A Hybrid ACHBDF Load Balancing Method for Optimum Resource Utilization In Cloud Computing

Authors

  • Nikhit Pawar  M. Tech. Research Scholar, NRI Institute of Information Science & Technology Bhopal (M.P), India
  • Prof. Umesh Kumar Lilhore  Head PG, NRI Institute of Information Science & Technology Bhopal (M.P), India
  • Prof. Nitin Agrawal  Assistant Professor, NRI Institute of Information Science & Technology Bhopal (M.P), India

Keywords:

Cloud Computing, Task Scheduling, Load balancing, Honey bee optimization, Ant colony and ACHBDF.

Abstract

Cloud computing provides computing resources to cloud on demand based and concept is pay per use”. Cloud computing mainly focused on optimistic resource utilization in less cost efforts. Now these days cloud computing technology are utilized by most of the IT companies and business organizations. It increase number cloud users as well as computing resources which creates challenges for cloud service providers to maintain optimum utilization of computing resources. Task scheduling methods play an important role in cloud computing. A scheduling machine helps in allocation of virtual machine to a user task and to maintain the balancing between machine capacity and total task load. Different task scheduling methods are suggested by cloud researchers. In this research work we are presenting a hybrid ACHBDF (Ant colony, Honey bee with dynamic feedback) load balancing method for optimum resource utilization in cloud computing. Proposed ACHBDF method uses the combined strategy of two dynamic scheduling methods with dynamic time step feedback method. Proposed ACHBDF utilizes the quality of ant colony method and Honey bee method in efficient task scheduling. Here feedback strategy helps to check system load after each phenomena in dynamic feedback table. This helps in migration of task more efficiently in less time. An experimental analysis in between existing ant colony optimization, honey bee method and Proposed ACHBDF clearly shows that proposed ACHBDF performs outstanding over existing method.

References

  1. NIE Qingbin, LI Pinghua, "An Improved Ant Colony Optimization Algorithm for Improving Cloud Resource Utilization", 2016 International Conference on Cyber-Enabled Distributed Computing and Knowledge Discovery", PP 311-316, IEEE 2016.
  2. Awatif RagmaniC, Amina EI Omri, Noureddine Abghour, Khalid Moussaid, Mohammed Rida,"A Performed Load Balancing Algorithm for Public Cloud Computing Using Ant Colony Optimization", PP 978-986, 2016 IEEE
  3. Fatemeh Rastkhadiv and Kamran Zamanifar,"Task Scheduling Based On Load Balancing Using Artificial Bee Colony In Cloud Computing Environment", International Journal of Advanced Biotechnology and Research (IJBR) ISSN 0976-2612, Online ISSN 2278–599X, Vol-7, Special Issue-Number5-July, 2016, pp1058-1069
  4. Monika Rathore, Sarvesh Rai, Navdeep Saluja,"Load Balancing of Virtual Machine Using Honey Bee Galvanizing Algorithm in Cloud”, International Journal of Computer Science and Information Technologies, Vol. 6 (4), the year 2015, PP 4128-4132
  5. Weifeng Sun, Zhenxing Ji, Jianli Sun, Ning Zhang, Yan Hu,"SAACO: A Self Adaptive Ant Colony Optimization in Cloud Computing", 2015 IEEE Fifth International Conference on Big Data and Cloud Computing, 2015 IEEE, PP 148-154.
  6. Hongyan Cui,1,2 Xiaofei Liu,1 Tao Yu,3 Honggang Zhang,4 Yajun Fang,5 and Zhongguo Xia, "Cloud Service Scheduling Algorithm Research and Optimization", Hindawi Security and Communication Networks Volume 2017, PP 1155-1162
  7. Akash Dave, Prof Bhargesh Patel, Prof. Gopi Bhatt, "Load Balancing In Cloud Computing Using Optimization Techniques: A Study”, International Conference 2015 IEEE, PP 11-21.
  8. Jixiang Yang,1 Ling Ling,2 and Haibin Liu, "A Hierarchical Load Balancing Strategy Considering Communication Delay Overhead for Large Distributed Computing Systems", Hindawi Publishing Corporation Mathematical Problems in Engineering Volume 2016, PP 197-207.
  9. Fatemeh Imani, Shiva Razzaghzadeh, "Cost-Efficient Task Scheduling with Ant Colony Algorithm for Executing Large Programs In Cloud Computing”, International Journal of Computer Applications Technology and Research Volume 6–Issue 4, 194-198, 2017
  10. Pradeep Kumar Tiwari, Sandeep Joshi,"Dynamic Weighted Virtual Machine Live Migration Mechanism to Manages Load Balancing in Cloud Computing", 2016 IEEE International Conference on Computational Intelligence and Computing Research, the year 2016, PP 221-227
  11.  Misha Goyal, Mehak Aggarwal,"Optimize Workflow Scheduling Using Hybrid Ant Colony Optimization (ACO) & Particle Swarm Optimization (PSO) Algorithm in Cloud Environment”, International Journal of Advance research, Ideas, and Innovations in Technology, Volume3, Issue2, 2017, PP 1-9.
  12. Jignesh Lakhani, Hitesh Bheda, "Scheduling Technique of Data Intensive Application Workflows in Cloud Computing”, International Journal of Advance research, Ideas and Innovations in Technology, Volume3, Issue2, year, Nirma university international conference on engineering, nice-2012, 06-08 December 2012, PP 212-219.
  13. Syed Hamid Hussain Madni, Muhammad Shafie Abd Latiff1, Mohammed Abdullahi, Shafi Muhammad Abdulhamid, Mohammed Joda Usman,"Performance comparison of heuristic algorithms for task scheduling in IaaS cloud computing environment”, May 3, 2017, PP1-26
  14. Zhang Jiadong, Liu Qiongxin,"An Advanced Load Balancing Strategy For Cloud Environment",2016 17th International Conference on Parallel and Distributed Computing, Applications and Technologies, IEEE 2016, PP240-245
  15. V. Manickavasagan1, R.Jayathilaga2, R.Jaishree3, D.Swathy,"Online Resource Scheduling using Ant colony algorithm for Cloud Computing”, International Journal of Engineering Science and Computing, March 2017, PP 5430-5440.
  16. Lilhore, U., & Kumar, S. ADVANCE ANTICIPATORY PERFORMANCE IMPROVEMENT MODEL, FOR CLOUD COMPUTING. International Journal of Recent Trends in Engineering & Research (IJRTER) Volume 02, Issue 08; August – 2016
  17. Gupta, N. R., Lilhore, U. K., & Agrawal, N. (2017). A TRUSTED TPA MODEL, TO IMPROVE SECURITY & RELIABILITY FOR CLOUD STORAGE. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 04 Issue: 08 | Aug -2017
  18. Mishra, A., Lilhore, U. K., & Gupta, N. (2017). Review of Various Data Storage and Retrieval Method for Cloud Computing. International Journal of Scientific Research in Computer Science, Engineering and Information Technology2017 IJSRCSEIT, Volume 2, Issue, PP 584-588

Downloads

Published

2017-12-31

Issue

Section

Research Articles

How to Cite

[1]
Nikhit Pawar, Prof. Umesh Kumar Lilhore, Prof. Nitin Agrawal, " A Hybrid ACHBDF Load Balancing Method for Optimum Resource Utilization In Cloud Computing, IInternational Journal of Scientific Research in Computer Science, Engineering and Information Technology(IJSRCSEIT), ISSN : 2456-3307, Volume 2, Issue 6, pp.367-373, November-December-2017.