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Machine Learning in Screening High Performance Electrocatalysts for CO<sub>2</sub> Reduction

Ning Zhang, Baopeng Yang, Kang Liu, Hongmei Li, Gen Chen, Xiaoqing Qiu, Wenzhang Li, Junhua Hu, Junwei Fu, Yong Jiang, Min Liu, Jinhua Ye

2021Small Methods106 citationsDOI

Abstract

Abstract Converting CO 2 into carbon‐based fuels is promising for relieving the greenhouse gas effect and the energy crisis. However, the selectivity and efficiency of current electrocatalysts for CO 2 reductions are still not satisfactory. In this paper, the development of machine learning methods in screening CO 2 reduction electrocatalysts over the recent years is reviewed. Through high‐throughput calculation of some key descriptors such as adsorption energies, d‐band center, and coordination number by well‐constructed machine learning models, the catalytic activity, optimal composition, active sites, and CO 2 reduction reaction pathway over various possible materials can be predicted and understood. Machine learning is now realized as a fast and low‐cost method to effectively explore high performance electrocatalysts for CO 2 reduction.

Topics & Concepts

Reduction (mathematics)Materials scienceComputer scienceMathematicsGeometryCO2 Reduction Techniques and CatalystsMachine Learning in Materials ScienceElectrocatalysts for Energy Conversion
Machine Learning in Screening High Performance Electrocatalysts for CO<sub>2</sub> Reduction | Litcius