The thermal cycling method induces structural defects to enhance the mechanical properties of FeGa alloys

Author(s):  
Guolin Xiao ◽  
Wei Zhang ◽  
Zhichao Ma ◽  
Hairui Du ◽  
Weizhi Li ◽  
...  
Coatings ◽  
2021 ◽  
Vol 11 (7) ◽  
pp. 823
Author(s):  
Danko Ćorić ◽  
Mateja Šnajdar Musa ◽  
Matija Sakoman ◽  
Željko Alar

The development of cemented carbides nowadays is aimed at the application and sintering of ultrafine and nano-sized powders for the production of a variety of components where excellent mechanical properties and high wear resistance are required for use in high temperature and corrosive environment conditions. The most efficient way of increasing the tribological properties along with achieving high corrosion resistance is coating. Using surface processes (modification and/or coating), it is possible to form a surface layer/base material system with properties that can meet modern expectations with acceptable production costs. Three coating systems were developed on WC cemented carbides substrate with the addition of 10 wt.% Co using the plasma-assisted chemical vapor deposition (PACVD) method: single-layer TiN coating, harder multilayer gradient TiCN coating composed of TiN and TiCN layers, and the hardest multilayer TiBN coating composed of TiN and TiB2. Physical and mechanical properties of coated and uncoated samples were investigated by means of quantitative depth profile (QDP) analysis, nanoindentation, surface layer characterization (XRD analysis), and coating adhesion evaluation using the scratch test. The results confirm the possibility of obtaining nanostructured cemented carbides of homogeneous structure without structural defects such as eta phase or unbound carbon providing increase in hardness and fracture toughness. The lowest adhesion was detected for the single-layer TiN coating, while coatings with a complex architecture (TiCN, TiBN) showed improved adhesion.


2019 ◽  
Vol 739 ◽  
pp. 132-139 ◽  
Author(s):  
Jiapeng Liu ◽  
Ding-Bang Xiong ◽  
Yishi Su ◽  
Qiang Guo ◽  
Zhiqiang Li ◽  
...  

2013 ◽  
Vol 4 ◽  
pp. 429-440 ◽  
Author(s):  
Hlengisizwe Ndlovu ◽  
Alison E Ashcroft ◽  
Sheena E Radford ◽  
Sarah A Harris

We examine how the different steric packing arrangements found in amyloid fibril polymorphs can modulate their mechanical properties using steered molecular dynamics simulations. Our calculations demonstrate that for fibrils containing structural defects, their ability to resist force in a particular direction can be dominated by both the number and molecular details of the defects that are present. The simulations thereby suggest a hierarchy of factors that govern the mechanical resilience of fibrils, and illustrate the general principles that must be considered when quantifying the mechanical properties of amyloid fibres containing defects.


2020 ◽  
Author(s):  
◽  
Dawei Li

[ACCESS RESTRICTED TO THE UNIVERSITY OF MISSOURI AT REQUEST OF AUTHOR.] To manipulate the mechanical and physical properties of bulk materials, like metals, ceramics, and semiconductors, the introduction of structural defects on the atomic or nano-level scales to the material has been widely adopted [1]. Properties that can be altered using this strategy include mechanical [2-4], magnetic [5-7] and electronic [8-11] properties. Recent development in the area of machine learning (ML) and deep learning (DL) generated new insights in the area of material research. ML models have been applied to the prediction of material properties of stoichiometric inorganic crystalline materials [12]. With the motivation to resolve the challenge of applying ML and DL in problems to correlate the predicted properties to its corresponding material structures, our lab previously proposed a brand new Concatenate Convolutional Network (CCN) [1] for predicting electronic properties, i.e. bandgaps, for doped graphene, a 2D material with widely tunable properties by doping different atoms. The proposed DL network provided a very promising performance in the prediction of electronic properties of graphene and boron-nitride (BN) hybrids, a well-known 2D bulk material. To take one step further in the performance of the prediction, as well as providing more insights into the structure-property relationships, we recently have applied a modified version of Google Inception V2 [13] network to the previously proposed problem and achieved much more improvements on predicting the electronic properties. The success of a highly accurate prediction of electronic properties led to the possibility of inverse design of the material using an even newer DL structure, Generative Adversarial Network (GAN). Since the possibility of hybridized graphene is enormous due to the dopant atom species, concentrations, and configurations, searching through such a vast material dimensional space in a high throughput manner would largely prompt the usage of doped graphene in the field of electronics, photo-electronics and robotics. More prominently, direct inverse design based on a desiring target functionality is highly anticipated. We recently have proposed a brand-new GAN structure solving the problem of inverse material design provided with the desired properties [14]. The new GAN structure we proposed can generate material data conditioned on a given electronic property, which is a continuous quantitative label. To the best of our knowledge, current existing GAN structures cannot generate data with the functionalities of regressional and conditional, some of the previous trials have ended up in either poor performance or non-fully autonomous generation. With the modified Google Inception Network to predict the electronic property of graphene-BN hybrids (h-BN) and the new regressional and conditional GAN (RCGAN) to design h-BN upon a desired electronic property, we wondered if the strategies and neural networks can be extended further into other material property related problems. Similar strategies were applied for mechanical property related problems of h-BN, however, instead of training a neural network from scratch, transfer learning has been adopted. The new network borrowed the prediction power from the network used for the electronic property prediction through sharing the same set of weights on the convolutional layers. The new network also achieved higher accuracy in predicting mechanical properties for graphene-BN hybrids, while required less resource in training the network and converged to a stable performance with a higher efficiency. After predicting mechanical properties of h-BN graphene successfully, inverse design based on desired mechanical properties has been achieved using RCGAN. To further explore applications of ML and DL in the world of material science, several ML and DL models have been applied to resolve the problem of predicting methane uptake based on material dimensions and environmental conditions. Two major questions raised are, what is the key factor affecting the methane uptake and how are they affecting it. They have been solved using the feature importance vectors output from the ML model with the highest predicting accuracy, along with the visualization of methane uptake through a contour plot created using the DL model. In all, throughout my latest year in research topics combining ML and DL with material problems, we have proposed several feasible strategies and mechanisms for gaining more insights into material and its correlated properties. We will focus more on the area of autonomous chemical structural design and discovery upon a desiring property using modified RCGAN and generate SMILES [15] representing chemical structures corresponding to the desired property in the future research.


Author(s):  
Ottorino Ori ◽  
Franco Cataldo ◽  
Mihai V. Putz

Recent advances in graphene studies deal with the influence of structural defects on graphene chemical, electrical, magnetic and mechanical properties. Here the complex mechanisms leading to the formation of clusters of vacancies in 2D honeycomb HD lattices are described by a pure topological point of view, aiming to correlate the variation of specific topological invariants, sensible to vacancy concentration, to the structural evolution of the defective networks driven by the topo-thermodynamical Gibbs free energy. Interesting predictions on defect formation mechanisms add details on the topological mechanisms featured by the graphenic structures with defects. Future roles of bondonic particles in defective HD materials are also envisaged.


1998 ◽  
Vol 120 (4) ◽  
pp. 322-327 ◽  
Author(s):  
H. Doi ◽  
K. Kawano ◽  
A. Yasukawa ◽  
T. Sato

The effect of a heat spreader on the life of the solder joints for underfill-encapsulated, flip-chip packages is investigated through stress analyses and thermal cycling tests. An underfill with suitable mechanical properties is found to be able to prolong the fatigue life of the solder joints even in a package with a heat spreader and an alumina substrate. The delamination of the underfill from the chip is revealed as another critical failure mode for which the shape of the underfill fillet has a large effect.


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