Development of Impurity Transport Coefficient Calculation Algorithm Using Physics-Informed Neural Network
POSTER
Abstract
We propose an enhanced algorithm employing physics-informed neural networks (PINNs) to infer impurity transport coefficient profiles in tokamak plasmas. The proposed PINN-based algorithm incorporates the governing equations and related boundary conditions directly into the loss function, eliminating the need for a training process. The algorithm takes the temporal impurity density distribution and seeding rate as input parameters, and outputs the time-independent transport coefficients profiles that reproduce the impurity density distribution. The algorithm was validated through the utilization of three types of argon-seeded H-mode experiments conducted at KSTAR, each with a plasma current of 0.6 MA, a toroidal magnetic field of 2.8 T, and NBI heating power of 4 MW. The calculation algorithm showed rather short computation time, taking less than 10 minutes for each case using a GeForce RTX3090. Performance assessment was conducted using the Pearson correlation coefficient, demonstrating a degree of agreement between the results obtained by the PINN-based algorithm and the reference transport coefficient profiles obtained by the UTC-SANCO code. The results exhibited a correlation coefficient of 98.1% for diffusion coefficient while showed a correlation coefficient of 95.5% for convection velocity. An analysis of impurity transport in krypton seeding experiments with the algorithm will be presented to provide an explanation of the evolution of krypton distribution at KSTAR.
Presenters
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Junhyeok Yoon
Korea Advanced Institute of Science and Technology
Authors
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Junhyeok Yoon
Korea Advanced Institute of Science and Technology
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Yoonseong Han
Korea Advanced Institute of Science and Technology, Korea advanced institute of science and technology
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H.H. Lee
Korean Institute of Fusion Energy, Korea Institute of Fusion Energy, KFE
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S.W. Yoon
Korea Institute of Fusion Energy, KFE
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Wonho Choe
Korea Adv Inst of Sci & Tech