Physics-informed machine learning with data-driven equations for predicting organic solar cell performance

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dc.contributor.author Khatua, Rudranarayan
dc.contributor.author Das, Bibhas
dc.contributor.author Mondal, Anirban
dc.coverage.spatial United States of America
dc.date.accessioned 2024-10-30T10:20:31Z
dc.date.available 2024-10-30T10:20:31Z
dc.date.issued 2024-10
dc.identifier.citation Khatua, Rudranarayan; Das, Bibhas and Mondal, Anirban, "Physics-informed machine learning with data-driven equations for predicting organic solar cell performance", ACS Applied Materials & Interfaces, DOI: 10.1021/acsami.4c10868, vol. 16, no. 42, pp. 57467-57480, Oct. 2024.
dc.identifier.issn 1944-8244
dc.identifier.issn 1944-8252
dc.identifier.uri https://doi.org/10.1021/acsami.4c10868
dc.identifier.uri https://repository.iitgn.ac.in/handle/123456789/10659
dc.description.abstract Organic solar cells (OSCs) have emerged as a promising solution in pursuing sustainable energy. This study presents a comprehensive approach to advancing OSC development by integrating data-driven equations from quantum mechanical (QM) descriptors with physics-informed machine learning (PIML) models. We circumvent traditional experimental limitations through high-throughput QM calculations, prioritizing transparent and interpretable models. Using the SISSO++ method, we identified key descriptors that effectively map the relationships between input variables and photovoltaic performance metrics. Our innovative predictive models, derived from SISSO outputs, excel in forecasting critical OSC parameters such as short-circuit current (JSC), open-circuit voltage (VOC), fill factor (FF), and power conversion efficiency (PCEmax), achieving high accuracy even with limited data sets. To validate our models’ practical utility, we applied the PIML framework to a newly compiled data set of OSC devices, demonstrating their versatility and capability in pinpointing high-performance materials. This research underscores the strong predictive power of our models, bridging the gap between experimental results and theoretical predictions and making significant contributions to the advancement of sustainable energy technologies.
dc.description.statementofresponsibility by Rudranarayan Khatua, Bibhas Das and Anirban Mondal
dc.format.extent vol. 16, no. 42, pp. 57467-57480
dc.language.iso en_US
dc.publisher American Chemical Society
dc.subject Organic solar cells
dc.subject Physics-informed machine learning
dc.subject Sustainable energy technology
dc.subject Quantum mechanics
dc.title Physics-informed machine learning with data-driven equations for predicting organic solar cell performance
dc.type Article
dc.relation.journal ACS Applied Materials & Interfaces


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