A methodology is proposed in this paper allowing the classification of anomalies and subsequently their possible localization in nuclear reactor cores during operation. The method relies on the monitoring of the neutron noise recorded by in-core neutron detectors located at very few discrete locations throughout the core. In order to unfold from the detectors readings the necessary information, a 3-dimensional Convolutional Neural Network is used, with the training and validation of the network based on simulated data. In the reported work, the approach was also tested on simulated data. The simulations were carried out in the frequency domain using the CORE SIM+ diffusion-based two-group core simulator. The different scenarios correspond t...
With Europe’s ageing fleet of nuclear reactors operating closer to their safety limits, the monitori...
Main Objectives Detect anomalies in nuclear reactors using non‐intrusive methodologies Anomalies • ...
In this work, a novel deep learning approach to unfold nuclear power reactor signals is proposed. It...
A methodology is proposed in this paper allowing the classification of anomalies and subsequently th...
A methodology is proposed in this paper allowing the classification of anomalies and subsequently th...
A methodology is proposed in this paper allowing the classification of anomalies and subsequently th...
This paper gives an overview of the neutron noise-based core monitoring technique developed as part ...
The use of non-intrusive techniques for monitoring nuclear reactors is becoming more vital as wester...
Machine Learning is used in this paper for noise-diagnostics to detect defined anomalies in nuclear ...
Core monitoring techniques represent methods that allow detecting anomalies in nuclear reactors, sub...
Machine Learning is used in this paper for detecting anomalies in nuclear plant reactor cores. The p...
In this work, a novel deep learning approach to unfold nuclear power reactor signals is proposed. It...
In the H2020 CORTEX project, an interdisciplinary team developed neutron noise-based core monitoring...
In the H2020 CORTEX project, an interdisciplinary team developed neutron noise-based core monitoring...
In the H2020 CORTEX project, an interdisciplinary team developed neutron noise-based core monitoring...
With Europe’s ageing fleet of nuclear reactors operating closer to their safety limits, the monitori...
Main Objectives Detect anomalies in nuclear reactors using non‐intrusive methodologies Anomalies • ...
In this work, a novel deep learning approach to unfold nuclear power reactor signals is proposed. It...
A methodology is proposed in this paper allowing the classification of anomalies and subsequently th...
A methodology is proposed in this paper allowing the classification of anomalies and subsequently th...
A methodology is proposed in this paper allowing the classification of anomalies and subsequently th...
This paper gives an overview of the neutron noise-based core monitoring technique developed as part ...
The use of non-intrusive techniques for monitoring nuclear reactors is becoming more vital as wester...
Machine Learning is used in this paper for noise-diagnostics to detect defined anomalies in nuclear ...
Core monitoring techniques represent methods that allow detecting anomalies in nuclear reactors, sub...
Machine Learning is used in this paper for detecting anomalies in nuclear plant reactor cores. The p...
In this work, a novel deep learning approach to unfold nuclear power reactor signals is proposed. It...
In the H2020 CORTEX project, an interdisciplinary team developed neutron noise-based core monitoring...
In the H2020 CORTEX project, an interdisciplinary team developed neutron noise-based core monitoring...
In the H2020 CORTEX project, an interdisciplinary team developed neutron noise-based core monitoring...
With Europe’s ageing fleet of nuclear reactors operating closer to their safety limits, the monitori...
Main Objectives Detect anomalies in nuclear reactors using non‐intrusive methodologies Anomalies • ...
In this work, a novel deep learning approach to unfold nuclear power reactor signals is proposed. It...