基于随机计算的Izhikevich神经元的低功耗硬件实现

A. Ismail, Zeinab A. Shaheen, Osama Rashad, K. Salama, H. Mostafa
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引用次数: 2

摘要

本文介绍了一种最流行的脉冲神经元模型Izhikevich模型的硬件实现。该实现的主要目标是减少峰值神经网络(SNN)神经元的面积和功耗,因为SNN由大量模拟人脑的神经元组成。因此,随机计算技术被用于执行Izhikevich神经元模型方程中消耗大量功率的平方项。提出了该模型的硬件实现,以显示面积和功耗,以帮助SNN设计者在基于随机的乘法器和近似乘法器之间进行选择,考虑其功率,面积和精度约束。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Low Power Hardware Implementation of Izhikevich Neuron using Stochastic Computing
This paper introduces the hardware implementation of one of the most popular spiking neuron models which is Izhikevich model. The main target of this implementation is to reduce area and power consumed by the Spiking Neural Network (SNN) neurons as the SNN consists of a large number of neurons to mimic the human brain. Therefore, stochastic computing techniques are used to perform the squaring term that consumes much of the power in the Izhikevich neuron model equations. A hardware implementation of the model is proposed to show the area and power consumption to help the SNN designers to choose between stochastic-based multipliers and the approximate multipliers considering their power, area, and accuracy constraints.
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