Abstract A special recurrent neural network (RNN), that is the zeroing neural network (ZNN), is adopted to find solutions to time‐varying quadratic programming (TVQP) problems with equality and inequality constraints. However, there are some weaknesses in activation functions of traditional ZNN models, including convex restriction and redundant formulation. With the aid of different activation functions, modified ZNN models are obtained to overcome the drawbacks for solving TVQP problems. Theoretical and experimental research indicate that the proposed models are better and more effective at solving such TVQP problems
In this work, two robust zeroing neural network (RZNN) models are presented for online fast solving ...
The subject of this thesis is an application of artificial neural networks to solving linear and non...
Abstract — This paper presents a model of a discrete-time recurrent neural network designed to perfo...
For quadratic programming (QP), it is usually assumed that the solving process is free of measuremen...
Defining efficient families of recurrent neural networks (RNN) models for solving time-varying nonli...
Abstract—This paper presents a novel recurrent neural network for solving a class of convex quadrati...
Abstract—In this paper, a new recurrent neural network is proposed for solving convex quadratic prog...
AbstractIn this paper linear and quadratic programming problems are solved using a novel recurrent a...
The solving of quadratic matrix equations is a fundamental issue which essentially exists in the opt...
This paper presents a continuous-time recurrent neural-network model for nonlinear optimization with...
The time-varying quadratic miniaturization (TVQM) problem, as a hotspot currently, urgently demands ...
Finite-time convergence kwinners take all (k-WTA) Stability hard-limiting function for finite conver...
Constrained optimization problems entail the minimization or maximization of a linear or quadratic o...
summary:In this paper, based on a generalized Karush-Kuhn-Tucker (KKT) method a modified recurrent n...
Constrained optimization problems arise widely in scientific research and engineering applications. ...
In this work, two robust zeroing neural network (RZNN) models are presented for online fast solving ...
The subject of this thesis is an application of artificial neural networks to solving linear and non...
Abstract — This paper presents a model of a discrete-time recurrent neural network designed to perfo...
For quadratic programming (QP), it is usually assumed that the solving process is free of measuremen...
Defining efficient families of recurrent neural networks (RNN) models for solving time-varying nonli...
Abstract—This paper presents a novel recurrent neural network for solving a class of convex quadrati...
Abstract—In this paper, a new recurrent neural network is proposed for solving convex quadratic prog...
AbstractIn this paper linear and quadratic programming problems are solved using a novel recurrent a...
The solving of quadratic matrix equations is a fundamental issue which essentially exists in the opt...
This paper presents a continuous-time recurrent neural-network model for nonlinear optimization with...
The time-varying quadratic miniaturization (TVQM) problem, as a hotspot currently, urgently demands ...
Finite-time convergence kwinners take all (k-WTA) Stability hard-limiting function for finite conver...
Constrained optimization problems entail the minimization or maximization of a linear or quadratic o...
summary:In this paper, based on a generalized Karush-Kuhn-Tucker (KKT) method a modified recurrent n...
Constrained optimization problems arise widely in scientific research and engineering applications. ...
In this work, two robust zeroing neural network (RZNN) models are presented for online fast solving ...
The subject of this thesis is an application of artificial neural networks to solving linear and non...
Abstract — This paper presents a model of a discrete-time recurrent neural network designed to perfo...