Notably known for its extraordinary thermal and mechanical properties, graphene is a favorable building block in various cutting-edge technologies such as flexible electronics and supercapacitors. However, the almost inevitable existence of defects severely compromises the properties of graphene, and defect prediction is a difficult, yet important, task. Emerging machine learning approaches offer opportunities to predict target properties such as defect distribution by exploiting readily available data, without incurring much experimental cost. Most previous machine learning techniques require the size of training data and predicted material systems of interest to be identical. This limits their broader application, because in practice a ne...
© 2021 Author(s).Since the local and elastic strain induced by nanobubbles largely affects the trans...
Two-dimensionally extended amorphous carbon ("amorphous graphene") is a prototype system for disorde...
Machine learning is a powerful way of uncovering hidden structure/property relationships in nanoscal...
Defects in graphene can profoundly impact its extraordinary properties, ultimately influencing the p...
Despite the tremendous capabilities of Molecular dynamics (MD) simulations, they suffer from the lim...
Understanding fracture is critical to the design of resilient nanomaterials. Molecular dynamics offe...
Graphene's intrinsically corrugated and wrinkled topology fundamentally influences its electronic, m...
Machine learning (ML) has been vastly used in various fields, but its application in engineering sci...
Graphene can now be found in many different technologies, with new and innovative products expected ...
The possibility of band gap engineering in graphene opens countless new opportunities for applicatio...
Graphene’s intrinsically corrugated and wrinkled topology fundamentally influences its electronic, m...
Abstract Two-dimensional materials offer a promising platform for the next generation of (opto-) ele...
The presence of point defects, such as vacancies, plays an important role in materials design. Here,...
Graphene is an exotic nanomaterial consisting of a single layer of carbon atoms arranged in a two-di...
3D graphene assemblies are proposed as solutions to meet the goal toward efficient utilization of 2D...
© 2021 Author(s).Since the local and elastic strain induced by nanobubbles largely affects the trans...
Two-dimensionally extended amorphous carbon ("amorphous graphene") is a prototype system for disorde...
Machine learning is a powerful way of uncovering hidden structure/property relationships in nanoscal...
Defects in graphene can profoundly impact its extraordinary properties, ultimately influencing the p...
Despite the tremendous capabilities of Molecular dynamics (MD) simulations, they suffer from the lim...
Understanding fracture is critical to the design of resilient nanomaterials. Molecular dynamics offe...
Graphene's intrinsically corrugated and wrinkled topology fundamentally influences its electronic, m...
Machine learning (ML) has been vastly used in various fields, but its application in engineering sci...
Graphene can now be found in many different technologies, with new and innovative products expected ...
The possibility of band gap engineering in graphene opens countless new opportunities for applicatio...
Graphene’s intrinsically corrugated and wrinkled topology fundamentally influences its electronic, m...
Abstract Two-dimensional materials offer a promising platform for the next generation of (opto-) ele...
The presence of point defects, such as vacancies, plays an important role in materials design. Here,...
Graphene is an exotic nanomaterial consisting of a single layer of carbon atoms arranged in a two-di...
3D graphene assemblies are proposed as solutions to meet the goal toward efficient utilization of 2D...
© 2021 Author(s).Since the local and elastic strain induced by nanobubbles largely affects the trans...
Two-dimensionally extended amorphous carbon ("amorphous graphene") is a prototype system for disorde...
Machine learning is a powerful way of uncovering hidden structure/property relationships in nanoscal...