Neuromorphic Computing with Memristor Crossbar

Xinjiang Zhang, Anping Huang*, Qi Hu, Zhisong Xiao, Paul K. Chu

*Corresponding author for this work

Research output: Journal Publications and ReviewsRGC 62 - Review of books or of software (or similar publications/items)peer-review

100 Citations (Scopus)

Abstract

Neural networks, one of the key artificial intelligence technologies today, have the computational power and learning ability similar to the brain. However, implementation of neural networks based on the CMOS von Neumann computing systems suffers from the communication bottleneck restricted by the bus bandwidth and memory wall resulting from CMOS downscaling. Consequently, applications based on large-scale neural networks are energy/area hungry and neuromorphic computing systems are proposed for efficient implementation of neural networks. Neuromorphic computing system consists of the synaptic device, neuronal circuit, and neuromorphic architecture. With the two-terminal nonvolatile nanoscale memristor as the synaptic device and crossbar as parallel architecture, memristor crossbars are proposed as a promising candidate for neuromorphic computing. Herein, neuromorphic computing systems with memristor crossbars are reviewed. The feasibility and applicability of memristor crossbars based neuromorphic computing for the implementation of artificial neural networks and spiking neural networks are discussed and the prospects and challenges are also described.
Original languageEnglish
Article number1700875
JournalPhysica Status Solidi (A) Applications and Materials Science
Volume215
Issue number13
Online published21 May 2018
DOIs
Publication statusPublished - 11 Jul 2018

Research Keywords

  • deep neural networks
  • memristor crossbar
  • memristors
  • neuromorphic computing
  • spiking neural networks

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