Neural Networks for Nonlinear Fractional Programming

Full Text(PDF, 3000) PP.


Author(s) 
S.K Bisoi, G. Devi, Arabinda Rath 

KEYWORDS 
Multiobjective, Fractional programming, saddle point, Lagrange multiplier, variational inequality, projection


ABSTRACT 
This paper presents a neural network for solving nonlinear minimax multiobjective fractional programming problem subject to nonlinear inequality constraints. Neural model is designed for optimization with constraints condition. Methodology is based on the lagrange multiplier with saddle point optimization


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