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Stochastic neuro-fuzzy system implemented in memristor crossbar arrays.
Shi, Tuo; Zhang, Hui; Cui, Shiyu; Liu, Jinchang; Gu, Zixi; Wang, Zhanfeng; Yan, Xiaobing; Liu, Qi.
Afiliação
  • Shi T; State Key Lab of Fabrication Technologies for Integrated Circuits, Institute of Microelectronics, Chinese Academy of Sciences, Beijing 100029, China.
  • Zhang H; Research Center for Intelligent Computing Hardware, Zhejiang Laboratory, Hangzhou 311122, China.
  • Cui S; Research Center for Intelligent Computing Hardware, Zhejiang Laboratory, Hangzhou 311122, China.
  • Liu J; Research Center for Intelligent Computing Hardware, Zhejiang Laboratory, Hangzhou 311122, China.
  • Gu Z; Research Center for Intelligent Computing Hardware, Zhejiang Laboratory, Hangzhou 311122, China.
  • Wang Z; Research Center for Intelligent Computing Hardware, Zhejiang Laboratory, Hangzhou 311122, China.
  • Yan X; Key Laboratory of Brain-like Neuromorphic Devices and Systems of Hebei Province, Hebei University, Baoding 071002, P. R. China.
  • Liu Q; Key Laboratory of Brain-like Neuromorphic Devices and Systems of Hebei Province, Hebei University, Baoding 071002, P. R. China.
Sci Adv ; 10(12): eadl3135, 2024 Mar 22.
Article em En | MEDLINE | ID: mdl-38517972
ABSTRACT
Neuro-symbolic artificial intelligence has garnered considerable attention amid increasing industry demands for high-performance neural networks that are interpretable and adaptable to previously unknown problem domains with minimal reconfiguration. However, implementing neuro-symbolic hardware is challenging due to the complexity in symbolic knowledge representation and calculation. We experimentally demonstrated a memristor-based neuro-fuzzy hardware based on TiN/TaOx/HfOx/TiN chips that is superior to its silicon-based counterpart in terms of throughput and energy efficiency by using array topological structure for knowledge representation and physical laws for computing. Intrinsic memristor variability is fully exploited to increase robustness in knowledge representation. A hybrid in situ training strategy is proposed for error minimizing in training. The hardware adapts easier to a previously unknown environment, achieving ~6.6 times faster convergence and ~6 times lower error than deep learning. The hardware energy efficiency is over two orders of magnitude greater than field-programmable gate arrays. This research greatly extends the capability of memristor-based neuromorphic computing systems in artificial intelligence.

Texto completo: 1 Base de dados: MEDLINE Idioma: En Revista: Sci Adv / Sci. Adv / Science advances Ano de publicação: 2024 Tipo de documento: Article País de afiliação: China

Texto completo: 1 Base de dados: MEDLINE Idioma: En Revista: Sci Adv / Sci. Adv / Science advances Ano de publicação: 2024 Tipo de documento: Article País de afiliação: China