Progress and Benchmark of Spiking Neuron Devices and Circuits

Fu-Xiang Liang, I-Ting Wang, T. Hou
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引用次数: 16

Abstract

The sustainability of ever more sophisticated artificial intelligence relies on the continual development of highly energy‐efficient and compact computing hardware that mimics the biological neural networks. Recently, the neural firing properties have been widely explored in various spiking neuron devices, which could emerge as the fundamental building blocks of future neuromorphic/in‐memory computing hardware. By leveraging the intrinsic device characteristics, the device‐based spiking neuron has the potential advantage of a compact circuit area for implementing neural networks with high density and high parallelism. However, a comprehensive benchmark that considers not only the device but also the peripheral circuit necessary for realizing complete neural functions is still lacking. Herein, the recent progress of emerging spiking neuron devices and circuits is reviewed. By implementing peripheral analog circuits for supporting various spiking neuron devices in the in‐memory computing architecture, the advantages and challenges in area and energy efficiency are discussed by benchmarking various technologies. A small or even no membrane capacitor, a self‐reset property, and a high spiking frequency are highly desirable.
脉冲神经元装置与电路的研究进展与基准
越来越复杂的人工智能的可持续性依赖于高能效和紧凑型计算硬件的持续发展,这些硬件模仿生物神经网络。最近,神经放电特性在各种尖峰神经元装置中得到了广泛的探索,这些装置可能成为未来神经形态/内存计算硬件的基本组成部分。通过利用器件的固有特性,基于器件的尖峰神经元具有电路面积紧凑的潜在优势,可以实现高密度和高并行性的神经网络。然而,目前还缺乏一个全面的基准,既考虑设备,也考虑实现完整神经功能所需的外围电路。本文综述了近年来新兴的尖峰神经元装置和电路的研究进展。通过在内存计算架构中实现支持各种尖峰神经元器件的外围模拟电路,通过对各种技术进行基准测试,讨论了在面积和能源效率方面的优势和挑战。一个小的甚至没有膜电容器,一个自复位的性质,和高尖峰频率是非常可取的。
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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