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Imaging neutron capture cross sections: i-TED proof-of-concept and future prospects based on Machine-Learning techniques (CROSBI ID 295754)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

(n_TOF Collaboration) Babiano-Suárez, V. ; ... ; Bosnar, Damir ; ... ; Žugec, Petar Imaging neutron capture cross sections: i-TED proof-of-concept and future prospects based on Machine-Learning techniques // European physical journal A : hadrons and nuclei, 57 (2021), 197, 17. doi: 10.1140/epja/s10050-021-00507-7

Podaci o odgovornosti

Babiano-Suárez, V. ; ... ; Bosnar, Damir ; ... ; Žugec, Petar

n_TOF Collaboration

engleski

Imaging neutron capture cross sections: i-TED proof-of-concept and future prospects based on Machine-Learning techniques

i-TED is an innovative detection system which exploits Compton imaging techniques to achieve a superior signal-to-background ratio in (n, γ) cross-section measurements using time-of-flight technique. This work presents the first experimental validation of the i-TED apparatus for high-resolution time-of-flight experiments and demonstrates for the first time the concept proposed for background rejection. To this aim, the 197Au(n, γ) and 56Fe(n, γ) reactions were studied at CERN n_TOF using an i-TED demonstrator based on three position-sensitive detectors. Two C6D6 detectors were also used to benchmark the performance of i-TED. The i-TED prototype built for this study shows a factor of ∼3 higher detection sensitivity than state-of-the-art C6D6 detectors in the 10 keV neutron-energy region of astrophysical interest. This paper explores also the perspectives of further enhancement in performance attainable with the final i-TED array consisting of twenty position-sensitive detectors and new analysis methodologies based on Machine-Learning techniques.

i-TED, neutron capture, n_TOF, machine learning

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Podaci o izdanju

57

2021.

197

17

objavljeno

1434-6001

1434-601X

10.1140/epja/s10050-021-00507-7

Povezanost rada

Fizika

Poveznice
Indeksiranost