Autor: |
Schneider ML; National Institute of Standards Technology, Boulder, CO 80305, USA., Donnelly CA; National Institute of Standards Technology, Boulder, CO 80305, USA., Russek SE; National Institute of Standards Technology, Boulder, CO 80305, USA., Baek B; National Institute of Standards Technology, Boulder, CO 80305, USA., Pufall MR; National Institute of Standards Technology, Boulder, CO 80305, USA., Hopkins PF; National Institute of Standards Technology, Boulder, CO 80305, USA., Dresselhaus PD; National Institute of Standards Technology, Boulder, CO 80305, USA., Benz SP; National Institute of Standards Technology, Boulder, CO 80305, USA., Rippard WH; National Institute of Standards Technology, Boulder, CO 80305, USA. |
Abstrakt: |
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. |