Inculcating Global Optimization in ZRP through Newfangled Firefly Algorithm

Full Text (PDF, 981KB), PP.43-51

Views: 0 Downloads: 0

Author(s)

Neha Sharma 1,* Usha Batra 1 Sherin Zafar 2

1. Department of Computer Science Engineering, G.D. Goenka University, Gurugram, India

2. Department of Computer Science Engineering, JamiaHamdard, New Delhi, India

* Corresponding author.

DOI: https://doi.org/10.5815/ijcnis.2019.02.06

Received: 8 Sep. 2018 / Revised: 1 Oct. 2018 / Accepted: 18 Oct. 2018 / Published: 8 Feb. 2019

Index Terms

Zone Routing Protocol (ZRP), Quality of Service (QOS), Route Aggregation (RA), Firefly algorithm (FRA), Packet Delivery Ratio(PDR), End-to-End Delay(E2D)

Abstract

Zone Routing Protocol (ZRP) has evolved as an efficient hybrid routing protocol with extremely high potentiality owing to the integration of two radically different schemes, proactive and reactive in such a way that a balance between control overhead and latency is achieved while maintaining routng and security concerns. The execution of ZRP in any case, is affected by different system conditions, for example, zone span, arrange measure, portability and so forth. The exploration work depicted in this paper centers around enhancing the execution of zone steering convention by lessening the measure of receptive traffic which is fundamentally in charge of corrupted system execution in the event of extensive systems. The methodology is structured to such an extent that the zone range of the system stays unaffected while accomplishing better QOS(Quality of Service) execution alongside productive memory utilization.This is actualized by utilizing two calculations. The principal calculation is intended to adjust the measure of proactive and receptive traffic without expanding the zone sweep dependent on the collection of courses in a focal overseer called Head.The utilization of Route Aggregation(RA) approach helps in decreasing the steering overhead and furthermore help accomplish execution optimization.The execution of proposed convention is evaluated under fluctuating hub size and versatility. The second calculation called the firefly streamlining calculation intends to accomplish worldwide enhancement which is very hard to accomplish due to non-linearity of capacities and multimodality of calculations. Different customary improvement procedures like angle based methods, tree based calculations need to manage such issues so this exploration based work uses the meta-heuristic calculation; it takes focal points of both course total and firefly calculations to upgrade QOS of Mobile Ad-hoc Network. For execution assessment a lot of benchmark capacities are being embraced like, parcel conveyance proportion and start to finish postponement to approve the proposed methodology. Recreation results delineate better execution of proposed brand new Firefly Algorithm (FRA) when contrasted with ZRP and RA-ZRP.

Cite This Paper

Neha Sharma, Usha Batra, Sherin Zafar, "Inculcating Global Optimization in ZRP through Newfangled Firefly Algorithm", International Journal of Computer Network and Information Security(IJCNIS), Vol.11, No.2, pp.43-51, 2019. DOI:10.5815/ijcnis.2019.02.06

Reference

[1]S. Zafar, D. Mehta, I. Kashyap, “Routing Optimization in Cloud Network” International Journal of Advanced Research in Computer Science, Special Issue, Vol. 8 Issue 2, p16-18. 3p, 2017.
[2]S. Zafar, D. Mehta, I. Kashyap, “Protract Route Optimization in ZRP Through Novel RA Approach” International Journal of Sensors Wireless Communications and Control, Volume 8, Number 1, pp. 19-25(7), 2018.
[3]M. Deepa, K. Indu, Z. Sherin, “Neoteric RA Approach for Optimization in ZRP”, Innovations in Computational Intelligence. Studies in Computational Intelligence, vol 713. Springer, Singapore, 2018.
[4]Z. Sherin, M. Deepa, “Neoteric Iris Acclamation Subtlety”, “Innovations in Computational Intelligence. Studies in Computational Intelligence”, vol 713. Springer, Singapore, 2018.
[5]D. Mehta, I. Kashyap and S. Zafar, “Synthesized Hybrid ZRP through Aggregated Routes” Int. j. inf. tecnol. 10: 83. https://doi.org/10.1007/s41870-017-0064-1, 2018.
[6]S. Zafar, D. Mehta, I. Kashyap, “Consummate Scalability through Clustered Approach in ZRP”, International Journal of Sensors Wireless Communications and Control, Volume 7, Number 3, December 2017, pp. 178-187(10), 2018.
[7]Galvez and A. Iglesias, “Firefly Algorithm for Polynomial Bezier Surface Parameterization” Hindawi Publishing Corporation, Journal of applied mathematics, Volume, Article ID 237984, 2013.
[8]D. G. Armstrong, D. M. Kleidermacher, et.al., “Cyber Security Regulation of Wireless Devices For Performance and Assurance in the age of “Medjacking” Journal Of Diabetes Science and Technology, Volume 10(2), pp. 435-438, 2016.
[9]S. M. Farahani, A. A. Abshouri et al. “A Gaussian Firefly Algorithm”, International Journal of Machine Learning and Computing, Volume 1, No. 5, 2011.
[10]N. F. Johri, A. M. Zain, et al., “Machining Parameters Optimization using Hybrid Firefly Algorithm and Particle Swarm Optimization", IOP Conference Series Journal of Physics: Conf. Series 892(2017) 01, 2005.
[11]S. Markel, C. W. Becker et al. “Firefly-Inspired synchronization for energy-efficient distance estimation in MANET”, IEEE, 2012.
[12]L. Zhang, L. Liu et al., “A Novel Hybrid Firefly Algorithm for Global Optimization”, PLOS 1/DOI:101371/Journal.pone.0163230, 2016.
[13]M. Elkhechafi, Z. Benmamoun et al. “Firefly Algorithm for Supply Chain Optimization”. Lobachtvskii Journal of Mathematic, Volume 39, no. 3, pp. 355-367, 2018
[14]S. L. Tilahun and J. Medard et al. “Firefly Algorithm for Discrete Optimization Problems: A survey”, KSCE Journal of civil Engineering Korean Society of Civil Engineers, 2017.
[15]M. S. Manshahia “A firefly based energy efficient routing in wireless sensor networks "African Journal of Computing and ICT (IEEE), 2015.
[16]A. Loutfi and M. Elkoutbi, “Evaluation and Enhancement of ZRP performances”, International Conference on Multimedia Computing and Systems, Ouarzazate, pp. 1-6, 2011.
[17]Lakhtaria, KI., “Analyzing Zone Routing Protocol in MANET Applying Authentic Parameter”, 2010.
[18]F. Rolando J. López et al. “biometric iris recognition using hough transform”. https://ieeexplore.ieee.org/document/6644905/, 2013.
[19]H. Mühlenbein et al. “How Genetic Algorithms Really Work: Mutation and Hill climbing”, DBLP Conference:
Parallel Problem Solving from Nature 2, PPSN-II, Brussels, Belgium, 8-30, 1992.
[20]C. Blum, and X. Li, “Swarm Intelligence in Optimization”, Natural Computing Series. Springer-Verlag Berlin Heidelberg, 43-85, 2008.
[21]C. Wook, R. S. Ramakrishna “A Genetic Algorithm for Shortest Path Routing Problem and the Sizing of Populations”, IEEE Transactions On Evolutionary Computation, Volume 6, Issue 6, pp. 566-579, 2002.
[22]S. Zafar, M. K. Soni “Secure Routing in MANET through Crypt-Biometric Technique”, Proceedings of the 3rd International Conference on Frontiers of Intelligent Computing: Theory and Applications (FICTA), 2014.
[23]S. Zafar, M. K. Soni, M. M. S. Beg “An Optimized Genetic Stowed Biometric Approach to Potent QOS in MANET” Procedia Computer Science 62, pp. 410- 418, 2015.
[24]R. Turn, W.H. Ware, “Privacy and Security Issues in Information Systems”. RAND Corporation. Retrieved from https://www.rand.org/pubs/papers/P5684.html, 2012.
[25]S. Zafar, M.K. Soni “Biometric Stationed Authentication Protocol (BSAP) Inculcating MetaHeuristic Genetic Algorithm” I.J. Modern Education and Computer Science, pp. 28-35, 2014.
[26]T. Bazaz, S. Zafar, “A Neoteric Optimization Methodology for Cloud Networks”, International Journal of Modern Education and Computer Science(IJMECS), Vol.10, No.6, pp. 27-34, DOI: 10.5815/ijmecs.2018.06.04, 2018.
[27]N. Zainal, A. M. Zain et al., “Glowworm Swarm Optimization (GSO) Algorithm for Optimization Problems: A State-of-the-Art Review”, Applied Mechanics and Materials, Vol. 421, pp. 507-511, 2013.
[28]J. Senthilnath, S.N. Omkar and V. Mani, “Clustering using firefly algorithm: Performance study”, Swarm and Evolutionary Computation. Vol. 1, p.164-171, 2011, 2011.
[29]N.F. Johari, A.M. Zain, et al. “Firefly Algorithm for Optimization Problem”, Applied Mechanics and Materials. Vol. 421 (2013), p. 512-517, 2013.