1:45 PM - 3:15 PM
[MGI26-P14] Data assimilation into a machine learning-based emulator of global MHD simulation
Keywords:data assimilation, magnetosphere-ionosphere system, machine learning
To overcome the problem of the computational cost, we have developed a machine learning-based emulator of the MHD model of the magnetosphere. Our emulator, which is based on an echo state network model, allows us to efficiently predict the ionospheric potential distribution under a given solar wind condition. We then assimilate the SuperDARN (Super Dual Auroral Radar Network) data, which provides the information on ionospheric plasma flow, into the emulator. This approach is promising for real-time monitoring of the ionospheric state.