Skip Nav Destination
Article navigation
May 01 1992
Multilayer Perceptron Learning Optimized for On-Chip Implementation: A Noise-Robust System
In Special Collection:
CogNet
Alan F. Murray
Alan F. Murray
Department of Electrical Engineering, University of Edinburgh, Edinburgh EH9 3JL, Scotland
Search for other works by this author on:
Alan F. Murray
Department of Electrical Engineering, University of Edinburgh, Edinburgh EH9 3JL, Scotland
Received:
June 05 1991
Accepted:
October 15 1991
Online Issn: 1530-888X
Print Issn: 0899-7667
© 1992 Massachusetts Institute of Technology
1992
Neural Computation (1992) 4 (3): 366–381.
Article history
Received:
June 05 1991
Accepted:
October 15 1991
Citation
Alan F. Murray; Multilayer Perceptron Learning Optimized for On-Chip Implementation: A Noise-Robust System. Neural Comput 1992; 4 (3): 366–381. doi: https://doi.org/10.1162/neco.1992.4.3.366
Download citation file:
Sign in
Don't already have an account? Register
Client Account
You could not be signed in. Please check your email address / username and password and try again.
Could not validate captcha. Please try again.
Sign in via your Institution
Sign in via your InstitutionEmail alerts
Advertisement
Related Articles
Weight Perturbation: An Optimal Architecture and Learning Technique for Analog VLSI Feedforward and Recurrent Multilayer Networks
Neural Comput (December,1991)
Spiking Neural Classifier with Lumped Dendritic Nonlinearity and Binary Synapses: A Current Mode VLSI Implementation and Analysis
Neural Comput (March,2018)
Coupling an aVLSI Neuromorphic Vision Chip to a Neurotrophic Model of Synaptic Plasticity: The Development of Topography
Neural Comput (October,2002)
On Langevin Updating in Multilayer Perceptrons
Neural Comput (September,1994)
Related Book Chapters
Implementation of the CHIP Mobility Architecture
Faster, Smarter, Greener: The Future of the Car and Urban Mobility
Clocks and Chips
Mechanizing Proof: Computing, Risk, and Trust
Wireless Chips
Wirelessness: Radical Empiricism in Network Cultures
Organs-on-Chips
Hidden in Plain Sight: The History, Science, and Engineering of Microfluidic Technology