DocumentCode :
3860979
Title :
Analog neural nonderivative optimizers
Author :
M.C.M. Teixeira;S.H. Zak
Author_Institution :
FEIS, UNESP, Sao Paulo, Brazil
Volume :
9
Issue :
4
fYear :
1998
Firstpage :
629
Lastpage :
638
Abstract :
Continuous-time neural networks for solving convex nonlinear unconstrained programming problems without using gradient information of the objective function are proposed and analyzed. Thus, the proposed networks are nonderivative optimizers. First, networks for optimizing objective functions of one variable are discussed. Then, an existing one-dimensional optimizer is analyzed, and a new line search optimizer is proposed. It is shown that the proposed optimizer network is robust in the sense that it has disturbance rejection property. The network can be implemented easily in hardware using standard circuit elements. The one-dimensional net is used as a building block in multidimensional networks for optimizing objective functions of several variables. The multidimensional nets implement a continuous version of the coordinate descent method.
Keywords :
"Multidimensional systems","Iterative algorithms","Robustness","Circuits","Linear programming","Quadratic programming","Neural networks","Functional programming","Information analysis","Hardware"
Journal_Title :
IEEE Transactions on Neural Networks
Publisher :
ieee
ISSN :
1045-9227
Type :
jour
DOI :
10.1109/72.701176
Filename :
701176
Link To Document :
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