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JOURNALS // Informatics and Automation // Archive

Tr. SPIIRAN, 2018 Issue 57, Pages 26–44 (Mi trspy996)

This article is cited in 1 paper

Digital Information Telecommunication Technologies

A novel fuzzy QOS based improved honey bee behavior algorithm for efficient load balancing in cloud

M. A. S. Mosleh, G. Radhamani

Dr. G.R. Damodaran College of Science

Abstract: Nature inspired algorithm based Load balancing of tasks on virtual machines (VMs) has become an area of greater research interest. Honey Bee Behavior Based Load Balancing (HBB-LB) was introduced to balance the load with a maximum throughput. This approach also balances the priorities of the tasks on the VM to minimize the waiting time of the tasks. However, HBB-LB considers only the VM load for balancing the load, which might not be sufficiently effective. This paper proposes an Improved Honey Bee Behavior Based Load Balancing (IHBB-LB), taking into consideration a few more QoS parameters of VM, such as service response time, availability, reliability, cost and throughput to enhance load balancing. Response time is vital in determining the instant activity of a VM while availability determines available resource and state of VM (idle or active) and Reliability determines the level of trust in a VM. Most importantly, Cost for utilizing a VM and Throughput (capability of VM) are also essential in determining the VM efficiency. But, the inclusion of multiple QoS parameters results in multi-objective optimization problem. As a number of QoS parameters are computed, the Fuzzification of the QoS values was performed through the generated fuzzy rules and multi-objective optimization problem was eliminated. The experiments were performed in terms of makespan, response time, degree of imbalance and the number of tasks migrated and results indicate that the IHBB-LB provides a better level of performance.

Keywords: Optimization; QoS parameters; Cloud Computing; Load Balancing; Fuzzification.

UDC: 004

Language: English

DOI: 10.15622/sp.57.2



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