Neutron cross section matrices for fission and scattering data are required for each material, temperature, and enrichment level to calculate the neutron transport equation accurately. This information can be a limiting factor when using the multigroup discrete ordinates (SN) method when the number of energy groups is large. Machine Learning (ML) can be used to replace the need for the cross section matrices by reproducing the function that maps the scalar flux to the scattering and fission sources. Through the use of autoencoders and Deep Jointly-Informed Neural Networks (DJINN), the data storage requirements are reduced by 94% of the original data for a 618 group problem. This is accomplished while preserving the scalar flux, maintaining ...
With the increasing needs of accurate simulation, the 3-D diffusion reactor physics module has been ...
Formulas for multiplicity counting rates (singles, doubles, etc.), used for the unfolding of paramet...
This dissertation studies the nexus of nuclear engineering, machine learning, and computer vision. T...
Recently, by using deep learning methods, a computer is able to surpass or come close to matching hu...
A new Machine Learning algorithm for shower-head identification in the NeuLAND neutron detector is p...
In this work, we apply a machine learning algorithm to the regression analysis of the nuclear cross-...
In this paper, Machine learning techniques have been employed for preparation and estimation of 96 M...
A good data analysis of neutron cross section measurements is necessary for generating high quality ...
ISBN 978-1-49-51-6286-2International audienceFuel depletion calculation codes require one-group mean...
Expressions for neutron and gamma factorial moments have been known in the literature. The neutron f...
Abstract With the rapid development of computer technology, artificial intelligence and big data tec...
Discontinuous Finite Element Methods (DFEM) have been widely used for solving SN radiation transport...
NeuLAND, the New Large Area Neutron Detector, is a key component to investigate the origin of matter...
This research presents new code for Monte Carlo N-Particle (MCNP) to achieve an improved time during...
With the increasing needs of accurate simulation, the 3-D diffusion reactor physics module has been ...
Formulas for multiplicity counting rates (singles, doubles, etc.), used for the unfolding of paramet...
This dissertation studies the nexus of nuclear engineering, machine learning, and computer vision. T...
Recently, by using deep learning methods, a computer is able to surpass or come close to matching hu...
A new Machine Learning algorithm for shower-head identification in the NeuLAND neutron detector is p...
In this work, we apply a machine learning algorithm to the regression analysis of the nuclear cross-...
In this paper, Machine learning techniques have been employed for preparation and estimation of 96 M...
A good data analysis of neutron cross section measurements is necessary for generating high quality ...
ISBN 978-1-49-51-6286-2International audienceFuel depletion calculation codes require one-group mean...
Expressions for neutron and gamma factorial moments have been known in the literature. The neutron f...
Abstract With the rapid development of computer technology, artificial intelligence and big data tec...
Discontinuous Finite Element Methods (DFEM) have been widely used for solving SN radiation transport...
NeuLAND, the New Large Area Neutron Detector, is a key component to investigate the origin of matter...
This research presents new code for Monte Carlo N-Particle (MCNP) to achieve an improved time during...
With the increasing needs of accurate simulation, the 3-D diffusion reactor physics module has been ...
Formulas for multiplicity counting rates (singles, doubles, etc.), used for the unfolding of paramet...
This dissertation studies the nexus of nuclear engineering, machine learning, and computer vision. T...