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Main Authors: Mánek, Petr, Van Goffrier, Graham, Gopakumar, Vignesh, Nikolaou, Nikolaos, Shimwell, Jonathan, Waldmann, Ingo
Format: Preprint
Published: 2021
Subjects:
Online Access:https://arxiv.org/abs/2104.04026
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author Mánek, Petr
Van Goffrier, Graham
Gopakumar, Vignesh
Nikolaou, Nikolaos
Shimwell, Jonathan
Waldmann, Ingo
author_facet Mánek, Petr
Van Goffrier, Graham
Gopakumar, Vignesh
Nikolaou, Nikolaos
Shimwell, Jonathan
Waldmann, Ingo
contents The tritium breeding ratio (TBR) is an essential quantity for the design of modern and next-generation D-T fueled nuclear fusion reactors. Representing the ratio between tritium fuel generated in breeding blankets and fuel consumed during reactor runtime, the TBR depends on reactor geometry and material properties in a complex manner. In this work, we explored the training of surrogate models to produce a cheap but high-quality approximation for a Monte Carlo TBR model in use at the UK Atomic Energy Authority. We investigated possibilities for dimensional reduction of its feature space, reviewed 9 families of surrogate models for potential applicability, and performed hyperparameter optimisation. Here we present the performance and scaling properties of these models, the fastest of which, an artificial neural network, demonstrated $R^2=0.985$ and a mean prediction time of $0.898\ μ\mathrm{s}$, representing a relative speedup of $8\cdot 10^6$ with respect to the expensive MC model. We further present a novel adaptive sampling algorithm, Quality-Adaptive Surrogate Sampling, capable of interfacing with any of the individually studied surrogates. Our preliminary testing on a toy TBR theory has demonstrated the efficacy of this algorithm for accelerating the surrogate modelling process.
format Preprint
id arxiv_https___arxiv_org_abs_2104_04026
institution arXiv
publishDate 2021
record_format arxiv
spellingShingle Fast Regression of the Tritium Breeding Ratio in Fusion Reactors
Mánek, Petr
Van Goffrier, Graham
Gopakumar, Vignesh
Nikolaou, Nikolaos
Shimwell, Jonathan
Waldmann, Ingo
Computational Physics
Machine Learning
The tritium breeding ratio (TBR) is an essential quantity for the design of modern and next-generation D-T fueled nuclear fusion reactors. Representing the ratio between tritium fuel generated in breeding blankets and fuel consumed during reactor runtime, the TBR depends on reactor geometry and material properties in a complex manner. In this work, we explored the training of surrogate models to produce a cheap but high-quality approximation for a Monte Carlo TBR model in use at the UK Atomic Energy Authority. We investigated possibilities for dimensional reduction of its feature space, reviewed 9 families of surrogate models for potential applicability, and performed hyperparameter optimisation. Here we present the performance and scaling properties of these models, the fastest of which, an artificial neural network, demonstrated $R^2=0.985$ and a mean prediction time of $0.898\ μ\mathrm{s}$, representing a relative speedup of $8\cdot 10^6$ with respect to the expensive MC model. We further present a novel adaptive sampling algorithm, Quality-Adaptive Surrogate Sampling, capable of interfacing with any of the individually studied surrogates. Our preliminary testing on a toy TBR theory has demonstrated the efficacy of this algorithm for accelerating the surrogate modelling process.
title Fast Regression of the Tritium Breeding Ratio in Fusion Reactors
topic Computational Physics
Machine Learning
url https://arxiv.org/abs/2104.04026