PLASM-PHLGFeb 17, 2025

How does ion temperature gradient turbulence depend on magnetic geometry? Insights from data and machine learning

arXiv:2502.11657v29 citationsh-index: 11J Plasma Phys
Originality Incremental advance
AI Analysis

This work addresses the challenge of optimizing magnetic confinement for fusion energy, offering data-driven insights to improve stellarator designs, though it is incremental in applying existing ML techniques to a new dataset.

The study investigated how magnetic geometry affects turbulent heat transport in fusion plasmas by analyzing over 200,000 simulations using machine learning methods, finding that heat flux varies by orders of magnitude and identifying key geometric features like flux surface compression and geodesic curvature as most influential.

Magnetic geometry has a significant effect on the level of turbulent transport in fusion plasmas. Here, we model and analyze this dependence using multiple machine learning methods and a dataset of > 200,000 nonlinear simulations of ion-temperature-gradient turbulence in diverse non-axisymmetric geometries. The dataset is generated using a large collection of both optimized and randomly generated stellarator equilibria. At fixed gradients, the turbulent heat flux varies between geometries by several orders of magnitude. Trends are apparent among the configurations with particularly high or low heat flux. Regression and classification techniques from machine learning are then applied to extract patterns in the dataset. Due to a symmetry of the gyrokinetic equation, the heat flux and regressions thereof should be invariant to translations of the raw features in the parallel coordinate, similar to translation invariance in computer vision applications. Multiple regression models including convolutional neural networks (CNNs) and decision trees can achieve reasonable predictive power for the heat flux in held-out test configurations, with highest accuracy for the CNNs. Using Spearman correlation, sequential feature selection, and Shapley values to measure feature importance, it is consistently found that the most important geometric lever on the heat flux is the flux surface compression in regions of bad curvature. The second most important feature relates to the magnitude of geodesic curvature. These two features align remarkably with surrogates that have been proposed based on theory, while the methods here allow a natural extension to more features for increased accuracy. The dataset, released with this publication, may also be used to test other proposed surrogates, and we find many previously published proxies do correlate well with both the heat flux and stability boundary.

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