CFP last date
20 December 2024
Reseach Article

Fuzzy Logic based Model to Reprioritize Cloud Computing Process Requests using Extended Parameters

by Pooja Chopra, R. P. S. Bedi
International Journal of Computer Applications
Foundation of Computer Science (FCS), NY, USA
Volume 180 - Number 28
Year of Publication: 2018
Authors: Pooja Chopra, R. P. S. Bedi
10.5120/ijca2018916671

Pooja Chopra, R. P. S. Bedi . Fuzzy Logic based Model to Reprioritize Cloud Computing Process Requests using Extended Parameters. International Journal of Computer Applications. 180, 28 ( Mar 2018), 19-23. DOI=10.5120/ijca2018916671

@article{ 10.5120/ijca2018916671,
author = { Pooja Chopra, R. P. S. Bedi },
title = { Fuzzy Logic based Model to Reprioritize Cloud Computing Process Requests using Extended Parameters },
journal = { International Journal of Computer Applications },
issue_date = { Mar 2018 },
volume = { 180 },
number = { 28 },
month = { Mar },
year = { 2018 },
issn = { 0975-8887 },
pages = { 19-23 },
numpages = {9},
url = { https://ijcaonline.org/archives/volume180/number28/29153-2018916671/ },
doi = { 10.5120/ijca2018916671 },
publisher = {Foundation of Computer Science (FCS), NY, USA},
address = {New York, USA}
}
%0 Journal Article
%1 2024-02-07T01:02:03.185579+05:30
%A Pooja Chopra
%A R. P. S. Bedi
%T Fuzzy Logic based Model to Reprioritize Cloud Computing Process Requests using Extended Parameters
%J International Journal of Computer Applications
%@ 0975-8887
%V 180
%N 28
%P 19-23
%D 2018
%I Foundation of Computer Science (FCS), NY, USA
Abstract

In the recent years, there is a wide increase in the demand of cloud computing because of its endless advantages like reduced infrastructure cost, scalability, virtualization, on demand service etc. This technology has brought a great revolution in the field of Information Technology. Resource Provisioning is an area in cloud computing where resources are provisioned to the processes in such a way that every coming process can get its demanded resource in time and can complete its execution in time and that too with full privacy. For our model proposed, we have taken existing work in hybrid cloud environment. We have used Fuzzy Logic as a tool for redefining the priorities to the processes. In this paper, a Fuzzy Logic based model is proposed to reprioritize Cloud Computing process requests using extended parameters. The central idea is to develop a conceptual model for prioritizing processes on the basis of their age, execution time and security factors. For considering these factors, human expertise is needed. Therefore, we have incorporated Fuzzy Logic in the system where the Fuzzy inference system will decide the priorities of the processes.

References
  1. Manvi, S.S. and Shyam, G.K., 2014. Resource management for Infrastructure as a Service (IaaS) in cloud computing: A survey. Journal of Network and Computer Applications, 41, pp.424-440.
  2. Endo, P.T., Rodrigues, M., Gonçalves, G.E., Kelner, J., Sadok, D.H. and Curescu, C., 2016. High availability in clouds: systematic review and research challenges. Journal of Cloud Computing, 5(1), p.16.
  3. Alam, M.I., Pandey, M. and Rautaray, S.S., 2015. A comprehensive survey on cloud computing. International Journal of Information Technology and Computer Science (IJITCS), 7(2), p.68.
  4. Jadeja, Y. and Modi, K., 2012, March. Cloud computing-concepts, architecture and challenges. In Computing, Electronics and Electrical Technologies (ICCEET), 2012 International Conference on (pp. 877-880). IEEE.
  5. Goyal, S., 2014. Public vs private vs hybrid vs community-cloud computing: a critical review. International Journal of Computer Network and Information Security, 6(3), p.20.
  6. Rao, T.V.N., Naveena, K. and David, R., 2015. A New Computing Envornment Using Hybrid Cloud. Journal of Information Sciences and Computing Technologies, 3(1), pp.180-185.
  7. Kaur, K., 2016. A Review of Cloud Computing Service Models. International Journal of Computer Applications IJCA, 140, pp.15-18.
  8. Chopra, P. and Bedi, R.P.S., STUDY OF CLOUD COMPUTING TECHNIQUES: RESOURCE PROVISIONING ASPECT.
  9. Singh, S. and Chana, I., 2016. Cloud resource provisioning: survey, status and future research directions. Knowledge and Information Systems, 49(3), pp.1005-1069.
  10. Grewal, R.K. and Pateriya, P.K., 2013. A rule-based approach for effective resource provisioning in hybrid cloud environment. New Paradigms in Internet Computing, 203, pp.41-57.
  11. Marria, N. and Pateriya, K., 2011. On-Demand Resource Provisioning In Sky Environment. International journal of Computer Science and its applications, pp.275-280.
  12. Choudhury, K., Dutta, D. and Sasmal, K., 2013. Resource Management in a Hybrid Cloud Infrastructure. International Journal of Computer Applications, 79(12).
  13. Tian, G. and Meng, D., 2010, September. Failure rules based node resource provision policy for cloud computing. In Parallel and Distributed Processing with Applications (ISPA), 2010 International Symposium on (pp. 397-404). IEEE.
  14. Javadi, B., Abawajy, J. and Buyya, R., 2012. Failure-aware resource provisioning for hybrid Cloud infrastructure. Journal of parallel and distributed computing, 72(10), pp.1318-1331.
  15. Sood, S.K., 2013. Dynamic resource provisioning in cloud based on queuing model. International Journal of Cloud Computing and Services Science, 2(4), p.313.
  16. Nelson, V. and Uma, V., 2012, April. Semantic based resource provisioning and scheduling in inter-cloud environment. In Recent Trends in Information Technology (ICRTIT), 2012 International Conference on (pp. 250-254). IEEE.
  17. Vecchiola, C., Calheiros, R.N., Karunamoorthy, D. and Buyya, R., 2012. Deadline-driven provisioning of resources for scientific applications in hybrid clouds with Aneka. Future Generation Computer Systems, 28(1), pp.58-65.
  18. Garg, S.K., Toosi, A.N., Gopalaiyengar, S.K. and Buyya, R., 2014. SLA-based virtual machine management for heterogeneous workloads in a cloud datacenter. Journal of Network and Computer Applications, 45, pp.108-120.
  19. Liu, F., Luo, B. and Niu, Y., 2017. Cost-Effective Service Provisioning for Hybrid Cloud Applications. Mobile Networks and Applications, 22(2), pp.153-160.
  20. Subramanian, T. and Savarimuthu, N., 2016. Application based brokering algorithm for optimal resource provisioning in multiple heterogeneous clouds. Vietnam Journal of Computer Science, 3(1), pp.57-70.
  21. Singh, B. and Mishra, A.K., 2015. Fuzzy Logic Control System and its Applications. International Research Journal of Engineering and Technology (IRJET), 2(8).
  22. Hayat, B., Kim, K.H. and Kim, K.I., 2017. A study on fuzzy logic based cloud computing. Cluster Computing, pp.1-15.
  23. Chopra, P. and Bedi , RPS., 2017. Applications of Fuzzy Logic in Cloud Computing: A Review.  International Journal of Scientific Engineering & Technology, pp.1083-86.
  24. Sethi, S., Sahu, A. and Jena, S.K., 2012. Efficient load balancing in cloud computing using fuzzy logic. IOSR Journal of Engineering, 2(7), pp.65-71.
  25. Susila, N., Chandramathi, S. and Kishore, R., 2014. A fuzzy-based firefly algorithm for dynamic load balancing in cloud computing environment. Journal of Emerging Technologies in Web Intelligence, 6(4), pp.435-440.
  26. Singh, I. and Arora, A., 2015. Fuzzy Based Improved Multi Queue Job Scheduling For Cloud Computing. International Journal of Advanced Research in Computer Science, 6(5).
  27. Javanmardi, S., Shojafar, M., Amendola, D., Cordeschi, N., Liu, H. and Abraham, A., 2014. Hybrid job scheduling algorithm for cloud computing environment. In Proceedings of the Fifth International Conference on Innovations in Bio-Inspired Computing and Applications IBICA 2014 (pp. 43-52). Springer, Cham.
  28. Kumar, V.V. and Dinesh, K., 2012. Job scheduling using fuzzy neural network algorithm in cloud environment. Bonfring International Journal of Man Machine Interface, 2(1), p.1.
  29. Selvaraj, A. and Sundararajan, S., 2017. Evidence-Based Trust Evaluation System for Cloud Services Using Fuzzy Logic. International Journal of Fuzzy Systems, 19(2), pp.329-337.
  30. Su, T.J., Wang, S.M., Vu, H.Q., Ku, D.Y. and Huang, J.L., 2016, July. An Application of Fuzzy Theory to the Power Monitoring System in Cloud Environments. In Computer, Consumer and Control (IS3C), 2016 International Symposium on (pp. 350-354). IEEE.
  31. Wang, S., Liu, Z., Sun, Q., Zou, H. and Yang, F., 2014. Towards an accurate evaluation of quality of cloud service in service-oriented cloud computing. Journal of Intelligent Manufacturing, 25(2), pp.283-291.
  32. Zavvar, M., Rezaei, M., Garavand, S. and Ramezani, F., 2016. Fuzzy Logic-Based Algorithm Resource Scheduling for Improving The Reliability of Cloud Computing. Asia-Pacific Journal of Information Technology and Multimedia, 5(1).
  33. Amini, A., Jamil, N., Ahmad, A.R. and Sulaiman, H., 2017, April. A Fuzzy Logic Based Risk Assessment Approach for Evaluating and Prioritizing Risks in Cloud Computing Environment. In International Conference of Reliable Information and Communication Technology (pp. 650-659). Springer, Cham.
  34. Subbulakshmi, K., 2014. Antilock-Braking System Using Fuzzy Logic. Middle-East Journal of Scientific Research, 20(10), pp.1306-1310.
  35. Mago, V.K., Bhatia, N., Bhatia, A. and Mago, A., 2012. Clinical decision support system for dental treatment. Journal of Computational Science, 3(5), pp.254-261.
Index Terms

Computer Science
Information Sciences

Keywords

Cloud Computing Hybrid Cloud Resource Provisioning Fuzzy logic Fuzzy Inference System.