A convenient mapping and an efficient algorithm for solving scheduling problems within the neural network paradigm is presented. It is based on a reduced encoding scheme and a mean field annealing prescription which was recently successfully applied to TSP.Most scheduling problems are characterized by a set of hard and soft constraints. The prime target of this work is the hard constraints. In this domain the algorithm persistently finds legal solutions for quite difficult problems. We also make some exploratory investigations by adding soft constraints with very encouraging results. Our numerical studies cover problem sizes up to O(105) degrees of freedom with no parameter tuning.We stress the importance of adding self-coupling terms to th...
In this paper, we study a set of real-time scheduling problems whose objectives can be expressed as ...
A neural network structure has been developed which is capable of solving deterministic job-shop sch...
Scheduling is a crucial task in behavioural synthesis and aNp-hard optimisation problem. Neural net ...
This study explores the application of neural network-based heuristics to the class/teacher timetabl...
This study explores the application of neural network-based heuristics to the class/teacher timetabl...
A general introduction to the use of feed-back artificial neural networks (ANN) for obtaining good a...
In a recent paper (Gislén et al. 1989) a convenient encoding and an efficient mean field algorithm f...
The file attached to this record is the author's final peer reviewed version.This paper briefly revi...
In recent years neural network have been shown to be quite effective in solving difficult combinator...
Artificial neural networks (ANNs) have been successfully applied to solve a variety of problems. Thi...
This project is focused on evaluating, in terms of real time needed to find a solution, the scalabil...
This paper presents our work on the static task scheduling model using the mean-field annealing (MFA...
Most scheduling problems have been demonstrated to be NP-complete problems. The Hopfield neural netw...
Cataloged from PDF version of article.Artificial neural networks (ANNs) have been successfully appli...
This paper addresses the problem of scheduling a set of independent jobs with sequence-dependent set...
In this paper, we study a set of real-time scheduling problems whose objectives can be expressed as ...
A neural network structure has been developed which is capable of solving deterministic job-shop sch...
Scheduling is a crucial task in behavioural synthesis and aNp-hard optimisation problem. Neural net ...
This study explores the application of neural network-based heuristics to the class/teacher timetabl...
This study explores the application of neural network-based heuristics to the class/teacher timetabl...
A general introduction to the use of feed-back artificial neural networks (ANN) for obtaining good a...
In a recent paper (Gislén et al. 1989) a convenient encoding and an efficient mean field algorithm f...
The file attached to this record is the author's final peer reviewed version.This paper briefly revi...
In recent years neural network have been shown to be quite effective in solving difficult combinator...
Artificial neural networks (ANNs) have been successfully applied to solve a variety of problems. Thi...
This project is focused on evaluating, in terms of real time needed to find a solution, the scalabil...
This paper presents our work on the static task scheduling model using the mean-field annealing (MFA...
Most scheduling problems have been demonstrated to be NP-complete problems. The Hopfield neural netw...
Cataloged from PDF version of article.Artificial neural networks (ANNs) have been successfully appli...
This paper addresses the problem of scheduling a set of independent jobs with sequence-dependent set...
In this paper, we study a set of real-time scheduling problems whose objectives can be expressed as ...
A neural network structure has been developed which is capable of solving deterministic job-shop sch...
Scheduling is a crucial task in behavioural synthesis and aNp-hard optimisation problem. Neural net ...