Inter-discharge optimization for fast, reliable access to ASDEX Upgrade advanced tokamak scenario

S. Van Mulders, O. Sauter, A. Bock, A. Burckhart, C. Contre, F. Felici,R. Fischer, R. Schramm,J. Stober, H. Zohm

NUCLEAR FUSION(2024)

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摘要
Rapid inter-discharge simulation and optimization using the RAPTOR code have allowed the development of a reliable and reproducible early heating strategy for an advanced tokamak (AT) scenario on ASDEX Upgrade. Solving for electron heat and current diffusion in RAPTOR with ad-hoc formulas for heat transport and electron cyclotron current drive (ECCD) efficiency is found to robustly recover the coupled dynamics of T-e and q, while maintaining model parameters fixed for all discharges. The pedestal top boundary condition in pre-shot simulations is set by a newly derived scaling law for the electron pressure at rho = 0.8, using a data set of previous AT discharges. RAPTOR simulations have allowed to develop an understanding of the onset of 3/2 tearing modes, which were observed to have a detrimental impact on confinement when low magnetic shear conditions are present at the rational surface during the high-beta phase. Delaying the NBI heating, by a specific time interval found via simulations, has led to avoiding these modes. A non-linear optimization scheme has been applied to optimize the ECCD deposition radii to reach a stationary state with q(min) > 1 at the beginning of the flat-top phase, while ensuring a non-zero magnetic shear at q = 1.5 throughout the high-beta phase, and has been successfully tested in experiment. However, further experiments, aiming for q(min) > 1.5, have highlighted limitations of the present feedforward control approach in the presence of shot-to-shot variations that are not included in the applied model. Application of real-time model-based control is proposed to overcome model-reality mismatches in future work.
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关键词
ASDEX Upgrade,ramp-up optimization,neoclassical tearing modes,tokamak transport,advanced tokamak scenario,pre-discharge optimization,profile control
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