Electronic Transport and Machine-Learned Modeling of Defect Dynamics in MoS<sub>2</sub> Monolayers for Resistive Switching Devices
ORAL
Abstract
Memristors based on 2D materials hold great promise for neuromorphic computing systems; however, their switching behavior remains poorly understood. We investigate resistive switching in monolayer MoS2 planar channels where sulfur-vacancy concentration and spatial distribution control conductance. Using density-functional theory combined with nonequilibrium Green’s function (DFT+NEGF), we quantify how vacancy density and configuration modulate electronic transmission and set ON/OFF ratios. Furthermore, we train an equivariant machine-learning interatomic potential with DFT accuracy and employ molecular dynamics under an applied electric field to simulate vacancy migration pathways and kinetics, field-driven defect reconfiguration, and the resulting evolution of channel conductance and device hysteresis. Our framework links atomistic defect dynamics to electronic-transport response, clarifying the microscopic origins of switching in MoS2 memristors and providing insight into design rules for stable 2D memristive devices.
*This work was supported by the National Science Foundation through the Division of Materials Research under NSF Grant No. DMR-2213398 and the Department of Energy (DOE) under Grant DE-SC0024236.
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Presenters
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Akram Ibrahim
- University of Maryland Baltimore County