Fast modeling of turbulent transport in fusion plasmas using neural networks

被引:76
作者
van de Plassche, K. L. [1 ]
Citrin, J. [1 ]
Bourdelle, C. [2 ]
Camenen, Y. [3 ]
Casson, F. J. [4 ]
Dagnelie, V., I [1 ,5 ]
Felici, F. [6 ]
Ho, A. [1 ]
Van Mulders, S. [6 ]
机构
[1] DIFFER, POB 6336, NL-5600 HH Eindhoven, Netherlands
[2] CEA, IRFM, F-13108 St Paul Les Durance, France
[3] Aix Marseille Univ, PIIM UMR7345, CNRS, Marseille, France
[4] Culham Sci Ctr, CCFE, Abingdon OX14 3DB, Oxon, England
[5] Univ Utrecht, ITP, Princetonpl 5, NL-3584 CC Utrecht, Netherlands
[6] EPFL SPC, CH-1015 Lausanne, Switzerland
基金
英国工程与自然科学研究理事会;
关键词
Magnetoplasma - Neural network models - Uncertainty analysis;
D O I
10.1063/1.5134126
中图分类号
O35 [流体力学]; O53 [等离子体物理学];
学科分类号
070204 ; 080103 ; 080704 ;
摘要
We present an ultrafast neural network model, QLKNN, which predicts core tokamak transport heat and particle fluxes. QLKNN is a surrogate model based on a database of 3x10(8) flux calculations of the quasilinear gyrokinetic transport model, QuaLiKiz. The database covers a wide range of realistic tokamak core parameters. Physical features such as the existence of a critical gradient for the onset of turbulent transport were integrated into the neural network training methodology. We have coupled QLKNN to the tokamak modeling framework JINTRAC and rapid control-oriented tokamak transport solver RAPTOR. The coupled frameworks are demonstrated and validated through application to three JET shots covering a representative spread of H-mode operating space, predicting the turbulent transport of energy and particles in the plasma core. JINTRAC-QLKNN and RAPTOR-QLKNN are able to accurately reproduce JINTRAC-QuaLiKiz Ti,e and n(e) profiles, but 3-5 orders of magnitude faster. Simulations which take hours are reduced down to only a few tens of seconds. The discrepancy in the final source-driven predicted profiles between QLKNN and QuaLiKiz is on the order of 1%-15%. Also the dynamic behavior was well captured by QLKNN, with differences of only 4%-10% compared to JINTRAC-QuaLiKiz observed at mid-radius, for a study of density buildup following the L-H transition. Deployment of neural network surrogate models in multi-physics integrated tokamak modeling is a promising route toward enabling accurate and fast tokamak scenario optimization, uncertainty quantification, and control applications.
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页数:17
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