Logo image
The Task Scheduling Problem: A NeuroGenetic Approach
Journal article

The Task Scheduling Problem: A NeuroGenetic Approach

Anurag Agarwal, Selcuk Colak, Jason Deane and Terry Rakes
Journal of business & economics research (Littleton, Colo.), Vol.12(4), pp.327-334
09-24-2014

Abstract

This paper addresses the task scheduling problem which involves minimizing the makespan in scheduling n tasks on m machines (resources) where the tasks follow a precedence relation and preemption is not allowed. The machines (resources) are all identical and a task needs only one machine for processing. Like most scheduling problems, this one is NP-hard in nature, making it difficult to find exact solutions for larger problems in reasonable computational time. Heuristic and metaheuristic approaches are therefore needed to solve this type of problem. This paper proposes a metaheuristic approach - called NeuroGenetic - which is a combination of an augmented neural network and a genetic algorithm. The augmented neural network approach is itself a hybrid of a heuristic approach and a neural network approach. The NeuroGenetic approach is tested against some popular test problems from the literature, and the results indicate that the NeuroGenetic approach performs significantly better than either the augmented neural network or the genetic algorithms alone.
url
https://doi.org/10.19030/jber.v12i4.8860View
Published (Version of record) Open

Related links

Metrics

12 Record Views

Details

Logo image