Back to Search Start Over

Trainable hardware for dynamical computing using error backpropagation through physical media

Authors :
Michiel Hermans
Joni Dambre
Michaël Burm
Thomas Van Vaerenbergh
Peter Bienstman
Source :
Nature Communications, NATURE COMMUNICATIONS, Nature communications, 6
Publication Year :
2015
Publisher :
Nature Pub. Group, 2015.

Abstract

Neural networks are currently implemented on digital Von Neumann machines, which do not fully leverage their intrinsic parallelism. We demonstrate how to use a novel class of reconfigurable dynamical systems for analogue information processing, mitigating this problem. Our generic hardware platform for dynamic, analogue computing consists of a reciprocal linear dynamical system with nonlinear feedback. Thanks to reciprocity, a ubiquitous property of many physical phenomena like the propagation of light and sound, the error backpropagation-a crucial step for tuning such systems towards a specific task-can happen in hardware. This can potentially speed up the optimization process significantly, offering important benefits for the scalability of neuro-inspired hardware. In this paper, we show, using one experimentally validated and one conceptual example, that such systems may provide a straightforward mechanism for constructing highly scalable, fully dynamical analogue computers.<br />SCOPUS: ar.j<br />info:eu-repo/semantics/published

Details

Language :
English
ISSN :
20411723
Volume :
6
Database :
OpenAIRE
Journal :
Nature Communications
Accession number :
edsair.doi.dedup.....dcd5d52e1b99dd881772b6662c1e66af