Machine Learning for the Expedited Screening of Hydrogen Evolution Catalysts for Transition Metal-Doped Transition Metal Dichalcogenidesopen access
- Authors
- Lee, Jaeho; Lee, Jaehwan; Shin, Seokwon; Son, Youngdoo; Han, Young-Kyu
- Issue Date
- Sep-2023
- Publisher
- John Wiley & Sons Ltd
- Keywords
- Catalysts; Chemical Bonds; Density Functional Theory; Design For Testability; Electronegativity; Forecasting; Free Energy; Gas Adsorption; Gibbs Free Energy; Layered Semiconductors; Machine Learning; Molybdenum Compounds; Selenium Compounds; Tellurium Compounds; Tungsten Compounds; Density-functional-theory; Development Process; Dichalcogenides; Hydrogen Evolution Reactions; Hydrogen-evolution; Machine-learning; Metal-doped; Two-dimensional; Valence Electron; ]+ Catalyst; Transition Metals
- Citation
- International Journal of Energy Research, v.2023, no.1
- Indexed
- SCIE
SCOPUS
- Journal Title
- International Journal of Energy Research
- Volume
- 2023
- Number
- 1
- URI
- https://scholarworks.dongguk.edu/handle/sw.dongguk/20390
- DOI
- 10.1155/2023/6612054
- ISSN
- 0363-907X
1099-114X
- Abstract
- Two-dimensional transition metal dichalcogenides (TMDs) have gained attention as potent catalysts for the hydrogen evolution reaction (HER). The traditional trial-and-error methodology for catalyst development has proven inefficient due to its costly and time-intensive nature. To accelerate the catalyst development process, the Gibbs free energy of hydrogen adsorption ( Δ G H ∗ ), computed using the density functional theory (DFT), is widely used as the paramount descriptor for evaluating and predicting HER catalyst performance. However, DFT calculations for Δ G H ∗ are time-consuming and thus pose a challenge for high-throughput screening. Herein, we devise a predictive model for Δ G H ∗ within transition metal-doped TMD systems using a machine learning (ML) framework. We calculate DFT Δ G H ∗ values for 150 TM-doped MX2 (CrS2, MoS2, WS2, MoSe2, and MoTe2) and apply various ML algorithms. We validate the universality of our model by constructing 15 new external test sets. The prediction results show a high correlation coefficient of R 2 = 0.92 . Based on feature analysis, the three most important parameters are the number of valence electrons of the doped transition metal, the distance of the valence electrons of the doped transition metal, and the electronegativity of the doped transition metal. Our DFT-based ML model provides a useful guideline for the material development process through Δ G H ∗ prediction and facilitates the efficient design of transition metal dichalcogenide catalysts that exhibit superior HER activity. Copyright © 2023 Jaeho Lee et al.
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Collections - College of Engineering > Department of Industrial and Systems Engineering > 1. Journal Articles
- College of Engineering > Department of Energy and Materials Engineering > 1. Journal Articles

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