| Literature DB >> 32118096 |
M Riou1, J Torrejon1, B Garitaine1, F Abreu Araujo1, P Bortolotti1, V Cros1, S Tsunegi2, K Yakushiji2, A Fukushima2, H Kubota2, S Yuasa2, D Querlioz3, M D Stiles4, J Grollier1.
Abstract
The recent demonstration of neuromorphic computing with spin-torque nano-oscillators has opened a path to energy efficient data processing. The success of this demonstration hinged on the intrinsic short-term memory of the oscillators. In this study, we extend the memory of the spin-torque nano-oscillators through time-delayed feedback. We leverage this extrinsic memory to increase the efficiency of solving pattern recognition tasks that require memory to discriminate different inputs. The large tunability of these non-linear oscillators allows us to control and optimize the delayed feedback memory using different operating conditions of applied current and magnetic field.Entities:
Year: 2019 PMID: 32118096 PMCID: PMC7047780 DOI: 10.1103/physrevapplied.12.024049
Source DB: PubMed Journal: Phys Rev Appl ISSN: 2331-7019 Impact factor: 4.985