Advanced Science (Aug 2023)

Spontaneous Threshold Lowering Neuron using Second‐Order Diffusive Memristor for Self‐Adaptive Spatial Attention

  • Yang Jiang,
  • Dingchen Wang,
  • Ning Lin,
  • Shuhui Shi,
  • Yi Zhang,
  • Shaocong Wang,
  • Xi Chen,
  • Hegan Chen,
  • Yinan Lin,
  • Kam Chi Loong,
  • Jia Chen,
  • Yida Li,
  • Renrui Fang,
  • Dashan Shang,
  • Qing Wang,
  • Hongyu Yu,
  • Zhongrui Wang

DOI
https://doi.org/10.1002/advs.202301323
Journal volume & issue
Vol. 10, no. 22
pp. n/a – n/a

Abstract

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Abstract Intrinsic plasticity of neurons, such as spontaneous threshold lowering (STL) to modulate neuronal excitability, is key to spatial attention of biological neural systems. In‐memory computing with emerging memristors is expected to solve the memory bottleneck of the von Neumann architecture commonly used in conventional digital computers and is deemed a promising solution to this bioinspired computing paradigm. Nonetheless, conventional memristors are incapable of implementing the STL plasticity of neurons due to their first‐order dynamics. Here, a second‐order memristor is experimentally demonstrated using yttria‐stabilized zirconia with Ag doping (YSZ:Ag) that exhibits STL functionality. The physical origin of the second‐order dynamics, i.e., the size evolution of Ag nanoclusters, is uncovered through transmission electron microscopy (TEM), which is leveraged to model the STL neuron. STL‐based spatial attention in a spiking convolutional neural network (SCNN) is demonstrated, improving the accuracy of a multiobject detection task from 70% (20%) to 90% (80%) for the object within (outside) the area receiving attention. This second‐order memristor with intrinsic STL dynamics paves the way for future machine intelligence, enabling high‐efficiency, compact footprint, and hardware‐encoded plasticity.

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