scholarly journals Materials characterization of impregnated W and W–Ir cathodes after oxygen poisoning

2015 ◽  
Vol 338 ◽  
pp. 27-34 ◽  
Author(s):  
James E. Polk ◽  
Angela M. Capece
2019 ◽  
Vol 34 (5) ◽  
pp. 854-859 ◽  
Author(s):  
Sofia Pessanha ◽  
Sara Silva ◽  
Luís Martins ◽  
José Paulo Santos ◽  
João M. Silveira

In this work, we established a methodology for the analysis and characterization of hydroxyapatite-based materials using X-ray fluorescence.


2021 ◽  
Vol 309 ◽  
pp. 125107
Author(s):  
Zongxian Huang ◽  
Kuisheng Liu ◽  
Jinsong Duan ◽  
Qiang Wang

RSC Advances ◽  
2021 ◽  
Vol 11 (61) ◽  
pp. 38727-38738
Author(s):  
Marcin Pisarek ◽  
Mirosław Krawczyk ◽  
Andrzej Kosiński ◽  
Marcin Hołdyński ◽  
Mariusz Andrzejczuk ◽  
...  

The structural and chemical modification of TiO2 NTs by the deposition of a well-controlled Au deposit (0.01 mg cm−1) was investigated using a combination of microscopic (SEM, STEM), analytical measurements (XPS, SERS, UV-Vis, XRD) and photoelectrochemical investigations.


Author(s):  
Michael S. Hatzistergos

Characterization of an issue provides the required information to determine the root cause of a problem and direct the researcher towards the appropriate solution. Through the explosion of nanotechnology in the past few years, the use of sophisticated analytical equipment has become mandatory. There is no one analytical technique that can provide all the answers a researcher is looking for. Therefore, a large number of very different instruments exist, and knowing which one is best to employ for a specific problem is key to success.


Symmetry ◽  
2020 ◽  
Vol 12 (11) ◽  
pp. 1889
Author(s):  
Tiantian Hu ◽  
Hui Song ◽  
Tao Jiang ◽  
Shaobo Li

The two most important aspects of material research using deep learning (DL) or machine learning (ML) are the characteristics of materials data and learning algorithms, where the proper characterization of materials data is essential for generating accurate models. At present, the characterization of materials based on the molecular composition includes some methods based on feature engineering, such as Magpie and One-hot. Although these characterization methods have achieved significant results in materials research, these methods based on feature engineering cannot guarantee the integrity of materials characterization. One possible approach is to learn the materials characterization via neural networks using the chemical knowledge and implicit composition rules shown in large-scale known materials. This article chooses an adversarial method to learn the composition of atoms using the Generative Adversarial Network (GAN), which makes sense for data symmetry. The total loss value of the discriminator on the test set is reduced from 4.1e13 to 0.3194, indicating that the designed GAN network can well capture the combination of atoms in real materials. We then use the trained discriminator weights for material characterization and predict bandgap, formation energy, critical temperature (Tc) of superconductors on the Open Quantum Materials Database (OQMD), Materials Project (MP), and SuperCond datasets. Experiments show that when using the same predictive model, our proposed method performs better than One-hot and Magpie. This article provides an effective method for characterizing materials based on molecular composition in addition to Magpie, One-hot, etc. In addition, the generator learned in this study generates hypothetical materials with the same distribution as known materials, and these hypotheses can be used as a source for new material discovery.


2015 ◽  
Author(s):  
Robert Chow ◽  
Gene Frieders ◽  
Wayne Jensen ◽  
Mark Pearson ◽  
Phil Datte

2003 ◽  
Author(s):  
David T. Mathes ◽  
Robert Hull ◽  
Kent D. Choquette ◽  
Kent M. Geib ◽  
Andrew A. Allerman ◽  
...  

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