Unlocking the performance of ternary metal (hydro)oxide amorphous catalysts via data-driven active-site engineering

Energy and Environmental Science(2023)

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摘要
A machine-learning methodology was applied to unveil the structure–property relationships of the fabricated ternary Ni, Fe, and Co amorphous oxygen evolution catalyst, showcasing remarkable performance and stability via corrosion engineering.
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关键词
amorphous catalysts,data-driven,active-site
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