多层脉冲神经网络的高效可扩展并行硬件架构

M.A. Nuho-Maganda, M. Arias-Estrada, C. Torres-Huitzil
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引用次数: 1

摘要

人工神经网络(ann)由于其解决问题的计算能力而被广泛探索。最近,尖峰神经网络(SNNs)作为一种比经典人工神经网络更接近生物神经元的生物模型而受到研究。尽管snn提供了更丰富的动态,但由于对基于微处理器的软件实现的高计算需求,它们在实际系统中的充分利用仍然受到限制。为了克服这一缺点,提出了一种高效的可扩展的snn并行硬件架构,以有效地映射神经处理的面积要求和密集互连要求。snn模型的优点是减少了神经元之间交换信息所需的带宽,由于基于数字尖峰的通信方案,使其更适合硬件实现。硬件实现分为两个主要阶段:回忆和学习。本文主要介绍了召回阶段的时间、硬件资源和性能比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient Scalable Parallel Hardware Architecture for Multilayer Spiking Neural Networks
Artificial neural networks (ANNs) are processing models widely explored due to their computational capabilities for solving problems. Recently, spiking neural networks (SNNs) are being studied as more biological plausible models that resemble closer to biological neurons than classical ANNs. In spite of SNNs offer richer dynamics, their full utilization in practical systems is still limited due to high computational demand on microprocessors-based software implementations. In order to overcome this drawback, an efficient scalable parallel hardware architecture for SNNs is proposed to map efficiently area demanding and dense interconnection requirements of neural processing. The SNNs models have the advantage of reducing the bandwidth needed for interchanging information among neurons, making them more suitable for hardware implementation, due to the communication scheme based on digital spikes. The hardware implementation is divided into two main phases: recall and learning. Timing, hardware resources and performance comparison are mainly shown for the recall phase in this paper.
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