Login / Signup

Machine-learning-accelerated design of high-performance platinum intermetallic nanoparticle fuel cell catalysts.

Peng YinXiangfu NiuShuo-Bin LiKai ChenXi ZhangMing ZuoLiang ZhangHai-Wei Liang
Published in: Nature communications (2024)
Carbon supported PtCo intermetallic alloys are known to be one of the most promising candidates as low-platinum oxygen reduction reaction electrocatalysts for proton-exchange-membrane fuel cells. Nevertheless, the intrinsic trade-off between particle size and ordering degree of PtCo makes it challenging to simultaneously achieve a high specific activity and a large active surface area. Here, by machine-learning-accelerated screenings from the immense configuration space, we are able to statistically quantify the impact of chemical ordering on thermodynamic stability. We find that introducing of Cu/Ni into PtCo can provide additional stabilization energy by inducing Co-Cu/Ni disorder, thus facilitating the ordering process and achieveing an improved tradeoff between specific activity and active surface area. Guided by the theoretical prediction, the small sized and highly ordered ternary Pt 2 CoCu and Pt 2 CoNi catalysts are experimentally prepared, showing a large electrochemically active surface area of ~90 m 2 g Pt ‒1 and a high specific activity of ~3.5 mA cm ‒2 .
Keyphrases