Optimizing Low-Energy Nuclear Reaction Measurements using Machine Learning
ORAL · Invited
Abstract
To access these reactions, measurements may be performed in inverse kinematics using radioactive ion beams, such as those available at the Facility for Rare Isotope Beams (FRIB). However, (p,n) reactions in inverse kinematics present a unique challenge; the reaction products and the unreacted beam have nearly identical masses, rendering their separation particularly challenging.
In this talk, I will present how machine learning aided a new experimental approach for the measurement of such reactions with a recoil separator. Specifically, I will describe a framework that combines multi-objective evolutionary algorithms with ion-optical simulations to optimize the recoil separator configuration for (p,n) measurements. This method has been successfully validated using a stable-beam 58Fe(p,n)58Co experiment, demonstrating its viability for future measurements with radioactive beams.
I will elaborate on the machine learning methodology, the experimental validation, and its significance for future (p,n) studies at FRIB. This work highlights how data-driven techniques are expanding experimental capabilities in nuclear physics and helping to address long-standing challenges in reaction measurements relevant to astrophysics.
–
Publication: Tsintari, P., Montes, F., Perdikakis, G., Schatz, H., et al. (2025b). Machine learning enabled measurements of astrophysical (p,n) reactions with the SECAR recoil separator. Physical Review Research, 7(1). https://doi.org/10.1103/physrevresearch.7.013074
Presenters
-
Pelagia Tsintari
Facility for Rare Isotope Beams / Michigan State University
Authors
-
Pelagia Tsintari
Facility for Rare Isotope Beams / Michigan State University
-
Kirby Hermansen
National Superconducting Cyclotron Laboratory, MSU
-
Fernando Montes
Facility for Rare Isotope Beams
-
Georg P Berg
University of Notre Dame
-
Benjamin H Bucci
Central Michigan University
-
Manoel Couder
University of Notre Dame
-
Georgios Perdikakis
Central Michigan University
-
Hendrik Schatz
Michigan State University and FRIB