The paper proposes a region-based deep learning convolutional neural network to detect objects within images able to identify the filamentary plasma structures that arise in the boundary region of the plasma in toroidal nuclear fusion reactors. The images required to train and test the neural model have been synthetically generated from statistical distributions, which reproduce the statistical properties in terms of position and intensity of experimental filaments. The recently proposed Faster Region-based Convolutional Network algorithm has been customized to the problem of identifying the filaments both in location and size with the associated score. The results demonstrate the suitability of the deep learning approach for the filaments ...
Visual inspection of fuel assemblies is necessary to identify potential anomalies in their behaviour...
With Europe's ageing fleet of nuclear reactors operating closer to their safety limits, the monitori...
Scientific figures contain significant amounts of information but present different challenges relat...
The paper proposes a region-based deep learning convolutional neural network to detect objects withi...
In the present magnetically confined plasmas, the prediction of particle loading on material surface...
International audienceThis paper presents an automated process that detects, tracks, and classifies ...
The identification of plasma shape and position for control purposes in thermonuclear fusion devices...
Convolutional neural networks (CNNs) have found applications in many image processing tasks, such as...
Recently, image processing technology has been applied to various fields and to be beneficial for hu...
Fusion reactors are the promise for clean, almost unlimited energy. However, there are still many pr...
In this work, a novel deep learning approach to unfold nuclear power reactor signals is proposed. It...
During a tokamak discharge, the plasma can vary between different confinement regimes: low (L), high...
International audienceA multi-stage process that detects, tracks and classifies thermal events autom...
The paper describes a novel statistical framework that was developed to derive radial profiles of th...
In this work, a novel deep learning approach to unfold nuclear power reactor signals is proposed. It...
Visual inspection of fuel assemblies is necessary to identify potential anomalies in their behaviour...
With Europe's ageing fleet of nuclear reactors operating closer to their safety limits, the monitori...
Scientific figures contain significant amounts of information but present different challenges relat...
The paper proposes a region-based deep learning convolutional neural network to detect objects withi...
In the present magnetically confined plasmas, the prediction of particle loading on material surface...
International audienceThis paper presents an automated process that detects, tracks, and classifies ...
The identification of plasma shape and position for control purposes in thermonuclear fusion devices...
Convolutional neural networks (CNNs) have found applications in many image processing tasks, such as...
Recently, image processing technology has been applied to various fields and to be beneficial for hu...
Fusion reactors are the promise for clean, almost unlimited energy. However, there are still many pr...
In this work, a novel deep learning approach to unfold nuclear power reactor signals is proposed. It...
During a tokamak discharge, the plasma can vary between different confinement regimes: low (L), high...
International audienceA multi-stage process that detects, tracks and classifies thermal events autom...
The paper describes a novel statistical framework that was developed to derive radial profiles of th...
In this work, a novel deep learning approach to unfold nuclear power reactor signals is proposed. It...
Visual inspection of fuel assemblies is necessary to identify potential anomalies in their behaviour...
With Europe's ageing fleet of nuclear reactors operating closer to their safety limits, the monitori...
Scientific figures contain significant amounts of information but present different challenges relat...