In this article we describe the implementation of Artificial Intelligence models in track reconstruction software for the CLAS12 detector at Jefferson Lab. The Artificial Intelligence based approach resulted in improved track reconstruction efficiency in high luminosity experimental conditions. The track reconstruction efficiency increased by 10−12% for single particle, and statistics in multi-particle physics reactions increased by 15%−35% depending on the number of particles in the reaction. The implementation of artificial intelligence in the workflow also resulted in a speedup of the tracking by 35%.
@article{arxiv.2202.06869,
title = {CLAS12 Track Reconstruction with Artificial Intelligence},
author = {Gagik Gavalian and Polykarpos Thomadakis and Angelos Angelopoulos and Nikos Chrisochoides and Raffaella De Vita and Veronique Ziegler},
journal= {arXiv preprint arXiv:2202.06869},
year = {2022}
}