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Automated Classification of Plasma Regions Using 3D Particle Energy Distributions

Vyacheslav Olshevsky, Yuri V. Khotyaintsev, Ahmad Lalti, Andrey Divin, Gian Luca Delzanno, Sven Anderzén, Pawel Herman, Steven W. D. Chien, Levon Avanov, Andrew P. Dimmock, Stefano Markidis

2021Journal of Geophysical Research Space Physics34 citationsDOIOpen Access PDF

Abstract

Abstract We investigate the properties of the ion sky maps produced by the Dual Ion Spectrometers (DIS) from the Fast Plasma Investigation (FPI). We have trained a convolutional neural network classifier to predict four regions crossed by the Magnetospheric Multiscale Mission (MMS) on the dayside magnetosphere: solar wind, ion foreshock, magnetosheath, and magnetopause using solely DIS spectrograms. The accuracy of the classifier is %. We use the classifier to detect mixed plasma regions, in particular to find the bow shock regions. A similar approach can be used to identify the magnetopause crossings and reveal regions prone to magnetic reconnection. Data processing through the trained classifier is fast and efficient and thus can be used for classification for the whole MMS database.

Topics & Concepts

MagnetopauseClassifier (UML)PlasmaConvolutional neural networkArtificial intelligencePhysicsComputer scienceArtificial neural networkIonPattern recognition (psychology)Solar windSkyPlasma sheetRemote sensingComputationComputational physicsIonosphere and magnetosphere dynamicsSolar and Space Plasma DynamicsMagnetic confinement fusion research
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