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Modeling TEC Irregularities in the Northern Hemisphere Using Empirical Orthogonal Function Method
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  • Yaqi Jin,
  • Wojciech Jacek Miloch,
  • Daria Kotova,
  • Knut Stanley Jacobsen,
  • Đorđe Stevanovic,
  • Lasse Boy Novock Clausen,
  • Nicholas Ssessanga,
  • Federico Da Dalt
Yaqi Jin
University of Oslo

Corresponding Author:[email protected]

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Wojciech Jacek Miloch
University of Oslo
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Daria Kotova
University of Oslo
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Knut Stanley Jacobsen
Norwegian Mapping Authority
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Đorđe Stevanovic
GMV Innovating Solutions
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Lasse Boy Novock Clausen
University of Oslo
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Nicholas Ssessanga
University of Oslo
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Federico Da Dalt
Rhea System GmbH
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Abstract

We develop a climatological model for the Northern Hemisphere based on a long-term dataset (2010-2021) of the rate of change of the total electron content (TEC) index (ROTI) maps from the International GNSS Service (IGS). The IGS ROTI maps are daily averaged in magnetic latitude and local time coordinates. To develop a climatological model, the ROTI maps are decomposed into a few base functions and coefficients using the empirical orthogonal function (EOF) method. The EOF method converges very quickly, and the first four EOFs reflect the majority (96%) of the total data variability. Furthermore, different EOF components can reflect different drivers of ionospheric irregularities. The first EOF reflects the averaged ROTI activity and the impact of the solar radiation and geomagnetic activity; the 2nd EOF reflects the impact of the interplanetary magnetic field (IMF) Bz and electric field; the 3rd and 4th EOFs reflect the dawn-dusk asymmetry around the auroral oval and polar cap, and they can be related to the IMF By. To build an empirical model, we fit the EOF coefficients using helio-geophysical indices from four different categories (solar activity; geomagnetic indices; IMF; the solar wind coupling function). The final EOF model is dependent on seven selected indices (F10.7P, Kp, Dst, Bt, By, Bz and Ekl). The statistical data-model comparisons show satisfactory results with a good correlation coefficient. However, the model cannot capture the significant expansion of the dayside ROTI activity during strong geomagnetic storms. Future effort is needed to provide corrections to the model for severe storms.
15 Apr 2023Submitted to ESS Open Archive
16 Apr 2023Published in ESS Open Archive