Litcius/Paper detail

Echo state network model for analyzing solar-wind effects on the AU and AL indices

S. Nakano, Ryuho Kataoka

2022Annales Geophysicae14 citationsDOIOpen Access PDF

Abstract

Abstract. The properties of the auroral electrojets are examined on the basis of a trained machine-learning model. The relationships between solar-wind parameters and the AU and AL indices are modeled with an echo state network (ESN), a kind of recurrent neural network. We can consider this trained ESN model to represent nonlinear effects of the solar-wind inputs on the auroral electrojets. To identify the properties of auroral electrojets, we obtain various synthetic AU and AL data by using various artificial inputs with the trained ESN. The analyses of various synthetic data show that the AU and AL indices are mainly controlled by the solar-wind speed in addition to Bz of the interplanetary magnetic field (IMF) as suggested by the literature. The results also indicate that the solar-wind density effect is emphasized when solar-wind speed is high and when IMF Bz is near zero. This suggests some nonlinear effects of the solar-wind density.

Topics & Concepts

Solar windEcho state networkNonlinear systemEcho (communications protocol)PhysicsInterplanetary magnetic fieldMeteorologyInterplanetary spaceflightWind speedArtificial neural networkEnvironmental scienceComputational physicsMagnetic fieldComputer scienceRecurrent neural networkArtificial intelligenceComputer networkQuantum mechanicsNeural Networks and Reservoir ComputingComplex Systems and Time Series AnalysisMeteorological Phenomena and Simulations