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Data-driven models in fusion exhaust: AI methods and perspectives

Author
Abstract

A review is given on the highlights of a scatter-shot approach of developing machine-learning methods and artificial neural networks based fast predictors for the application to fusion exhaust. The aim is to enable and facilitate optimized and improved modelling allowing more flexible integration of physics models in the light of extrapolations towards future fusion devices. The project encompasses various research objectives: a) developments of surrogate model predictors for power and particle exhaust in fusion power plants; b) assessments of surrogate models for time-dependent phenomena in the plasma-edge; c) feasibility studies of micro-macro model discovery for plasma-facing components surface morphology and durability; and d) enhancements of pedestal models and databases through interpolators and generators exploiting uncertainty quantification. Presented results demonstrate useful applications for machine-learning and artificial intelligence in fusion exhaust modeling schemes, enabling an unprecedented combination of both fast and accurate simulation.

Year of Publication
2024
Journal
Nuclear Fusion
Volume
64
Issue
8
Number of Pages
086046
Publisher
IOP Publishing
DOI
10.1088/1741-4326/ad5a1d
PId
7417661550456018007d7006d2bae1aa
Alternate Journal
Nucl. Fusion
Label
OA
Journal Article
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