• DocumentCode
    3682787
  • Title

    Digital CMOS neuromorphic processor design featuring unsupervised online learning

  • Author

    Jae-sun Seo;Mingoo Seok

  • Author_Institution
    School of Electrical, Computer, and Energy Engineering, Arizona State University, Tempe, USA
  • fYear
    2015
  • Firstpage
    49
  • Lastpage
    51
  • Abstract
    The compute-intensive and power-efficient brain has been a source of inspiration for a broad range of neural networks to solve recognition and classification tasks. Compared to the supervised deep neural networks (DNNs) that have been very successful on well-defined labeled datasets, bio-plausible spiking neural networks (SNNs) with unsupervised learning rules could be well-suited for training and learning representations from the massive amount of unlabeled data. To design dense and low-power hardware for such unsupervised SNNs, we employ digital CMOS circuits for neuromorphic processors, which can exploit transistor scaling and dynamic voltage scaling to the utmost. As exemplary works, we present two neuromorphic processor designs. First, a 45nm neuromorphic chip is designed for a small-scale network of spiking neurons. Through tight integration of memory (64k SRAM synapses) and computation (256 digital neurons), the chip demonstrates on-chip learning on pattern recognition tasks down to 0.53V supply. Secondly, a 65nm neuromorphic processor that performs unsupervised on-line spike-clustering for brain sensing applications is implemented with 1.2k digital neurons and 4.7k latch-based synapses. The processor exhibits a power consumption of 9.3μW/ch at 0.3V supply. Synapse hardware precision, efficient synapse memory array access, overfitting, and voltage scaling will be discussed for dense and power-efficient on-chip learning for CMOS spiking neural networks.
  • Keywords
    "Neurons","Neuromorphics","Neural networks","CMOS integrated circuits","Hardware","System-on-chip","Training"
  • Publisher
    ieee
  • Conference_Titel
    Very Large Scale Integration (VLSI-SoC), 2015 IFIP/IEEE International Conference on
  • Electronic_ISBN
    2324-8440
  • Type

    conf

  • DOI
    10.1109/VLSI-SoC.2015.7314390
  • Filename
    7314390