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Preprint / Version 2

SURROGATE MODEL OPTIMIZATION OF A ‘MICRO CORE’ PWR FUEL ASSEMBLY ARRANGEMENT USING DEEP LEARNING MODELS

##article.authors##

  • Andy Whyte
  • Geoff Parks

DOI:

https://doi.org/10.31224/osf.io/aq3dt

Keywords:

deep learning, fuel management, optimisation, PWR, surrogate model

Abstract

This paper investigates the applicability of surrogate model optimization (SMO) using deep learning regression models to automatically embed knowledge about the objective function into the optimization process. This paper demonstrates two deep learning SMO methods for calculating simple neutronics parameters. Using these models, SMO returns results comparable with those from the early stages of direct iterative optimization. However, for this study, the cost of creating the training set outweighs the benefits of the surrogate models.

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Posted

2019-09-24 — Updated on 2019-09-24

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