BibTex format
@article{Pal:2024:1538-4357/ad54c3,
author = {Pal, S and Luiz, LF and Weiss, AJ and Narock, T and Narock, A and Nieves-Chinchilla, T and Jian, LK and Good, SW},
doi = {1538-4357/ad54c3},
journal = {Astrophysical Journal},
title = {Automatic Detection of Large-scale Flux Ropes and Their Geoeffectiveness with a Machine-learning Approach},
url = {http://dx.doi.org/10.3847/1538-4357/ad54c3},
volume = {972},
year = {2024}
}
RIS format (EndNote, RefMan)
TY - JOUR
AB - Detecting large-scale flux ropes (FRs) embedded in interplanetary coronal mass ejections (ICMEs) and assessing their geoeffectiveness are essential, since they can drive severe space weather. At 1 au, these FRs have an average duration of 1 day. Their most common magnetic features are large, smoothly rotating magnetic fields. Their manual detection has become a relatively common practice over decades, although visual detection can be time-consuming and subject to observer bias. Our study proposes a pipeline that utilizes two supervised binary classification machine-learning models trained with solar wind magnetic properties to automatically detect large-scale FRs and additionally determine their geoeffectiveness. The first model is used to generate a list of autodetected FRs. Using the properties of the southward magnetic field, the second model determines the geoeffectiveness of FRs. Our method identifies 88.6% and 80% of large-scale ICMEs (duration ≥ 1 day) observed at 1 au by the Wind and the Solar TErrestrial RElations Observatory missions, respectively. While testing with continuous solar wind data obtained from Wind, our pipeline detected 56 of the 64 large-scale ICMEs during the 2008-2014 period (recall = 0.875), but also many false positives (precision = 0.56), as we do not take into account any additional solar wind properties other than the magnetic properties. We find an accuracy of 0.88 when estimating the geoeffectiveness of the autodetected FRs using our method. Thus, in space-weather nowcasting and forecasting at L1 or any planetary missions, our pipeline can be utilized to offer a first-order detection of large-scale FRs and their geoeffectiveness.
AU - Pal,S
AU - Luiz,LF
AU - Weiss,AJ
AU - Narock,T
AU - Narock,A
AU - Nieves-Chinchilla,T
AU - Jian,LK
AU - Good,SW
DO - 1538-4357/ad54c3
PY - 2024///
SN - 0004-637X
TI - Automatic Detection of Large-scale Flux Ropes and Their Geoeffectiveness with a Machine-learning Approach
T2 - Astrophysical Journal
UR - http://dx.doi.org/10.3847/1538-4357/ad54c3
VL - 972
ER -