Characteristics of Low-Latitude Ionosphere Activity and Deterioration of TEC Model during the 7–9 September 2017 Magnetic Storm
Abstract
:1. Introduction
2. Experimental Data
2.1. Global Ionospheric Map
2.2. Hong Kong Satellite Positioning Reference Station Network
2.3. Space Weather Indices
3. Results and Discussion
3.1. Dst Index Fluctuation during Geomagnetic Storm
3.2. Time Characteristics of Low-Latitude Ionospheric Disturbance
3.3. Spatial Characteristics of Low-Latitude Ionospheric Disturbance
3.3.1. Zonal and Meridional Characteristics of VTEC
- 1.
- Main phase
- 2.
- Recovery phase
3.3.2. Spatial Distribution Characteristics of VTEC
3.4. Performance Analysis of Ionospheric Model during Geomagnetic Storm
3.4.1. Commonly Used Ionospheric Function Models
- (1)
- SH model
- (2)
- Polynomial model
- (3)
- ICE model
3.4.2. Principle of GNSS Ionospheric VTEC Inversion
3.4.3. Performance Analysis of Commonly Used Ionospheric Models
4. Conclusions
- This geomagnetic storm caused the VTEC peak value at low latitudes to be significantly higher than that of the quiet day, and the VTEC peak value increased by approximately 75%. During this geomagnetic storm, the increase in VTEC is mainly concentrated in the rising phase of the VTEC in the northern hemisphere, while it leads to the abnormal phenomenon of two peaks of VTEC in one day in the southern hemisphere.
- In the low-latitude regions where VTEC decreases with the change in longitude, the total VTEC in the northern hemisphere is significantly higher than that in the southern hemisphere on the same longitude, and the lower the latitude is, the more obvious the difference will be. This phenomenon is not significantly affected by the geomagnetic disturbance of the recovery phase.
- The daily minimum value of VTEC at different latitudes was basically the same during this geomagnetic storm, at about 5 TECU, indicating that the minimum value of the ionospheric VTEC (nighttime VTEC) in low latitudes was weakly affected by latitude and geomagnetic storms.
- It is inferred that during the geomagnetic storm, the weakening of the magnetic disturbance will weaken the “fountain effect” in the low-latitude ionospheric anomaly, thereby showing the VTEC single-peak characteristic. However, when the magnetic perturbation intensifies, it interferes with the “fountain effect”, hence enabling it to exhibit an anomalous characteristic of multiple peaks.
- When the model temporal resolution is 1 h, this geomagnetic storm event causes the accuracy of SH, polynomial, and ICE models to decrease by 7.12%, 27.87% and 48.56%, respectively, and cause serious distortion, which are negative VTEC values fitted by the polynomial model.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Geomagnetic Index | Quiet | Moderate Storm | Strong Storm |
---|---|---|---|
Dst [nT] | Greater than −50 | [−100, −50] | Less than −100 |
Storm Stage | Period |
---|---|
Initial phase | 7 September 2017 UTC 0:00~7 September 2017 UTC 22:00 |
Main phase | 7 September 2017 UTC 23:00~8 September 2017 UTC 3:00 |
Recovery phase | 8 September 2017 UTC 4:00~9 September 2017 UTC 23:00 |
UTC/H | 1 | 2 | 3 | 4 | 5 | 6 | 7 | 8 | 9 | 10 | 11 | 12 |
---|---|---|---|---|---|---|---|---|---|---|---|---|
Dst/nT | −125 | −142 | −128 | −114 | −124 | −110 | −108 | −108 | −90 | −73 | −63 | −63 |
UTC/H | 13 | 14 | 15 | 16 | 17 | 18 | 19 | 20 | 21 | 22 | 23 | 24 |
Dst/nT | −96 | −120 | −122 | −118 | −110 | −124 | −114 | −113 | −104 | −102 | −102 | −98 |
Mean | RMSE | ||||||
---|---|---|---|---|---|---|---|
SH | Pliynomial | ICE | SH | Pliynomial | ICE | ||
15 min | Quiet | 2.781 | 5.111 | 3.599 | 1.788 | 2.916 | 2.636 |
Disturbance | 3.096 | 4.646 | 5.523 | 3.096 | 4.646 | 5.523 | |
Percentage | 11.33% | −9.09% | 53.45% | 73.15% | 59.33% | 109.52% | |
30 min | Quiet | 3.364 | 4.349 | 3.398 | 3.001 | 3.823 | 3.224 |
Disturbance | 4.123 | 6.147 | 5.766 | 3.459 | 5.475 | 4.917 | |
Percentage | 22.56% | 41.34% | 69.69% | 15.26% | 43.21% | 52.51% | |
1 h | Quiet | 5.121 | 5.875 | 3.283 | 6.612 | 8.027 | 4.428 |
Disturbance | 6.043 | 8.471 | 5.654 | 7.083 | 10.264 | 6.579 | |
Percentage | 18.00% | 44.19% | 72.22% | 7.12% | 27.87% | 48.58% |
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Li, J.; Wang, Y.; Yang, S.; Wang, F. Characteristics of Low-Latitude Ionosphere Activity and Deterioration of TEC Model during the 7–9 September 2017 Magnetic Storm. Atmosphere 2022, 13, 1365. https://doi.org/10.3390/atmos13091365
Li J, Wang Y, Yang S, Wang F. Characteristics of Low-Latitude Ionosphere Activity and Deterioration of TEC Model during the 7–9 September 2017 Magnetic Storm. Atmosphere. 2022; 13(9):1365. https://doi.org/10.3390/atmos13091365
Chicago/Turabian StyleLi, Jianfeng, Yongqian Wang, Shiqi Yang, and Fang Wang. 2022. "Characteristics of Low-Latitude Ionosphere Activity and Deterioration of TEC Model during the 7–9 September 2017 Magnetic Storm" Atmosphere 13, no. 9: 1365. https://doi.org/10.3390/atmos13091365
APA StyleLi, J., Wang, Y., Yang, S., & Wang, F. (2022). Characteristics of Low-Latitude Ionosphere Activity and Deterioration of TEC Model during the 7–9 September 2017 Magnetic Storm. Atmosphere, 13(9), 1365. https://doi.org/10.3390/atmos13091365