Reinforcement and backpropagation training for an optical neural network using self-lensing effects

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Authors
Cruz-Cabrera, A.A.
Yang, Mingtao
Cui, Guogi
Behrman, Elizabeth C.
Steck, James E.
Skinner, Steven R.
Advisors
Issue Date
2000-11
Type
Article
Keywords
Backpropagation , Experimental , Feedforward , Hardware , Neural networks , Nonlinear optics , Optical
Research Projects
Organizational Units
Journal Issue
Citation
"Cruz-Cabrera AA, M Yang, G Cui, EC Behrman, JE Steck, and SR Skinner. 2000. Reinforcement and backpropagation training for an optical neural network using self-lensing effects. IEEE Transactions on Neural Networks / a Publication of the IEEE Neural Networks Council. 11 (6): 1450-7. doi: 10.1109/72.883476"
Abstract

The optical bench training of an optical feedforward neural network, developed by the authors, is presented. The network uses an optical nonlinear material for neuron processing and a trainable applied optical pattern as the network weights. The nonlinear material, with the applied weight pattern, modulates the phase front of a forward propagating information beam by dynamically altering the index of refraction profile of the material. To verify that the network can be trained in real time, six logic gates were trained using a reinforcement training paradigm. More importantly, to demonstrate optical backpropagation, three gates were trained via optical error backpropagation. The output error is optically backpropagated, detected with a CCD camera, and the weight pattern is updated and stored on a computer. The obtained results lay the ground work for the implementation of multilayer neural networks that are trained using optical error backpropagation and are able to solve more complex problems.

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Publisher
IEEE
Journal
Book Title
Series
Neural Networks, IEEE Transactions on;2000:, v.11, no.6
PubMed ID
DOI
ISSN
1045-9227
1941-0093
EISSN