In material science and engineering, obtaining a spectrum from a measurement is often time-consuming and its accurate prediction using data mining can also be difficult. In this work, we propose a machine learning strategy based on a deep neural network model to accurately predict the dielectric temperature spectrum for a typical multi-component ferroelectric system, i.e., (Ba1−x−yCaxSry)(Ti1−u−v−wZruSnvHfw)O3. The deep neural network model uses physical features as inputs and directly outputs the full spectrum, in addition to yielding the octahedral factor, Matyonov–Batsanov electronegativity, ratio of valence electron to nuclear charge, and core electron distance (Schubert) as four key descriptors. Owing to the physically meaningful featu...
Dataset of material properties used to predict dielectric constants. Available as MontyEncoder encod...
In the past few decades, the first principles modeling algorithms, especially density functional the...
Abstract We use machine learning tools for the design and discovery of ABO3-type perovskite oxides f...
Low permittivity microwave dielectric ceramics (MWDCs) are attracting great interest because of thei...
Predicting the stability of crystals is one of the central problems in materials science. Today, den...
Abstract: Predicting the properties of materials prior to their synthesis is of great importance in ...
The fact that the properties of thermoelectric materials are to be estimated with Artificial Neural ...
Ferroelectric perovskites are one of the most promising functional materials due to the pyroelectric...
Predicting the stability of crystals is one of the central problems in materials science. Today, den...
Modeling ferroelectric materials from first principles is one of the successes of density-functional...
The magnetic properties of a material are determined by a subtle balance between the various interac...
The relative permittivity of a crystal is a fundamental property that links microscopic chemical bon...
Abstract Dopants play an important role in synthesizing materials to improve target materials proper...
Superconductivity has been the focus of enormous research effort since its discovery more than a cen...
The accurate description of the structural and thermodynamic properties of ferroelectrics has been o...
Dataset of material properties used to predict dielectric constants. Available as MontyEncoder encod...
In the past few decades, the first principles modeling algorithms, especially density functional the...
Abstract We use machine learning tools for the design and discovery of ABO3-type perovskite oxides f...
Low permittivity microwave dielectric ceramics (MWDCs) are attracting great interest because of thei...
Predicting the stability of crystals is one of the central problems in materials science. Today, den...
Abstract: Predicting the properties of materials prior to their synthesis is of great importance in ...
The fact that the properties of thermoelectric materials are to be estimated with Artificial Neural ...
Ferroelectric perovskites are one of the most promising functional materials due to the pyroelectric...
Predicting the stability of crystals is one of the central problems in materials science. Today, den...
Modeling ferroelectric materials from first principles is one of the successes of density-functional...
The magnetic properties of a material are determined by a subtle balance between the various interac...
The relative permittivity of a crystal is a fundamental property that links microscopic chemical bon...
Abstract Dopants play an important role in synthesizing materials to improve target materials proper...
Superconductivity has been the focus of enormous research effort since its discovery more than a cen...
The accurate description of the structural and thermodynamic properties of ferroelectrics has been o...
Dataset of material properties used to predict dielectric constants. Available as MontyEncoder encod...
In the past few decades, the first principles modeling algorithms, especially density functional the...
Abstract We use machine learning tools for the design and discovery of ABO3-type perovskite oxides f...