Domain Reconstruction of Twisted Bilayer and Heterobilayer transition metal (di-)chalcogenides via large-scale DFT and Machine Learned Interatomic Potentials
ORAL
Abstract
[1] S. Carr et al, Phys. Rev. B 95, 075420 (2017). [2] I. Batatia et al, Adv Neural Inf Process Syst (2022).
*SJM and NDMH acknowledge funding from EPSRC grant number EP/V000136/1 and EP/W029545/1. AS acknowledges funding from the EPSRC CDT in Modelling of Heterogeneous Systems funded by EP/S022848/1.
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Publication: 1) S. J. Magorrian and N. D. M. Hine, Strain-dependent one-dimensional confinement channels in twisted bilayer 1T'-WTe2, Phys Rev B 110, 045410 (2024).
2) S. J. Magorrian, A. Siddiqui and N. D. M. Hine, Strong atomic reconstruction in twisted bilayers of highly flexible InSe: Machine-Learned Interatomic Potential and continuum model approaches, under review (2024).
3) A. Siddiqui, C. Xu, S. J. Magorrian, and N. D. M. Hine, Understanding Domain Reconstruction of Twisted bilayer and heterobilayer Transition Metal Dichalcogenides through Machine Learned Interatomic Potential, in preparation (2024).
Presenters
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Nicholas D Hine
- University of Warwick