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Publication

Single Gaussian process method for arbitrary tokamak regimes with a statistical analysis

Authors

Leddy, Jarrod; Madireddy, Sandeep; Howell, Eric; Kruger, Scott E.

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 due to its many advantages over traditional fitting techniques including intrinsic uncertainty quantification and robustness to over-fitting. This work investigates the use of a new method, the change-point method, for handling the varying length scales found in different tokamak regimes. The use of the Students t-distribution for the Bayesian likelihood probability is also investigated and shown to be advantageous in providing good fits in profiles with many outliers. To compare different methods, synthetic data generated from analytic profiles is used to create a database enabling a quantitative statistical comparison of which methods perform the best. Using a full Bayesian approach with the change-point method, Matern kernel for the prior probability, and Students t-distribution for the likelihood is shown to give the best results.