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SR-WTA: Skyrmion Racing Winner-Takes-All Module for Spiking Neural Computing

机译:SR-WTA:Skyrmion Racing优胜者-接手-用于神经计算的所有模块

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Spiking neural network (SNN) has emerged as one of the popular architectures in complex pattern recognition and classification tasks. However, hardware implementation of such algorithms using conventional CMOS based neuron consume resources and power that are orders of magnitude higher than that in human brain. This can be attributed to the mismatch of the computational architecture between biological brain and the current Boolean logic computing platform. Magnetic skyrmions have been intensively studied as a prospective information carrier in neuromorphic computing hardware design. In this work, a compact time-domain skyrmion-racing winner-takes-all (SR-WTA) leaky-integrate-fire (LIF) spiking neuron network is presented for the first time. The skyrmion motion dynamics in the LIF neuron and the behaviors of the neuron network was investigated comprehensively. Both SPICE and micromagnetic simulations are performed to evaluate the functionality and performance of the proposed SR-WTA based SNN.
机译:尖峰神经网络(SNN)已成为复杂模式识别和分类任务中的流行架构之一。但是,使用常规的基于CMOS的神经元进行此类算法的硬件实现会消耗比人脑高几个数量级的资源和功率。这可以归因于生物大脑与当前布尔逻辑计算平台之间的计算架构不匹配。作为神经形态计算硬件设计中的前瞻性信息载体,人们已经对磁性天rm子进行了深入研究。在这项工作中,首次提出了紧凑的时域Skyrmion竞赛赢家通吃(SR-WTA)泄漏集成火(LIF)尖峰神经元网络。对LIF神经元中的Skyrmion运动动力学和神经元网络的行为进行了全面研究。进行SPICE和微磁仿真,以评估所提出的基于SR-WTA的SNN的功能和性能。

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