Single station modelling of ionospheric irregularities using artificial neural networks

被引:0
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作者
Valence Habyarimana
John Bosco Habarulema
Daniel Okoh
Teshome Dugassa
Jean Claude Uwamahoro
机构
[1] Mbarara University of Science and Technology,Department of Physics
[2] South African National Space Agency (SANSA),Department of Physics and Electronics
[3] Space Science,United Nations African Regional Centre for Space Science and Technology Education
[4] Rhodes University, English (UN
[5] Istituto Nazionale di Geofisica e Vulcanologia (INGV),ARCSSTE
[6] Obafemi Awolowo University Campus,E)
[7] Entoto Observatory and Research Center,Department of Physics, College of Science and Technology
[8] Space Science and Geospatial Institute,undefined
[9] University of Rwanda,undefined
来源
Astrophysics and Space Science | 2023年 / 368卷
关键词
Modelling; Ionospheric irregularities; Artificial neural networks; Total Electron Content (TEC); Rate of change of TEC index (ROTI);
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摘要
An empirical model of ionospheric irregularities over Mbarara (MBAR, 30.7∘E geographic longitude, 0.6∘S geographic latitude, 10.22∘S geomagnetic latitude) based on Artificial Neural Networks (ANNs) is developed using Global Navigation Satellite System (GNSS) derived Total Electron Content (TEC) data from 2001–2022. This long term data helped to study the climatology of the trends, the diurnal, seasonal, and solar activity dependence of ionospheric irregularities. We used the rate of change of TEC index (ROTI) to quantify the strength of irregularities. The input space consisted of time of the day (Hr), day of the year (doy), z-component of the Interplanetary magnetic field (IMF Bz), symmetric horizontal component of the ring current (SYM-H), solar activity factor (F10.7P), and vertical E×B drift, all of which are thought to influence irregularity occurrence, though with different percentage contributions. Of these inputs, Hr, doy, and F10.7P constituted the primary input parameters (PIP). We investigated the contribution of each input to the ROTI changes by developing seven models adding an input to the PIP at each time. The greatest contributor to the modelling results was SYM-H with a percentage contribution of ≈2% (8%) for the model with both quiet and disturbed (only disturbed) conditions. The accuracy of the overall model during both geomagnetically quiet and disturbed (only disturbed) conditions was 0.1479 (0.1494) TECU/min with a correlation coefficient of 0.72 (0.65). The diurnal variability of ROTI was observed with higher values of ROTI existing between 1600 UT (1900 LT) and 2300 UT (0200 LT) than during other UT hours of the day. The ROTI values exhibited the semi-annual/seasonal variability with higher values during the March equinox than during the September equinox, and lower values during the solstice months. We further confirmed that irregularities depend on the solar activity. They are strong during high solar activity and minimal/weak during low/minimum solar activity periods.
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