Information Coding and Hardware Architecture of Spiking Neural Networks

Nassim Abderrahmane, Benoît Miramond
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引用次数: 9

Abstract

Inspired from the brain, neuromorphic computing would be the right alternative to traditional Von-Neumann architecture computing that knows its end of growth as predicted by Moore's law. In this paper, we explore bio-inspired neural networks as an AI-accelerator for embedded systems. To do so, we first map neural networks from formal to spiking domain, then choose the information coding method resulting in better performances. Afterwards, we present the design of two different hardware architectures: time-multiplexed and fully-parallel. Finally, we compare their performances and their hardware cost to select at the end the adequate architecture and conclude about spike-based neural networks as a potential solution for embedded artificial intelligence applications.
脉冲神经网络的信息编码与硬件结构
受大脑的启发,神经形态计算将是传统冯-诺伊曼架构计算的正确替代品,后者知道摩尔定律预测的增长终点。在本文中,我们探讨了生物启发神经网络作为嵌入式系统的人工智能加速器。为此,我们首先将神经网络从形式域映射到峰值域,然后选择具有更好性能的信息编码方法。然后,我们提出了两种不同的硬件架构的设计:时间复用和全并行。最后,我们比较了它们的性能和硬件成本,以选择合适的架构,并得出基于峰值的神经网络作为嵌入式人工智能应用的潜在解决方案的结论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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