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Upsampling Monte Carlo neutron transport simulation tallies using a convolutional neural network 被引量:1
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作者 Andrew Osborne joffrey dorville Paul Romano 《Energy and AI》 2023年第3期117-125,共9页
The physical quantities calculated by nuclear reactor Monte Carlo simulations are typically recorded on a grid of two or three spatial dimensions and one dimension of neutron energy.Because of this,increasing the reso... The physical quantities calculated by nuclear reactor Monte Carlo simulations are typically recorded on a grid of two or three spatial dimensions and one dimension of neutron energy.Because of this,increasing the resolution of the calculated quantities can have a significant impact on the memory and CPU time required to run a simulation.Convolutional neural networks have been shown to accurately upsample coarse-resolution photo-graphic images to resolutions multiple times finer than the originals.Here we show that a convolutional neural network can accurately upsample flux tallies in a Monte Carlo neutron transport simulation by a factor of two along the spatial and energy dimensions.Neutron flux tallies in pressurized water reactor assemblies were calculated using OpenMC at a 64×64 pixel spatial resolution and 8 neutron energy groups for input to the neural network.The network upsamples the low-resolution neutron flux to 128×128 pixel spatial resolution and 16 neutron energy groups.High-resolution neutron flux tallies and their uncertainties were also calculated with OpenMC and compared with the network’s predictions.The upsampled data and the high-resolution tally results agree to within the statistical uncertainty calculated by OpenMC. 展开更多
关键词 OpenMC Convolutional neural network Residual network Neutron Monte Carlo
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