Inverse Rendering of Fusion Plasmas: Inferring Plasma Composition from Imaging Systems
August 14, 2024 Β· Declared Dead Β· π Nuclear Fusion
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Authors
Ekin ΓztΓΌrk, Rob Akers, Stanislas Pamela, The MAST Team, Pieter Peers, Abhijeet Ghosh
arXiv ID
2408.07555
Category
physics.plasm-ph
Cross-listed
cs.GR
Citations
0
Venue
Nuclear Fusion
Last Checked
1 month ago
Abstract
In this work, we develop a differentiable rendering pipeline for visualising plasma emission within tokamaks, and estimating the gradients of the emission and estimating other physical quantities. Unlike prior work, we are able to leverage arbitrary representations of plasma quantities and easily incorporate them into a non-linear optimisation framework. The efficiency of our method enables not only estimation of a physically plausible image of plasma, but also recovery of the neutral Deuterium distribution from imaging and midplane measurements alone. We demonstrate our method with three different levels of complexity showing first that a poloidal neutrals density distribution can be recovered from imaging alone, second that the distributions of neutral Deuterium, electron density and electron temperature can be recovered jointly, and finally, that this can be done in the presence of realistic imaging systems that incorporate sensor cropping and quantisation.
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