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Are Dipolarization Fronts a Typical Feature of Magnetotail Plasma Jets Fronts?

GitHub license LASP

Code for the paper Are Dipolarization Fronts a Typical Feature of Magnetotail Plasma Jets Fronts?

Abstract

Plasma jets are ubiquitous in the Earth's magnetotail. Plasma jet fronts (JFs) are the seat of particle acceleration and energy conversion. JFs are commonly associated with dipolarization fronts (DFs) representing solitary sharp and strong increases in the northward component of the magnetic field. However, MHD and kinetic instabilities can develop at JFs and disturb the front structure which questions on the occurrence of DFs at the JFs. We investigate the structure of JFs using 5 years (2017-2021) of the Magnetospheric Multiscale observations in the CPS in the Earth's magnetotail. We compiled a database of 2394 CPS jets. We find that about half (42%) of the JFs are associated with large amplitude changes in $B_z$. DFs constitute a quarter of these large-amplitude events, while the rest are associated with more complicated magnetic field structures. We conclude that the ``classical" picture of DFs at the JFs is not the most common situation.

Reproducing our results

  • Instructions for reproduction are given within each section folder, in the associated README.md file.

Requirements

  • A requirements.txt file is available at the root of this repository, specifying the required packages for our analysis. To install the required packages run pip install -r requirements.txt

  • Routines specific to this study FastFlows is pip-installable: from the FastFlows folder run pip install .

Acknowledgement

We thank the entire MMS team and instrument PIs for data access and support. All of the data used in this paper are publicly available from the MMS Science Data Center https://lasp.colorado.edu/mms/sdc/. Data analysis was performed using the pyrfu analysis package available at https://pypi.org/project/pyrfu/. This work is supported by the SNSA grant 139/18.