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Main Authors: Hering, Abigail R., Dubey, Mansha, Hosseini, Elahe, Srivastava, Meghna, An, Yu, Correa-Baena, Juan-Pablo, Homayoun, Houman, Leite, Marina S.
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2504.04002
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author Hering, Abigail R.
Dubey, Mansha
Hosseini, Elahe
Srivastava, Meghna
An, Yu
Correa-Baena, Juan-Pablo
Homayoun, Houman
Leite, Marina S.
author_facet Hering, Abigail R.
Dubey, Mansha
Hosseini, Elahe
Srivastava, Meghna
An, Yu
Correa-Baena, Juan-Pablo
Homayoun, Houman
Leite, Marina S.
contents Halide perovskites exhibit unpredictable properties in response to environmental stressors, due to several composition-dependent degradation mechanisms. In this work, we apply data visualization and machine learning (ML) techniques to reveal unexpected correlations between composition, temperature, and material properties while using high throughput, in situ environmental photoluminescence (PL) experiments. Correlation heatmaps show the strong influence of Cs content on film degradation, and dimensionality reduction visualization methods uncover clear composition-based data clusters. An extreme gradient boosting algorithm (XGBoost) effectively forecasts PL features for ten perovskite films with both composition-agnostic (>85% accuracy) and composition-dependent (>75% accuracy) model approaches, while elucidating the relative feature importance of composition (up to 99%). This model validates a previously unseen anti-correlation between Cs content and material thermal stability. Our ML-based framework can be expanded to any perovskite family, significantly reducing the analysis time currently employed to identify stable options for photovoltaics.
format Preprint
id arxiv_https___arxiv_org_abs_2504_04002
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Machine Learning Reveals Composition Dependent Thermal Stability in Halide Perovskites
Hering, Abigail R.
Dubey, Mansha
Hosseini, Elahe
Srivastava, Meghna
An, Yu
Correa-Baena, Juan-Pablo
Homayoun, Houman
Leite, Marina S.
Materials Science
Machine Learning
Halide perovskites exhibit unpredictable properties in response to environmental stressors, due to several composition-dependent degradation mechanisms. In this work, we apply data visualization and machine learning (ML) techniques to reveal unexpected correlations between composition, temperature, and material properties while using high throughput, in situ environmental photoluminescence (PL) experiments. Correlation heatmaps show the strong influence of Cs content on film degradation, and dimensionality reduction visualization methods uncover clear composition-based data clusters. An extreme gradient boosting algorithm (XGBoost) effectively forecasts PL features for ten perovskite films with both composition-agnostic (>85% accuracy) and composition-dependent (>75% accuracy) model approaches, while elucidating the relative feature importance of composition (up to 99%). This model validates a previously unseen anti-correlation between Cs content and material thermal stability. Our ML-based framework can be expanded to any perovskite family, significantly reducing the analysis time currently employed to identify stable options for photovoltaics.
title Machine Learning Reveals Composition Dependent Thermal Stability in Halide Perovskites
topic Materials Science
Machine Learning
url https://arxiv.org/abs/2504.04002