A new Machine Learning algorithm for shower-head identification in the NeuLAND neutron detector is presented. The new algorithm uses densely-connected Deep Neural Networks (DNNs) to properly classify events and clusters, which allows accurate reconstruction of the 4-momenta of the detected neutrons. As data-events recorded with NeuLAND vary quite a lot in size, and not all emitted neutrons always produce signals in the detector, careful preand post-processing of the data turned out to be required for letting the DNNs be successful in their classifications. However, after properly implementing these procedures, the new algorithm offers a better efficiency than previously-used algorithms in virtually all investigated scenarios. However, the n...
Neutron depth profiling (NDP) is a non-destructive technique used for identifying the concentration ...
This thesis describes the development of electronic modules for fusion neutron spectroscopy as well ...
A good data analysis of neutron cross section measurements is necessary for generating high quality ...
A new Machine Learning algorithm for shower-head identification in the NeuLAND neutron detector is p...
NeuLAND, the New Large Area Neutron Detector, is a key component to investigate the origin of matter...
A method for reconstructing the direction of a fast neutron source using a segmented organic scintil...
Recently, by using deep learning methods, a computer is able to surpass or come close to matching hu...
Artificial neural networks technology has been applied to unfold the neutron spectra from the pulse ...
We present the development of neutron-tagging techniques in Super-Kamiokande IV using a neural netw...
Machine learning (ML) techniques, in particular deep neural networks (DNNs) developed in the field o...
The Jiangmen Underground Neutrino Observatory (JUNO) is a scintillation detector, currently under co...
The focus of this report is the neutron detection for the ALADiN-LAND setup at GSI/FAIR. Especially ...
International audienceThree different Artificial Neural Network architectures have been applied to p...
The discrimination of neutron and γ-ray events in an organic scintillator has been investigated by u...
Neutron depth profiling (NDP) is a non-destructive technique used for identifying the concentration ...
This thesis describes the development of electronic modules for fusion neutron spectroscopy as well ...
A good data analysis of neutron cross section measurements is necessary for generating high quality ...
A new Machine Learning algorithm for shower-head identification in the NeuLAND neutron detector is p...
NeuLAND, the New Large Area Neutron Detector, is a key component to investigate the origin of matter...
A method for reconstructing the direction of a fast neutron source using a segmented organic scintil...
Recently, by using deep learning methods, a computer is able to surpass or come close to matching hu...
Artificial neural networks technology has been applied to unfold the neutron spectra from the pulse ...
We present the development of neutron-tagging techniques in Super-Kamiokande IV using a neural netw...
Machine learning (ML) techniques, in particular deep neural networks (DNNs) developed in the field o...
The Jiangmen Underground Neutrino Observatory (JUNO) is a scintillation detector, currently under co...
The focus of this report is the neutron detection for the ALADiN-LAND setup at GSI/FAIR. Especially ...
International audienceThree different Artificial Neural Network architectures have been applied to p...
The discrimination of neutron and γ-ray events in an organic scintillator has been investigated by u...
Neutron depth profiling (NDP) is a non-destructive technique used for identifying the concentration ...
This thesis describes the development of electronic modules for fusion neutron spectroscopy as well ...
A good data analysis of neutron cross section measurements is necessary for generating high quality ...