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Spatial Interpolation of meteorology monitoring data for western China using back-propagation artificial neural networks

机译:基于反向传播人工神经网络的中国西部气象监测数据空间插值。

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Spatial interpolation algorithms are vital to environmental monitoring systems, especially for the real-time monitoring systems of critical variables in converting the point measurements to spatial continuous surfaces. This paper describes the spatial interpolation of meteorological observations (air temperature as an example) using a feed-forward back-propagation neural network based on the environment-affecting factors. These model independent estimators were (1) meteorological stations'' longitude, latitude, altitude; (2) Normalized Difference Vegetation Index; (3) slope and aspect. This is a first to consider all the factors for are temperature spatial interpolation when interpolating using a neural network. Especially the study area covers large region of complex terrain, which includes only 241 national meteorological stations over almost half-total area of China. However, the simulated results show that the model could provide reliable spatial estimations of monthly mean air temperature. Goodness of fit of model was very high (R>0.95) and efficient.
机译:空间插值算法对于环境监测系统至关重要,特别是对于将点测量值转换为空间连续表面的关键变量的实时监测系统而言。本文利用基于环境影响因素的前馈反向传播神经网络描述了气象观测的空间插值(以气温为例)。这些独立于模型的估计量是:(1)气象站的经度,纬度,高度; (2)归一化植被指数; (3)坡度和纵横比。这是首次使用神经网络进行插值时考虑温度空间插值的所有因素。特别是研究区域覆盖了大片复杂地形,仅占中国近一半面积的241个国家气象站。然而,模拟结果表明该模型可以提供每月平均气温的可靠空间估计。模型的拟合度很高(R> 0.95)并且有效。

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