2023
DOI: 10.1002/solr.202300490
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Assessing Performance and Limitations of a Device‐Level Machine Learning Approach for Perovskite Solar Cells with an Application to Hole Transport Materials

Abstract: Machine learning models have become widespread in materials science research. An open‐access and community‐driven database containing over 40000 perovskite photovoltaic devices was recently published. This resource enables the application of predictive data‐driven models to correlate device structure with photovoltaic performance, whereas the literature usually focused on specific device layers. In this work the concept of device‐level performance prediction is explored using gradient boosted regression trees … Show more

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References 60 publications
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