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Construction of LSTM model for total electron content (TEC) prediction in Thailand

机译:泰国全电子含量(TEC)预测LSTM模型的构建

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Total electron content (TEC) is an important parameter often used to explain the ionosphere characteristics and disturbances. Severe local disturbance often originates in the equatorial region then expand to low- and mid-latitude regions. Vertical TEC (VTEC as well as slant TEC (STEC) modeling's and predictions attract attention from researchers worldwide since they are essential for characterization and warning to users. Therefore, in this work, we design a local VTEC prediction model based on the Long-Short Term Memory (LSTM) Neural Network by using the GPS data from 12 stations in Thailand. The results show that the root mean square error (RMSE) of LSTM loopback 24 together with the 120 hidden layers from all stations in 2008-2016 is the best model. The RMSE of the proposed model from the actual VTEC reach about 3.26 TECu, less than that from the IRI 2016 model at 6.5 TECu. In addition, the R-square values of the proposed model and the IRI 2016 model reach 78.33% and 63.7892%, respectively, during storm and quiet periods in 2020. The designed LSTM model is a promising method to predict VTEC in this region.
机译:总电子含量(TEC)是通常用于解释电离层特征和干扰的重要参数。严重的局部扰动通常来自赤道区域,然后扩展到低纬度地区。垂直TEC(VTEC以及倾斜TEC(STEC)建模和预测吸引了全世界研究人员的注意,因为它们对于用户的特征和警告至关重要。因此,在这项工作中,我们根据长短路设计了本地VTEC预测模型术语存储器(LSTM)神经网络通过使用来自泰国的12个站的GPS数据。结果表明,LSTM环回24的根均线误差(RMSE)与2008 - 2016年所有站的120个隐藏层一起是最好的模型。从实际VTEC的拟议模型的RMSE达到3.26 TECU,比6.5 TECU的IRI 2016型号少于3.26型。此外,所提出的模型的R-Square值和IRI 2016模型达到78.33%在2020年的风暴和安静时期分别为63.7892%。设计的LSTM模型是预测该地区VTEC的有希望的方法。

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