Neural networks and simulation: Modeling for applications
- 1 May 1992
- journal article
- Published by SAGE Publications in SIMULATION
- Vol. 58 (5) , 295-304
- https://doi.org/10.1177/003754979205800502
Abstract
Artificial neural networks simulate biologi cal processes in an intriguing manner. Ideas gleaned from the study of neurophysiology and animal behavior have become realizable in recent years. The advent of computers capable of rapidly executing massively parallel and distributed processes has allowed ideas from diverse fields to be merged and tested. The resulting neural networks, simulated in software and/or hardware, provide an adaptable, robust modeling tool useful to simulationists in all disciplines.Keywords
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