Recent advances and applications of deep learning methods in materials science
Deep learning (DL) is one of the fastest-growing topics in materials data science, with
rapidly emerging applications spanning atomistic, image-based, spectral, and textual data …
rapidly emerging applications spanning atomistic, image-based, spectral, and textual data …
Machine learning in electron microscopy for advanced nanocharacterization: current developments, available tools and future outlook
In the last few years, electron microscopy has experienced a new methodological paradigm
aimed to fix the bottlenecks and overcome the challenges of its analytical workflow. Machine …
aimed to fix the bottlenecks and overcome the challenges of its analytical workflow. Machine …
Complex oxides for brain‐inspired computing: A review
The fields of brain‐inspired computing, robotics, and, more broadly, artificial intelligence (AI)
seek to implement knowledge gleaned from the natural world into human‐designed …
seek to implement knowledge gleaned from the natural world into human‐designed …
Proton conducting neuromorphic materials and devices
Neuromorphic computing and artificial intelligence hardware generally aims to emulate
features found in biological neural circuit components and to enable the development of …
features found in biological neural circuit components and to enable the development of …
AI-NERD: Elucidation of relaxation dynamics beyond equilibrium through AI-informed X-ray photon correlation spectroscopy
Understanding and interpreting dynamics of functional materials in situ is a grand challenge
in physics and materials science due to the difficulty of experimentally probing materials at …
in physics and materials science due to the difficulty of experimentally probing materials at …
Deep learning at the edge enables real-time streaming ptychographic imaging
Coherent imaging techniques provide an unparalleled multi-scale view of materials across
scientific and technological fields, from structural materials to quantum devices, from …
scientific and technological fields, from structural materials to quantum devices, from …
Demonstration of an AI-driven workflow for autonomous high-resolution scanning microscopy
Modern scanning microscopes can image materials with up to sub-atomic spatial and sub-
picosecond time resolutions, but these capabilities come with large volumes of data, which …
picosecond time resolutions, but these capabilities come with large volumes of data, which …
AutoPhaseNN: unsupervised physics-aware deep learning of 3D nanoscale Bragg coherent diffraction imaging
The problem of phase retrieval underlies various imaging methods from astronomy to
nanoscale imaging. Traditional phase retrieval methods are iterative and are therefore …
nanoscale imaging. Traditional phase retrieval methods are iterative and are therefore …
Diverse 3D auxetic unit cell inverse design with deep learning
X Fang, HS Shen, H Wang - Applied Physics Reviews, 2023 - pubs.aip.org
The use of metamaterial structures with auxeticity can result in exceptional mechanical
properties, such as high energy absorption and fracture resistance. However, traditional …
properties, such as high energy absorption and fracture resistance. However, traditional …
In-situ monitoring of the melt pool dynamics in ultrasound-assisted metal 3D printing using machine learning
Ultrasound-assisted directed energy deposition (UADED) is a promising technology for
improving the properties of printed parts. However, process monitoring during UADED …
improving the properties of printed parts. However, process monitoring during UADED …