In this work, a novel deep learning approach to unfold nuclear power reactor signals is proposed. It includes a combination of convolutional neural networks (CNN), denoising autoencoders (DAE) and k-means clustering of representations. Monitoring nuclear reactors while running at nominal conditions is critical. Based on analysis of the core reactor neutron flux, it is possible to derive useful information for building fault/anomaly detection systems. By leveraging signal and image pre-processing techniques, the high and low energy spectra of the signals were appropriated into a compatible format for CNN training. Firstly, a CNN was employed to unfold the signal into either twelve or forty-eight perturbation location sources, followed by a k...
The use of machine learning in the field of reactor safety and noise diagnostics has recently seen g...
In this paper, we take the first steps towards a novel unified framework for the analysis of perturb...
A methodology is proposed in this paper allowing the classification of anomalies and subsequently th...
In this work, a novel deep learning approach to unfold nuclear power reactor signals is proposed. It...
In this work, a novel deep learning approach to unfold nuclear power reactor signals is proposed. It...
Presented at IJCNN 2018, this presentation contains the description of a novel deep learning approac...
The safe operation of nuclear power plants is highly dependent on the ability of quickly and accurat...
The safe operation of nuclear power plants is highly dependent on the ability of quickly and accurat...
The safe operation of nuclear power plants is highly dependent on the ability of quickly and accurat...
•The introduction of a deep learning methodology for the classification of different perturbation ty...
With Europe's ageing fleet of nuclear reactors operating closer to their safety limits, the monitori...
A critical issue for the safe operation of nuclear power plants is to quickly and accurately detect ...
With Europe’s ageing fleet of nuclear reactors operating closer to their safety limits, the monitori...
With Europe’s ageing fleet of nuclear reactors operating closer to their safety limits, the monitori...
Monitoring nuclear reactors working at nominal conditions is fundamental for safety purposes
The use of machine learning in the field of reactor safety and noise diagnostics has recently seen g...
In this paper, we take the first steps towards a novel unified framework for the analysis of perturb...
A methodology is proposed in this paper allowing the classification of anomalies and subsequently th...
In this work, a novel deep learning approach to unfold nuclear power reactor signals is proposed. It...
In this work, a novel deep learning approach to unfold nuclear power reactor signals is proposed. It...
Presented at IJCNN 2018, this presentation contains the description of a novel deep learning approac...
The safe operation of nuclear power plants is highly dependent on the ability of quickly and accurat...
The safe operation of nuclear power plants is highly dependent on the ability of quickly and accurat...
The safe operation of nuclear power plants is highly dependent on the ability of quickly and accurat...
•The introduction of a deep learning methodology for the classification of different perturbation ty...
With Europe's ageing fleet of nuclear reactors operating closer to their safety limits, the monitori...
A critical issue for the safe operation of nuclear power plants is to quickly and accurately detect ...
With Europe’s ageing fleet of nuclear reactors operating closer to their safety limits, the monitori...
With Europe’s ageing fleet of nuclear reactors operating closer to their safety limits, the monitori...
Monitoring nuclear reactors working at nominal conditions is fundamental for safety purposes
The use of machine learning in the field of reactor safety and noise diagnostics has recently seen g...
In this paper, we take the first steps towards a novel unified framework for the analysis of perturb...
A methodology is proposed in this paper allowing the classification of anomalies and subsequently th...