The possibility of band gap engineering in graphene opens countless new opportunities for application in nanoelectronics. In this work, the energy gaps of 622 computationally optimized graphene nanoflakes were mapped to topological autocorrelation vectors using machine learning techniques. Machine learning modeling revealed that the most relevant correlations appear at topological distances in the range of 1 to 42 with prediction accuracy higher than 80%. The data-driven model can statistically discriminate between graphene nanoflakes with different energy gaps on the basis of their molecular topology
The intrinsic relationships between nanoscale features and electronic properties of nanomaterials re...
3D graphene assemblies are proposed as solutions to meet the goal toward efficient utilization of 2D...
Graph networks are a new machine learning (ML) paradigm that supports both relational reasoning and ...
The electronic properties of graphene nanoflakes (GNFs) with embedded hexagonal boron nitride (hBN) ...
© 2018 American Physical Society. We present an accurate interatomic potential for graphene, constru...
A first-principles approach is a powerful means of gaining insight into the intrinsic structure and ...
Manipulation of physical and chemical properties of materials via precise doping affords an extensiv...
Defects in graphene can profoundly impact its extraordinary properties, ultimately influencing the p...
© 2021 Author(s).Since the local and elastic strain induced by nanobubbles largely affects the trans...
Notably known for its extraordinary thermal and mechanical properties, graphene is a favorable build...
In this research study, we employ machine learning algorithms to perform molecular dynamics simulati...
Molecular functionalization of porphyrins opens countless new opportunities in tailoring their physi...
<p>Graphene is a 2D carbon material that is impermeable to all gases. By engineering pores into grap...
© 2020 Author(s). We present an accurate machine learning (ML) model for atomistic simulations of ca...
We present an accurate machine learning (ML) model for atomistic simulations of carbon, constructed ...
The intrinsic relationships between nanoscale features and electronic properties of nanomaterials re...
3D graphene assemblies are proposed as solutions to meet the goal toward efficient utilization of 2D...
Graph networks are a new machine learning (ML) paradigm that supports both relational reasoning and ...
The electronic properties of graphene nanoflakes (GNFs) with embedded hexagonal boron nitride (hBN) ...
© 2018 American Physical Society. We present an accurate interatomic potential for graphene, constru...
A first-principles approach is a powerful means of gaining insight into the intrinsic structure and ...
Manipulation of physical and chemical properties of materials via precise doping affords an extensiv...
Defects in graphene can profoundly impact its extraordinary properties, ultimately influencing the p...
© 2021 Author(s).Since the local and elastic strain induced by nanobubbles largely affects the trans...
Notably known for its extraordinary thermal and mechanical properties, graphene is a favorable build...
In this research study, we employ machine learning algorithms to perform molecular dynamics simulati...
Molecular functionalization of porphyrins opens countless new opportunities in tailoring their physi...
<p>Graphene is a 2D carbon material that is impermeable to all gases. By engineering pores into grap...
© 2020 Author(s). We present an accurate machine learning (ML) model for atomistic simulations of ca...
We present an accurate machine learning (ML) model for atomistic simulations of carbon, constructed ...
The intrinsic relationships between nanoscale features and electronic properties of nanomaterials re...
3D graphene assemblies are proposed as solutions to meet the goal toward efficient utilization of 2D...
Graph networks are a new machine learning (ML) paradigm that supports both relational reasoning and ...