Machine Learning Techniques to Detect and Characterise Whistler Radio Waves
Othniel J.E.Y. Konan, Amit Kumar Mishra, Stefan Lotz

TL;DR
This paper develops machine learning models to automatically detect and localize whistler radio waves in VLF data, aiming to improve upon existing methods by reducing computational requirements and increasing detection accuracy.
Contribution
It introduces three machine learning-based detectors for whistler identification, demonstrating effective detection with less than 15% error, advancing the automation of space weather monitoring.
Findings
Detectors achieve less than 15% misdetection and false alarm rates.
Machine learning models outperform traditional correlation-based methods.
YOLO-based detector effectively localizes whistlers in spectrograms.
Abstract
Lightning strokes create powerful electromagnetic pulses that routinely cause very low frequency (VLF) waves to propagate across hemispheres along geomagnetic field lines. VLF antenna receivers can be used to detect these whistler waves generated by these lightning strokes. The particular time/frequency dependence of the received whistler wave enables the estimation of electron density in the plasmasphere region of the magnetosphere. Therefore the identification and characterisation of whistlers are important tasks to monitor the plasmasphere in real-time and to build large databases of events to be used for statistical studies. The current state of the art in detecting whistler is the Automatic Whistler Detection (AWD) method developed by Lichtenberger (2009). This method is based on image correlation in 2 dimensions and requires significant computing hardware situated at the VLF…
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Taxonomy
TopicsIonosphere and magnetosphere dynamics · Lightning and Electromagnetic Phenomena · Earthquake Detection and Analysis
