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Magnetism of iron and nickel from rotationally invariant Hirsch-Fye quantum Monte Carlo calculations
Authors
V. I. Anisimov
A. S. Belozerov
I. Leonov
Publication date
1 January 2013
Publisher
'American Physical Society (APS)'
Doi
View
on
arXiv
Abstract
We present a rotationally invariant Hirsch-Fye quantum Monte Carlo algorithm in which the spin rotational invariance of Hund's exchange is approximated by averaging over all possible directions of the spin quantization axis. We employ this technique to perform benchmark calculations for the two- and three-band Hubbard models on the infinite-dimensional Bethe lattice. Our results agree quantitatively well with those obtained using the continuous-time quantum Monte Carlo method with rotationally invariant Coulomb interaction. The proposed approach is employed to compute the electronic and magnetic properties of paramagnetic α iron and nickel. The obtained Curie temperatures agree well with experiment. Our results indicate that the magnetic transition temperature is significantly overestimated by using the density-density type of Coulomb interaction. © 2013 American Physical Society
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info:doi/10.1103%2Fphysrevb.87...
Last time updated on 01/04/2019
Institutional repository of Ural Federal University named after the first President of Russia B.N.Yeltsin
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Last time updated on 02/06/2016