Neutron depth profiling (NDP) is a non-destructive technique used for identifying the concentration of impurity isotopes below the sample surface. NDP is carried out by detection of the emitted charged particles resulting from bombarding the sample with neutrons. NDP specifies the isotopic concentration versus the sample depth for a few micrometers below the surface. The sample is bombarded inside a research reactor using a thermal neutron beam. Charged particles like alpha particles or protons are produced from the neutron induced reactions in the sample. Each neutron isotopic interaction produces a certain Q, indicating a specific kinetic energy for the emitted charged particle. As the charged particle travels through the sample to eject ...
Neutron activation analysis has been widely used for quantitative analysis. It can quantify elements...
Artificial neural networks have been applied to unfold the neutron spectra and to calculate the effe...
In this project the locations of the proton and neutron drip-lines are predicted using neural networ...
This work examines the possibility of using an Artificial Neural Network (ANN) to interpret Neutron ...
”For decades, Neutron Depth Profiling has been used for the non-destructive analysis and quantificat...
The purpose of neutron depth profiling (NDP) is to determine the concentration (atoms/cm3) of a part...
The depth profiles of intentional or intrinsic constituents of a sample provide valuable information...
A recent experiment at NIST has demonstrated that neutron depth profiling (NDP) based on the (n, a) ...
A modification of the Neutron Depth Profiling (NDP) technique is proposed which uses the charged par...
Iterative methods for determining deconvolued depth profiles from measured neutron depth profiling (...
A new Machine Learning algorithm for shower-head identification in the NeuLAND neutron detector is p...
The discrimination of neutron and γ-ray events in an organic scintillator has been investigated by u...
Abstract: The intensity of Compton scattered γ-ray photons provide useful information about t...
This thesis describes the development of electronic modules for fusion neutron spectroscopy as well ...
Abstract: We developed a method for fast optimisation of energy spectrum of neutron beams for BNCT u...
Neutron activation analysis has been widely used for quantitative analysis. It can quantify elements...
Artificial neural networks have been applied to unfold the neutron spectra and to calculate the effe...
In this project the locations of the proton and neutron drip-lines are predicted using neural networ...
This work examines the possibility of using an Artificial Neural Network (ANN) to interpret Neutron ...
”For decades, Neutron Depth Profiling has been used for the non-destructive analysis and quantificat...
The purpose of neutron depth profiling (NDP) is to determine the concentration (atoms/cm3) of a part...
The depth profiles of intentional or intrinsic constituents of a sample provide valuable information...
A recent experiment at NIST has demonstrated that neutron depth profiling (NDP) based on the (n, a) ...
A modification of the Neutron Depth Profiling (NDP) technique is proposed which uses the charged par...
Iterative methods for determining deconvolued depth profiles from measured neutron depth profiling (...
A new Machine Learning algorithm for shower-head identification in the NeuLAND neutron detector is p...
The discrimination of neutron and γ-ray events in an organic scintillator has been investigated by u...
Abstract: The intensity of Compton scattered γ-ray photons provide useful information about t...
This thesis describes the development of electronic modules for fusion neutron spectroscopy as well ...
Abstract: We developed a method for fast optimisation of energy spectrum of neutron beams for BNCT u...
Neutron activation analysis has been widely used for quantitative analysis. It can quantify elements...
Artificial neural networks have been applied to unfold the neutron spectra and to calculate the effe...
In this project the locations of the proton and neutron drip-lines are predicted using neural networ...