Affiliation:
1. Abbes Laghrour University of Khenchela, Algeria
2. Abbes Laghrour University of Khenchela / LIRE Laboratory of Abdelhamid Mehri of Constantine 2, Algeria
Abstract
In the last decade, the considerable increase of the cloud services use has led to the need to have search and selection techniques that match both the requirements of end users and those of the system. Indeed, to select a cloud service that meet the needs of both system and user is a challenge, due to the several conflicting criteria problem for the user on one hand, and for the system, i.e., the load balancing between Virtual Machines (VMs), on the second hand. Therefore, the main challenge, in this context, is how to ensure the user requirements by maintaining the system performance constraint. To deal with this challenge, we present in this paper an approach based on the cloud service replication on one or more VMs when the number of the user requests will be important at a given moment. This allows better load balancing between VMs by distrusting the users’ requests over them. In addition, it allows to select the best cloud service according to the users need. However, the cloud services replication introduces the problem of the storage space saturation. Thus, our second contribution is to select and delete the cloud service replicas without degradation of the load balancing. The two proposed contributions are based on the MCDM techniques in order to select the VMs that can receive the replica of the cloud service and to select those, which their storage space is overloaded in order to delete the replica cloud service. The experimental results, based on Cloudsim simulator, show that our proposal can effectively achieve good performance (load balancing) and improve the response time.
Subject
Artificial Intelligence,General Engineering,Statistics and Probability
Reference23 articles.
1. Load balancing, cost andresponse time minimisation issues in agent-based multi cloud servicecomposition;Hioual;Int J Internet Protoc Technol,2017
2. A hybrid load balancing algorithm forP2P-cloud system aware of constraints optimisation of cost andreliability criteria;Hemam;Int J Internet Protoc Technol,2017
3. A guide to dynamic load balancing in distributedcomputer systems;Alakeel;Int J Comput Sci Inf Secur,2010
4. Performance modelling and analysis ofmobile grid computing systems;Behera;Int J Grid Util Comput,2014
5. Remesh Babu K.R. , Samuel P. Enhanced bee colony algorithm for efficient load balancing and scheduling in cloud, in Innovations in Bio-Inspired Computing and Applications, Springer, (2016), 67–78.
Cited by
4 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献