| Literature DB >> 32196135 |
Geun Ho Gu1, Changhyeok Choi1, Yeunhee Lee2, Andres B Situmorang2, Juhwan Noh1, Yong-Hyun Kim2, Yousung Jung1.
Abstract
The chemical conversion of small molecules such as H2 , H2 O, O2 , N2 , CO2 , and CH4 to energy and chemicals is critical for a sustainable energy future. However, the high chemical stability of these molecules poses grand challenges to the practical implementation of these processes. In this regard, computational approaches such as density functional theory, microkinetic modeling, data science, and machine learning have guided the rational design of catalysts by elucidating mechanistic insights, identifying active sites, and predicting catalytic activity. Here, the theory and methodologies for heterogeneous catalysis and their applications for small-molecule activation are reviewed. An overview of fundamental theory and key computational methods for designing catalysts, including the emerging data science techniques in particular, is given. Applications of these methods for finding efficient heterogeneous catalysts for the activation of the aforementioned small molecules are then surveyed. Finally, promising directions of the computational catalysis field for further outlooks are discussed, focusing on the challenges and opportunities for new methods.Entities:
Keywords: DFT calculations; catalysts; energy conversion; machine learning; small-molecule activation
Year: 2020 PMID: 32196135 DOI: 10.1002/adma.201907865
Source DB: PubMed Journal: Adv Mater ISSN: 0935-9648 Impact factor: 30.849