DocumentCode :
86962
Title :
Homogeneous Spiking Neuromorphic System for Real-World Pattern Recognition
Author :
Xinyu Wu ; Saxena, Vishal ; Kehan Zhu
Author_Institution :
Electr. & Comput. Eng. Dept., Boise State Univ., Boise, ID, USA
Volume :
5
Issue :
2
fYear :
2015
fDate :
Jun-15
Firstpage :
254
Lastpage :
266
Abstract :
A neuromorphic chip that combines CMOS analog spiking neurons and memristive synapses offers a promising solution to brain-inspired computing, as it can provide massive neural network parallelism and density. Previous hybrid analog CMOS-memristor approaches required extensive CMOS circuitry for training, and thus eliminated most of the density advantages gained by the adoption of memristor synapses. Further, they used different waveforms for pre and post-synaptic spikes that added undesirable circuit overhead. Here we describe a hardware architecture that can feature a large number of memristor synapses to learn real-world patterns. We present a versatile CMOS neuron that combines integrate-and-fire behavior, drives passive memristors and implements competitive learning in a compact circuit module, and enables in situ plasticity in the memristor synapses. We demonstrate handwritten-digits recognition using the proposed architecture using transistor-level circuit simulations. As the described neuromorphic architecture is homogeneous, it realizes a fundamental building block for large-scale energy-efficient brain-inspired silicon chips that could lead to next-generation cognitive computing.
Keywords :
CMOS analogue integrated circuits; memristor circuits; neural nets; pattern recognition; CMOS analog spiking neurons; CMOS circuitry; CMOS neuron; CMOS-memristor; brain inspired computing; brain-inspired silicon chips; handwritten digits recognition; hardware architecture; homogeneous spiking neuromorphic system; massive neural network parallelism; memristive synapses; neuromorphic chip; next-generation cognitive computing; real-world pattern recognition; real-world patterns; situ plasticity; transistor-level circuit simulations; Biological neural networks; CMOS integrated circuits; Computer architecture; Memristors; Neuromorphics; Neurons; Silicon; Brain-inspired computing; machine learning; memristor; neuromorphic; resistive memory; silicon neuron; spike-timing dependent plasticity; spiking neural network;
fLanguage :
English
Journal_Title :
Emerging and Selected Topics in Circuits and Systems, IEEE Journal on
Publisher :
ieee
ISSN :
2156-3357
Type :
jour
DOI :
10.1109/JETCAS.2015.2433552
Filename :
7116617
Link To Document :
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