Your browser does not support JavaScript!
http://iet.metastore.ingenta.com
1887

access icon free Rough-set and machine learning-based approach for optimised virtual machine utilisation in cloud computing

To meet rising demands for computing resources, information technology service providers need to select cloud-based services for their vitality and elasticity. Enormous numbers of data centres are designed to meet customer needs. Burning up energy by data centre is very high with the large-scale deployment of cloud data centres. Virtual machine consolidation strategy implementation reduces the data centre energy consumption and guarantees service level agreements. This study proposes a machine learning-based method in cloud computing for the automated use of virtual machines. Machine learning-based virtual machine selection approach integrates the migration control mechanism that enhances selection strategy efficiency. The experiment is performed with various real machine workload circumstances to provide proof and effectiveness of the proposed method. The exploratory outcome shows that the proposed approach streamlines the utilisation of the virtual machine and diminishes the consumption of energy and improves infringement of service level agreements to accomplish better performance.

References

    1. 1)
      • 16. Bhaskar, R., Shylaja, B.S.: ‘Knowledge based reduction technique for virtual machine provisioning in cloud computing’, Int. J. Comput. Sci. Inf. Secur., 2016, 14, (7), pp. 472475.
    2. 2)
      • 4. Sui, X., Liu, D., Li, L., et al: ‘Virtual machine scheduling strategy based on machine learning algorithms for load balancing’, EURASIP J. Wirel. Commun. Netw., 2019, 2019, (1), pp. 160175.
    3. 3)
      • 18. Jo, C., Cho, Y., Egger, B.: ‘A machine learning approach to live migration modeling’. Proc. 2017 Symp. on Cloud Computing, Santa Clara, California, 2017, pp. 351364.
    4. 4)
      • 19. Calheiros, R.N., Ranjan, R., Beloglazov, A., et al: ‘Cloudsim: a toolkit for modeling and simulation of cloud computing environments and evaluation of resource provisioning algorithms’, Softw. Pract. Exp., 2011, 41, (1), pp. 2350.
    5. 5)
      • 2. Ismaeel, S., Karim, R., Miri, A.: ‘Proactive dynamic virtual-machine consolidation for energy conservation in cloud data centres’, J. Cloud Comput., 2018, 7, (1), pp. 1037.
    6. 6)
      • 15. Rana, H., Lal, M.: ‘A rough set theory approach for rule generation and validation using RSES’, Int. J. Rough Sets Data Anal., 2016, 3, (1), pp. 5570.
    7. 7)
      • 9. Wen, Y., Li, Z., Jin, S., et al: ‘Energy-efficient virtual resource dynamic integration method in cloud computing’, IEEE Access, 2017, 29, (5), pp. 1221412223.
    8. 8)
      • 8. Wang, H., Tianfield, H.: ‘Energy-aware dynamic virtual machine consolidation for cloud data centers’, IEEE Access, 2018, 8, (6), pp. 1525915273.
    9. 9)
      • 13. Mosa, A., Paton, N.W.: ‘Optimizing virtual machine placement for energy and SLA in clouds using utility functions’, J. Cloud Comput., 2016, 5, (1), pp. 1733.
    10. 10)
      • 10. Kansal, N.J., Chana, I.: ‘Energy-aware virtual machine migration for cloud computing-a firefly optimization approach’, J. Grid Comput., 2016, 14, (2), pp. 327345.
    11. 11)
      • 6. Xiao, H., Hu, Z., Li, K.: ‘Multi-objective VM consolidation based on thresholds and ant colony system in cloud computing’, IEEE Access, 2019, 23, (7), pp. 5344153453.
    12. 12)
      • 1. Bhaskar, R., Deepu, S.R., Shylaja, B.S.: ‘Dynamic allocation method for efficient load balancing in virtual machines for cloud computing environment’, Adv. Comput., 2012, 3, (5), pp. 5361.
    13. 13)
      • 11. Chien, N.K., Dong, V.S., Son, N.H., et al: ‘An efficient virtual machine migration algorithm based on minimization of migration in cloud computing’. Int. Conf. on Nature of Computation and Communication, Rach Gia, Vietnam, 2016, pp. 6271.
    14. 14)
      • 3. Monil, M.A., Rahman, R.M.: ‘VM consolidation approach based on heuristics, fuzzy logic, and migration control’, J. Cloud Comput., 2016, 5, (1), pp. 827.
    15. 15)
      • 14. Liu, X.-F., Zhan, Z.-H., Deng, J.D., et al: ‘An energy efficient ant colony system for virtual machine placement in cloud computing’, IEEE Trans. Evol. Comput., 2016, 22, (1), pp. 113128.
    16. 16)
      • 12. Fu, X., Chen, J., Deng, S., et al:Layered virtual machine migration algorithm for network resource balancing in cloud computing’, Front. Comput. Sci., 2018, 12, (1), pp. 7585.
    17. 17)
      • 7. Zhou, X., Li, K., Liu, C., et al: ‘An experience-based scheme for energy-SLA balance in cloud data centers’, IEEE Access, 2019, 13, (7), pp. 2350023513.
    18. 18)
      • 17. Bhaskar, R., Shylaja, B.S.: ‘KBR: knowledge based reduction method for virtual machine migration in cloud computing’, Procedia Comput. Sci., 2019, 1, (165), pp. 708716.
    19. 19)
      • 5. Soltanshahi, M., Asemi, R., Shafiei, N.: ‘Energy-aware virtual machines allocation by krill herd algorithm in cloud data centers’, Heliyon, 2019, 5, (7), pp. 0206602071.
    20. 20)
      • 20. Park, K., Pai, V.S.: ‘CoMon: a mostly-scalable monitoring system for PlanetLab’, ACM SIGOPS Oper. Syst. Rev., 2006, 40, (1), pp. 6574.
http://iet.metastore.ingenta.com/content/journals/10.1049/iet-net.2020.0001
Loading

Related content

content/journals/10.1049/iet-net.2020.0001
pub_keyword,iet_inspecKeyword,pub_concept
6
6
Loading
This is a required field
Please enter a valid email address