4.7 Article

A Machine Learning-Based Method for Modeling TEC Regional Temporal-Spatial Map

Journal

REMOTE SENSING
Volume 14, Issue 21, Pages -

Publisher

MDPI
DOI: 10.3390/rs14215579

Keywords

ionosphere; machine learning; principal component analysis; TEC

Funding

  1. National Natural Science Foundation of China [62031008]
  2. State Key Laboratory of Complex Electromagnetic Environment Effects on Electronics and Information System [CEMEE2022G0201, CEMEE-002-20220224]

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This study proposed a high-accuracy TEC prediction model based on machine learning, utilizing methods such as principal component analysis, solar activity parameters, and spatial interpolation. The model showed high consistency with observed values and outperformed the traditional IRI model.
In order to achieve the high-accuracy prediction of the total electron content (TEC) of the regional ionosphere for supporting the application of satellite navigation, positioning, measurement, and controlling, we proposed a modeling method based on machine learning (ML) and use this method to establish an empirical prediction model of TEC for parts of Europe. The model has three main characteristics: (1) The principal component analysis (PCA) is used to separate TEC's temporal and spatial variation characteristics and to establish its corresponding map, (2) the solar activity parameters of the 12-month mean flux of the solar radio waves at 10.7 cm (F10.7(12)) and the 12-month mean sunspot number (R-12) are introduced into the temporal map as independent variables to reflect the temporal variation characteristics of TEC, and (3) The modified Kriging spatial interpolation method is used to achieve the spatial reconstruction of TEC. Finally, the regression learning method is used to determine the coefficients and harmonic numbers of the model by using the root mean square error (RMSE) and its relative value (RRMSE) as the evaluation standard. Specially, the modeling process is easy to understand, and the determined model parameters are interpretable. The statistical results show that the monthly mean values of TEC predicted by the proposed model in this paper are highly consistent with the observed values curve of TEC, and the RRMSE of the predicted results is 12.76%. Furthermore, comparing the proposed model with the IRI model, it can be found that the prediction accuracy of TEC by the proposed model is much higher than that of the IRI model either with CCIR or URSI coefficients, and the improvement is 38.63% and 35.79%, respectively.

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