Advances in photonic reservoir computing

Affiliation auteursAffiliation ok
TitreAdvances in photonic reservoir computing
Type de publicationJournal Article
Year of Publication2017
AuteursVan der Sande G, Brunner D, Soriano MC
JournalNANOPHOTONICS
Volume6
Pagination561-576
Date PublishedMAY
Type of ArticleReview
ISSN2192-8606
Mots-clésanalogue computing, Artificial Neural Networks, Nonlinear optics, optical computing
Résumé

We review a novel paradigm that has emerged in analogue neuromorphic optical computing. The goal is to implement a reservoir computer in optics, where information is encoded in the intensity and phase of the optical field. Reservoir computing is a bio-inspired approach especially suited for processing time-dependent information. The reservoir's complex and high-dimensional transient response to the input signal is capable of universal computation. The reservoir does not need to be trained, which makes it very well suited for optics. As such, much of the promise of photonic reservoirs lies in their minimal hardware requirements, a tremendous advantage over other hardware-intensive neural network models. We review the two main approaches to optical reservoir computing: networks implemented with multiple discrete optical nodes and the continuous system of a single non-linear device coupled to delayed feedback.

DOI10.1515/nanoph-2016-0132