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Main Authors: Wan, Chenguang, Almuhisen, Feda, Moreau, Philippe, Nouailletas, Remy, Qu, Zhisong, Cho, Youngwoo, Varennes, Robin, Lim, Kyungtak, Li, Kunpeng, Huang, Jia, Chen, Weidong, Li, Jiangang, Garbet, Xavier
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2602.19110
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author Wan, Chenguang
Almuhisen, Feda
Moreau, Philippe
Nouailletas, Remy
Qu, Zhisong
Cho, Youngwoo
Varennes, Robin
Lim, Kyungtak
Li, Kunpeng
Huang, Jia
Chen, Weidong
Li, Jiangang
Garbet, Xavier
author_facet Wan, Chenguang
Almuhisen, Feda
Moreau, Philippe
Nouailletas, Remy
Qu, Zhisong
Cho, Youngwoo
Varennes, Robin
Lim, Kyungtak
Li, Kunpeng
Huang, Jia
Chen, Weidong
Li, Jiangang
Garbet, Xavier
contents Accurately predicting plasma behavior based on discharge configurations is essential for the safe and efficient operation of tokamak experiments. While physics-based integrated modeling codes provide valuable insights, their high computational cost limits their applicability for fast scenario design and control optimization. In this study, we propose a transformer-based machine learning model to predict key global plasma parameters on the WEST tokamak, including the normalized beta ($β_{n}$), toroidal beta ($β_{t}$), poloidal beta ($β_{p}$), plasma stored energy ($W_{\mathrm{mhd}}$), safety factor at the magnetic axis ($q_{0}$), and safety factor at the 95% flux surface ($q_{95}$). The model uses only signals that can be defined before the discharge, such as magnetic coil currents, auxiliary heating power, plasma current reference, and line-averaged plasma density. Trained on 550 discharges from the WEST campaigns, the model demonstrates an average mean square error (MSE) loss of 0.026, an average coefficient of determination $R^{2}$ of 0.94, and achieves inference times on the order of 0.1 seconds. These results highlight the potential of data-driven surrogate models for assisting in discharge planning, scenario evaluation, and real-time control of tokamak plasmas.
format Preprint
id arxiv_https___arxiv_org_abs_2602_19110
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Machine learning prediction of plasma behavior from discharge configurations on WEST
Wan, Chenguang
Almuhisen, Feda
Moreau, Philippe
Nouailletas, Remy
Qu, Zhisong
Cho, Youngwoo
Varennes, Robin
Lim, Kyungtak
Li, Kunpeng
Huang, Jia
Chen, Weidong
Li, Jiangang
Garbet, Xavier
Plasma Physics
Accurately predicting plasma behavior based on discharge configurations is essential for the safe and efficient operation of tokamak experiments. While physics-based integrated modeling codes provide valuable insights, their high computational cost limits their applicability for fast scenario design and control optimization. In this study, we propose a transformer-based machine learning model to predict key global plasma parameters on the WEST tokamak, including the normalized beta ($β_{n}$), toroidal beta ($β_{t}$), poloidal beta ($β_{p}$), plasma stored energy ($W_{\mathrm{mhd}}$), safety factor at the magnetic axis ($q_{0}$), and safety factor at the 95% flux surface ($q_{95}$). The model uses only signals that can be defined before the discharge, such as magnetic coil currents, auxiliary heating power, plasma current reference, and line-averaged plasma density. Trained on 550 discharges from the WEST campaigns, the model demonstrates an average mean square error (MSE) loss of 0.026, an average coefficient of determination $R^{2}$ of 0.94, and achieves inference times on the order of 0.1 seconds. These results highlight the potential of data-driven surrogate models for assisting in discharge planning, scenario evaluation, and real-time control of tokamak plasmas.
title Machine learning prediction of plasma behavior from discharge configurations on WEST
topic Plasma Physics
url https://arxiv.org/abs/2602.19110