Chemistrynpj Computational Materials
Machine learning-aided first-principles calculations of redox potentials
R. Jinnouchi, F. Karsai, et al.
Discover an innovative approach that blends first-principles calculations with machine learning to predict redox potentials with impressive accuracy. This groundbreaking research from Ryosuke Jinnouchi, Ferenc Karsai, and Georg Kresse offers insights into essential half-cell reactions like Fe³⁺/Fe²⁺ and more!
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