Real-time plasma confinement mode classification with deep neural networks and high-bandwidth edge fluctuation measurements in DIII-D
POSTER
Abstract
To demonstrate real-time confinement mode classification, we use the 2D beam emission spectroscopy (BES) diagnostic system [1] to capture localized density fluctuations in the pedestal region for long wavelength turbulent modes at a 1 MHz sampling rate. BES data was collected for ~150 DIII-D discharges in either L-mode, H-mode, QH-mode, or wide pedestal (WP) QH-mode to develop a deep-learning model for real-time confinement regime classification with the BES real-time data stream. These classification models can achieve accuracy and F1 scores of 0.81 and 0.80, respectively. Moreover, our models are designed for and will be deployed on a high-throughput compute accelerator, such as a field programmable gate array (FPGA), for integration in the DIII-D plasma control system (PCS). This activity will demonstrate the feasibility for real-time data analysis of fluctuation diagnostics in future devices such as ITER, where potential risk of transient events is far greater and the need for reliable plasma performance is urgent.
Publication: [1] G. R. McKee et al., Review of Scientific Instruments 70, 913 (1999).
Presenters
-
Kevin Gill
University of Wisconsin-Madison
Authors
-
Kevin Gill
University of Wisconsin-Madison
-
David R Smith
University of Wisconsin - Madison
-
Semin Joung
University of Wisconsin - Madison
-
Benedikt Geiger
University of Wisconsin - Madison
-
George R McKee
University of Wisconsin - Madison, UWisc. Madison
-
Jeffrey Zimmerman
University of Wisconsin - Madison
-
Ryan Coffee
SLAC, SLAC National Accelerator Lab
-
Azarakhsh Jalalvand
Princeton University
-
Egemen Kolemen
Princeton University