论文标题

横截面多普勒使用物理知情的深神经网络扩大预测

Cross Section Doppler Broadening prediction using Physically Informed Deep Neural Networks

论文作者

Pignet, Arthur, Leal, Luiz, Jaiswal, Vaibhav

论文摘要

中子核相互作用的温度依赖性被称为横截面的多普勒拓宽。这是由于中子核相互作用中发生的靶核的热运动,这是一种众所周知的效果。这种影响的快速计算对于任何核应用至关重要。已经开发了机理,可以在横截面中确定多普勒效应,其中大多数基于称为Solbrig的核的数值分辨率,该方程是Solbrig的内核,这是跨截面多普勒拓宽形式,源自自由气体原子分布假设。本文探讨了一种基于深度学习技术的新型非线性方法。深层神经网络经过合成和实验数据的训练,可作为横截面多普勒拓宽(DB)的替代方法。本文探讨了使用物理知情的神经网络的可能性,该网络被物理正规化为从Solbrig的内核推断出的部分导数方程的解决方案。通过使用$^{235} u $在热量到2250 eV的能量范围内的裂变,捕获和散射横截面来证明学习过程。

Temperature dependence of the neutron-nucleus interaction is known as the Doppler broadening of the cross-sections. This is a well-known effect due to the thermal motion of the target nuclei that occurs in the neutron-nucleus interaction. The fast computation of such effects is crucial for any nuclear application. Mechanisms have been developed that allow determining the Doppler effects in the cross-section, most of them based on the numerical resolution of the equation known as Solbrig's kernel, which is a cross-section Doppler broadening formalism derived from a free gas atoms distribution hypothesis. This paper explores a novel non-linear approach based on deep learning techniques. Deep neural networks are trained on synthetic and experimental data, serving as an alternative to the cross-section Doppler Broadening (DB). This paper explores the possibility of using physically informed neural networks, where the network is physically regularized to be the solution of a partial derivative equation, inferred from Solbrig's kernel. The learning process is demonstrated by using the fission, capture, and scattering cross sections for $^{235}U$ in the energy range from thermal to 2250 eV.

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