Quantum Topological Neuristors for Advanced Neuromorphic Intelligent Systems

Dani S. Assi, Hongli Huang, Vaithinathan Karthikeyan, Vaskuri C.S. Theja, Maria Merlyne de Souza, Ning Xi, Wen Jung Li, Vellaisamy A.L. Roy

Research output: Contribution to journalArticlepeer-review

3 Citations (Scopus)

Abstract

Neuromorphic artificial intelligence systems are the future of ultrahigh performance computing clusters to overcome complex scientific and economical challenges. Despite their importance, the advancement in quantum neuromorphic systems is slow without specific device design. To elucidate biomimicking mammalian brain synapses, a new class of quantum topological neuristors (QTN) with ultralow energy consumption (pJ) and higher switching speed (µs) is introduced. Bioinspired neural network characteristics of QTNs are the effects of edge state transport and tunable energy gap in the quantum topological insulator (QTI) materials. With augmented device and QTI material design, top notch neuromorphic behavior with effective learning-relearning-forgetting stages is demonstrated. Critically, to emulate the real-time neuromorphic efficiency, training of the QTNs is demonstrated with simple hand gesture game by interfacing them with artificial neural networks to perform decision-making operations. Strategically, the QTNs prove the possession of incomparable potential to realize next-gen neuromorphic computing for the development of intelligent machines and humanoids.

Original languageEnglish
Article number2300791
JournalAdvanced Science
Volume10
Issue number24
DOIs
Publication statusPublished - 25 Aug 2023

Keywords

  • artificial neural network
  • artificial synapse
  • intelligent systems
  • neuromorphic devices
  • neuromorphic perception
  • synaptic device
  • topological insulator

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