Detection of magnetohydrodynamic waves by using machine learning
Fang Chen, Ravi Samtaney

TL;DR
This paper introduces two convolutional neural network-based methods for detecting and classifying magnetohydrodynamic waves in complex wave patterns, overcoming challenges of traditional identification methods and numerical smearing effects.
Contribution
The paper develops two novel CNN-based approaches for MHD wave detection, one assuming a fixed number of waves and the other without such assumption, improving accuracy and applicability.
Findings
High classification accuracy up to 0.99 achieved with the fixed output model
The second model effectively predicts wave locations and types without prior wave count
Methods show strong potential for complex MHD wave structure analysis
Abstract
Nonlinear wave interactions, such as shock refraction at an inclined density interface, in magnetohydrodynamic (MHD) lead to a plethora of wave patterns with myriad wave types. Identification of different types of MHD waves is an important and challenging task in such complex wave patterns. Moreover, owing to the multiplicity of solutions and their admissibility for different systems, especially for intermediate-type MHD shock waves, the identification of MHD wave types is complicated if one solely relies on the Rankine-Hugoniot jump conditions. MHD wave detection is further exacerbated by the unphysical smearing of discontinuous shock waves in numerical simulations. We present two MHD wave detection methods based on a convolutional neural network (CNN) which enables the classification of waves and identification of their locations. The first method separates the output into a…
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Taxonomy
TopicsIonosphere and magnetosphere dynamics · Earthquake Detection and Analysis · Non-Invasive Vital Sign Monitoring
