Machine learning descriptors for CO activation on iron-based fischer − Tropsch catalyst

IF 6.5 1区 化学 Q2 CHEMISTRY, PHYSICAL Journal of Catalysis Pub Date : 2024-12-22 DOI:10.1016/j.jcat.2024.115921
Yuhan Lin, , Quan Lin, Chongyang Wei, Yue Wang, Shouying Huang, Xing Chen, Xinbin Ma
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Abstract

Due to the development of material synthesis and characterization technology, as well as limited computational resources, the understanding of CO activation on Fe-based Fischer − Tropsch synthesis (FTS) catalysts is still changing, making catalyst screening and rational design difficult. In this work, we propose a novel model that bridges the structure of common iron carbides (including o-Fe7C3, χ-Fe5C2, θ-Fe3C, η-Fe2C and ε-Fe2.2C) with their CO activation capability. Using spin-polarized density functional theory (DFT), we explored CO activation pathways on a series of defective o-Fe7C3 surfaces. Advanced machine learning (ML) algorithms suitable for small datasets were employed to construct descriptor formulism with high predictive power for CO dissociation barriers. The ML-derived descriptor formulism unifies the catalytic expressions of various iron carbide phases, emphasizing the crucial roles of work function, carbon-vacancy formation energy, CO adsorption energy, coordination number, and the size of reaction sites in the CO dissociation process. This approach provides a deeper understanding of catalytic performance of distinct iron carbide surfaces and is applicable for designing high-performance catalysts for Fischer − Tropsch synthesis (FTS), thereby accelerating catalyst development. Furthermore, the strategy for identifying descriptors with a limited dataset highlights the potential of combining DFT and ML methods.

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来源期刊
Journal of Catalysis
Journal of Catalysis 工程技术-工程:化工
CiteScore
12.30
自引率
5.50%
发文量
447
审稿时长
31 days
期刊介绍: The Journal of Catalysis publishes scholarly articles on both heterogeneous and homogeneous catalysis, covering a wide range of chemical transformations. These include various types of catalysis, such as those mediated by photons, plasmons, and electrons. The focus of the studies is to understand the relationship between catalytic function and the underlying chemical properties of surfaces and metal complexes. The articles in the journal offer innovative concepts and explore the synthesis and kinetics of inorganic solids and homogeneous complexes. Furthermore, they discuss spectroscopic techniques for characterizing catalysts, investigate the interaction of probes and reacting species with catalysts, and employ theoretical methods. The research presented in the journal should have direct relevance to the field of catalytic processes, addressing either fundamental aspects or applications of catalysis.
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