Toward optical signal processing using Photonic Reservoir Computing
Top Cited Papers
- 10 July 2008
- journal article
- Published by Optica Publishing Group in Optics Express
- Vol. 16 (15) , 11182-11192
- https://doi.org/10.1364/oe.16.011182
Abstract
We propose photonic reservoir computing as a new approach to optical signal processing in the context of large scale pattern recognition problems. Photonic reservoir computing is a photonic implementation of the recently proposed reservoir computing concept, where the dynamics of a network of nonlinear elements are exploited to perform general signal processing tasks. In our proposed photonic implementation, we employ a network of coupled Semiconductor Optical Amplifiers (SOA) as the basic building blocks for the reservoir. Although they differ in many key respects from traditional software-based hyperbolic tangent reservoirs, we show using simulations that such a photonic reservoir can outperform traditional reservoirs on a benchmark classification task. Moreover, a photonic implementation offers the promise of massively parallel information processing with low power and high speed.Keywords
This publication has 15 references indexed in Scilit:
- Minimum mean squared error time series classification using an echo state network prediction modelPublished by Institute of Electrical and Electronics Engineers (IEEE) ,2006
- Online stability of backpropagation–decorrelation recurrent learningNeurocomputing, 2006
- Reservoir riddles: suggestions for echo state network research (extended abstract)Published by Institute of Electrical and Electronics Engineers (IEEE) ,2006
- Isolated word recognition with the Liquid State Machine: a case studyInformation Processing Letters, 2005
- Harnessing Nonlinearity: Predicting Chaotic Systems and Saving Energy in Wireless CommunicationScience, 2004
- All fiber-optic neural network using coupled SOA based ring lasersIEEE Transactions on Neural Networks, 2002
- Real-Time Computing Without Stable States: A New Framework for Neural Computation Based on PerturbationsNeural Computation, 2002
- An overview of statistical learning theoryIEEE Transactions on Neural Networks, 1999
- Optical implementation of neural networks for face recognition by the use of nonlinear joint transform correlatorsApplied Optics, 1995
- Optical network for real-time face recognitionApplied Optics, 1993