We show here that machine learning is a powerful new tool for predicting the elastic response of zeolites. We built our machine learning approach relying on geometric features only, which are related to local geometry, structure and porosity of a zeolite, to predict bulk and shear moduli of zeolites with an accuracy exceeding that of force field approaches. The development of this model has illustrated clear correlations between characteristic features of a zeolite and elastic moduli providing exceptional insight into the mechanics of zeolitic frameworks. Finally, we employ this methodology to predict the elastic response of 590 448 hypothetical zeolites, and the results of this massive database provide clear evidence to stability trends in...
Zeolites are important materials for research and industrial applications. Mesopores are often intro...
A wide range of mechanical properties are vital in structures, from macro (e.g., load-bearing) down ...
Molecular sieving is based on mobility differences of species under extreme confinement, i.e. within...
We show here that machine learning is a powerful new tool for predicting the elastic response of zeo...
The use of machine learning for the prediction of physical and chemical properties of crystals based...
Machine learning potentials (MLPs) capable of accurately describing complex ab initio potential ener...
Machine learning potentials (MLPs) capable of accurately describing complex ab initio potential ener...
With zeolites consumption exceeding 3 million tons and hundreds of new zeolites structures are being...
The purpose of this study is to find out if there are any ways to create synthetic zeolites base on ...
Zeolites are well defined structures containing elements such as aluminum, silicon and oxygen in the...
Zeolites are porous, aluminosilicate materials with many industrial and “green” applications. Despit...
Development of new materials via experiments alone is costly and can take years, if not decades, to ...
The application of machine learning to predict materials' properties usually requires a large number...
© 2019 American Chemical Society. Zeolites are porous, aluminosilicate materials with many industri...
Zeolite stability, in terms of lattice energy, is revisited from a crystal-chemistry point of view. ...
Zeolites are important materials for research and industrial applications. Mesopores are often intro...
A wide range of mechanical properties are vital in structures, from macro (e.g., load-bearing) down ...
Molecular sieving is based on mobility differences of species under extreme confinement, i.e. within...
We show here that machine learning is a powerful new tool for predicting the elastic response of zeo...
The use of machine learning for the prediction of physical and chemical properties of crystals based...
Machine learning potentials (MLPs) capable of accurately describing complex ab initio potential ener...
Machine learning potentials (MLPs) capable of accurately describing complex ab initio potential ener...
With zeolites consumption exceeding 3 million tons and hundreds of new zeolites structures are being...
The purpose of this study is to find out if there are any ways to create synthetic zeolites base on ...
Zeolites are well defined structures containing elements such as aluminum, silicon and oxygen in the...
Zeolites are porous, aluminosilicate materials with many industrial and “green” applications. Despit...
Development of new materials via experiments alone is costly and can take years, if not decades, to ...
The application of machine learning to predict materials' properties usually requires a large number...
© 2019 American Chemical Society. Zeolites are porous, aluminosilicate materials with many industri...
Zeolite stability, in terms of lattice energy, is revisited from a crystal-chemistry point of view. ...
Zeolites are important materials for research and industrial applications. Mesopores are often intro...
A wide range of mechanical properties are vital in structures, from macro (e.g., load-bearing) down ...
Molecular sieving is based on mobility differences of species under extreme confinement, i.e. within...