Topology-Determined Structural Genes Enable Data-Driven Discovery and Intelligent Design of Potential Metal Oxides for Inert C-H Bond Activation.
Chuan ZhouChen ChenPeijun HuHai Feng WangPublished in: Journal of the American Chemical Society (2023)
The identification of appropriate structural genes that influence the active-site configuration for a given reaction is critical for discovering potential catalysts with reduced reaction barriers. In this study, we introduce bulk-phase topology-derived tetrahedral descriptors as a means of expressing a catalyst's "material structural genes". We combine this approach with an interpretable machine learning model to accurately and efficiently predict the effective barrier associated with methane C-H bond cleavage across a wide range of metal oxides (MOs). These structural genes enable high-throughput catalyst screening for low-temperature methane activation and ultimately identify 13 candidate catalysts from a pool of 9095 MOs that are recommended for experimental synthesis. The topology-based method that we describe can also be extended to facilitate high-throughput catalyst screening and design for other dehydrogenation reactions.
Keyphrases
- high throughput
- highly efficient
- bioinformatics analysis
- room temperature
- genome wide
- reduced graphene oxide
- machine learning
- carbon dioxide
- transition metal
- metal organic framework
- ionic liquid
- genome wide identification
- visible light
- quantum dots
- single cell
- genome wide analysis
- small molecule
- transcription factor
- artificial intelligence
- risk assessment
- human health
- electron transfer
- wild type