Gaussian Process Regression for Equilibrium Reconstruction of DIII-D Plasmas
ORAL
Abstract
Gaussian Process Regression is a Bayesian method for inferring profiles based on input data. The technique is increasing in popularity in the fusion community for its many advantages over traditional fitting techniques. For kinetic EFIT reconstructions on DIII-D, data from magnetic probes and flux loops, motional Stark effect diagnostics, and plasma density and temperature profile measurements from Thomson scattering and charge exchange recombination diagnostics are critical for obtaining accurate reconstructions. Each of these data sources contain unique challenges for proper analysis that can be aided by using the GPR techniques within the magnetic equilibrium reconstruction process. Here, we review our progress on applying these GPR techniques to experimental data within the EFIT workflow, and contrast with similar efforts within the fusion community.
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Presenters
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Jarrod Leddy
Tech-X Corp
Authors
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Jarrod Leddy
Tech-X Corp
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Sandeep Madireddy
Argonne National Laboratory
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Eric C Howell
Tech-X Corp
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Scott E Kruger
Tech-X Corp
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Cihan Akcay
General Atomics
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Lang L Lao
General Atomics
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Joseph T McClenaghan
General Atomics - San Diego, General Atomics
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David Orozco
General Atomics - San Diego, General Atomics
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Sterling P Smith
General Atomics, General Atomics - San Diego
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Torrin A Bechtel
Oakridge Associate Universities
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Alexei Pankin
Princeton Plasma Physics Laboratory