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Rapid Discovery of Gas Response in Materials Via Density Functional Theory and Machine Learning
Gao, Shasha1; Cheng, Yongchao1; Chen, Lu1; Huang, Sheng1,2
2024
Source PublicationEnergy and Environmental Materials
ISSN2575-0348
Volume8Issue:1
Abstract

In this study, a framework for predicting the gas-sensitive properties of gas-sensitive materials by combining machine learning and density functional theory (DFT) has been proposed. The framework rapidly predicts the gas response of materials by establishing relationships between multisource physical parameters and gas-sensitive properties. In order to prove its effectiveness, the perovskite CsCuI has been selected as the representative material. The physical parameters before and after the adsorption of various gases have been calculated using DFT, and then a machine learning model has been trained based on these parameters. Previous studies have shown that a single physical parameter alone is not enough to accurately predict the gas sensitivity of materials. Therefore, a variety of physical parameters have been selected for machine learning, and the final machine learning model achieved 92% accuracy in predicting gas sensitivity. It is important to note that although there have been no previous reports on the response of CsCuI to hydrogen sulfide, the resulting model predicts the gas response of HS; it is subsequently confirmed experimentally. This method not only enhances the understanding of the gas sensing mechanism, but also has a universal nature, making it suitable for the development of various new gas-sensitive materials.

KeywordDensity Functional Theory Gas-sensitive Materials Machine Learning
DOI10.1002/eem2.12816
URLView the original
Indexed BySCIE
Language英語English
WOS Research AreaMaterials Science
WOS SubjectMaterials Science, Multidisciplinary
WOS IDWOS:001282639000001
PublisherWILEY, 111 RIVER ST, HOBOKEN 07030-5774, NJ
Scopus ID2-s2.0-85200262264
Fulltext Access
Citation statistics
Document TypeJournal article
CollectionTHE STATE KEY LABORATORY OF ANALOG AND MIXED-SIGNAL VLSI (UNIVERSITY OF MACAU)
INSTITUTE OF MICROELECTRONICS
Corresponding AuthorHuang, Sheng
Affiliation1.School of Materials Science and Physics, China University of Mining and Technology, Xuzhou, 221116, China
2.State-Key Laboratory of Analog and Mixed-Signal VLSI, IME, University of Macau, 999078, Macao
Corresponding Author AffilicationUniversity of Macau
Recommended Citation
GB/T 7714
Gao, Shasha,Cheng, Yongchao,Chen, Lu,et al. Rapid Discovery of Gas Response in Materials Via Density Functional Theory and Machine Learning[J]. Energy and Environmental Materials, 2024, 8(1).
APA Gao, Shasha., Cheng, Yongchao., Chen, Lu., & Huang, Sheng (2024). Rapid Discovery of Gas Response in Materials Via Density Functional Theory and Machine Learning. Energy and Environmental Materials, 8(1).
MLA Gao, Shasha,et al."Rapid Discovery of Gas Response in Materials Via Density Functional Theory and Machine Learning".Energy and Environmental Materials 8.1(2024).
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