Enhancing predictive capabilities in fusion burning plasmas through surrogate-based optimization in core transport solvers

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Abstract

This work presents the PORTALS framework (Rodriguez-Fernandez et al 2022 Nucl. Fusion 62 076036), which leverages surrogate modeling and optimization techniques to enable the prediction of core plasma profiles and performance with nonlinear gyrokinetic simulations at significantly reduced cost, with no loss of accuracy. The efficiency of PORTALS is benchmarked against standard methods, and its full potential is demonstrated on a unique, simultaneous 5-channel (electron temperature, ion temperature, electron density, impurity density and angular rotation) prediction of steady-state profiles in a DIII-D ITER Similar Shape plasma with GPU-accelerated, nonlinear CGYRO (Candy et al 2016 J. Comput. Phys. 324 73-93). This paper also provides general guidelines for accurate performance predictions in burning plasmas and the impact of transport modeling in fusion pilot plants studies.

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Rodriguez-Fernandez, P., Howard, N. T., Saltzman, A., Kantamneni, S., Candy, J., Holland, C., … White, A. E. (2024). Enhancing predictive capabilities in fusion burning plasmas through surrogate-based optimization in core transport solvers. Nuclear Fusion, 64(7). https://doi.org/10.1088/1741-4326/ad4b3d

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