IBIMA Publishing
Journal of Software & Systems Development
http://www.ibimapublishing.com/journals/JSSD/jssd.html
Vol. 2015 (2015), Article ID 926190, 14 pages
DOI: 10.5171/2015.926190
______________
Cite this Article as: Abdul Khalique Shaikh, Saadat M. Alhashmi, Rajendran Parthiban (2015), " A Novel
Optimization Model Based on the Unification of Proximity and Semantic Similarity in Grid Computing ", Journal
of Software & Systems Development, Vol. 2015 (2015), Article ID 926190, DOI: 10.5171/2015.926190
Research Article
A Novel Optimization Model Based on the
Unification of Proximity and Semantic
Similarity in Grid Computing
Abdul Khalique Shaikh
1
, Saadat M. Alhashmi
2
, Rajendran Parthiban
3
1
Artificial Intelligence Laboratory MIMOS Berhad TPM , Bukit Jalil, Malaysia
2
College of Engineering & Computer Science, Abu Dhabi University, Abu Dhabi UAE
3
School of Engineering, Monash University, Sunway Campus, Bandar Sunway, Malaysia
Correspondence should be addressed to: Abdul Khalique Shaikh; shaikhned@yahoo.com
Received date: 5 September 2014 ; Accepted date: 22 February 2015; Published date: 25 November 2015
Academic Editor: Kalaivany Natarajan
Copyright © 2015. Abdul Khalique Shaikh, Saadat M. Alhashmi, Rajendran Parthiban. Distributed under
Creative Commons CC-BY 4.0
Abstract
Resources in Grid computing are geographically distributed across the world through a wide area
network under various virtual organizations. Due to the distributed nature of the Grid, the
selection and allocation of the optimal resources from the available resource are challenging.
However, the overall Grid performance depends on the selection of Grid resources for user jobs. A
significant amount of effort has been made by proposing various resource discovery algorithms.
Current Grid literature reveals that the semantic matching can provide more results compared to
syntax matching on available resources, but the selection of poor resources for user jobs can affect
the Grid performance. The reason for poor selection is because of the allocation of Grid resources
based on First Come First Serve (FCFS) scheme, which reduces the utilization of a domain-based
semantic ontology Grid system. To overcome the issue and enhance the Grid performance, we
propose a novel optimization model based on Unification of Proximity and Semantic similarity in
Grid Computing. The purpose of this optimization model is to get optimized resources for user
jobs, so that Grid brokers could select optimum resources in terms of proximity with high
semantic relevancy. The proposed model utilizes both semantic and proximity criteria and avoids
the resources that are not suitable and faraway from the user locations. The model is designed
using GridSim and FreePastry simulation & modeling toolkits. The experimental results have been
compared with the (FCFS) allocation scheme that shows that the proposed optimization model
statistically significantly outperforms the system with FCFS scheme.
Keywords: Grid; Semantic; Proximity, GridSim; FreePastry; Resource Allocation; Decentralized
Resource Discovery