posted on 2024-11-07, 17:57authored byWenming Xia, Guo Chen, Yuanqin Zhu, Zhufeng Hou, Taku Tsuchiya, Xianlong Wang
Without incurring additional computational cost, the
Hubbard model
can prevalently address the electron self-interaction problems of
the local or semilocal exchange–correlation functions within
density functional theory. However, determining the value of the Hubbard
parameter, U, promptly, efficiently, and accurately
has been a long-standing challenge. Here, we develop a method for
predicting the Hubbard U of iron oxides by establishing
a potential relationship through machine learning fitting of structural
fingerprints and the U evaluated by the linear response-constrained
density functional theory method. This method performs well in calculating
the properties of wüstite, hematite, and magnetite, aligning
with experimental measurements or more costly hybrid functional results.
Using this method, we redefine the convex hulls of the Fe–O
system at 0, 50, and 100 GPa; the obtained results are in good agreement
with experimental observations. We also provide insights into the
debates surrounding the high-pressure phases of Fe2O3 and Fe3O4.