared Error (RMSE), Mean Relative Error (MRE) and correlation coefficient (R2) were utilized to evaluate the performance of the proposed algorithm by comparing the retrieved and the observed air temperature quantitatively. Systematic analyses suggested that the satisfied retrieval of daily mean and maximum near-surface air temperature can be achieved with MRE of 3.02% and 2.23% and RMSE of 0.93 and 0.9 respectively. However, only when all the parameters including daily mean and maximum near-surface air temperature were used for training the BP neural network, the daily minimum air temperature could be retrieved with the best MRE of 8.31%. From this study, it can be concluded that the BP neural network integrating with surface meteorological observations might be a promising approach for retrieving near-surface air temperature with reliable accuracy.
机译:本文开发了一种基于BP神经网络的基于BP神经网络,用于检索近表面每日平均值,最大和最小空气温度。通过将Landsat增强专题Mapper Plus(ETM +)衍生的表面信息与GIS集成,通过GIS对算法进行了测试以映射空气温度,并在中国西南部汉江的上游盆地上进行了BP神经网络的气象参数。用于训练BP神经网络的用于反转的空气温度训练的参数可以细分为六组,每个源用于代表不同的数据源,用于测试这些变量对检索的近表面空气温度的敏感性。这些参数遥感反照率,NDVI,分层站的气象数据每天观察平均值,最大值和最小值是由GIS提供以及研究现场的DEM温度。五个标准,即平均误差(ME),平均绝对误差(MAE),均方根误差(RMSE),均值相对误差(MRE)和相关系数(R2)来评估所提出的算法的性能定量检索和观察到的空气温度。系统分析表明,每日平均值和最大近表面空气温度的满足检索可以通过3.02%和2.23%和0.93和0.9的Rmse实现。然而,只有当包括每天平均值和最大近表面空气温度的所有参数用于训练BP神经网络时,才能以8.31%的最佳MRE检索每日最低气温。从本研究开始,可以得出结论,与表面气象观测相结合的BP神经网络可能是用于以可靠的精度检索近表面空气温度的有希望的方法。

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