JOURNAL ARTICLE

Neuromorphic Accelerator for Deep Spiking Neural Networks with NVM Crossbar Arrays

Abstract

In this paper, we present a scalable digital hardware accelerator based on non-volatile memory arrays capable of realizing deep convolutional spiking neural networks (SNNs). Our design studies are conducted using a compact model for spin-transfer torque random access memory (STT-RAM) devices. Large networks are realized by tiling multiple cores which communicate by transmitting spike packets via an on-chip routing network. Compared to an equivalent SRAM based core design, we show that the STT-RAM based design achieves nearly 15X higher GSOPS (Synaptic Operations per Second) per Watt per mm 2 making it a promising platform for realizing systems with significant area and power limitations.

Keywords:
Crossbar switch Neuromorphic engineering Computer science Spiking neural network Scalability Static random-access memory Computer hardware Network packet Routing (electronic design automation) Artificial neural network Embedded system Computer architecture Artificial intelligence Computer network Operating system

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Topics

Advanced Memory and Neural Computing
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