@article{a423157e444d42dda003bc5ef23079ca,
title = "Development of a High-Latitude Convection Model by Application of Machine Learning to SuperDARN Observations",
abstract = "A new model of northern hemisphere high-latitude convection derived using machine learning (ML) is presented. The ML algorithm random forests regression was applied to a database of velocities derived from the Super Dual Auroral Radar Network (SuperDARN) observations processed with the potential mapping technique, Map-Potential (Ruohoniemi & Baker, 1998, https://doi.org/10.1029/98ja01288). The features used to train the model were the interplanetary magnetic field components Bx, By, and Bz; the solar wind velocity, vsw; the auroral indices, Au and Al; and the geomagnetic index, SYM-H. The SuperDARN velocities were separated into north-south, and east-west components and sorted into a magnetic local time - magnetic latitude grid that ran from 55° to the magnetic pole with a bin size of 2° in latitude, and 1-hr in MLT. Separate models were created for each velocity component in each bin of the grid. It is found that even though the models in each bin are independent of one another a coherent convection pattern is formed when the models are viewed in aggregate. The resulting convection pattern responds to changes in the auroral indices by expanding and contracting in a way that is consistent with expectations for a substorm cycle. Further it is found that the mean-squared difference between predictions of the model and observed values of the velocity are substantially lower than the same quantity calculated for an existing climatology that was not formed with ML techniques.",
author = "Bristow, {W. A.} and Topliff, {C. A.} and Cohen, {M. B.}",
note = "Funding Information: This work is supported by the Defense Advanced Research Projects Agency (DARPA) through US Department of the Interior award D19AC00009 to the Georgia Institute of Technology and subaward to The Pennsylvania State University. SuperDARN operations and research at Pennsylvania State University are supported under NSF Grants PLR-1443 504 from the Office of Polar Programs, and AGS-1934 419 from the Geospace Section of NSF Division of Atmospheric and Geospace Sciences. The authors acknowledge the use of SuperDARN data. SuperDARN is a collection of radars funded by national scientific funding agencies of Australia, Canada, China, France, Italy, Japan, Norway, South Africa, United Kingdom and the United States of America. The authors acknowledge use of NASA/GSFC's Space Physics Data Facility's OMNIWeb service, and OMNI data. Funding Information: This work is supported by the Defense Advanced Research Projects Agency (DARPA) through US Department of the Interior award D19AC00009 to the Georgia Institute of Technology and subaward to The Pennsylvania State University. SuperDARN operations and research at Pennsylvania State University are supported under NSF Grants PLR‐1443 504 from the Office of Polar Programs, and AGS‐1934 419 from the Geospace Section of NSF Division of Atmospheric and Geospace Sciences. The authors acknowledge the use of SuperDARN data. SuperDARN is a collection of radars funded by national scientific funding agencies of Australia, Canada, China, France, Italy, Japan, Norway, South Africa, United Kingdom and the United States of America. The authors acknowledge use of NASA/GSFC's Space Physics Data Facility's OMNIWeb service, and OMNI data. Publisher Copyright: {\textcopyright} 2021. The Authors.",
year = "2022",
month = jan,
doi = "10.1029/2021SW002920",
language = "English (US)",
volume = "20",
journal = "Space Weather",
issn = "1542-7390",
publisher = "American Geophysical Union",
number = "1",
}