Micromachines (Mar 2021)

Emulating Artificial Synaptic Plasticity Characteristics from SiO<sub>2</sub>-Based Conductive Bridge Memories with Pt Nanoparticles

  • Panagiotis Bousoulas,
  • Charalampos Papakonstantinopoulos,
  • Stavros Kitsios,
  • Konstantinos Moustakas,
  • Georgios Ch. Sirakoulis,
  • Dimitris Tsoukalas

DOI
https://doi.org/10.3390/mi12030306
Journal volume & issue
Vol. 12, no. 3
p. 306

Abstract

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The quick growth of information technology has necessitated the need for developing novel electronic devices capable of performing novel neuromorphic computations with low power consumption and a high degree of accuracy. In order to achieve this goal, it is of vital importance to devise artificial neural networks with inherent capabilities of emulating various synaptic properties that play a key role in the learning procedures. Along these lines, we report here the direct impact of a dense layer of Pt nanoparticles that plays the role of the bottom electrode, on the manifestation of the bipolar switching effect within SiO2-based conductive bridge memories. Valuable insights regarding the influence of the thermal conductivity value of the bottom electrode on the conducting filament growth mechanism are provided through the application of a numerical model. The implementation of an intermediate switching transition slope during the SET transition permits the emulation of various artificial synaptic functionalities, such as short-term plasticity, including paired-pulsed facilitation and paired-pulse depression, long-term plasticity and four different types of spike-dependent plasticity. Our approach provides valuable insights toward the development of multifunctional synaptic elements that operate with low power consumption and exhibit biological-like behavior.

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