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Enhanced RMP hysteresis via ω<sub>E</sub>-based adaptive ELM control via ML-accelerated real-time turbulence analysis

POSTER

Abstract

Utilizing a state-of-the-art feedback controller, one can adaptively modify the RMP currents depending on the plasma response to recover performance while avoiding ELMs. This controller, however, still suffers from suppression loss when the RMP current is lowered past some critical threshold­, whose value is difficult to predict beforehand due to the highly nonlinear physics governing the plasma edge. RMP ELM suppression hinges on the alignment of rational surfaces at the pedestal top, where lower E Χ B rotation frequency ωE allows the applied perturbation to penetrate rather than being screened out. Moreover, one can exploit the phenomena of RMP hysteresis which allows for access and sustainment of suppression at lower RMP currents, to bolster and recover plasma performance [1]. Therefore, we monitor the poloidal turbulence group velocity vθ as measured by the 2D Beam Emission Spectroscopy (BES) system [2] as a fast indicator of ωE in order to exploit this RMP hysteresis effect. We trained a machine learning (ML) model using ground truth labels generated from the cross-correlation time delay technique to track the ion-scale turbulent eddies in RMP suppressed DIII-D plasmas to infer vθ from raw BES data. With a real-time indication of vθ near the pedestal top, one can preemptively inform the plasma control system to increase RMP currents to avoid suppression loss, improving and facilitating robust adaptive ELM control, crucial for reactor relevant devices.

References

[1] S. Kim et al., (2024). Nature communications, 15(1), 3990.

[2] G. McKee et al., (1999). Review of Scientific Instruments 70, 913.

Presenters

  • Kevin Gill

    University of Wisconsin - Madison, University of Wisconsin-Madison

Authors

  • Kevin Gill

    University of Wisconsin - Madison, University of Wisconsin-Madison

  • Semin Joung

    University of Wisconsin - Madison

  • G. R McKee

    University of Wisconsin Madison, University of Wisconsin - Madison

  • SangKyeun Kim

    Princeton Plasma Physics Laboratory (PPPL)

  • Ricardo Shousha

    Princeton Plasma Physics Laboratory (PPPL), Princeton Plasma Physics Laboratory

  • Jalal Butt

    Princeton University

  • Qiming Hu

    Princeton Plasma Physics Laboratory (PPPL), Princeton University

  • Andrew Rothstein

    Princeton University

  • Keith Erickson

    Princeton Plasma Physics Laboratory, PPPL

  • David R Smith

    University of Wisconsin - Madison

  • Benedikt Geiger

    University of Wisconsin - Madison

  • Azarakhsh Jalalvand

    Princeton University

  • Egemen Kolemen

    Princeton University