Multi-phonon diffuse scattering in solids from first-principles: Application to layered crystals and 2D materials
Marios Zacharias, H\'el\`ene Seiler, Fabio Caruso, Daniela, Zahn, Feliciano Giustino, Pantelis C. Kelires, Ralph Ernstorfer

TL;DR
This paper introduces a first-principles method for calculating multi-phonon diffuse scattering in solids, demonstrating its effectiveness on layered materials and 2D crystals, and revealing the significance of multi-phonon processes in different systems.
Contribution
The paper presents a detailed implementation of a first-principles approach to compute all-phonon inelastic scattering, capturing multi-phonon interactions efficiently using crystal symmetries.
Findings
Multi-phonon excitations dominate in black phosphorus.
In MoS₂, multi-phonon effects are less pronounced.
The method accurately reproduces experimental diffuse scattering patterns.
Abstract
Time-resolved diffuse scattering experiments have gained increasing attention due to their potential to reveal non-equilibrium dynamics of crystal lattice vibrations with full momentum resolution. Although progress has been made in interpreting experimental data on the basis of one-phonon scattering, understanding the role of individual phonons can be sometimes hindered by multi-phonon excitations. In Ref. [{\it arXiv:2103.10108}] we have introduced a rigorous approach for the calculation of the all-phonon inelastic scattering intensity of solids from first-principles. In the present work, we describe our implementation in detail and show that multi-phonon interactions are captured efficiently by exploiting translational and time-reversal symmetries of the crystal. We demonstrate its predictive power by calculating the scattering patterns of monolayer molybdenum disulfide (MoS),…
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Taxonomy
Topics2D Materials and Applications · Machine Learning in Materials Science · Ga2O3 and related materials
