A deep learning based surrogate model is proposed for replacing the conventional diffusion equation solver and predicting the flux and power distribution of the reactor core. Using the training data generated by the conventional diffusion equation solver, a special designed convolutional neural network inspired by the FCN (Fully Convolutional Network) is trained under the deep learning platform TensorFlow. Numerical results show that the deep learning based surrogate model is effective for estimating the flux and power distribution calculated by the diffusion method, which means it can be used for replacing the conventional diffusion equation solver with high efficiency boost
Numerical simulations are usually used to analyze and optimize the performance of the nanofluid-fill...
One of the major design limitations for tokamak fusion reactors is the heat load that can be sustain...
International audienceA novel chemistry reduction strategy based on convolutional neural networks (C...
The design of strongly coupled multidisciplinary engineering systems is challenging since it is char...
Obtaining transient flow field information of gas diffusion layers (GDLs) is a crucial issue for imp...
In many mechanistic medical, biological, physical, and engineered spatiotemporal dynamic models the ...
This paper investigates the applicability of surrogate model optimization (SMO) using deep learning ...
This paper investigates the applicability of surrogate model optimization (SMO) using deep learning ...
We present deep-learning-based surrogate models for CCUS developed with four different algorithms an...
Abstract Based on physics-informed deep learning method, the deep learning model is proposed for the...
In this work, a topology optimization procedure is proposed and applied to the TEAM 25 problem, i.e....
During loading pattern (LP) optimization and reactor design, a lot of time consumption spent on eval...
With the increasing needs of accurate simulation, the 3-D diffusion reactor physics module has been ...
Abstract With the rapid development of computer technology, artificial intelligence and big data tec...
In this work, we studied the coupling of CFD simulation with machine learning models, by using a lar...
Numerical simulations are usually used to analyze and optimize the performance of the nanofluid-fill...
One of the major design limitations for tokamak fusion reactors is the heat load that can be sustain...
International audienceA novel chemistry reduction strategy based on convolutional neural networks (C...
The design of strongly coupled multidisciplinary engineering systems is challenging since it is char...
Obtaining transient flow field information of gas diffusion layers (GDLs) is a crucial issue for imp...
In many mechanistic medical, biological, physical, and engineered spatiotemporal dynamic models the ...
This paper investigates the applicability of surrogate model optimization (SMO) using deep learning ...
This paper investigates the applicability of surrogate model optimization (SMO) using deep learning ...
We present deep-learning-based surrogate models for CCUS developed with four different algorithms an...
Abstract Based on physics-informed deep learning method, the deep learning model is proposed for the...
In this work, a topology optimization procedure is proposed and applied to the TEAM 25 problem, i.e....
During loading pattern (LP) optimization and reactor design, a lot of time consumption spent on eval...
With the increasing needs of accurate simulation, the 3-D diffusion reactor physics module has been ...
Abstract With the rapid development of computer technology, artificial intelligence and big data tec...
In this work, we studied the coupling of CFD simulation with machine learning models, by using a lar...
Numerical simulations are usually used to analyze and optimize the performance of the nanofluid-fill...
One of the major design limitations for tokamak fusion reactors is the heat load that can be sustain...
International audienceA novel chemistry reduction strategy based on convolutional neural networks (C...