Constraining strongly-coupled new physics from cosmic rays with machine learning techniques.

2019 
Cosmic rays interacting with the atmosphere allow for the probing of fundamental interactions at ultra-high energies. We thus obtain limits on strongly-coupled new physics models via their imprints on cosmic ray air showers. Using the Monte Carlo event generators Herwig and HERBVI, and the air shower simulator CORSIKA, to simulate such processes, we apply machine learning algorithms to the simulated observables to discriminate the events arising via new physics from the QCD background, before using the signal and background discrimination performance to set potential limits on the cross sections of the new physics models.
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