과제정보
J.H.S. and J.P.L. were supported by the National R&D Program through the National Research Foundation of Korea (NRF), funded by the Ministry of Science and ICT (NRF-2021M1A7A4091137, NRF-2021M3F7A1084421). Y.C.G was supported by NRF Grant No. RS2022-00155917. This work was also supported by Ministry of Science and ICT under KFE R&D Program of "KSTAR Experimental Collaboration and Fusion Plasma Research (KFE-EN2201-13)".
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