Single Wavelength Operating Neuromorphic Device Based on a Graphene-Ferroelectric Transistor

ACS Appl Mater Interfaces. 2023 Dec 6;15(48):55948-55956. doi: 10.1021/acsami.3c10010. Epub 2023 Nov 20.

Abstract

As global data generation continues to rise, there is an increasing demand for revolutionary in-memory computing methodologies and efficient machine learning solutions. Despite recent progress in electrical and electro-optical simulations of machine learning devices, the all-optical nonthermal function remains challenging, with single wavelength operation still elusive. Here we report on an optical and monochromatic way of neuromorphic signal processing for brain-inspired functions, eliminating the need for electrical pulses. Multilevel synaptic potentiation-depression cycles are successfully achieved optically by leveraging photovoltaic charge generation and polarization within the photoferroelectric substrate interfaced with the graphene sensor. Furthermore, the demonstrated low-power prototype device is able to reproduce exact signal profile of brain tissues yet with more than 2 orders of magnitude faster response. The reported properties should trigger all-optical and low power artificial neuromorphic development based on photoferroelectric structures.

Keywords: ferroelectrics; graphene; neuromorphics; optical memristor; photovoltaics.