Machine Learning for MuSIC@Indiana Event Identification

ORAL

Abstract

The Multi-Sampling Ioniozation Chamber (MuSIC@Indiana) is a frisch-grided ionization chamber than can effectively and efficiently measure fusion cross sections at near-barrier energies [1]. Previously, this detector was used to measure the fusion cross section of 12C with beams of 16-20O [2]. In order to determine the cross section, the evaporation residues of the reaction must be separated from other events that occur in the detector. We aim to leverage machine learning techniques to quickly and efficiently separate different classes of events. This will be done utilizing a polynomial support vector machine (SVM). Furthermore, we are developing a machine learning model trained on simulated data, which will allow us to have an online analysis available for future experiments. The method will be employed on an upcoming 14O+12C experiment, the results of which will be presented in this talk.

This work is supported by DE-SC0022299 - TRAIN-MI Program: High Energy Physics Instrumentation Traineeship in Michigan and NSF PHY-2309923 WoU-MMA: Studying neutron stars through the lens of nuclear reactions.

[1] J. Johnstone et al., Nucl. Instr. Meth. A 1014, 166697 (2021).

[2] Hudan, Sylvie, et al. Physical Review C. 109. 10.1103 (2024).

*This work is supported by DE-SC0022299 and NSF PHY-2309923 WoU-MMA

Presenters

  • Jordan R Cory

    • Michigan State University

Authors

  • Jordan R Cory

    • Michigan State University
  • Kyle W Brown

    • Michigan State University/Facility for Rare Isotope Beams
  • Sylvie Hudan

    • Indiana University Bloomington
  • Hunter Desilets

    • Indiana University Bloomington
  • Rohit Kumar

    • Indiana University Bloomington
  • Romualdo T DeSouza

    • Indiana University Bloomington