MXgap: A MXene Learning Tool for Bandgap Prediction

Fecha de publicación

2026-01-07T16:40:50Z

2026-01-07T16:40:50Z

2025-08-05

2026-01-07T16:40:50Z

Resumen

The increasing demand for clean and renewable energy has intensified the exploration of advanced materials for efficient photocatalysis, particularly for water splitting applications. Among these materials, MXenes, a family of two-dimensional (2D) transition metal carbides and nitrides, have shown great promise. This study leverages machine learning (ML) to address the resource-intensive process of predicting the bandgap of MXenes, which is critical for their photocatalytic performance. Using an extensive data set of 4356 MXene structures, we trained multiple ML models and developed a robust classifier-regressor pipeline that achieves a classification accuracy of 92% and a mean absolute error (MAE) of 0.17 eV for bandgap prediction. This framework, implemented in an open-source Python package, MXgap, has been applied to screen 396 La-based MXenes, identifying six promising candidates with suitable band alignments for water splitting whose optical properties were further explored via optical absorption and solar to-hydrogen (STH) efficiency. These findings demonstrate the potential of ML to accelerate MXene discovery and optimization for energy applications.

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American Chemical Society

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Reproducció del document publicat a: https://doi.org/10.1021/acscatal.5c04191

ACS Catalysis, 2025, vol. 15, p. 14403-14413

https://doi.org/10.1021/acscatal.5c04191

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cc-by (c) Ontiveros Cruz, Diego et al., 2025

http://creativecommons.org/licenses/by/4.0/