Architectures for optoelectronic analogs of self-organizing neural networks

Opt Lett. 1987 Jun 1;12(6):448-50. doi: 10.1364/ol.12.000448.

Abstract

Architectures for partitioning optoelectronic analogs of neural nets into input-output and internal groups to form a multilayered net capable of self-organization, self-programming, and learning are described. The architectures and implementation ideas given describe a class of optoelectronic neural net modules that, when interfaced to a conventional computer controller, can impart to it artificial intelligence attributes.