Energy Optimization Using Reptile Search in Wireless Sensor Networks
DOI:
https://doi.org/10.32628/IJSRST52310551Keywords:
Wireless sensor network, clustering algorithms, Reptile Search AlgorithmAbstract
Energy saving in wireless sensor networks (WSNs) is a critical problem for diversity of applications. Data aggregation between sensor nodes is huge unless a suitable sensor data flow management is adopted. Clustering the sensor nodes is considered an effective solution to this problem. Each cluster should have a controller denoted as a cluster head (CH) and a number of nodes located within its supervision area. Clustering demonstrated an effective result in forming the network into a linked hierarchy. Thus, balancing the load distribution in WSNs to make efficient use of the available energy sources and reducing the traffic transmission can be achieved. In solving this problem we need to find the optimal distribution of sensors and CHs; thus, we can increase the network lifetime while minimizing the energy consumption. In this paper, a Reptile Search Algorithm (RSA) for preserving location privacy and congestion avoidance with less delay guaranteed is proposed. With this routing technique, the complete sensor field is divided into different subdivisions and each subdivision elects a target area by computing its transmission distance. The backbone of the dynamic routing protocol consists of a virtual ring called bell nodes and a radial line called tentacle nodes employs more nodes to construct the network. The amount of radial line and radius of the virtual ring in a network are conjointly determined to ease the communication path from the node to sink. The radial line paths are routed directionally and bell nodes are routed with angular directions probabilistically. From the routing path, the tentacle nodes collect the data to dynamic sink which will assure that the information is going to be collected with less delay and attacker cannot guess their positions. The experimental results show that the proposed RSA method accomplishes enhanced performance in terms of energy consumption, packet delivery delay and lifetime.
References
- Agrawal, A, Singh, V, Jain, S & Gupta, RK 2018, ‘GCRP: Grid-cycle routing protocol for wireless sensor network with mobile sink’, AEU-International Journal of Electronics and Communications, vol. 1, no. 94, pp. 1-1.
- Al-Kashoash, HA, Kharrufa, H, Al-Nidawi, Y & Kemp, AH 2019, ‘Congestion control in wireless sensor and 6LoWPAN networks: toward the Internet of Things’, Wireless Networks, vol. 1, no. 25,
pp. 4493-522. - Bagaa, M, Ben-Othman, J, Ouadjaout, A & Kafi, MA REFIACC: Reliable, efficient, fair and interference-aware congestion control protocol for wireless sensor networks.
- Baroutis, N & Younis, M 2017, ‘Load-conscious maximization of base-station location privacy in wireless sensor networks’, Computer Networks, vol. 124, pp. 126-39.
- Bradbury, M, Jhumka, A & Leeke, M 2018, ‘Hybrid online protocols for source location privacy in wireless sensor networks. Journal of Parallel and Distributed Computing, vol. 115, pp. 67-81.
- Dehghani, S, Barekatain, B & Pourzaferani, M 2018, ‘An enhanced energy-aware cluster-based routing algorithm in wireless sensor networks’, Wireless Personal Communications, vol. 1, no. 98, pp. 1605-1635.
- Habib, MA, Saha, S, Razzaque, MA, Mamun-or-Rashid, M, Fortino, G & Hassan, MM 2018, ‘Starfish routing for sensor networks with mobile sink’, Journal of Network and Computer Applications,
vol. 123, pp. 11-22. - Jain, S, Pattanaik, KK & Shukla, A 2019, ‘QWRP: Query-driven virtual wheel based routing protocol for wireless sensor networks with mobile sink’, Journal of Network and Computer Applications,
vol. 147, pp. 102430. - Jose, DV & Sadashivappa, G 2015, ‘Mobile Sink Assisted Energy Efficient Routing Algorithm for Wireless Sensor Networks’, World of Computer Science & Information Technology Journal, vol. 1, no. 5, p. 2.
- Kandris, D, Tselikis, G, Anastasiadis, E, Panaousis, E & Dagiuklas, T 2017, ‘COALA: a protocol for the avoidance and alleviation of congestion in wireless sensor networks’, Sensors, vol. 17, no.11, p. 2502.
- Khan, AW, Bangash, JI, Ahmed, A & Abdullah, AH 2019, ‘QDVGDD: Query-driven virtual grid based data dissemination for wireless sensor networks using single mobile sink’, Wireless Networks, vol. 25, no. 1, pp. 241-253.
- Mahesh, N & Vijayachitra, S 2019, ‘DECSA: hybrid dolphin echolocation and crow search optimization for cluster-based energy-aware routing in WSN’, Neural Computing and Applications,
vol. 31, no. 1, pp. 47-62. - Rawat, P, Singh, KD, Chaouchi, H, Bonnin, JM 2014, ‘Wireless sensor networks: a survey on recent developments and potential synergies’, The Journal of supercomputing, vol. 1, no. 1, pp. 1-48.
- Song, L & Hatzinakos, D 2007, ‘Architecture of wireless sensor networks with mobile sinks: Sparsely deployed sensors’, IEEE Transactions on Vehicular Technology, vol. 56, no. 4, pp. 1826-1836.
- Yarinezhad, R 2019, ‘Reducing delay and prolonging the lifetime of wireless sensor network using efficient routing protocol based on mobile sink and virtual infrastructure’, Ad Hoc Networks, vol. 84,
pp. 42-55. - Bibin Christopher, V., Jasper, J. DHGRP: Dynamic Hexagonal Grid Routing Protocol with Mobile Sink for Congestion Control in Wireless Sensor Networks, Wireless Personal Communications 112, 2213–2232 (2020). https://doi.org/10.1007/s11277-020-07146-z
- Christopher, V. Bibin, and J. Jasper. "Jellyfish dynamic routing protocol with mobile sink for location privacy and congestion avoidance in wireless sensor networks." Journal of Systems Architecture 112 (2021): 101840.
- [B. Singh, D.K. Lobiyal, A novel energy-aware cluster head selection based on particle swarm optimization for wireless sensor networks, Hum.-Centr. Comput. Inf. Sci. 2 (1) (2012) 1–18.
- C. Zhang, et al., Optimal model for energy-efficient clustering in wireless sensor networks using global simulated annealing genetic algorithm, in: 2008 International Symposium on Intelligent Information Technology Application Workshops, IEEE, Shanghai, China, 2008, pp. 1–5.
- R. Sharma, V. Vashisht, U. Singh, Nature Inspired Algorithms for Energy Efficient Clustering in Wireless Sensor Networks, IEEE, 2019, pp. 1–6.
- M. Abo-Zahhad, et al., Survey on energy consumption models in wireless sensor networks, Open Trans. Wirel. Commun. (2014) 1–7.
- I.E. Agbehadji, et al., Bioinspired computational approach to missing value estimation, Math. Probl. Eng. 2018 (2018) 1–16.
- J. Anzola, et al., A clustering WSN routing protocol based on k-d tree algorithm, Sensors (2018) 26.
- J.-L. Liu, C.V. Ravishankar, LEACH-GA: Genetic algorithm-based energyefficient adaptive clustering protocol for wireless sensor networks, Int. J. Mach. Learn. Comput. 1 (1) (2011).
- D. Kumar, T.C. Aseri, R.B. Patel, Prolonging network lifetime and data accumulation in heterogeneous sensor networks, Int. Arab J. Inf. Technol. 7 (3) (2010) 302–309.
- T.A. Al-Janabi, H.S. Al-Raweshidy, Optimised Clustering Algorithm-Based Centralised Architecture for Load Balancing in IoT Network, IEEE, 2017, p. 6.
- A.A.A. Ari, Bio-inspired solutions for optimal management in wireless sensor networks, in: Artificial Intelligence [Cs.AI], Université Paris-Saclay, 2016, p. 139.
- A.R. Jadhav, T. Shankar, Whale optimization based energy-efficient cluster head selection algorithm for wireless sensor networks, Neural Evolut. Comput. (2017) 22.
- Z. Zhao, et al., An energy-efficient clustering routing protocol for wireless sensor networks based on agnes with balanced energy consumption optimization, Sensors 18 (11) (2018) 3938.
- Abualigah, Laith, et al. "Reptile Search Algorithm (RSA): A nature-inspired meta-heuristic optimizer." Expert Systems with Applications 191 (2022): 116158.
- Yuan, Qihang, et al. "A Modified Reptile Search Algorithm for Numerical Optimization Problems." Computational Intelligence and Neuroscience 2022 (2022).
- M. Behzad, Y. Ge, Performance optimization in wireless sensor networks: a novel collaborative compressed sensing approach, in: International Conference on Advanced Information Networking and Applications, IEEE Computer Society, 2017, pp. 749–756.
- M. Liaqat, et al., Distance-based and low energy adaptive clustering protocol for wireless sensor networks, 2016.
Downloads
Published
Issue
Section
License
Copyright (c) IJSRST

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