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Erosion and refilling of the plasmasphere during a geomagnetic storm modeled by a neural network
Author(s) -
Chu X. N.,
Bortnik J.,
Li W.,
Ma Q.,
Angelopoulos V.,
Thorne R. M.
Publication year - 2017
Publication title -
journal of geophysical research: space physics
Language(s) - English
Resource type - Journals
eISSN - 2169-9402
pISSN - 2169-9380
DOI - 10.1002/2017ja023948
Subject(s) - plasmasphere , geomagnetic storm , earth's magnetic field , magnetosphere , electron density , plume , geophysics , physics , geology , computational physics , atmospheric sciences , electron , plasma , meteorology , magnetic field , quantum mechanics
We present a history‐dependent model of the equatorial plasma density of the inner magnetosphere using a feedforward neural network with two hidden layers. As the model inputs, we take locations and time series of SYM ‐ H , AL , and F 10.7 indices. By considering not only the instantaneous values but also the past values of geomagnetic and solar indices, the model is history dependent on levels of geomagnetic and solar activity. The modeled electron density is continuous both spatially and temporally so that the evolution of the density can be studied (such as plasmaspheric refilling). The model is trained using the electron density inferred from the spacecraft potential from three THEMIS probes. The equatorial electron density is shown to be accurately reconstructed with a correlation coefficient of r ~ 0.953 between data and model target. Since the model is history dependent, it succeeds in reconstructing various density features and dynamic behaviors, such as the quiet time plasmasphere, erosion and recovery of the plasmasphere, as well as the plume formation during a storm on 4 February 2011. Our model may provide unprecedented insight into the behavior of the equatorial density at any time and location; as an example we show the inferred refilling rate from our model and compare it to previous estimates.