Detecting an axion-like particle with machine learning at the LHC


Abstract in English

Axion-Like particles (ALPs) appear in various new physics models with spontaneous global symmetry breaking. When the ALP mass is in the range of MeV to GeV, the cosmology and astrophysics bounds are so far quite weak. In this work, we investigate such light ALPs through the ALP-strahlung production process pp to Va(a to {gamma}{gamma}) at the 14TeV LHC with an integrated luminosity of 3000 fb^(-1)(HL-LHC). Building on the concept of jet image which uses calorimeter towers as the pixels of the image and measures a jet as an image, we investigate the potential of machine learning techniques based on convolutional neural network (CNN) to identify the highly boosted ALPs which decay to a pair of highly collimated photons. With the CNN tagging algorithm, we demonstrate that our approach can extend current LHC sensitivity and probe the ALP mass range from 0.3GeV to 10GeV. The obtained bounds are significantly stronger than the existing limits on the ALP-photon coupling.

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