Schneider Michael L, Donnelly Christine A, Russek Stephen E, Baek Burm, Pufall Matthew R, Hopkins Peter F, Dresselhaus Paul D, Benz Samuel P, Rippard William H
National Institute of Standards Technology, Boulder, CO 80305, USA.
Sci Adv. 2018 Jan 26;4(1):e1701329. doi: 10.1126/sciadv.1701329. eCollection 2018 Jan.
Neuromorphic computing promises to markedly improve the efficiency of certain computational tasks, such as perception and decision-making. Although software and specialized hardware implementations of neural networks have made tremendous accomplishments, both implementations are still many orders of magnitude less energy efficient than the human brain. We demonstrate a new form of artificial synapse based on dynamically reconfigurable superconducting Josephson junctions with magnetic nanoclusters in the barrier. The spiking energy per pulse varies with the magnetic configuration, but in our demonstration devices, the spiking energy is always less than 1 aJ. This compares very favorably with the roughly 10 fJ per synaptic event in the human brain. Each artificial synapse is composed of a Si barrier containing Mn nanoclusters with superconducting Nb electrodes. The critical current of each synapse junction, which is analogous to the synaptic weight, can be tuned using input voltage spikes that change the spin alignment of Mn nanoclusters. We demonstrate synaptic weight training with electrical pulses as small as 3 aJ. Further, the Josephson plasma frequencies of the devices, which determine the dynamical time scales, all exceed 100 GHz. These new artificial synapses provide a significant step toward a neuromorphic platform that is faster, more energy-efficient, and thus can attain far greater complexity than has been demonstrated with other technologies.
神经形态计算有望显著提高某些计算任务的效率,比如感知和决策。尽管神经网络的软件和专用硬件实现已经取得了巨大成就,但这两种实现方式在能源效率方面仍比人类大脑低许多个数量级。我们展示了一种基于具有势垒磁纳米团簇的动态可重构超导约瑟夫森结的新型人工突触。每个脉冲的尖峰能量随磁配置而变化,但在我们的演示器件中,尖峰能量始终小于1阿焦耳。这与人类大脑中每个突触事件约10飞焦耳的能量相比非常有利。每个人工突触由一个包含锰纳米团簇的硅势垒和超导铌电极组成。每个突触结的临界电流类似于突触权重,可以使用改变锰纳米团簇自旋排列的输入电压尖峰进行调节。我们展示了使用低至3阿焦耳的电脉冲进行突触权重训练。此外,决定动态时间尺度的器件约瑟夫森等离子体频率均超过100吉赫兹。这些新型人工突触朝着一个更快、更节能的神经形态平台迈出了重要一步,因此能够实现比其他技术所展示的更高的复杂性。