posted on 2023-11-30, 12:37authored byYibo Sun, Xinming Wang, Cong hou, Jun Ni
Machine
learning can accelerate the design of new materials by
screening large quantities of materials. We investigated the spontaneous
polarization intensity of inorganic perovskite ferroelectrics using
a machine learning approach. The machine learning model covers the
entire structure type of perovskite ferroelectrics. We make a large
number of predictions for perovskite materials based on our model
and screen 20 perovskite materials that have high spontaneous polarization
intensity. We employ the SHAP (Shapley additive explanations) technique
to qualitatively explain the machine learning model’s correctness
from a physical point of view. The results show that the larger the
average atomic radius and the smaller the electronegativity of the
metal atoms of the perovskite, the easier it is to find greater spontaneous
polarization intensity. We also screen and verify the reasonableness
of descriptors based on the model interpretation to improve the reliability
of the model. By utilizing an interpretable machine learning approach,
we can predict and optimize the properties of ferroelectrics, which
facilitates the evaluation and application of materials.