Open Access
Enhanced Bee Colony Approach for reducing the energy consumption during VM migration in cloud computing environment
Author(s) -
Suruchi Talwani,
Jimmy Singla
Publication year - 2021
Publication title -
iop conference series. materials science and engineering
Language(s) - English
Resource type - Journals
eISSN - 1757-899X
pISSN - 1757-8981
DOI - 10.1088/1757-899x/1022/1/012069
Subject(s) - cloud computing , cuckoo search , computer science , energy consumption , workload , virtualization , virtual machine , ant colony optimization algorithms , distributed computing , node (physics) , matlab , cloudsim , real time computing , operating system , engineering , algorithm , structural engineering , particle swarm optimization , electrical engineering
To achieve virtualization in a cloud environment, resource utilization and energy need to be handled carefully. For this one should have to manage the workload, by distributing the load equally among the node. So that, the resources should be distributed equally among the cloud user and access data anytime from anywhere with minimum energy. In this paper, an enhanced Artificial Bee Colony (E-ABC) approach is presented to minimize overall energy consumption with minimum number of migrations. E-ABC approach migrates the VM from the overloaded host to underloaded hosts and hence save energy. The enhancement of the proposed work is exhibited by showing comparison with the Enhanced Cuckoo Search (E-CS) approach and Ant Colony Optimization technique using MATLAB simulator. Enhancement in the reduction of energy consumption of about 15.45 %, and 17.03 % is observed against E-CS, and existing work.