Oscillatory 2-neuron sub-network design and performance based on sub-threshold CMOS operation

A. Gorad, U. Ganguly
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Abstract

Spiking neural networks are capable for efficient solutions of Constrained Graphical Optimization problems like the Travelling Salesman Problem (TSP). Such networks employ a sub-net of two coupled neuron with synchronous (in phase) and complementary (out of phase) spiking oscillations. A recent demonstration of energy efficient CMOS neurons based on sub-threshold operation enables low power hardware implementation for such networks. Here we demonstrate a circuit-level simulation of such two-neuron network by low-power sub-threshold CMOS design for neuron using a 65 nm technology and demonstrate complementary spiking oscillations. To design the hardware, in addition to the neuron, peripheral circuitry of Spike Driver, Crossbar array and Synaptic Unit is added to incorporate network synaptic dynamics. Our two-neuron one-synapse integrated network has 2.5 times less energy than a two-neuron system in literature. We estimate its area and find energy consumption of peripheral circuitry to be 2% of the implemented neuron. Such sub-net designs performance are stepping stones to design and estimate the performance of large-scale neural networks for neuromorphic hardware based optimization problems.
基于亚阈值CMOS操作的振荡2神经元子网络设计与性能
脉冲神经网络能够有效地解决像旅行商问题(TSP)这样的约束图优化问题。这种网络采用两个耦合神经元的子网络,具有同步(同相)和互补(非同相)尖峰振荡。最近的一项基于亚阈值操作的高能效CMOS神经元演示,使此类网络的低功耗硬件实现成为可能。本文采用低功耗亚阈值CMOS设计,采用65纳米技术,演示了这种双神经元网络的电路级仿真,并演示了互补尖峰振荡。在硬件设计中,除了神经元外,还增加了Spike Driver、Crossbar阵列和Synaptic Unit的外围电路,以结合网络突触动力学。我们的双神经元单突触集成网络比文献中的双神经元系统能量少2.5倍。我们估计其面积,并发现外围电路的能量消耗为所实现神经元的2%。这种子网设计性能是设计和估计基于神经形态硬件优化问题的大规模神经网络性能的垫脚石。
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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