Navigation auf zora.uzh.ch

Search ZORA

ZORA (Zurich Open Repository and Archive)

Machine Learning Interatomic Potentials for Heterogeneous Catalysis

Tang, Deqi; Ketkaew, Rangsiman; Luber, Sandra (2024). Machine Learning Interatomic Potentials for Heterogeneous Catalysis. Chemistry, 30(60):e202401148.

Abstract

Atomistic modeling can provide valuable insights into the design of novel heterogeneous catalysts as needed nowadays in the areas of, e. g., chemistry, materials science, and biology. Classical force fields and ab initio calculations have been widely adopted in molecular simulations. However, these methods usually suffer from the drawbacks of either low accuracy or high cost. Recently, the development of machine learning interatomic potentials (MLIPs) has become more and more popular as they can tackle the problems in question and can deliver rather accurate results at significantly lower computational cost. In this review, the atomistic modeling of catalytic systems with the aid of MLIPs is discussed, showcasing recently developed MLIP models and selected applications for the modeling of heterogeneous catalytic systems. We also highlight the best practices and challenges for MLIPs and give an outlook for future works on MLIPs in the field of heterogeneous catalysis.

Additional indexing

Item Type:Journal Article, refereed, original work
Communities & Collections:07 Faculty of Science > Department of Chemistry
Dewey Decimal Classification:540 Chemistry
Scopus Subject Areas:Physical Sciences > Catalysis
Physical Sciences > General Chemistry
Physical Sciences > Organic Chemistry
Language:English
Date:28 October 2024
Deposited On:09 Feb 2025 14:42
Last Modified:10 Feb 2025 21:04
Publisher:Wiley-Blackwell Publishing, Inc.
ISSN:0947-6539
OA Status:Hybrid
Publisher DOI:https://doi.org/10.1002/chem.202401148
PubMed ID:39109600
Download PDF  'Machine Learning Interatomic Potentials for Heterogeneous Catalysis'.
Preview
  • Content: Published Version
  • Language: English
  • Licence: Creative Commons: Attribution-NonCommercial-NoDerivatives 4.0 International (CC BY-NC-ND 4.0)

Metadata Export

Statistics

Citations

Dimensions.ai Metrics
3 citations in Web of Science®
2 citations in Scopus®
Google Scholar™

Altmetrics

Downloads

4 downloads since deposited on 09 Feb 2025
5 downloads since 12 months
Detailed statistics

Authors, Affiliations, Collaborations

Similar Publications