3D Convolutional and Recurrent Neural Networks for Reactor Perturbation Unfolding and Anomaly Detection

Durrant, Aiden, Leontidis, Georgios and Kollias, Stefanos (2019) 3D Convolutional and Recurrent Neural Networks for Reactor Perturbation Unfolding and Anomaly Detection. EPJ Nuclear Sciences & Technologies, 5 . p. 20. ISSN 2491-9292

Full content URL: https://doi.org/10.1051/epjn/2019047

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3D Convolutional and Recurrent Neural Networks for Reactor Perturbation Unfolding and Anomaly Detection
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Abstract

With Europe’s ageing fleet of nuclear reactors operating closer to their safety limits, the monitoring of such reactors through complex models has become of great interest to maintain a high level of availability and safety. Therefore, we propose an extended Deep Learning framework as part of the CORTEX Horizon 2020 EU project for the unfolding of reactor transfer functions from induced neutron noise sources. The unfolding allows for the identification and localisation of reactor core perturbation sources from neutron detector readings in Pressurised Water Reactors. A 3D Convolutional Neural Network (3D-CNN) and Long Short-Term Memory (LSTM) Recurrent Neural Network (RNN) have been presented, each to study the signals presented in frequency and time domain respectively. The proposed approach achieves state-of-the-art results with the classification of perturbation type in the frequency domain reaching 99.89% accuracy and localisation of the classified perturbation source being regressed to 0.2902 Mean Absolute Error (MAE).

Keywords:Deep Learning, nuclear reactor, Anomaly Detection, neutron noise, perturbation analysis
Subjects:H Engineering > H821 Nuclear Engineering
G Mathematical and Computer Sciences > G400 Computer Science
G Mathematical and Computer Sciences > G760 Machine Learning
Divisions:College of Science > School of Computer Science
ID Code:37930
Deposited On:21 Nov 2019 15:34

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