Performance Comparison of Machine Learning Disruption Predictors at JET

Author:

Aymerich Enrico1ORCID,Cannas Barbara1ORCID,Pisano Fabio1ORCID,Sias Giuliana1,Sozzi Carlo2,Stuart Chris3,Carvalho Pedro3,Fanni Alessandra1ORCID,

Affiliation:

1. Department of Electrical and Electronic Engineering, University of Cagliari, 09123 Cagliari, Italy

2. Istituto per la Scienza e Tecnologia dei Plasmi, Consiglio Nazionale Delle Ricerche, Via R. Cozzi, 53, 20125 Milano, Italy

3. UK Atomic Energy Authority, Culham Science Centre, Abingdon OX14 3DB, UK

Abstract

Reliable disruption prediction (DP) and disruption mitigation systems are considered unavoidable during international thermonuclear experimental reactor (ITER) operations and in the view of the next fusion reactors such as the DEMOnstration Power Plant (DEMO) and China Fusion Engineering Test Reactor (CFETR). In the last two decades, a great number of DP systems have been developed using data-driven methods. The performance of the DP models has been improved over the years both for a more appropriate choice of diagnostics and input features and for the availability of increasingly powerful data-driven modelling techniques. However, a direct comparison among the proposals has not yet been conducted. Such a comparison is mandatory, at least for the same device, to learn lessons from all these efforts and finally choose the best set of diagnostic signals and the best modelling approach. A first effort towards this goal is made in this paper, where different DP models will be compared using the same performance indices and the same device. In particular, the performance of a conventional Multilayer Perceptron Neural Network (MLP-NN) model is compared with those of two more sophisticated models, based on Generative Topographic Mapping (GTM) and Convolutional Neural Networks (CNN), on the same real time diagnostic signals from several experiments at the JET tokamak. The most common performance indices have been used to compare the different DP models and the results are deeply discussed. The comparison confirms the soundness of all the investigated machine learning approaches and the chosen diagnostics, enables us to highlight the pros and cons of each model, and helps to consciously choose the approach that best matches with the plasma protection needs.

Funder

European Union via the Euratom Research and Training Programme

Publisher

MDPI AG

Subject

Fluid Flow and Transfer Processes,Computer Science Applications,Process Chemistry and Technology,General Engineering,Instrumentation,General Materials Science

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