An Efficient and Most Reliable Novel Route Selection Algorithm (ERRSAE) to Improve QOS in Manet Environment
DOI:
https://doi.org/10.32628/CSEIT251112281Keywords:
Routing, MANET, Link Failure, Security, Swarm Intelligence, Cluster and QoSAbstract
Mobile ad-hoc network (MANET) has got more focus because of its pragmatic applications and inevitability of communication in mobile devices. MANETs are collection of mobile hosts dynamically forming a temporary network without the aid of any existing infrastructure or centralized control. Quality of Service (QoS) support for MANET is a challenging task due to the dynamic topology and limited resources. The existing QoS based routing solutions for MANET involves with single metric or two metrics. It is important that MANETs should provide QoS support routing such as end-to-end-delay, energy consumption, cluster stability, detection rate, and link failure prediction analysis, etc. This paper proposed a QoS enabled Routing Algorithm called Efficient and most Reliable Route Selection Algorithm (ERRSAE) to improve QoS performance using Swarm Intelligence. The proposed algorithm has three parts. First of all, a clustering algorithm named Honey Bee Nest (HBNEST) is proposed which makes it possible to build efficient collective and self-organized clusters. Second, the Trusted Artificial Ant-Based Routing Protocol (TAABRP) is proposed based on Swarm Intelligence algorithms such as ACO to choose an optimal path from source to destination to transmit data packets. Third, proposed a Regression Based Link Failure Prediction Algorithm (RBLFPA) and Fuzzy Assisted Ant Colony Optimization Algorithm (FAACOA). The Regression Based Link Failure Prediction Algorithm (RBLFPA) for multipath routing in MANET is used to predict the link failure and forward packets whenever a link failure occurs and increases the quality of service. The Fuzzy Assisted Ant Colony Optimization Algorithm (FAACOA) uses a distributed fuzzy logic module to identify misbehaving nodes. The performance of the proposed algorithm ERRSAE with our other proposed algorithms SRABDE, SIBCSRP with pre-existing algorithms like TPACO, DE_AOMDV, FHACO, and SAFEACO was evaluated using Network simulator (NS). The comparison was done to evaluate performance metrics such as packet delivery ratio, routing overhead, end-to-end-delay, energy consumption, cluster stability, throughput, detection rate, and link failure prediction analysis. The results clearly demonstrate that the proposed ERRSAE algorithm outperformed under majority of the network performance metrics and QoS parameters.
Downloads
References
Rajendra Prasad, P.S. “Efficient Performance Analysis of Energy Aware on Demand Routing Protocol in Mobile Ad-Hoc Network”, Eng. Rep. 2 , 2020, 3, e12116.
Usha, M.S.; Ravishankar, K.C., “ Implementation of trust-based novel approach for security enhancements in MANETs”, SN Comput. Sci. 2021, 2, 1–7.
F. Pitchaimuthu, A. Selvi, M. Seetharamaiyer, “Ant based multipath backbone routing for load balancing in MANET,IET Communications”, Vol. 11, No. 1, pp. 136-141, 2017.
Aqeel Taha, Raed Alsaqour, Mueen Uddin, Maha Abdelhaq, Tanzila Saba, “Energy Efficient Multipath Routing Protocol for Mobile Ad-Hoc Network Using the FitnessFunction”, IEEE Access, Volume 5, Pages 10369 – 10381, 2017.
N. Subhrapratim, B. Samriddha, S. Amab, K. Subir, “Optimizing MANET routing in AODV: An hybridization approach of ACO and firefly algorithm”, Proceedings of the Second International Conference on Research in Computational Intelligence and Communication Networks, pp. 122-127,2016.
Singh, N. and Kumar, R., “A fuzzy logic-based clustering algorithm for network optimization”, International Journal of Systems, Control and Communications, Vol. 7, No. 2,pp.132–150, 2016.
J. Mani Kandan1, A. Sabari1, “Fuzzy hierarchical ant colony optimization routing for weightedcluster in MANET”, © Springer Science+Business Media, LLC 2017, https://doi.org/10.1007/s10586-017-1318-1
Anju Sharma, Madhavi Sinha, “A differential evolution-based routing algorithm for multi-path environment in mobile ad hoc network”, Copyright © 2019 Inder science Enterprises Ltd.
Modestus O. Okwu, Tartibu K. Lagouge, “ Application of Ant Colony Optimizer (ACO) For Effective Path Planning in a Big-Box Store or Retail Facility”, Proceedings of the 2nd African International Conference on Industrial Engineering and Operations Management Harare, Zimbabwe, December 7-10, 2020.
Vorgelegt von, Hang Zhang, aus China, “A Security Aware Fuzzy Enhanced ACO Routing Protocol in MANETs”, (2018) http://dx.doi.org/10.53846/goediss-7212.
Downloads
Published
Issue
Section
License
Copyright (c) 2025 International Journal of Scientific Research in Computer Science, Engineering and Information Technology

This work is licensed under a Creative Commons Attribution 4.0 International License.