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نمایش تعداد 1-9 از 9
A RECURRENT NEURAL NETWORK FOR SOLVING NONCONVEX NONLINEAR OPTIMIZATION PROBLEM
Byp-power (or partial p-power) transformation, the
Lagrangian function in nonconvex optimization problem becomes
locally convex. In this paper, we present a neural network based on
an NCP function for solving nonconvex...
A Novel Recurrent Neural Network Based on NCP Function for Solving Convex Nonlinear Optimization Problems
In this paper we present a novel recurrent neural network for solving convex nonlinear
programming problems. The proposed neural network is derived based on an NCP function, and one
of the prominent features of this neural network...
A Novel Neural Network Based on NCP Function for Solving Constrained Nonconvex Optimization Problems
his article presents a novel neural network (NN) based on NCP function for solving nonconvex nonlinear optimization (NCNO) problem subject to nonlinear inequality constraints. We first apply the p-power convexification of
the Lagrangian...
A Novel Dynamic System Model Based on NCP Function for Solving Nonconvex Nonlinear Optimization Problems
This paper presents a neural network based on NCP function to solve a class of nonconvex nonlinear optimization (NCNO) problems. The proposed neural network is a gradient model, which is constructed with an NCP
function and an unconstrained...
A novel recurrent neural network based of NCP function for solving convex quadratic programming problems
In this paper we propose a novel neural network model to solving linear
and (convex) quadratic programming problems. The neural network model is
derived based of an NCP function. In theoretical aspect, global convergence of...
An application of a merit function for solving convex programming problems
This paper presents a gradient neural network model for solving convex nonlinear
programming (CNP) problems. The main idea is to convert the CNP problem into an equivalent
unconstrained minimization problem ...
A Novel Recurrent Neural Network for Solving Mlcps and its Application to Linear and Quadratic Programming
In this paper, we present a recurrent neural network for solving mixed linear complementarity
problems (MLCPs) with positive semi-definite matrices. The proposed neural
network is derived based on an NCP function and has a low...
Parametric NCP-Based Recurrent Neural Network Model: A New Strategy to Solve Fuzzy Nonconvex Optimization Problems
The present scientific attempt is devoted to investigating the fuzzy nonconvex optimization problems (NCOPs) utilizing the concepts of recurrent neural networks (RNNs). To the best of our knowledge, this paper is the first ...