• DocumentCode
    3601427
  • Title

    Supervised Learning Using Spike-Timing-Dependent Plasticity of Memristive Synapses

  • Author

    Nishitani, Yu. ; Kaneko, Yukihiro ; Ueda, Michihito

  • Author_Institution
    Adv. Res. Div., Panasonic Corp., Kyoto, Japan
  • Volume
    26
  • Issue
    12
  • fYear
    2015
  • Firstpage
    2999
  • Lastpage
    3008
  • Abstract
    We propose a supervised learning model that enables error backpropagation for spiking neural network hardware. The method is modeled by modifying an existing model to suit the hardware implementation. An example of a network circuit for the model is also presented. In this circuit, a three-terminal ferroelectric memristor (3T-FeMEM), which is a field-effect transistor with a gate insulator composed of ferroelectric materials, is used as an electric synapse device to store the analog synaptic weight. Our model can be implemented by reflecting the network error to the write voltage of the 3T-FeMEMs and introducing a spike-timing-dependent learning function to the device. An XOR problem was successfully demonstrated as a benchmark learning by numerical simulations using the circuit properties to estimate the learning performance. In principle, the learning time per step of this supervised learning model and the circuit is independent of the number of neurons in each layer, promising a high-speed and low-power calculation in large-scale neural networks.
  • Keywords
    backpropagation; ferroelectric materials; field effect transistors; insulators; memristors; neural nets; 3T-FeMEM; XOR problem; analog synaptic weight; benchmark learning; circuit properties; electric synapse device; error backpropagation; ferroelectric materials; field-effect transistor; gate insulator; large-scale neural networks; learning performance estimation; memristive synapses; network circuit; numerical simulations; spike-timing-dependent learning function; spike-timing-dependent plasticity; spiking neural network hardware; supervised learning model; three-terminal ferroelectric memristor; Biological neural networks; Hardware; Logic gates; Memristors; Neurons; Supervised learning; Timing; Memristor; spike-timing-dependent plasticity (STDP); spiking neural network (SNN) hardware; supervised learning; supervised learning.;
  • fLanguage
    English
  • Journal_Title
    Neural Networks and Learning Systems, IEEE Transactions on
  • Publisher
    ieee
  • ISSN
    2162-237X
  • Type

    jour

  • DOI
    10.1109/TNNLS.2015.2399491
  • Filename
    7047891