论文标题
神经网络的超导纳米线尖峰元件
A superconducting nanowire spiking element for neural networks
论文作者
论文摘要
随着传统冯·诺伊曼计算的局限性,大脑使用低功率尖峰传达大量信息的能力已成为替代体系结构的灵感来源的越来越多。这些大刻度神经网络成功的关键是一种强大的尖峰元件,可扩展且易于与传统的控制电子设备连接。在这项工作中,我们提出了一种由超导纳米线制造的尖峰元件,该纳米线在〜10 AJ的阶段具有脉冲能量。我们证明该设备再现了生物神经元的基本特征,例如难治性周期和发射阈值。通过使用实验测量的设备参数的模拟,我们展示了如何将基于纳米线的网络用于图像识别的推断,并且可以利用纳米线切换的概率性质来建模生物学过程以及依赖于随机性的应用。
As the limits of traditional von Neumann computing come into view, the brain's ability to communicate vast quantities of information using low-power spikes has become an increasing source of inspiration for alternative architectures. Key to the success of these largescale neural networks is a power-efficient spiking element that is scalable and easily interfaced with traditional control electronics. In this work, we present a spiking element fabricated from superconducting nanowires that has pulse energies on the order of ~10 aJ. We demonstrate that the device reproduces essential characteristics of biological neurons, such as a refractory period and a firing threshold. Through simulations using experimentally measured device parameters, we show how nanowire-based networks may be used for inference in image recognition, and that the probabilistic nature of nanowire switching may be exploited for modeling biological processes and for applications that rely on stochasticity.