CO2 Reduction beyond Copper-Based Catalysts: A Natural Language Processing Review from the Scientific Literature

铅(地质) 计算机科学 生化工程 纳米技术 化学 环境科学 工艺工程 材料科学 工程类 地貌学 地质学
作者
Lucas Bandeira,Henrique Ferreira,J. Almeida,Amauri J. Paula,Gustavo M. Dalpian
出处
期刊:ACS Sustainable Chemistry & Engineering [American Chemical Society]
卷期号:12 (11): 4411-4422 被引量:3
标识
DOI:10.1021/acssuschemeng.3c06920
摘要

Carbon dioxide (CO2) is a prominent greenhouse gas that contributes significantly to global warming. To combat this issue, one strategy is the conversion of CO2 into alcohols and hydrocarbons, which can be used as fuels and chemical feedstocks. Consequently, a substantial volume of scientific literature has been dedicated to investigating different materials and reaction conditions to facilitate the CO2 reduction reaction (CO2RR) into these so-called high-value products. However, the vastness of this literature makes it challenging to stay updated on recent discoveries and review the most promising materials and conditions that have been explored. To address this issue, we applied natural language processing tools to extract valuable data from 7292 published articles in the scientific literature. Our analysis revealed the emergence of new materials such as cesium–lead–bromide perovskites and bismuth oxyhalides that have been recently used in the CO2RR and identified Bi-based catalysts as the most selective for HCOO– production. Furthermore, we gleaned insights into the composition of other elements and materials commonly employed in the CO2RR, their relationship to product distribution, and the prevalent electrolytes used in the CO2 electrochemical reduction. Our findings can serve as a foundation for future investigations in the realm of catalysts for CO2RRs, offering insights into the most promising materials and conditions to pursue further research.

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