LLM Reasoning 相关度: 6/10

First Estimation of Model Parameters for Neutrino-Induced Nucleon Knockout Using Simulation-Based Inference

Karla Tame-Narvaez, Steven Gardiner, Aleksandra Ćiprijanović, Giuseppe Cerati
arXiv: 2603.09778v1 发布: 2026-03-10 更新: 2026-03-10

AI 摘要

论文使用模拟推断改进中微子相互作用模型的参数估计,提升实验精度。

主要贡献

  • 使用SBI方法重新评估了GENIE模型的参数
  • 在MicroBooNE实验数据上验证了SBI方法的有效性
  • 展示了SBI方法对其他中微子散射模拟的近似能力

方法论

使用基于模拟的推断(SBI)方法,训练模型以优化中微子事件生成器GENIE的参数,并与MicroBooNE实验数据进行比较。

原文摘要

To enable an accurate determination of oscillation parameters, accelerator-based neutrino experiments require detailed simulations of nuclear interaction physics in the GeV regime. While substantial effort from both theory and experiment is currently being invested to improve the fidelity of these simulations, their present deficiencies typically oblige experimental collaborations to resort to empirical tuning of simulation model parameters. As the precision requirements of the field continue to become more stringent, machine learning techniques may provide a powerful means of handling corresponding growth in the complexity of future neutrino interaction model tuning exercises. To study the suitability of simulation-based inference (SBI) for this physics application, in this paper we revisit a tuned configuration of the GENIE neutrino event generator that was originally developed by the MicroBooNE collaboration. Despite closely reproducing the adopted values of four physics parameters when confronted with the tuned cross-section predictions as input, we find that our trained SBI algorithm prefers modestly different values (within MicroBooNE's assigned uncertainties) and achieves slightly better goodness-of-fit when inference is run on the experimental data set originally used by MicroBooNE. We also find that our trained algorithm can create a fair approximation of an alternative neutrino scattering simulation, NuWro, that shares only a subset of its physics model parameters with GENIE.

标签

模拟推断 中微子物理 模型参数优化 机器学习

arXiv 分类

hep-ph cs.AI hep-ex physics.comp-ph