Physics-constrained data-driven methods in MHD
POSTER
Abstract
Accurate and efficient plasma models are essential to understand and control experimental devices. Data-driven techniques recently developed in fluid dynamics can be leveraged to develop interpretable reduced-order models of plasmas that strike a balance between accuracy and efficiency. The dynamic mode decomposition, POD-Galerkin methods, and other reduced order models are applied to experimental and simulation data, and suggest possible uses in real-time control and modeling for fusion devices.
Authors
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Alan Kaptanoglu
University of Washington
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Kyle Morgan
University of Washington
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Christopher Hansen
University of Washington
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Steven Brunton
University of Washington, University of Washington, Seattle