A neural network approach for orienting heavy-ion collision events

oleh: Zu-Xing Yang, Xiao-Hua Fan, Zhi-Pan Li, Shunji Nishimura

Format: Article
Diterbitkan: Elsevier 2024-01-01

Deskripsi

A convolutional neural network-based classifier is elaborated to retrace the initial orientation of deformed nucleus-nucleus collisions by integrating multiple typical experimental observables. The isospin-dependent Boltzmann-Uehling-Uhlenbeck transport model is employed to generate data for random orientations of ultra-central uranium-uranium collisions at Ebeam=1GeV/nucleon. Statistically, the data-driven polarization scheme is essentially accomplished via the classifier, whose distinct categories filter out specific orientation-biased collision events. This will advance the deformed nucleus-based studies on nuclear symmetry energy, neutron skin, etc.