Global Magnetosphere Real Event Analysis from Runs on Request     (VMR Tools)
Analysis of Run: orbit247-07-20020202_104700_20020202_153200-constBx0 | |
Satellite Data Available |
Data-Model Comparison |
Model on Satellite Track |
Run information: |
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View standard CCMC run page. | ?? |
Event Date | | 2002/02/02 |
Start Time | | 2002/02/02 10:47 |
End Time | | 2002/02/02 15:30 |
Key Words | | Facsko et al 2016: 1-year run of GUMICS |
Model | | GUMICS |
Model Version | | 4-HC |
Validation Level | | 1 |
Coordinate System for Input | | GSM |
Coordinate System for Output | | GSE |
Dipole Tilt, in the X-Z Plane, at Start deg | | 11.62 |
Dipole Tilt, in Y-Z GSE plane, deg | | -7.39 |
Update Dipole Orientation with Time | | no |
Inflow Boundary R_E | | 32 |
F10.7 | | 233.70000 |
Conductance Model | | auroral |
Corotation | | |
Run Number | | orbit247-07-20020202_104700_20020202_153200-constBx0 |
Minimum Dst Value | | -84 |
SW Source | | DSCOVR-realtime |
Diagnostic Indices | | NO |
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View interactive javascript plot of satellite positions during this run in a new window.
Model values plot for GOES-8 for time period of this run.
Choose variable to plot:
![](data: image/png;base64,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)
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