You are required to read and agree to the below before accessing a full-text version of an article in the IDE article repository.

The full-text document you are about to access is subject to national and international copyright laws. In most cases (but not necessarily all) the consequence is that personal use is allowed given that the copyright owner is duly acknowledged and respected. All other use (typically) require an explicit permission (often in writing) by the copyright owner.

For the reports in this repository we specifically note that

  • the use of articles under IEEE copyright is governed by the IEEE copyright policy (available at http://www.ieee.org/web/publications/rights/copyrightpolicy.html)
  • the use of articles under ACM copyright is governed by the ACM copyright policy (available at http://www.acm.org/pubs/copyright_policy/)
  • technical reports and other articles issued by M‰lardalen University is free for personal use. For other use, the explicit consent of the authors is required
  • in other cases, please contact the copyright owner for detailed information

By accepting I agree to acknowledge and respect the rights of the copyright owner of the document I am about to access.

If you are in doubt, feel free to contact webmaster@ide.mdh.se

Resource Allocation in Industrial Cloud Computing Using Artificial Intelligence Algorithms

Authors:

Sharmin Sultana Sheuly, Sudhangathan Bankarusamy , Shahina Begum, Moris Behnam

Publication Type:

Conference/Workshop Paper

Venue:

The 13th Scandinavian Conference on Artificial Intelligence

DOI:

10.3233/978-1-61499-589-0-128


Abstract

Cloud computing has recently drawn much attention due to the benefits that it can provide in terms of high performance and parallel computing. However, many industrial applications require certain quality of services that need efficient resource management of the cloud infrastructure to be suitable for industrial applications. In this paper, we focus mainly on the services, usually executed within virtual machines, allocation problem in the cloud network. To meet the quality of service requirements we investigate different algorithms that can achieve load balancing which may require migrating virtual machines from one node/server to another during runtime and considering both CPU and communication resources. Three different allocation algorithms based on Genetic Algorithm (GA), Particle Swarm Optimization (PSO) and Best-fit heuristic algorithm are applied in this paper. We evaluate the three algorithms in terms of cost/objective function and calculation time. In addition, we explore how tuning different parameters (including population size, probability of mutation and probability of crossover) can affect the cost/objective function in GA. Depending on the evaluation, it is concluded that algorithm performance is dependent on the circumstances i.e. available resource, number of VMs etc.

Bibtex

@inproceedings{Sheuly4080,
author = {Sharmin Sultana Sheuly and Sudhangathan Bankarusamy and Shahina Begum and Moris Behnam},
title = {Resource Allocation in Industrial Cloud Computing Using Artificial Intelligence Algorithms},
isbn = {978-1-61499-588-3},
pages = {128--136},
month = {November},
year = {2015},
booktitle = {The 13th Scandinavian Conference on Artificial Intelligence},
url = {http://www.es.mdh.se/publications/4080-}
}