Abstract This article presents a simulation study for validation of an adaptation methodology for learning weights of a Hopfield neural network configured as a static optimizer. The quadratic Liapunov function associated with the Hopfield network dynamics is leveraged to map the set of constraints associated with a static optimization problem. This approach leads to a set of constraint-specific penalty or weighting coefficients whose values need to be defined. The methodology leverages a learning-based approach to define values of constraint weighting coefficients through adaptation. These values are in turn used to compute values of network weights, effectively eliminating the guesswork in defining weight values for a given static optimiza...
In recent decays, soft computing techniques such as genetic algorithm (GA) and artificial neural net...
This paper presents an efficient approach based on a recurrent neural network for solving constraine...
Neural networks can be successfully applied to solving certain types of combinatorial optimization p...
A Hopfield Neural Network (HNN) with a new weight update rule can be treated as a second order Estim...
Hopfield neural networks and interior point methods are used in an integrated way to solve linear op...
Abstract: Multi-modal optimisation problems are characterised by the presence of either local sub-op...
We are interested in finding near-optimal solutions to hard optimization problems using Hopfield-typ...
Abstract. In the use of Hopfield networks to solve optimization problems, a critical problem is the ...
Optimization plays a significant role in almost every field of applied sciences (e.g., signal proces...
Abstract- Hopfield neural networks and interior point methods are used in an integrated way to solve...
Hopfield neural network (HNN) is a nonlinear computational model successfully applied in finding nea...
After more than a decade of research, there now exist several neural-network techniques for solving ...
The Continuous Hopfield Network (CHN) became one of the major breakthroughs in the come back of Neur...
Abstract—Parameter setting is a critical step in the Hopfield net-works solution of the traveling sa...
Hopfield neural networks are a possible basis for modelling associative memory in living organisms. ...
In recent decays, soft computing techniques such as genetic algorithm (GA) and artificial neural net...
This paper presents an efficient approach based on a recurrent neural network for solving constraine...
Neural networks can be successfully applied to solving certain types of combinatorial optimization p...
A Hopfield Neural Network (HNN) with a new weight update rule can be treated as a second order Estim...
Hopfield neural networks and interior point methods are used in an integrated way to solve linear op...
Abstract: Multi-modal optimisation problems are characterised by the presence of either local sub-op...
We are interested in finding near-optimal solutions to hard optimization problems using Hopfield-typ...
Abstract. In the use of Hopfield networks to solve optimization problems, a critical problem is the ...
Optimization plays a significant role in almost every field of applied sciences (e.g., signal proces...
Abstract- Hopfield neural networks and interior point methods are used in an integrated way to solve...
Hopfield neural network (HNN) is a nonlinear computational model successfully applied in finding nea...
After more than a decade of research, there now exist several neural-network techniques for solving ...
The Continuous Hopfield Network (CHN) became one of the major breakthroughs in the come back of Neur...
Abstract—Parameter setting is a critical step in the Hopfield net-works solution of the traveling sa...
Hopfield neural networks are a possible basis for modelling associative memory in living organisms. ...
In recent decays, soft computing techniques such as genetic algorithm (GA) and artificial neural net...
This paper presents an efficient approach based on a recurrent neural network for solving constraine...
Neural networks can be successfully applied to solving certain types of combinatorial optimization p...