Neuromorphic Electronic Systems for Reservoir Computing

Abstract

This chapter provides a comprehensive survey of the researches and motivations for hardware implementation of reservoir computing (RC) on neuromorphic electronic systems. Due to its computational efficiency and the fact that training amounts to a simple linear regression, both spiking and non-spiking implementations of reservoir computing on neuromorphic hardware have been developed. Here, a review of these experimental studies is provided to illustrate the progress in this area and to address the technical challenges which arise from this specific hardware implementation. Moreover, to deal with challenges of computation on such unconventional substrates, several lines of potential solutions are presented based on advances in other computational approaches in machine learning.

Bibliographical data

Original languageEnglish
Title of host publicationReservoir Computing
REQUIRED books only: Number of pages17
PublisherSpringer Science+Business Media Singapore Private Limited
Publication date2019
Pages221-237
ISBN (Print)978-981-13-1686-9
ISBN (Electronic)978-981-13-1687-6, Kohei Nakajima, Igno Fischer
DOIs
Publication statusPublished - 2019