DocumentCode :
1031785
Title :
Massively parallel architectures for large scale neural network simulations
Author :
Fujimoto, Yoshiji ; Fukuda, Naoyuki ; Akabane, Toshio
Author_Institution :
Sharp Corp., Nara, Japan
Volume :
3
Issue :
6
fYear :
1992
fDate :
11/1/1992 12:00:00 AM
Firstpage :
876
Lastpage :
888
Abstract :
A toroidal lattice architecture (TLA) and a planar lattice architecture (PLA) are proposed as massively parallel neurocomputer architectures for large-scale simulations. The performance of these architectures is almost proportional to the number of node processors, and they adopt the most efficient two-dimensional processor connections for WSI implementation. They also give a solution to the connectivity problem, the performance degradation caused by the data transmission bottleneck, and the load balancing problem for efficient parallel processing in large-scale neural network simulations. The general neuron model is defined. Implementation of the TLA with transputers is described. A Hopfield neural network and a multilayer perceptron have been implemented and applied to the traveling salesman problem and to identity mapping, respectively. Proof that the performance increases almost in proportion to the number of node processors is given
Keywords :
VLSI; neural nets; parallel architectures; virtual machines; Hopfield neural network; WSI; connectivity; identity mapping; large scale neural network simulations; load balancing; massively parallel neurocomputer architectures; multilayer perceptron; neuron model; node processors; parallel processing; performance degradation; planar lattice architecture; toroidal lattice architecture; traveling salesman problem; Data communication; Degradation; Large-scale systems; Lattices; Load management; Neural networks; Neurons; Parallel architectures; Parallel processing; Programmable logic arrays;
fLanguage :
English
Journal_Title :
Neural Networks, IEEE Transactions on
Publisher :
ieee
ISSN :
1045-9227
Type :
jour
DOI :
10.1109/72.165590
Filename :
165590
Link To Document :
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