Fast prediction of plasma instabilities with sparse-grid-accelerated optimized dynamic mode decomposition
Kevin Gill, Ionut-Gabriel Farcas, Silke Glas, and Benjamin J. Faber

TL;DR
This paper develops a computationally efficient method for creating parametric reduced-order models of plasma micro-instabilities using sparse grid interpolation and optimized dynamic mode decomposition, enabling fast predictions in high-dimensional parameter spaces.
Contribution
It introduces a novel approach combining sparse grid interpolation with optDMD for high-dimensional parametric ROMs in plasma physics, reducing computational costs significantly.
Findings
Sparse grid-based ROMs achieve accurate predictions beyond training horizons.
Only 28 high-fidelity simulations needed for a 6-parameter plasma model.
ROM evaluation is up to three orders of magnitude faster.
Abstract
Parametric data-driven reduced-order models (ROMs) that embed dependencies in a large number of input parameters are crucial for enabling many-query tasks in large-scale problems. These tasks, including design optimization, control, and uncertainty quantification, are essential for developing digital twins in real-world applications. However, standard grid-based data generation methods are computationally prohibitive due to the curse of dimensionality. This paper investigates efficient training of parametric data-driven ROMs using sparse grid interpolation with (L)-Leja points, specifically targeting scenarios with higher-dimensional input parameter spaces. (L)-Leja points are nested and exhibit slow growth, resulting in sparse grids with low cardinality in low-to-medium dimensional settings, making them ideal for large-scale, computationally expensive problems. Focusing on gyrokinetic…
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