Efficient Enhanced Sleep Awake Scheduling Using Fuzzy Logic and Neural Networks : A Review

Authors

  • Mani  M. Tech Scholar, Guru Kashi University , Talwandi Sabo, Punjab, India
  • Er. Lovepreet Kaur  Assistant Professor, Guru Kashi University , Talwandi Sabo, Punjab, India

DOI:

https://doi.org/10.32628/IJSRSET21828

Keywords:

Cloud, FIFO, Internet, WSN, Distributed, Network

Abstract

WSN is a distributed network that consists of great amount of sensor nodes and has the capacity of sensing, processing and transmits the partially processed and required data only. Sensor nodes have a tiny size, low cost but along with it the constraints of sensor node is they have limited memory, power source which is irreplaceable so power conservation should primarily focused by sensor network protocols. The proposed model was deals with environmental application where detection of forest fire is analyzed by taking parameters such as temperature, humidity, wind speed and time using fuzzy logic as by detecting earlier of fire in forest it helps to prevent huge loss of living organism, infrastructure and property. After detection the proposed MSA (Modified Sleep Awake) model work in prolonging lifetime of WSN in forest fire application using selective sleep awake approach. Cloud computing help to overcome the limitation of WSN such as limited storage, processing, power life processing. The resource allocation problem is the major problem for a group of cloud user requests. The scheduling algorithms are termed as NP completeness problems in which FIFO scheduling is used by the master node to distribute resources to the waiting tasks. The problem like fragmentation of resources, low utilization of the resources such as CPU utilization, network throughput, disk I/O rate. In this paper different papers are reviewed and further it is implemented in research paper.

References

  1. A Arul Prakash, V Arul, A Jagannathan “A Look at of Efficient and more Suitable Load Balancing Algorithms in Cloud Computing” International Journal of Engineering Research in Computer Science and Engineering (IJERCSE) Vol 5, Issue 4, April 2018.
  2. A. d. Costanzo, M. D. d. Assunção, R. Buyya. “Harnessing Cloud Technologies for a Virtualized,” Distributed Computing Infrastructure, vol. 13, pp. 24-33, Octobor 2009.
  3. Andrew J. Younge, Gregor von Laszewski, Lizhe Wang, Sonia Lopez-Alarcon, warren Carithers, “Efficient Resource Management for Cloud Computing Environments”, IEEE, 2010, pp.
  4. Anthony T.Velte, Toby J.Velte, Robert Elsenpeter, “Cloud Computing A Practical Approach”, TATA McGRAW-HILL Edition 2010.
  5. C. Shi, Z. Yan, Z. Shi, L. Zhang. “A fast multi-objective evolutionary algorithm based on a tree structure,” Applied Soft Computing, vol. 10,pp. 468–480, Feburary 2010.
  6. ChengFang Zhen et.al. “Energy-Efficient Sleep/Wake Scheduling for Acoustic Localization Wireless Sensor Network Node” International Journal of Distributed Sensor Networks 2014.
  7. D.T. Pham, A. Ghanbarzadeh, E. Koc, S. Otri, S. Rahim, M. Zaidi, “The Bees Algorithm-A Novel Tool for Complex Optimization Problem”, Cardiff CF243AA UK, 2012
  8. Dr. Amrit Agarwal, Saloni Jain, “Efficient Optimal Algorithm of Task Scheduling in Cloud Computing Environment”, International Journal of Computer Trends and Technology(IJCTT)-Volume 9, 7 march 2014.
  9. Er. Shimpy, Mr. Jagandeep Sidhu, “Different Scheduling Algorithms In Different Cloud Environment”, International Journal of Advanced Research in Computer and Communication Engineering, Vol. 3, Issue 9, September 2014, ISSN: 2278-1021
  10. Florin Pop, Valentin cristea, Nik Bbbessis, Stelious Sotiriadis, “Reputation guided Genetic Scheduling Algorithm for Independent Tasks in Inter-Clouds Environments”, International Conference on Advanced Information Networking and Applications Workshops, 2013, pp. 772-776.
  11. G. Tian, D. Meng, J. Zhan. “Reliable Resource Provision Policy for Cloud Computing,” Chinese Journal of computer, vol. 33, pp. 1859-1872, Octobor 2010.
  12. Gaochao Xu, Junjie Pang and Xiaodong Fu, “ A Load Balancing Model Based on Cloud Partitioning for the Public Cloud,” Tsinghua Science and Technology, ISSN: 1007-0214, Vol. 18, No. 1, Feb. 2013, pp. 34-39.
  13. Hitesh A Ravani, Hitesh A Bheda, “Genetic Algorithm Based resource Scheduling Technique in Cloud Computing”, International Journal in Advance Research of Computer Science and Management Studies, Volume 1, Issue 7, December 2013, ISSN 2321-7782.
  14. Jaspreet Kaur, “Comparison of Load Balancing Algorithms in Cloud,” International Journal of Engineering and Applications(IJERA), ISSN: 2248-9622, Vol. 2, Issue 3, May-Jun 2012,pp.1169-1173.
  15. Jianfeng Zhao, Wenhua Zeng, Min Liu, Guangming Li” Multi-objective Optimization Model of Virtual Resources Scheduling Under Cloud Computing and It’s Solution” International Conference on Cloud and Service Computing,2011.
  16. Kai Zhu, Huaguang Song, Lijing Liu, Jinzhu Gao, Guojian Cheng, “ Hybrid Genetic Algorithm for Cloud Computing Applications,” IEEE Asia-Pacific services Computing Conference 2011, DOI 10.1109/APSCC.2011.66
  17. Karthihadevi. M et.al. “Sleep Scheduling Strategies In Wireless Sensor Network” Advances In Natural And Applied Sciences, 2017 May 11(7): pages 635-641.
  18. Lucio Agostinho, Guilherme Feliciano, Leonardo Olivi, Eleri Cardozo” A Bio-inspired Approach to Provisioning of Virtual Resources in Federated Clouds” IEEE Ninth International Conference on Dependable, Autonomic and Secure Computing,2011.

Downloads

Published

2021-04-30

Issue

Section

Research Articles

How to Cite

[1]
Mani, Er. Lovepreet Kaur "Efficient Enhanced Sleep Awake Scheduling Using Fuzzy Logic and Neural Networks : A Review" International Journal of Scientific Research in Science, Engineering and Technology (IJSRSET), Print ISSN : 2395-1990, Online ISSN : 2394-4099, Volume 8, Issue 2, pp.18-24, November-December-2021. Available at doi : https://doi.org/10.32628/IJSRSET21828