基于CORDIC的高精度节能Izhikevich神经元

Zixuan Peng, Jipeng Wang, Yi Zhan, Run Min, Guoyi Yu, Jianwen Luo, Kwen-Siong Chong, Chao Wang
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引用次数: 3

摘要

生物神经元模型的高效硬件设计是神经形态计算研究的核心问题。本文提出了一种高精度、高能效的Izhikevich神经元硬件设计方案,其中提出了一种运行在线性系统中的快速收敛坐标旋转数字计算机(CORDIC)来计算平方函数。提出了CORDIC误差模型,分析了误差的传播,研究了Izhikevich神经元设计的精度提高。利用快速的CORDIC代替传统的CORDIC,消除了冗余迭代和相关计算,使平方计算的误差更小,效率更高。因此,所提出的基于CORDIC的快速Izhikevich神经元比传统的基于CORDIC的设计具有更高的准确率和能量效率。FPGA实现结果表明,与现有方法相比,提出的Izhikevich神经元的神经元电位更新速度提高了24.2%,误差降低了40.7%,能效提高了45.6%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A High-Accuracy and Energy-Efficient CORDIC based Izhikevich Neuron
Efficient hardware design of biological neuron models is an essential issue in neuromorphic computation research. This paper presents a high-accuracy and energy-efficient hardware design of Izhikevich neuron, in which a fast-convergence COordinate Rotation DIgital Computer (CORDIC) operating in linear system is proposed to calculate square function. A CORDIC error model is also proposed to analyze the error propagation and study the accuracy improvement in the Izhikevich neuron design. Utilizing the fast CORDIC instead of conventional CORDIC, redundant iterations and associated computation are removed, which contributes to both smaller errors and higher efficiency of square calculation. Hence, the proposed fast CORDIC based Izhikevich neuron exhibits higher accuracy and energy efficiency than the conventional CORDIC based design. The FPGA implementation results show that the proposed Izhikevich neuron design achieves 24.2% faster in neuron potential update, 40.7% error reduction, and 45.6% energy-efficiency improvement over the state-of-the-art method, respectively.
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