Abstract
In the direction of keeping up longer life time of network, there is a limitation on the life-span of Wireless Sensor Network. In numerous applications, data to be sensed should be transmitted commencing from sources towards a sink in a timely way. The low effectiveness of data transmission is capable of routing with low quality of service and needed to guarantee network transmission. The proposed scheme Fuzzy Based Multi-level Multi-constraint Multi-path Reliable Routing contains the energy, delay and transmission reliability. Clustering is utilized for efficient aggregation of residual energy. Super Cluster Head (SCH) selection algorithm among the CHs based fuzzy concept is proposed. The parameters are Attempt Rate (AR), Residual Energy of Sensor Nodes, and distance to the base station) (Dist). Further cost function (CF) for the average residual energy and average end-to-end (ENE) delay, average transmission reliability (AR) for multipath routing network is proposed. The sensed data from SCH to a sink by assures minimum end-to-end delay and maximum transmission reliability and maximum residual energy with assuring reliable routing. Also it is utilized an optimization technique to adjust the parameters used in fuzzy clustering levels to optimize the performance. The work also includes performance comparisons with some selected algorithms. The results of a simulation are shown in NS2 tool and reflect that proposed work performs better than other existing protocols considering different metric used for comparing delay, throughput, PDR, Packet Drop and control overhead.
Similar content being viewed by others
References
Huynh TT, Tran CH, Dinh-Duc AV (2016) Delay—energy aware clustering multi-hop routing in wireless sensor networks. In: Information science and applications (ICISA). Springer, Singapore, pp 31–40
Huynh TT, Dinh-Duc AV, Tran CH (2013) Energy efficient delay-aware routing in multi-tier architecturewireless sensor networks. In: 2013 International conference on advanced technologies for communications (ATC). IEEE, pp 603–608
Taheri H, Neamatollahi P, Younis OM, Naghibzadeh S, Yaghmaee MH (2012) Sensor networks using fuzzy logic. Ad Hoc Netw 10(7):1469–1481
Ammari H (2013) On the energy-delay trade-off in geographic forwarding in always-on wireless sensor networks: a multi-objective optimization problem. Comput Netw 57:1913–1935
Robinson YH, Julie EG, Balaji S, Ayyasamy A (2017) Energy aware clustering scheme in wireless sensor network using neuro-fuzzy approach. Wirel Pers Commun 95(2):703–721
Bai S et al (2012) DEAR: delay-bounded energy-constrained adaptive routing in wireless sensor networks. In: Proceedings of the IEEE INFOCOM
Liu Y, Liu A, Li Y, Li Z, Choi YJ, Sekiya H, Li J (2017) APMD: a fast data transmission protocol with reliability guarantee for pervasive sensing data communication. Pervasive Mob Comput 41:413–435
Wuyungerile L et al (2010) Tradeoff between delay and energy consumption of partial data aggregation in wireless sensor networks. In: Proceedings of the ICMU
Durresi A et al (2005) Delay-energy aware routing protocol for sensor and actor networks. In: Proceedings of the IEEE ICPADS
Logambigai R, Ganapathy S, Kannan A (2018) Energy–efficient grid–based routing algorithm using intelligent fuzzy rules for wireless sensor networks. Comput Electr Eng 68:62–75
Tripathi J, Jaudelice CO, Vasseur JP (2014) Proactive versus reactive routing in low power and lossy networks: performance analysis and scalability improvements. Ad Hoc Netw 23:121–144
Yan M, Lam K-Y, Han S et al (2014) Hypergraph-based data link layer scheduling for reliable packet delivery in wireless sensing and control networks with end-to-end delay constraints. Inf Sci 278:34–55
Zhu X, Lu Y, Han J, Shi L (2016) Transmission reliability valuation for wireless sensor networks. Int J Distrib Sens Netw 12(2):1346079
Lee JS, Cheng W-L (2012) Fuzzy-logic-based clustering approach for wireless sensor networks using energy predication. IEEE Sens J 12(9):2891–2897
Gross D (2008) Fundamentals of queuing theory. Wiley, New York
Liu A et al (2012) Design principles and improvement of cost function based energy aware routing algorithms for wireless sensor networks. Elsevier Comput Netw 5(7):1951–1967
Sedgewick R (2002) Algorithms in C ++: graph algorithms, 3rd edn. Pearson Education, London
Di Martino C, Cinque M, Cotroneo D (2012) Automated generation of performance and dependability models for the assessment of wireless sensor networks. IEEE Trans Comput 61(6):870–884
Bruneo D, Puliafito A, Scarpa M (2010) Dependability evaluation of wireless sensor networks: redundancy and topologicalaspects. In: Proceeding of IEEE sensors conference. Kona,Hawaii, USA, pp 1827–1831
Chen X, Hu Y, Liu A, Chen Z (2013) Cross layer optimal design with guaranteed reliability under rayleigh block fading channels. KSII Trans Internet Inf Syst 7(12):3071–3095
Ball MO (1980) Complexity of network reliability computations. Networks 10(2):153–165
Kamarei M, Hajimohammadi M, Patooghy A, Fazeli M (2015) An efficient data aggregation method for event-driven WSN a modeling and evaluation approach. Wirel Pers Commun 84(1):745–764
Network simulator. http://www.isi.edu.nsnam/ns. Accessed 7 July 2000
Heinzelman W, Chandrakasan A, Balakrishnan H (2000) Energy efficient communication protocol for wireless micro sensor networks. In: Proceedings of the 33rd Hawaii International Conference on System Sciences, vol 8, Citeseer, p 802
Author information
Authors and Affiliations
Corresponding author
Rights and permissions
About this article
Cite this article
Agarkhed, J., Kadrolli, V. & Patil, S. Fuzzy based multi-level multi-constraint multi-path reliable routing in wireless sensor network. Int. j. inf. tecnol. 12, 1133–1146 (2020). https://doi.org/10.1007/s41870-020-00476-y
Received:
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s41870-020-00476-y