Phase Change Memory As Synapse For Ultra-Dense Neuromorphic Systems: Application To Complex Visual Pattern Extraction

2011 IEEE INTERNATIONAL ELECTRON DEVICES MEETING (IEDM)(2011)

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摘要
We demonstrate a unique energy efficient methodology to use Phase Change Memory (PCM) as synapse in ultra-dense large scale neuromorphic systems. PCM devices with different chalcogenide materials were characterized to demonstrate synaptic behavior. Multiphysical simulations were used to interpret the results. We propose special circuit architecture ("the 2-PCM synapse"), read, write, and reset programming schemes suitable for the use of PCM in neural networks. A versatile behavioral model of PCM which can be used for simulating large scale neural systems is introduced. First demonstration of complex visual pattern extraction from real world data using PCM synapses in a 2-layer spiking neural network (SNN) is shown. System power analysis for different scaled PCM technologies is also provided.
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关键词
spiking neural network,energy efficient,behavior modeling,phase change memory,power analysis,neural network
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