金属间化合物
电化学
氧还原反应
氧还原
氧气
化学
材料科学
组合化学
冶金
物理化学
有机化学
电极
合金
作者
Longhai Zhang,Xu Zhang,Changsheng Chen,Jiaxi Zhang,Weiquan Tan,Zhihang Xu,Ziying Zhong,Li Du,Huiyu Song,Shijun Liao,Ye Zhu,Zhen Zhou,Zhiming Cui
标识
DOI:10.1002/ange.202411123
摘要
Abstract Advancing the design of cathode catalysts to significantly maximize platinum utilization and augment the longevity has emerged as a formidable challenge in the field of fuel cells. Herein, we rationally design a high entropy intermetallic compound (HEIC, Pt(FeCoNiCu) 3 ) for catalyzing oxygen reduction reaction (ORR) by an efficient machine learning stategy, where crystal graph convolutional neural networks are employed to expedite the multicomponent design. Based on a dataset generated from first‐principles calculations, the model can achieve a high prediction accuracy with mean absolute errors of 0.003 for surface strain and 0.011 eV atom −1 for formation energy. In addition, we identify two chemical features (atomic size difference and mixing enthalpy) as new descriptors to explore advanced ORR catalysts. The carbon supported Pt(FeCoNiCu) 3 catalyst with small particle size is successfully synthesized by a freeze‐drying‐annealing technology, and exhibits ultrahigh mass activity (4.09 A mg Pt −1 ) and specific activity (7.92 mA cm −2 ). Meanwhile, The catalyst also shows significantly enhanced electrochemical stability which can be ascribed to the sluggish diffussion effect in the HEIC structure. Beyond offering a promising low‐Pt electrocatalysts for fuel cell cathode, this work offers a new paradigm to rationally design advanced catalysts for energy storage and conversion devices.
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