Neuromorphic learning and recognition in WO3- xthin film-based forming-free flexible electronic synapses

Nanotechnology. 2024 Aug 23;35(45). doi: 10.1088/1361-6528/ad6dce.

Abstract

In pursuing advanced neuromorphic applications, this study introduces the successful engineering of a flexible electronic synapse based on WO3-x, structured as W/WO3-x/Pt/Muscovite-Mica. This artificial synapse is designed to emulate crucial learning behaviors fundamental to in-memory computing. We systematically explore synaptic plasticity dynamics by implementing pulse measurements capturing potentiation and depression traits akin to biological synapses under flat and different bending conditions, thereby highlighting its potential suitability for flexible electronic applications. The findings demonstrate that the memristor accurately replicates essential properties of biological synapses, including short-term plasticity (STP), long-term plasticity (LTP), and the intriguing transition from STP to LTP. Furthermore, other variables are investigated, such as paired-pulse facilitation, spike rate-dependent plasticity, spike time-dependent plasticity, pulse duration-dependent plasticity, and pulse amplitude-dependent plasticity. Utilizing data from flat and differently bent synapses, neural network simulations for pattern recognition tasks using the Modified National Institute of Standards and Technology dataset reveal a high recognition accuracy of ∼95% with a fast learning speed that requires only 15 epochs to reach saturation.

Keywords: Muscovite-Mica; artificial synapse; flexible electronics; oxygen dynamics; tungsten oxide.

MeSH terms

  • Electrical Synapses / physiology
  • Learning
  • Neural Networks, Computer*
  • Neuronal Plasticity* / physiology
  • Oxides* / chemistry
  • Synapses / physiology
  • Titanium / chemistry
  • Tungsten* / chemistry

Substances

  • Tungsten
  • Oxides
  • tungsten oxide
  • Titanium