利用多元深度LSTM模式预测不同纬度和太阳活动下电离层总电子含量

Nayana Shenvi, Hassanali Virani
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摘要

电离层状态对于预测受电离层空间天气影响的地面和天基无线电通信系统的可靠运行变得越来越重要。在这项研究中,我们研究并测试了一种多元长短期记忆(LSTM)深度学习模型在太阳平静年和太阳活跃年不同纬度区域的预测精度。我们还测试了它在地磁风暴发生期间的预测能力。利用北半球qaq1(60.7°N, 46.04°W)、baie(49.18°N, 68.26°W)、mas1(27.76°N, 15.63°W)和bogt(4.64°N, 74.08°W) 4个站点进行研究。为了优化特征提取过程,我们使用热图找到TEC与各种外源参数之间的相关性,最后使用9个相关参数作为输入来训练LSTM模型。以均方根误差(RMSE)和平均绝对误差(MAE)为评价指标,将LSTM模型与多层感知器(MLP)机器学习算法进行比较,验证了LSTM模型的性能。结果表明,在太阳平静年和太阳活跃年,该方法的精度分别比MLP提高了70%和64%。LSTM模型在地磁暴事件中的预报精度也比MLP模型高74%。这些结果证明了所建立的LSTM模型在估计TEC时的有效性和外源参数的正确选择,并表明该LSTM模型可以用于TEC的短期预测。
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Forecasting of Ionospheric Total Electron Content Data Using Multivariate Deep LSTM Model for Different Latitudes and Solar Activity
The ionospheric state is becoming increasingly important to forecast for the reliable operation of terrestrial and space-based radio-communication systems which are influenced by ionospheric space weather. In this study, we have investigated and tested a multivariate long short-term memory (LSTM) deep learning model for its forecasting accuracy over different latitudinal regions during the solar quiet and solar active years. We also tested its prediction capability during the occurrence of a geomagnetic storm. Four stations qaq1 (60.7°N, 46.04°W), baie (49.18°N, 68.26°W), mas1 (27.76°N, 15.63°W), and bogt (4.64°N, 74.08°W) in the northern hemisphere were used in this study. To optimize the feature extraction process, we used heat map to find the correlation between TEC and the various exogenous parameters and finally nine correlated parameters were used as inputs to train the LSTM model. The performance of the LSTM model was validated by comparing it with the multilayer perceptron (MLP) machine learning algorithm using root mean square error (RMSE) and mean absolute error (MAE) as evaluation indices. The results showed an accuracy improvement of 70% and 64% over MLP during the solar quiet and active years, respectively. The prediction accuracy of our LSTM model was also 74% better than MLP during the geomagnetic storm event. These findings demonstrate the effectiveness of the developed LSTM model and the right selection of the exogenous parameters in estimating TEC, and suggest that this LSTM model can be used for short-term TEC forecasting.
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