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A Generative Neural Network for the Prediction of Radio Pulses from Extensive Air Showers

Sampathkumar, Pranav; Huege, Tim; Haungs, Andreas ORCID iD icon 1; Engel, Ralph
1 Institut für Astroteilchenphysik (IAP), Karlsruher Institut für Technologie (KIT)

Abstract (englisch):

A Generative Neural Network for the Prediction of Radio Pulses from Extensive Air Showers

Using radio emission from Extensive Air Showers (EAS) to measure cosmic rays has been gaining traction in recent years. Several large arrays of antennas have been planned or deployed in order to measure extensive showers and can give us insights into shower evolution with more and more precise measurements.

Simulations of radio emission from EAS are essential for reconstructing various shower parameters from the measured radio signals. Traditional microscopic simulations superpose the emission of all the electrons and positrons in the shower for every antenna. As modern experiments use more and more antennas, the computational cost of these simulations can get prohibitively large. Furthermore, modern reconstruction approaches such as Information Field Theory require fast, accurate and differentiable forward models for the prediction of air-shower radio pulses.

In this work, we present a novel neural network which predicts radio pulses for the environmental parameters of the Pierre Auger Observatory when provided with shower parameters including arrival direction, electromagnetic energy and depth of shower maximum for antenna positions on a star-shape grid. ... mehr


Zugehörige Institution(en) am KIT Institut für Astroteilchenphysik (IAP)
Publikationstyp Poster
Publikationsdatum 15.07.2025
Sprache Englisch
Identifikator KITopen-ID: 1000182776
HGF-Programm 51.13.04 (POF IV, LK 01) Kosmische Strahlung Technologien
Veranstaltung 39th ICRC - The Astroparticle Physics Conference (2025), Genf, Schweiz, 14.07.2025 – 24.07.2025
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