Development of a data-driven neural network model for electron thermal transport in NSTX.

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Title: Development of a data-driven neural network model for electron thermal transport in NSTX.
Authors: Chung, H.1 (AUTHOR), Lee, C.Y.2 (AUTHOR), Choi, G.J.3 (AUTHOR), Kaye, S.M.4 (AUTHOR), LeBlanc, B.P.4 (AUTHOR), Berkery, J.W.4 (AUTHOR), Na, Y.-S.1 (AUTHOR) ysna@snu.ac.kr
Source: Nuclear Fusion. Aug2025, Vol. 65 Issue 8, p1-14. 14p.
Subjects: Electron transport, Tokamaks, Plasma physics, Turbulent flow, Parameterization, Artificial neural networks, Plasma turbulence, Machine learning
Abstract: A data-driven electron thermal transport neural network (ETT-NN) model, trained on TRANSP interpretative analysis results of National Spherical Torus Experiment (NSTX), was developed to enable faster and more accurate ETT computation for spherical tokamaks (STs). The model incorporates both convolutional NNs and recurrent NNs, allowing it to simultaneously account for the spatial and temporal non-localities and multi-scale features of turbulent transport, which have been considered only in a limited manner in conventional models. The model was validated through interpretative analysis and predictive simulations using Tokamak Reactor Integrated Automated Suite for Simulation and Computation, demonstrating relatively high accuracy. Additionally, parameter scans were performed on test discharges known to exhibit specific turbulent modes, such as microtearing mode, trapped electron mode, kinetic ballooning mode, and electron temperature gradient mode. The scanning results revealed that the ETT-NN model exhibits the same trends as those observed in conventional gyrokinetic simulations or theories, while also capturing the global nature of turbulent transport, indicating that the data-driven model accurately reflects the underlying physical characteristics. Furthermore, due to the dimensionless nature of the model, we can feasibly expand its applicability by incorporating data from other devices and uncovering the characteristics of ETT in STs in the future. [ABSTRACT FROM AUTHOR]
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Database: Engineering Source
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Abstract:A data-driven electron thermal transport neural network (ETT-NN) model, trained on TRANSP interpretative analysis results of National Spherical Torus Experiment (NSTX), was developed to enable faster and more accurate ETT computation for spherical tokamaks (STs). The model incorporates both convolutional NNs and recurrent NNs, allowing it to simultaneously account for the spatial and temporal non-localities and multi-scale features of turbulent transport, which have been considered only in a limited manner in conventional models. The model was validated through interpretative analysis and predictive simulations using Tokamak Reactor Integrated Automated Suite for Simulation and Computation, demonstrating relatively high accuracy. Additionally, parameter scans were performed on test discharges known to exhibit specific turbulent modes, such as microtearing mode, trapped electron mode, kinetic ballooning mode, and electron temperature gradient mode. The scanning results revealed that the ETT-NN model exhibits the same trends as those observed in conventional gyrokinetic simulations or theories, while also capturing the global nature of turbulent transport, indicating that the data-driven model accurately reflects the underlying physical characteristics. Furthermore, due to the dimensionless nature of the model, we can feasibly expand its applicability by incorporating data from other devices and uncovering the characteristics of ETT in STs in the future. [ABSTRACT FROM AUTHOR]
ISSN:00295515
DOI:10.1088/1741-4326/adec01