Enhancing nuclear cross-section predictions with deep learning: the DINo algorithm
Levana Gesson, Greg Henning, Jonathan Collin, Marie Vanstalle

TL;DR
DINo, a deep learning algorithm, significantly improves nuclear cross-section predictions over traditional models by learning from experimental data, enhancing accuracy and speed for applications in nuclear physics and medicine.
Contribution
Introduces DINo, a novel deep learning-based method that enhances nuclear cross-section predictions by learning correlations between different reaction channels.
Findings
DINo reduces prediction discrepancies by approximately 28% for 11C production.
The model achieves lower chi2 values compared to TENDL-2021 across multiple isotopes.
DINo provides faster predictions, suitable for real-time nuclear data applications.
Abstract
Accurate modeling of nuclear reaction cross-sections is crucial for applications such as hadron therapy, radiation protection, and nuclear reactor design. Despite continuous advancements in nuclear physics, significant discrepancies persist between experimental data and theoretical models such as TENDL, and ENDF/B. These deviations introduce uncertainties in Monte Carlo simulations widely used in nuclear physics and medical applications. In this work, DINo (Deep learning Intelligence for Nuclear reactiOns) is introduced as a deep learning-based algorithm designed to improve cross-section predictions by learning correlations between charge-changing and total cross-sections. Trained on the TENDL-2021 dataset and validated against experimental data from the EXFOR database, DINo demonstrates a significant improvement in predictive accuracy over conventional nuclear models. The results show…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
Taxonomy
TopicsNuclear reactor physics and engineering · Nuclear Physics and Applications · Nuclear Materials and Properties
