posted on 2021-08-10, 18:40authored byPengcheng Xu, Dongping Chang, Tian Lu, Long Li, Minjie Li, Wencong Lu
Ferroelectric perovskites are one
of the most promising functional
materials due to the pyroelectric and piezoelectric effect. In the
practical applications of ferroelectric perovskites, it is often necessary
to meet the requirements of multiple properties. In this work, a multiproperties
machine learning strategy was proposed to accelerate the discovery
and design of new ferroelectric ABO3-type perovskites.
First, a classification model was constructed with data collected
from publications to distinguish ferroelectric and nonferroelectric
perovskites. The classification accuracies of LOOCV and the test set
are 87.29% and 86.21%, respectively. Then, two machine learning strategies,
Machine-Learning Workflow and SISSO, were used to construct the regression
models to predict the specific surface area (SSA), band gap (Eg), Curie temperature (Tc), and dielectric loss (tan δ) of ABO3-type
perovskites. The correlation coefficients of LOOCV in the optimal
models for SSA, Eg, and Tc are 0.935, 0.891, and 0.971, respectively, while the
correlation coefficient of the predicted and experimental values of
the SISSO model for tan δ prediction could reach 0.913. On the
basis of the models, 20 ABO3 ferroelectric perovskites
with three different application prospects were screened out with
the required properties, which could be explained by the patterns
between the important descriptors and the properties by using SHAP.
Furthermore, the constructed models were developed into web servers
for the researchers to accelerate the rational design and discovery
of ABO3 ferroelectric perovskites with desired multiple
properties.