Abstract We use machine learning tools for the design and discovery of ABO3-type perovskite oxides for various energy applications, using over 7000 data points from the literature. We demonstrate a robust learning framework for efficient and accurate prediction of total conductivity of perovskites and their classification based on the type of charge carrier at different conditions of temperature and environment. After evaluating a set of >100 features, we identify average ionic radius, minimum electronegativity, minimum atomic mass, minimum formation energy of oxides for all B-site, and B-site dopant ions of the perovskite as the crucial and relevant predictors for determining conductivity and the type of charge carriers. The models are val...
Reaching the full potential of optoelectronic materials is often hindered by the years of necessary ...
As one of the most studied materials, perovskites exhibit a wealth of superior properties that lead ...
To better present the machine learning work and the data used, we prepared a supplemental spreadshee...
Perovskites have exceptional physical and chemical features in different fields. Perovskites have an...
The aim of this work is to predict suitable chemical compositions for the development of new ceramic...
Perovskites are semiconducting material with many attractive physical and chemical properties such a...
Perovskite materials are central to the fields of energy conversion and storage, especially for fuel...
Ferroelectric perovskites are one of the most promising functional materials due to the pyroelectric...
Multi-metal oxides in general and perovskite oxides in particular have attracted considerable attent...
Perovskites as a semiconductor are of profound interest and arguably, the investigation on the disti...
Discovering new materials that efficiently catalyze the oxygen reduction and evolution reactions is ...
It is a present-day challenge to design and develop oxygen-permeable solid oxide fuel cell (SOFC) el...
Machine learning has been recently used for novel perovskite designs owing to the availability of a ...
Perovskites are promising materials applied in new energy devices, from solar cells to battery elect...
In recent years, researchers have increasingly turned to machine learning (ML) techniques to help ac...
Reaching the full potential of optoelectronic materials is often hindered by the years of necessary ...
As one of the most studied materials, perovskites exhibit a wealth of superior properties that lead ...
To better present the machine learning work and the data used, we prepared a supplemental spreadshee...
Perovskites have exceptional physical and chemical features in different fields. Perovskites have an...
The aim of this work is to predict suitable chemical compositions for the development of new ceramic...
Perovskites are semiconducting material with many attractive physical and chemical properties such a...
Perovskite materials are central to the fields of energy conversion and storage, especially for fuel...
Ferroelectric perovskites are one of the most promising functional materials due to the pyroelectric...
Multi-metal oxides in general and perovskite oxides in particular have attracted considerable attent...
Perovskites as a semiconductor are of profound interest and arguably, the investigation on the disti...
Discovering new materials that efficiently catalyze the oxygen reduction and evolution reactions is ...
It is a present-day challenge to design and develop oxygen-permeable solid oxide fuel cell (SOFC) el...
Machine learning has been recently used for novel perovskite designs owing to the availability of a ...
Perovskites are promising materials applied in new energy devices, from solar cells to battery elect...
In recent years, researchers have increasingly turned to machine learning (ML) techniques to help ac...
Reaching the full potential of optoelectronic materials is often hindered by the years of necessary ...
As one of the most studied materials, perovskites exhibit a wealth of superior properties that lead ...
To better present the machine learning work and the data used, we prepared a supplemental spreadshee...