Publication detail

Tunable Stochasticity in an Artificial Spin Network

SANZ-HERNANDEZ, D. MASSOURAS, S. REYREN, N. ROUGEMAILLE, N. SCHÁNILEC, V. BOUZEHOUANE, K. HEHN, M. CANALS, B. QUERLIOZ, D. GROLLIER, J. MONTAIGNE, F. LACOUR,D.

Original Title

Tunable Stochasticity in an Artificial Spin Network

Type

journal article in Web of Science

Language

English

Original Abstract

Metamaterials present the possibility of artificially generating advanced functionalities through engineering of their internal structure. Artificial spin networks, in which a large number of nanoscale magnetic elements are coupled together, are promising metamaterial candidates that enable the control of collective magnetic behavior through tuning of the local interaction between elements. In this work, the motion of magnetic domain-walls in an artificial spin network leads to a tunable stochastic response of the metamaterial, which can be tailored through an external magnetic field and local lattice modifications. This type of tunable stochastic network produces a controllable random response exploiting intrinsic stochasticity within magnetic domain-wall motion at the nanoscale. An iconic demonstration used to illustrate the control of randomness is the Galton board. In this system, multiple balls fall into an array of pegs to generate a bell-shaped curve that can be modified via the array spacing or the tilt of the board. A nanoscale recreation of this experiment using an artificial spin network is employed to demonstrate tunable stochasticity. This type of tunable stochastic network opens new paths toward post-Von Neumann computing architectures such as Bayesian sensing or random neural networks, in which stochasticity is harnessed to efficiently perform complex computational tasks.

Keywords

artificial spin network; computing; Galton board; magnetic domain‐ wall; metamaterial; tunable stochasticity

Authors

SANZ-HERNANDEZ, D.; MASSOURAS, S.; REYREN, N.; ROUGEMAILLE, N.; SCHÁNILEC, V.; BOUZEHOUANE, K.; HEHN, M.; CANALS, B.; QUERLIOZ, D.; GROLLIER, J.; MONTAIGNE, F.; LACOUR,D.

Released

1. 4. 2021

Publisher

WILEY-V C H VERLAG GMBH

Location

WEINHEIM

ISBN

1521-4095

Periodical

ADVANCED MATERIALS

Year of study

33

Number

17

State

Federal Republic of Germany

Pages from

2008135-1

Pages to

2008135-7

Pages count

7

URL