Emerging functions of two-dimensional materials in memristive neurons

Author:

Hong YuwanORCID,Liu Yanming,Li Ruonan,Tian HeORCID

Abstract

Abstract Neuromorphic computing (NC), considered as a promising candidate for future computer architecture, can facilitate more biomimetic intelligence while reducing energy consumption. Neuron is one of the critical building blocks of NC systems. Researchers have been engaged in promoting neuron devices with better electrical properties and more biomimetic functions. Two-dimensional (2D) materials, with ultrathin layers, diverse band structures, featuring excellent electronic properties and various sensing abilities, are promised to realize these requirements. Here, the progress of artificial neurons brought by 2D materials is reviewed, from the perspective of electrical performance of neuron devices, from stability, tunability to power consumption and on/off ratio. Rose up to system-level applications, algorithms and hardware implementation of spiking neural network, stochastic neural network and artificial perception system based on 2D materials are reviewed. 2D materials not only facilitate the realization of NC systems but also increase the integration density. Finally, current challenges and perspectives on developing 2D material-based neurons and NC systems are systematically analyzed, from the bottom 2D materials fabrication to novel neural devices, more brain-like computational algorithms and systems.

Funder

the Daikin Tsinghua Union Program

STI 2030—Major Projects

Beijing Natural Science Foundation-Xiaomi Innovation Joint Fund

National Natural Science Foundation of China

Tsinghua University-Zhuhai Huafa Industrial Share Company Joint Institute for Architecture Optoelectronic Technologies

Independent Research Program of School of Integrated Circuits, Tsinghua University

the Tsinghua-Toyota Joint Research Fund

CIE-Tencent Robotics X Rhino-Bird Focused Research Program

Publisher

IOP Publishing

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