AI-Driven Robot Enables Synthesis-Property Relation Prediction for Metal Halide Perovskites in Humid Atmosphere

Halder A, Alghalayini MB, Cheng S, Thalanki N, Nguyen TM, Hering AR, Lee DK, Arnold S, Leite MS, Barnard E, Razumtcev A, Wall M, Gashi A, Liu YR, Noack MM, Sun S, Sutter-Fella CM (2025)


Publication Type: Journal article

Publication year: 2025

Journal

DOI: 10.1002/aenm.202502294

Abstract

Materials Acceleration Platforms (MAPs) – also known as self-driving laboratories– present a new paradigm for materials science and promise an order of magnitude accelerated materials discovery compared to the traditional trial-and-error approach. Metal halide perovskites (MHPs) are an emerging class of materials for optoelectronic applications but are plagued by irreproducible optoelectronic quality, particularly for films fabricated in a humid atmosphere. Here, a machine learning (ML)-guided closed-loop platform is developed with a multimodal data fusion approach to predict synthesis–property relations for the optical quality of MHP thin films in relative humidities (RHs) ranging from 5–55%. The efficiency of this approach is confirmed by the fast-dropping learning rate to 2% after experimentally sampling less than 1% of the possible 5,000+ combinations. The prediction of synthesis–property relations is done by optical and imaging characterizations. In situ photoluminescence characterization revealed the origin of thin film quality variation at different RH. These insights provide an avenue for controlling the MHP crystallization by fine-tuning the synthesis parameters and RH for a given chemistry, thus lifting the need for stringent atmosphere control. The MAP enables an accelerated screening and understanding of the synthesis design space, facilitating rational synthesis recipe choice for a wide range of materials.

Involved external institutions

How to cite

APA:

Halder, A., Alghalayini, M.B., Cheng, S., Thalanki, N., Nguyen, T.M., Hering, A.R.,... Sutter-Fella, C.M. (2025). AI-Driven Robot Enables Synthesis-Property Relation Prediction for Metal Halide Perovskites in Humid Atmosphere. Advanced Energy Materials. https://doi.org/10.1002/aenm.202502294

MLA:

Halder, Ansuman, et al. "AI-Driven Robot Enables Synthesis-Property Relation Prediction for Metal Halide Perovskites in Humid Atmosphere." Advanced Energy Materials (2025).

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