scholarly journals Study of Li diffusion in thin Li-ion batteries by thermal neutron depth profiling (TNDP)

2019 ◽  
Author(s):  
J. Vacik ◽  
I. Tomandl ◽  
V. Hnatowicz ◽  
P. Horak ◽  
A. Cannavo ◽  
...  
2011 ◽  
Vol 56 (13) ◽  
pp. 4735-4743 ◽  
Author(s):  
Shrikant C. Nagpure ◽  
R. Gregory Downing ◽  
Bharat Bhushan ◽  
S.S. Babu ◽  
Lei Cao

Author(s):  
Daniel J. Lyons ◽  
Jamie L. Weaver ◽  
Anne C. Co

Li distribution within micron-scale battery electrode materials is quantified with neutron depth profiling (NDP). This method allows the determination of intra- and inter-electrode parameters such as lithiation efficiency, electrode morphology...


2000 ◽  
Vol 647 ◽  
Author(s):  
A. van Veen ◽  
M.A. van Huis ◽  
A.V. Fedorov ◽  
H. Schut ◽  
C.V. Falub ◽  
...  

AbstractPhoton absorption (PA), Positron Beam Analysis (PBA) and Neutron Depth Profiling (NDP) is applied to study the relation between photon absorption behavior and the precipitates formed by ion implantation and thermal annealing. Monocrystals of MgO(100) were implanted with 1.0×10166Li ions cm−2 at an energy of 30 keV. The samples were thermally annealed in air in steps up to 1200 K. After each step Doppler broadening Positron Beam Analysis (PBA) was applied to monitor the depth profile of the implantation defects. The evolution of the depth profile of lithium was followed with the aid of NDP. During the annealing there is hardly any change in the location of the lithium implantation peak at 150 nm (peak concentration 2 at. %). Only after annealing to 1200 K the majority of the lithium has left the crystal and optical absorption effects have disappeared. During annealing at 750 K an absorption band develops between 400 and 600 nm; at 950 K the maximum absorption is centered at 450 nm corresponding to Mie absorption and scattering by lithium nanoclusters. Positron beam analysis shows a considerable increase of annihilations with low momentum electrons in the implanted zone. A positron method for measuring electron momentum distributions (2D-ACAR) coupled to an intense positron beam gave evidence for the presence of semi-coherent metallic lithium inclusions.


2021 ◽  
Vol 247 ◽  
pp. 06046
Author(s):  
K. Hossny ◽  
S. Magdi ◽  
F. Nasr ◽  
Y. Yasser ◽  
A. Magdy

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 the surface, it loses energy to atoms (electrons) on its path. The charged particle energy loss holds information regarding the number of atoms by which the emitted particle passed, thus indicating its original depth. The purpose of this work is to check the capability of Artificial Neural Networks (ANNs) in predicting the boron concentration profile across a boro-silicate sample of thickness 3.5 μm divided into 10 layers. Each layer included different boron concentration than the other. Also, the boron concentration had the values {0.1, 0.2, 0.3, 0.4, 0.5, 0.6, 0.7, 0.8, 0.9, 1}. Training, validation, and test data were generated synthetically using MCNP6 in which the boron concentrations varied in the layer number from one sample to another. MCNP6 model consisted of a silicon barrier detector, boro-silicate sample, chamber body and an idealized thermal neutron source. The detector, sample, and the source were located in a voided chamber. The samples were irradiated with a 0.025 eV monoenergetic thermal neutron beam from a monodirectional disk source. To cover the whole area of the samples, the thermal neutron beam had a radius of 3 cm. The silicon detector active volume was modelled as a 100 μm thick and 3 cm radius facing the sample directly. The sample, beam, and the detector were placed on the same axis. Ten ANN regression models were developed, one for each layer boron concentration prediction where the input for each model was the alpha spectrum read by the detector, while the output was the boron concentration for each layer. Results showed regression values higher than 0.94 for all of the developed models. ANNs proved its capability of predicting the boron profile form the alpha spectrum read by the detector regarding neutron depth profiling in a boro-silicate samples.


2020 ◽  
Vol 175 (3-4) ◽  
pp. 394-405
Author(s):  
I. Tomandl ◽  
J. Vacik ◽  
T. Kobayashi ◽  
Y. Mora Sierra ◽  
V. Hnatowicz ◽  
...  

2021 ◽  
Vol 130 (12) ◽  
pp. 125306
Author(s):  
Vairavel Mathayan ◽  
Kenji Morita ◽  
Bun Tsuchiya ◽  
Rongbin Ye ◽  
Mamoru Baba ◽  
...  

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