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Get Free AccessWhich density functional is the ``best'' for structure simulations of a particular material? A concise, first principles, approach to answer this question is presented. The random phase approximation (RPA)---an accurate many body theory---is used to evaluate various density functionals. To demonstrate and verify the method, we apply it to the hybrid perovskite ${\mathrm{MAPbI}}_{3}$, a promising new solar cell material. The evaluation is done by first creating finite temperature ensembles for small supercells using RPA molecular dynamics, and then evaluating the variance between the RPA and various approximate density functionals for these ensembles. We find that, contrary to recent suggestions, van der Waals functionals do not improve the description of the material, whereas hybrid functionals and the strongly constrained appropriately normed (SCAN) density functional yield very good agreement with the RPA. Finally, our study shows that in the room temperature tetragonal phase of ${\mathrm{MAPbI}}_{3}$, the molecules are preferentially parallel to the shorter lattice vectors but reorientation on ps time scales is still possible.
Menno Bokdam, Jonathan Lahnsteiner, Benjamin Ramberger, Tobias Schäfer, Kresse Georg (2017). Assessing Density Functionals Using Many Body Theory for Hybrid Perovskites. Physical Review Letters, 119(14), DOI: 10.1103/physrevlett.119.145501.
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Type
Article
Year
2017
Authors
5
Datasets
0
Total Files
0
Language
English
Journal
Physical Review Letters
DOI
10.1103/physrevlett.119.145501
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