2023
DOI: 10.1007/s41365-023-01313-0
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Physics-constrained neural network for solving discontinuous interface K-eigenvalue problem with application to reactor physics

Qi-Hong Yang,
Yu Yang,
Yang-Tao Deng
et al.

Abstract: Machine learning-based modeling of reactor physics problems has attracted increasing interest in recent years. Despite some progress in one-dimensional problems, there is still a paucity of benchmark studies that are easy to solve using traditional numerical methods albeit still challenging using neural networks for a wide range of practical problems. We present two networks, namely the Generalized Inverse Power Method Neural Network (GIPMNN) and Physics-Constrained GIPMNN (PC-GIPIMNN) to solve K-eigenvalue pr… Show more

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