Physics-Informed Neural Network with Fourier Features for Radiation Transport in Heterogeneous Media

被引:8
作者
Huhn, Quincy A. [1 ]
Tano, Mauricio E. [1 ]
Ragusa, Jean C. [1 ]
机构
[1] Texas A&M Univ, Dept Nucl Engn, College Stn, TX 77843 USA
关键词
Physics-informed neural network; radiation transport; Fourier Features;
D O I
10.1080/00295639.2023.2184194
中图分类号
TL [原子能技术]; O571 [原子核物理学];
学科分类号
0827 ; 082701 ;
摘要
Typical machine learning (ML) methods are difficult to apply to radiation transport due to the large computational cost associated with simulating problems to create training data. Physics-informed Neural Networks (PiNNs) are a ML method that train a neural network with the residual of a governing equation as the loss function. This allows PiNNs to be trained in a low-data regime in the absence of (experimental or synthetic) data. PiNNs also are trained on points sampled within the phase-space volume of the problem, which means they are not required to be evaluated on a mesh, providing a distinct advantage in solving the linear Boltzmann transport equation, which is difficult to discretize. We have applied PiNNs to solve the streaming and interaction terms of the linear Boltzmann transport equation to create an accurate ML model that is wrapped inside a traditional source iteration process. We present an application of Fourier Features to PiNNs that yields good performance on heterogeneous problems. We also introduce a sampling method based on heuristics that improves the performance of PiNN simulations. The results are presented in a suite of one-dimensional radiation transport problems where PiNNs show very good agreement when compared to fine-mesh answers from traditional discretization techniques.
引用
收藏
页码:2484 / 2497
页数:14
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