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Identification of Electron Diffusion Regions with a Machine Learning Approach on MMS Data at the Earth's Magnetopause

  • Q. Lenouvel
  • , V. Génot
  • , P. Garnier
  • , S. Toledo-Redondo
  • , B. Lavraud
  • , N. Aunai
  • , G. Nguyen
  • , D. J. Gershman
  • , R. E. Ergun
  • , P. A. Lindqvist
  • , B. Giles
  • , J. L. Burch

Research output: Contribution to journalArticlepeer-review

Abstract

This article presents 18 magnetic reconnection electron diffusion region (EDR) candidates found using a neural network algorithm with the Magnetospheric Multiscale Mission phase 1a data at the Earth's dayside magnetopause. These new candidates are compared to the 32 previously reported dayside EDRs listed in Webster et al. (2018), https://doi.org/10.1029/2018ja025245, which constitute the training database of our algorithm. One of the main parameters used is a scalar quantity called “MeanRL” which is based on the asymmetry of the electron velocity distribution function and better identifies electron agyrotropy in the plane perpendicular to the magnetic field. In the light of the new EDR candidates found, we discuss and analyze the sign of the energy dissipation during the reconnection process and the distinction between the inner and outer EDRs, with 40% of the candidates showing negative or oscillating dissipation. We also present in details one of the new identified EDR candidates.

Original languageEnglish
Article numbere2020EA001530
JournalEarth and Space Science
Volume8
Issue number5
DOIs
Publication statusPublished - 1 May 2021

Keywords

  • EDR
  • MMS
  • machine learning
  • magnetic reconnection
  • magnetopause
  • neural network

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