A Deep Learning Method for AGILE-GRID GRB Detection
N. Parmiggiani, A. Bulgarelli, V. Fioretti, A. Di Piano, A. Giuliani,, F. Longo, F. Verrecchia, M. Tavani, D. Beneventano, A. Macaluso

TL;DR
This paper introduces a CNN-based method for detecting Gamma-Ray Bursts in AGILE-GRID data, significantly outperforming the traditional Li&Ma method, and can be integrated into real-time analysis pipelines.
Contribution
The paper presents a novel CNN approach trained on simulated data to improve GRB detection in AGILE-GRID observations over existing methods.
Findings
CNN detected 21 GRBs with ≥3σ significance, compared to 2 by Li&Ma.
The CNN method enhances detection sensitivity and effectiveness.
The approach can be implemented in real-time analysis pipelines.
Abstract
The follow-up of external science alerts received from Gamma-Ray Bursts (GRB) and Gravitational Waves (GW) detectors is one of the AGILE Team's current major activities. The AGILE team developed an automated real-time analysis pipeline to analyse AGILE Gamma-Ray Imaging Detector (GRID) data to detect possible counterparts in the energy range 0.1-10 GeV. This work presents a new approach for detecting GRBs using a Convolutional Neural Network (CNN) to classify the AGILE-GRID intensity maps improving the GRBs detection capability over the Li&Ma method, currently used by the AGILE team. The CNN is trained with large simulated datasets of intensity maps. The AGILE complex observing pattern due to the so-called 'spinning mode' is studied to prepare datasets to test and evaluate the CNN. A GRB emission model is defined from the Second Fermi-LAT GRB catalogue and convoluted with the AGILE…
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