TY - JOUR
T1 - Comprehensive Structural Descriptors Enable Machine Learning Prediction of Perovskite Band Characteristics
AU - Ni, Zixuan
AU - Zhang, Zhirui
AU - Chen, Yiming
AU - Zheng, Daye
AU - Xu, Jian
N1 - Publisher Copyright:
© 2026 American Chemical Society
PY - 2026/4/2
Y1 - 2026/4/2
N2 - Organic–inorganic hybrid and all-inorganic perovskites are promising candidates for next-generation optoelectronics. Accurate prediction of band characteristics is essential for guiding the rational design of high-performance perovskite devices. Although machine learning (ML) has been applied in this field, the soft lattices of halide perovskites exhibit significant structural distortions that are often difficult for conventional ML descriptors to capture. Here, we introduce a set of physically meaningful structural descriptors that directly quantify key distortion modes: octahedral distortion, cation displacement, and segregation index. The resulting model achieves high accuracy for prediction of bandgap, VBM, and CBM positions of two representative Br-alloyed lead halide perovskite systems (Cs0.25FA0.75PbIxBr3–x and CsPbIxBr3–x), underscoring the importance of structural information in ML-driven electronic-property prediction. Notably, we identified an unexpected inverse correlation between the standard deviation of Pb–X–Pb bond angles and the bandgap, which is associated with an enhanced contribution of Br to the VBM under higher structural order.
AB - Organic–inorganic hybrid and all-inorganic perovskites are promising candidates for next-generation optoelectronics. Accurate prediction of band characteristics is essential for guiding the rational design of high-performance perovskite devices. Although machine learning (ML) has been applied in this field, the soft lattices of halide perovskites exhibit significant structural distortions that are often difficult for conventional ML descriptors to capture. Here, we introduce a set of physically meaningful structural descriptors that directly quantify key distortion modes: octahedral distortion, cation displacement, and segregation index. The resulting model achieves high accuracy for prediction of bandgap, VBM, and CBM positions of two representative Br-alloyed lead halide perovskite systems (Cs0.25FA0.75PbIxBr3–x and CsPbIxBr3–x), underscoring the importance of structural information in ML-driven electronic-property prediction. Notably, we identified an unexpected inverse correlation between the standard deviation of Pb–X–Pb bond angles and the bandgap, which is associated with an enhanced contribution of Br to the VBM under higher structural order.
UR - https://www.scopus.com/pages/publications/105034902906
U2 - 10.1021/acs.jpclett.6c00030
DO - 10.1021/acs.jpclett.6c00030
M3 - Article
C2 - 41848807
AN - SCOPUS:105034902906
SN - 1948-7185
VL - 17
SP - 3789
EP - 3795
JO - Journal of Physical Chemistry Letters
JF - Journal of Physical Chemistry Letters
IS - 13
ER -