Machine Learning‐Based Emulator for the Physics‐Based Simulation of Auroral Current System
Ryuho Kataoka,
Aoi Nakamizo,
Shinya Nakano
et al.
Abstract:Using a machine learning technique called echo state network (ESN), we have developed an emulator to model the physics‐based global magnetohydrodynamic simulation results of REPPU (REProduce Plasma Universe) code. The inputs are the solar wind time series with date and time, and the outputs are the time series of the ionospheric auroral current system in the form of two‐dimensional (2D) patterns of field‐aligned current, potential, and conductivity. We mediated a principal component analysis for a dimensionali… Show more
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