Computational Analysis of Device-to-Device Variability in Resistive Switching Through Single-Layer Hexagonal Boron Nitride and Graphene Vertical Heterostructure Model
Citation
TURFANDA, Aykut & Hilmi ÜNLÜ. "Computational Analysis of Device-to-Device Variability in Resistive Switching Through Single-Layer Hexagonal Boron Nitride and Graphene Vertical Heterostructure Model". Journal of Physics D: Applied Physics, 57(2024): 1-9.Abstract
We quantify the device-to-device variations in resistive switching by considering a single-layer
hexagonal boron nitride and graphene junction as a model. Then, we mimic the variations in the
surface of a two-dimensional material in terms of defects and interface states by changing the
distance between single-layer hexagonal boron nitride and graphene. We use density functional
theory as a methodology to perform simulations at the atomic scale. The results show that the
distance affects the current–voltage characterization results and that creating ultra uniform
structures is important to reduce the device-to-device variability. These results are crucial to
understand the reliability and accuracy of device-to-device variations in memory devices and
mimic the neural dynamics beyond the synaptic cleft.