Back to Search Start Over

Deep modeling of plasma and neutral fluctuations from gas puff turbulence imaging

Authors :
Massachusetts Institute of Technology. Plasma Science and Fusion Center
Mathews, A
Terry, JL
Baek, SG
Hughes, JW
Kuang, AQ
LaBombard, B
Miller, MA
Stotler, D
Reiter, D
Zholobenko, W
Goto, M
Massachusetts Institute of Technology. Plasma Science and Fusion Center
Mathews, A
Terry, JL
Baek, SG
Hughes, JW
Kuang, AQ
LaBombard, B
Miller, MA
Stotler, D
Reiter, D
Zholobenko, W
Goto, M
Source :
American Institute of Physics (AIP)
Publication Year :
2022

Abstract

<jats:p> The role of turbulence in setting boundary plasma conditions is presently a key uncertainty in projecting to fusion energy reactors. To robustly diagnose edge turbulence, we develop and demonstrate a technique to translate brightness measurements of HeI line radiation into local plasma fluctuations via a novel integrated deep learning framework that combines neutral transport physics and collisional radiative theory for the 3<jats:sup>3</jats:sup> D − 2<jats:sup>3</jats:sup> P transition in atomic helium with unbounded correlation constraints between the electron density and temperature. The tenets for experimental validity are reviewed, illustrating that this turbulence analysis for ionized gases is transferable to both magnetized and unmagnetized environments with arbitrary geometries. Based on fast camera data on the Alcator C-Mod tokamak, we present the first two-dimensional time-dependent experimental measurements of the turbulent electron density, electron temperature, and neutral density, revealing shadowing effects in a fusion plasma using a single spectral line. </jats:p>

Details

Database :
OAIster
Journal :
American Institute of Physics (AIP)
Notes :
application/pdf, English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1351762370
Document Type :
Electronic Resource