Research output: Contribution to journal › Article › peer-review
Artificial Neural Networks Application in Estimating the Impact Parameter in Heavy Ion Collisions Using the Microchannel Plate Detector Data : Physics of Atomic Nuclei. / Galaktionov, K.A.; Roudnev, V.A.; Valiev, F.F.
In: Phys. At. Nucl., Vol. 86, No. 6, 2023, p. 1426-1432.Research output: Contribution to journal › Article › peer-review
}
TY - JOUR
T1 - Artificial Neural Networks Application in Estimating the Impact Parameter in Heavy Ion Collisions Using the Microchannel Plate Detector Data
T2 - Physics of Atomic Nuclei
AU - Galaktionov, K.A.
AU - Roudnev, V.A.
AU - Valiev, F.F.
N1 - Export Date: 11 March 2024 Адрес для корреспонденции: Galaktionov, K.A.; Saint Petersburg State UniversityRussian Federation; эл. почта: st067889@student.spbu.ru Сведения о финансировании: Saint Petersburg State University, SPbU, 94031112 Текст о финансировании 1: This work was supported by St. Petersburg State University project no. 94031112. Пристатейные ссылки: Baldin, A.A., Feofilov, G.A., Har’Yuzov, P., Valiev, F.F., (2020) Nucl. Instrum. Methods Phys. Res., Sect. A, 958; https://nica.jinr.ru/ru/; Li, F., Wang, Y., Gao, Z., Li, P., Lü, H., Li, Q., Tsang, C.Y., Tsang, M.B., (2021) Phys. Rev. C, 104; Kingma, D.P., Ba, J., (2014) Adam: A Method for Stochastic Optimization
PY - 2023
Y1 - 2023
N2 - Abstract: Evaluation of the impact parameter in a single event of relativistic heavy ion collision is crucial for correct and efficient data processing and analysis. In this work we have studied the possibility of estimating the impact parameter in heavy ion collisions by using artificial neural networks applied to the charged particle data from fast microchannel plate (MCP) detectors. Charged particles’ multiplicity, their spatial distribution and time-of-flight data were used as event features to be analyzed by the artificial neural network algorithms. We investigated two different configurations of microchannel plate detector layout, that have different data and computational requirements. We have shown that the developed artificial neural networks technique is capable of providing sufficiently good and fast results on the impact parameter determination in a single heavy ion collision event for both configurations of MCP detectors layout. In our first exercises, the proposed algorithm has successfully identified more than 90 of Au Au collision events with the impact parameter less than 5 fm or less than 1 fm, which suggests its use as a fast trigger. © Pleiades Publishing, Ltd. 2023.
AB - Abstract: Evaluation of the impact parameter in a single event of relativistic heavy ion collision is crucial for correct and efficient data processing and analysis. In this work we have studied the possibility of estimating the impact parameter in heavy ion collisions by using artificial neural networks applied to the charged particle data from fast microchannel plate (MCP) detectors. Charged particles’ multiplicity, their spatial distribution and time-of-flight data were used as event features to be analyzed by the artificial neural network algorithms. We investigated two different configurations of microchannel plate detector layout, that have different data and computational requirements. We have shown that the developed artificial neural networks technique is capable of providing sufficiently good and fast results on the impact parameter determination in a single heavy ion collision event for both configurations of MCP detectors layout. In our first exercises, the proposed algorithm has successfully identified more than 90 of Au Au collision events with the impact parameter less than 5 fm or less than 1 fm, which suggests its use as a fast trigger. © Pleiades Publishing, Ltd. 2023.
U2 - 10.1134/S1063778823060248
DO - 10.1134/S1063778823060248
M3 - статья
VL - 86
SP - 1426
EP - 1432
JO - Physics of Atomic Nuclei
JF - Physics of Atomic Nuclei
SN - 1063-7788
IS - 6
ER -
ID: 117488273