Ionospheric Electron Density Model by Electron Density Grid Deep Neural Network (EDG-DNN)

Author:

Chen Zhou12ORCID,An Bokun12,Liao Wenti12,Wang Yungang34,Tang Rongxin12ORCID,Wang Jingsong5,Deng Xiaohua12

Affiliation:

1. Information Engineering School, Nanchang University, Nanchang 330000, China

2. Institute of Space Science and Technology, Nanchang University, Nanchang 330031, China

3. Key Laboratory of Space Weather, National Satellite Meteorological Center, China Meteorological Administration, Beijing 100081, China

4. Innovation Center for Fengyun Meteorological Satellite (FYSIC), Beijing 100081, China

5. Key Laboratory of Space Weather, National Center for Space Weather, China Meteorological Administration, Beijing 100081, China

Abstract

Electron density (or electron concentration) is a critical metric for characterizing the ionosphere’s mobility. Shortwave technologies, remote sensing systems, and satellite communications—all rely on precise estimations of electron density in the ionosphere. Using electron density profiles from FORMOSAT-3/COSMIC (Constellation Observation System for Meteorology, Ionosphere, and Climate) from 2006 to 2013, a four-dimensional physical grid model of ionospheric electron density was created in this study. The model, known as EDG-DNN, utilizes a DNN (deep neural network), and its output is the electron density displayed as a physical grid. The preprocessed electron density data are used to construct training, validation, and test sets. The International Reference Ionosphere model (IRI) was chosen as the reference model for the validation procedure since it predicts electron density well. This work used the IRI-2016 version. IRI-2016 produced more precise results of electron density when time and location parameters were input. This study compares the electron density provided by IRI-2016 to the EDG-DNN to assess the merits of the latter. The final results reveal that EDG-DNN has low-error and strong stability, can represent the global distribution structure of electron density, has some distinctive features of ionospheric electron density distribution, and predicts electron density well during quiet periods.

Funder

National Natural Science Foundation of China

Interdisciplinary Innovation Fund of Natural Science from Nanchang University

Publisher

MDPI AG

Subject

Atmospheric Science,Environmental Science (miscellaneous)

Reference29 articles.

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2. Tauriainin, A. (1986, January 9–14). Application of computerized tomography techniques to ionospheric research. Proceedings of the International Beacon Satellite Symposium on Radio Beacon Contribution to the Study of Ionization and Dynamics of the Ionosphere and to Corrections to Geodesy and Technical Workshop, Oulu, Finland. Part 1 (A87–50101 22–46).

3. Application of computerized tomography to the investigation of ionospheric structures;Raymund;Radio Sci.,1990

4. Improved background representation, ionosonde input and independent verification in experimental ionospheric tomography;Heaton;Ann. Geophys.,1995

5. Experimental ionospheric tomography with ionosonde input and EISCAT verification;Kersley;Ann. Geophys.,1993

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