Improve the synaptic performance of resistive switching devices through interface engineering

POSTER

Abstract

Transition metal based resistive switching devices (like HfO2, TiO2) has been shown to be a good candidate for neuromorphic computing for its bio-inspired synaptic properties, however, the non-linear conductance change synaptic behaviour prohibits further improvement due to poor accuracy of neural network training. Here, we provide a way to eliminate the intrinsic non-linearity through electrode-oxide interface engineering, including oxygen profile control and oxide heterostructure stacking, which can improve the neural network training accuracy and shorten the training time.

*Transformative Quantum Technologies (TQT)

Presenters

  • Yu Shi

    • Electrical and Computer Engineering, University of Waterloo

Authors

  • Yu Shi

    • Electrical and Computer Engineering, University of Waterloo
  • Rabiul Islam

    • Electrical and Computer Engineering, University of Waterloo
  • Guoxing Miao

    • University of Waterloo
    • Electrical & Computer Engineering, University of Waterloo
    • Electrical and Computer Engineering, University of Waterloo