Activity Origin
and Design Principles for Oxygen Reduction
on Dual-Metal-Site Catalysts: A Combined Density Functional Theory
and Machine Learning Study
posted on 2019-12-04, 14:06authored byXiaorong Zhu, Jiaxian Yan, Min Gu, Tianyang Liu, Yafei Dai, Yanhui Gu, Yafei Li
Dual-metal-site catalysts (DMSCs) are emerging as a new
frontier
in the field of oxygen reduction reaction (ORR). However, there is
a lack of design principles to provide a universal description of
the relationship between intrinsic properties of DMSCs and the catalytic
activity. Here, we identify the origin of ORR activity and unveil
design principles for graphene-based DMSCs by means of density functional
theory computations and machine
learning (ML). Our results indicate that several experimentally unexplored
DMSCs can show outstanding ORR activity surpassing that of platinum.
Remarkably, our ML study reveals that the ORR activity of DMSCs is
intrinsically governed by some fundamental factors, such as electron
affinity, electronegativity, and radii of the embedded metal atoms.
More importantly, we propose predictor equations with acceptable accuracy
to quantitatively describe the ORR activity of DMSCs. Our work will
accelerate the search for highly active DMSCs for ORR and other electrochemical
reactions.