Atomistic Origins of Compound Semiconductor Synthesis with Computational Neuromorphic Engineering
Künye
TURFANDA, Aykut, Hikmet Hakan GÜREL & Hilmi ÜNLÜ. "Atomistic Origins of Compound Semiconductor Synthesis with Computational Neuromorphic Engineering". Journal of Physics D: Applied Physics, 57 (2024): 1-13.Özet
We propose the usage of multi-element bulk materials to mimic neural dynamics instead of
atomically thin materials via the modeling of group II–IV compound semiconductor growth
using vacancy defects and dopants by creating and annihilating one another like a complex
artificial neural network, where each atom itself is the device in analogy to crossbar memory
arrays, where each node is a device. We quantify the effects of atomistic variations in the
electronic structure of an alloy semiconductor using a hybrid method composed of a
semiempirical tight-binding method, density functional theory, Boltzmann transport theory, and
a transfer-matrix method. We find that the artificial neural network resembles the neural
transmission dynamics and, by proposing resistive switching in small areas with low energy
consumption, we can increase the integration density similar to the human brain.