DocumentCode
1205170
Title
A positively self-feedbacked Hopfield neural network architecture for crossbar switching
Author
Li, Yong ; Tang, Zheng ; Xia, GuangPu ; Wang, RongLong
Author_Institution
Fac. of Eng., Toyama Univ., Japan
Volume
52
Issue
1
fYear
2005
Firstpage
200
Lastpage
206
Abstract
We propose a positively self-feedbacked Hopfield neural network architecture for efficiently solving crossbar switch problem. A binary Hopfield neural network architecture with additional positive self-feedbacks and its collective computational properties are studied. It is proved theoretically and confirmed by simulating the randomly generated Hopfield neural network with positive self-feedbacks that the emergent collective properties of the original Hopfield neural network also are present in this network architecture. The network architecture is applied to crossbar switching and results of computer simulations are presented and used to illustrate the computation power of the network architecture. The simulation results show that the Hopfield neural network architecture with positive self-feedbacks is much better than the previous works including the original Hopfield neural network architecture, Troudet´s architecture and maximum neural network for crossbar switching in terms of both the computation time and the solution quality.
Keywords
Hopfield neural nets; packet switching; parallel architectures; Troudet architecture; binary Hopfield neural network architecture; crossbar switching; maximum neural network; packet switching; parallel architectures; self-feedbacked hopfield neural network architecture; Computational modeling; Computer architecture; Computer networks; Computer simulation; Hopfield neural networks; Integrated circuit interconnections; Neural networks; Neurons; Packet switching; Switches;
fLanguage
English
Journal_Title
Circuits and Systems I: Regular Papers, IEEE Transactions on
Publisher
ieee
ISSN
1549-8328
Type
jour
DOI
10.1109/TCSI.2004.838146
Filename
1377555
Link To Document