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Accelerated Design for Perovskite-Oxide-Based Photocatalysts Using Machine Learning Techniques. | LitMetric

Accelerated Design for Perovskite-Oxide-Based Photocatalysts Using Machine Learning Techniques.

Materials (Basel)

Public Experimental Teaching Center, Panzhihua University, Panzhihua 617000, China.

Published: June 2024

The rapid discovery of photocatalysts with desired performance among tens of thousands of potential perovskites represents a significant advancement. To expedite the design of perovskite-oxide-based photocatalysts, we developed a model of ABO-type perovskites using machine learning methods based on atomic and experimental parameters. This model can be used to predict specific surface area (SSA), a key parameter closely associated with photocatalytic activity. The model construction involved several steps, including data collection, feature selection, model construction, web-service development, virtual screening and mechanism elucidation. Statistical analysis revealed that the support vector regression model achieved a correlation coefficient of 0.9462 for the training set and 0.8786 for the leave-one-out cross-validation. The potential perovskites with higher SSA than the highest SSA observed in the existing dataset were identified using the model and our computation platform. We also developed a webserver of the model, freely accessible to users. The methodologies outlined in this study not only facilitate the discovery of new perovskites but also enable exploration of the correlations between the perovskite properties and the physicochemical features. These findings provide valuable insights for further research and applications of perovskites using machine learning techniques.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11206125PMC
http://dx.doi.org/10.3390/ma17123026DOI Listing

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