Abstract. The auroral oval boundary represents an important physical
process with implications for the ionosphere and magnetosphere. An automatic
auroral oval boundary prediction method based on deep learning in this paper
is applied to study the variation of the auroral oval boundary associated with
different space physical parameters. We construct an auroral oval boundary
dataset to train our proposed model, which consists of 184 416 auroral oval
boundary points extracted from 3842 images captured
by the Ultraviolet Imager (UVI) of the Polar satellite and its corresponding 18 space
physical parameters selected from the OMNI dataset from December 1996 to March 1997. Furthermore, several statistical experiments and correlation analysis
experiments are performed based on our dataset to explore the relationship
between space physical parameters and the location of the auroral oval boundary.
The experiment results show that the prediction model based on the deep learning
method can estimate the auroral oval boundary efficiently, and different space
physical parameters have different effects on the auroral oval boundary,
especially the interplanetary magnetic field (IMF), geomagnetic indexes, and
solar wind parameters.
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