TY - JOUR
T1 - Data-driven enhancement of cubic phase stability in mixed-cation perovskites
AU - Park, Heesoo
AU - Ali, Adnan
AU - Mall, Raghvendra
AU - Bensmail, Halima
AU - Sanvito, Stefano
AU - Mellouhi, Fedwa El
N1 - Publisher Copyright:
© 2021 IOP Publishing Ltd.
PY - 2021/6
Y1 - 2021/6
N2 - Mixing cations has been a successful strategy in perovskite synthesis by solution-processing, delivering improvements in the thermodynamic stability as well as in the lattice parameter control. Unfortunately, the relation between a given cation mixture and the associated structural deformation is not well-established, a fact that hinders an adequate identification of the optimum chemical compositions. Such difficulty arises since local distortion and microscopic disorder influence structural stability and also determine phase segregation. Hence, the search for an optimum composition is currently based on experimental trial and error, a tedious and high-cost process. Here, we report on a machine-learning-reinforced cubic-phase-perovskite stability predictor that has been constructed over an extensive dataset of first-principles calculations. Such a predictor allows us to determine the cubic phase stability at a given cation mixture regardless of the various cations pair and concentration, even assessing very dilute concentrations, a notoriously challenging task for first-principles calculations. In particular, we construct machine learning models, predicting multiple target quantities such as the enthalpy of mixing and various octahedral distortions. It is then the combination of these targets that guide the laboratory synthesis. Our theoretical analysis is also validated by the experimental synthesis and characterization of methylammonium-dimethylammonium-mixed perovskite thin films, demonstrating the ability of the stability predictor to drive the chemical design of this class of materials.
AB - Mixing cations has been a successful strategy in perovskite synthesis by solution-processing, delivering improvements in the thermodynamic stability as well as in the lattice parameter control. Unfortunately, the relation between a given cation mixture and the associated structural deformation is not well-established, a fact that hinders an adequate identification of the optimum chemical compositions. Such difficulty arises since local distortion and microscopic disorder influence structural stability and also determine phase segregation. Hence, the search for an optimum composition is currently based on experimental trial and error, a tedious and high-cost process. Here, we report on a machine-learning-reinforced cubic-phase-perovskite stability predictor that has been constructed over an extensive dataset of first-principles calculations. Such a predictor allows us to determine the cubic phase stability at a given cation mixture regardless of the various cations pair and concentration, even assessing very dilute concentrations, a notoriously challenging task for first-principles calculations. In particular, we construct machine learning models, predicting multiple target quantities such as the enthalpy of mixing and various octahedral distortions. It is then the combination of these targets that guide the laboratory synthesis. Our theoretical analysis is also validated by the experimental synthesis and characterization of methylammonium-dimethylammonium-mixed perovskite thin films, demonstrating the ability of the stability predictor to drive the chemical design of this class of materials.
KW - Data-driven materials discovery
KW - Deep learning
KW - Density functional theory
KW - Hybrid organic inorganic perovskites
UR - http://www.scopus.com/inward/record.url?scp=85105084091&partnerID=8YFLogxK
U2 - 10.1088/2632-2153/abdaf9
DO - 10.1088/2632-2153/abdaf9
M3 - Article
AN - SCOPUS:85105084091
SN - 2632-2153
VL - 2
JO - Machine Learning: Science and Technology
JF - Machine Learning: Science and Technology
IS - 2
M1 - 025030
ER -