Implementation of AI/Deep Learning Disruption Predictor into a Plasma Control System
William Tang, Ge Dong, Jayson Barr, Keith Erickson, Rory Conlin, M., Dan Boyer, Julian Kates-Harbeck, Kyle Felker, Cristina Rea, Nikolas C. Logan,, Alexey Svyatkovskiy, Eliot Feibush, Joseph Abbatte, Mitchell Clement, Brian, Grierson, Raffi Nazikian, Zhihong Lin, David Eldon

TL;DR
This paper enhances deep-learning disruption prediction models for plasma control by adding real-time sensitivity analysis and physics interpretability, integrating multiple data channels into the FRNN for improved prediction and control guidance in fusion devices.
Contribution
It introduces a real-time sensitivity score and multi-channel data integration into the FRNN model, advancing disruption prediction and interpretability for plasma control systems.
Findings
Enhanced disruption prediction accuracy with additional data channels.
Real-time sensitivity scores provide insights into disruption causes.
Improved guidance for plasma control actuators.
Abstract
This paper reports on advances to the state-of-the-art deep-learning disruption prediction models based on the Fusion Recurrent Neural Network (FRNN) originally introduced a 2019 Nature publication. In particular, the predictor now features not only the disruption score, as an indicator of the probability of an imminent disruption, but also a sensitivity score in real-time to indicate the underlying reasons for the imminent disruption. This adds valuable physics-interpretability for the deep-learning model and can provide helpful guidance for control actuators now that it is fully implemented into a modern Plasma Control System (PCS). The advance is a significant step forward in moving from modern deep-learning disruption prediction to real-time control and brings novel AI-enabled capabilities relevant for application to the future burning plasma ITER system. Our analyses use large…
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Taxonomy
TopicsMagnetic confinement fusion research · Ionosphere and magnetosphere dynamics
