• DocumentCode
    726287
  • Title

    A spiking neuromorphic design with resistive crossbar

  • Author

    Chenchen Liu ; Bonan Yan ; Chaofei Yang ; Linghao Song ; Zheng Li ; Beiye Liu ; Yiran Chen ; Hai Li ; Qing Wu ; Hao Jiang

  • fYear
    2015
  • fDate
    8-12 June 2015
  • Firstpage
    1
  • Lastpage
    6
  • Abstract
    Neuromorphic systems recently gained increasing attention for their high computation efficiency. Many designs have been proposed and realized with traditional CMOS technology or emerging devices. In this work, we proposed a spiking neuromorphic design built on resistive crossbar structures and implemented with IBM 130nm technology. Our design adopts a rate coding scheme where pre- and post-neuron signals are represented by digitalized pulses. The weighting function of pre-neuron signals is executed on the resistive crossbar in analog format. The computing result is transferred into digitalized output spikes via an integrate-and-fire circuit (IFC) as the post-neuron. We calibrated the computation accuracy of the entire system through circuit simulations. The results demonstrated a good match to our analytic modeling. Furthermore, we implemented both feedforward and Hopfield networks by utilizing the proposed neuromorphic design. The system performance and robustness were studied through massive Monte-Carlo simulations based on the application of digital image recognition. Comparing to the previous crossbar-based computing engine that represents data with voltage amplitude, our design can achieve >50% energy savings, while the average probability of failed recognition increase only 1.46% and 5.99% in the feedforward and Hopfield implementations, respectively.
  • Keywords
    CMOS integrated circuits; Hopfield neural nets; Monte Carlo methods; feedforward neural nets; image recognition; integrated circuit modelling; low-power electronics; probability; CMOS technology; Hopfield networks; IBM technology; IFC; analog format; circuit simulations; crossbar-based computing engine; digital image recognition; digitalized output spikes; digitalized pulses; energy savings; feedforward; integrate-and-fire circuit; massive Monte-Carlo simulations; neuromorphic systems; post-neuron signals; preneuron signals; rate coding scheme; resistive crossbar structures; size 130 nm; spiking neuromorphic design; voltage amplitude; Accuracy; Arrays; Feedforward neural networks; Neuromorphics; Resistance; Training; Transistors;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Design Automation Conference (DAC), 2015 52nd ACM/EDAC/IEEE
  • Conference_Location
    San Francisco, CA
  • Type

    conf

  • DOI
    10.1145/2744769.2744783
  • Filename
    7167197