Short Pulse Reflectometry and Machine Learning

Jun 1, 2024·
Andrea Combette
Andrea Combette
· 1 min read
Abstract
This seminar is devoted to investigation of turbulence characteristics in the TCV tokamak using Short Pulse Reflectometry diagnostic and Machine Learning approach, focusing on Trapped Electron Mode (TEM) instabilities and their impact on radial transport. A 1D model initially provided insights, but a 2D model was developed to better account for curvature, incidence angle, and scattering effects. Using extensive CUWA code simulations, datasets were generated for both Gaussian and power spectrum turbulence structures accounting for various simulation parameters like the position of the cut-off the structures of turbulences. The 2D model achieved R2 scores of 0.92 for Gaussian and 0.89 for power spectrum tests, outperforming deeper neural networks. It effectively managed non-linear effects, delay characteristics, and cut-off layer shifts.
Date
Jun 1, 2024 1:00 PM — 3:00 PM
Event
Swiss Plasma Center Seminar
Location

Swiss Plasma Center, EPFL

Lausanne, VD 1015

This talk was given at the Swiss Plasma Center Seminar, EPFL, Lausanne, Switzerland by me as a part of my first year of master thesis.