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Disruption prediction at JET through deep convolutional neural networks using spatiotemporal information from plasma profiles

Academic Article
Publication Date:
2022
abstract:
In view of the future high power nuclear fusion experiments, the early identification of disruptions is a mandatory requirement, and presently the main goal is moving from the disruption mitigation to disruption avoidance and control. In this work, a deep-convolutional neural network (CNN) is proposed to provide early detection of disruptive events at JET. The CNN ability to learn relevant features, avoiding hand-engineered feature extraction, has been exploited to extract the spatiotemporal information from 1D plasma profiles. The model is trained with regularly terminated discharges and automatically selected disruptive phase of disruptions, coming from the recent ITER-like-wall experiments. The prediction performance is evaluated using a set of discharges representative of different operating scenarios, and an in-depth analysis is made to evaluate the performance evolution with respect to the considered experimental conditions. Finally, as real-time triggers and termination schemes are being developed at JET, the proposed model has been tested on a set of recent experiments dedicated to plasma termination for disruption avoidance and mitigation. The CNN model demonstrates very high performance, and the exploitation of 1D plasma profiles as model input allows us to understand the underlying physical phenomena behind the predictor decision.
Iris type:
01.01 Articolo in rivista
Keywords:
disruption mitigation and avoidance; deep learning; spatiotemporal feature extraction; automatic pre-disruptive phase identification
List of contributors:
Sozzi, Carlo
Authors of the University:
SOZZI CARLO
Handle:
https://iris.cnr.it/handle/20.500.14243/432473
Published in:
NUCLEAR FUSION (ONLINE)
Journal
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URL

https://iopscience.iop.org/article/10.1088/1741-4326/ac525e/meta
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