EGU2020-19053, updated on 09 Jan 2024
https://doi.org/10.5194/egusphere-egu2020-19053
EGU General Assembly 2020
© Author(s) 2024. This work is distributed under
the Creative Commons Attribution 4.0 License.

A Neural Network Model of Three-dimensional Magnetospheric Chorus Waves

Yingjie Guo1,2, Binbin Ni1, Dedong Wang2, Yuri Shprits2, Song Fu1, Xing Cao1, and Xudong Gu1
Yingjie Guo et al.
  • 1Wuhan University, School of Electronic Information, Space Physics, China
  • 2Section 2.8 Magnetospheric Physics, German Research Centre for Geosciences

The evolution of chorus waves is important in the inner magnetosphere since it is closely related to the loss and acceleration of radiation belt electrons. In this study, we develop neural-network-based models for upper-band chorus (UBC; 0.5 fce < f <  fce ) waves and lower-band chorus (LBC; 0.05 fce < f < 0.5 fce) waves, where fce is the equatorial electron gyrofrequency. We establish a root-mean-square amplitude database for both UBC and LBC using Van Allen Probe levels 2 and 3 data products from the EMFISIS payload between October 1, 2012 and January 14, 2018. Based on the database, we construct an artificial neural network with corresponding L, magnetic local time, magnetic latitude, solar wind parameters and geomagnetic indices on different time windows as model inputs. Additionally, we adopt several different feature selection techniques to determine the most important features of magnetospheric chorus waves, reduce training or running time and improve the model accuracy. Our study suggests that the model results using the machine learning technique have the great potential to highly improve current understanding of the radiation belt dynamics.

How to cite: Guo, Y., Ni, B., Wang, D., Shprits, Y., Fu, S., Cao, X., and Gu, X.: A Neural Network Model of Three-dimensional Magnetospheric Chorus Waves, EGU General Assembly 2020, Online, 4–8 May 2020, EGU2020-19053, https://doi.org/10.5194/egusphere-egu2020-19053, 2020.