Toomey Emily, Segall Ken, Berggren Karl K
Massachusetts Institute of Technology, Department of Electrical Engineering and Computer Science, Cambridge, MA, United States.
Department of Physics and Astronomy, Colgate University, Hamilton, NY, United States.
Front Neurosci. 2019 Sep 4;13:933. doi: 10.3389/fnins.2019.00933. eCollection 2019.
With the rising societal demand for more information-processing capacity with lower power consumption, alternative architectures inspired by the parallelism and robustness of the human brain have recently emerged as possible solutions. In particular, spiking neural networks (SNNs) offer a bio-realistic approach, relying on pulses, analogous to action potentials, as units of information. While software encoded networks provide flexibility and precision, they are often computationally expensive. As a result, hardware SNNs based on the spiking dynamics of a device or circuit represent an increasingly appealing direction. Here, we propose to use superconducting nanowires as a platform for the development of an artificial neuron. Building on an architecture first proposed for Josephson junctions, we rely on the intrinsic non-linearity of two coupled nanowires to generate spiking behavior, and use electrothermal circuit simulations to demonstrate that the nanowire neuron reproduces multiple characteristics of biological neurons. Furthermore, by harnessing the non-linearity of the superconducting nanowire's inductance, we develop a design for a variable inductive synapse capable of both excitatory and inhibitory control. We demonstrate that this synapse design supports direct fan-out, a feature that has been difficult to achieve in other superconducting architectures, and that the nanowire neuron's nominal energy performance is competitive with that of current technologies.
随着社会对更低功耗下更高信息处理能力的需求不断增加,受人类大脑并行性和鲁棒性启发的替代架构最近已成为可能的解决方案。特别是,脉冲神经网络(SNN)提供了一种生物现实的方法,它依赖于类似于动作电位的脉冲作为信息单元。虽然软件编码网络提供了灵活性和精度,但它们通常计算成本很高。因此,基于器件或电路的脉冲动力学的硬件SNN代表了一个越来越有吸引力的方向。在这里,我们提议使用超导纳米线作为开发人工神经元的平台。基于最初为约瑟夫森结提出的架构,我们依靠两根耦合纳米线的固有非线性来产生脉冲行为,并使用电热电路模拟来证明纳米线神经元再现了生物神经元的多种特征。此外,通过利用超导纳米线电感的非线性,我们开发了一种可变电感突触的设计,能够进行兴奋性和抑制性控制。我们证明这种突触设计支持直接扇出,这是在其他超导架构中难以实现的一个特性,并且纳米线神经元的标称能量性能与当前技术具有竞争力。