Machine learning accelerates the materials discovery

J Fang, M Xie, X He, J Zhang, J Hu, Y Chen… - Materials Today …, 2022 - Elsevier
As the big data generated by the development of modern experiments and computing
technology becomes more and more accessible, the material design method based on …

[HTML][HTML] Methods for evaluating fracture patterns of polycrystalline materials based on the parameter analysis of ductile separation dimples: A review

P Maruschak, I Konovalenko, A Sorochak - Engineering Failure Analysis, 2023 - Elsevier
Literature sources have been reviewed, various techniques, methods and software for
investigating fracture of polycrystalline materials have been subjected to the systematic …

Perspective: Machine learning in experimental solid mechanics

NR Brodnik, C Muir, N Tulshibagwale, J Rossin… - Journal of the …, 2023 - Elsevier
Experimental solid mechanics is at a pivotal point where machine learning (ML) approaches
are rapidly proliferating into the discovery process due to significant advances in data …

[HTML][HTML] Recent advances in utility of artificial intelligence towards multiscale colloidal based materials design

AA Moud - Colloid and Interface Science Communications, 2022 - Elsevier
Colloidal material design necessitates a collection of computer approaches ranging from
quantum chemistry to molecular dynamics and continuum modeling. Machine learning (ML) …

A hybrid sparrow search algorithm of the hyperparameter optimization in deep learning

Y Fan, Y Zhang, B Guo, X Luo, Q Peng, Z Jin - Mathematics, 2022 - mdpi.com
Deep learning has been widely used in different fields such as computer vision and speech
processing. The performance of deep learning algorithms is greatly affected by their …

A contactless PCBA defect detection method: Convolutional neural networks with thermographic images

M Jeon, S Yoo, SW Kim - IEEE Transactions on Components …, 2022 - ieeexplore.ieee.org
In the mass production of electronic products, in-circuit-test (ICT) and printed circuit board
assembly (PCBA) quality tests are performed. ICT measures resistance values and …

Graph neural networks for simulating crack coalescence and propagation in brittle materials

R Perera, D Guzzetti, V Agrawal - Computer Methods in Applied Mechanics …, 2022 - Elsevier
High-fidelity fracture mechanics simulations of multiple microcracks interaction via physics-
based models can become computationally demanding as the number of microcracks …

Materials for sustainable nuclear energy: a European strategic research and innovation agenda for all reactor generations

L Malerba, A Al Mazouzi, M Bertolus, M Cologna… - Energies, 2022 - mdpi.com
Nuclear energy is presently the single major low-carbon electricity source in Europe and is
overall expected to maintain (perhaps eventually even increase) its current installed power …

Training material models using gradient descent algorithms

T Chen, MC Messner - International Journal of Plasticity, 2023 - Elsevier
High temperature design requires accurate constitutive models to describe material inelastic
deformation and failure behavior. Oftentimes, calibrating accurate models devolves into the …

A comparative study of creep-fatigue life prediction for complex geometrical specimens using supervised machine learning

J Song, Z Li, H Tan, J Huang, M Chen - Engineering Fracture Mechanics, 2023 - Elsevier
This study proposes a supervised machine learning approach to predict the creep-fatigue
life of complex geometrical specimens. Seven different specimens were tested under creep …