Abstract
To give the complete description of an environment or to take a robust decision, a number of observations are collected and combined from the multiple sensor nodes. The process of combining and analyzing the observations is called multisensor data fusion. The fusion is used to produce more consistent, accurate, and useful information than that provided by any individual sensor node. For efficiency, data fusion is performed on the sensed sample collected by sensor nodes. However, fusion on the network path parameters is also essential to select an appropriate forwarding route for sending the data. In addition, to increase the lifetime of a network, an efficient strategy is needed in order to select a cluster head node. Therefore, in this paper, we propose a multisensor data fusion (MDF) strategy which performs fusion on collected network parameters for the selection of an appropriate path with collaboration of Fuzzy-based cluster head selection (FBCHS). Jointly, we named the strategy as the MDF-FBCHS strategy for IoT-oriented WSN. Extensive simulations were made, and related results showed that our proposed scheme has better performance compared with other schemes in our simulated scenarios.
Similar content being viewed by others
References
Yuan D, Kanhere SS, Hollick M (2017) Instrumenting wireless sensor networks—a survey on the metrics that matter. Pervasive Mob Comput 37:45–62
Kumar S et al. (2017) Resource efficient clustering and next hop knowledge based routing in multiple heterogeneous wireless sensor networks. Int J Grid High Perform Comput (IJGHPC) 9.2:1–20
Ateniese G et al. (2017) Low-cost standard signatures for energy-harvesting wireless sensor networks. ACM Trans Embed Comput Syst (TECS) 16.3:64
Wu F et al. (2017) A privacy-preserving and provable user authentication scheme for wireless sensor networks based on internet of things security. J Ambient Intell Humaniz Comput 8.1:101– 116
Zhu Y-H et al. (2017) Latency aware IPv6 packet delivery scheme over. IEEE 802.15 4 based battery-free wireless sensor networks. IEEE Trans Mob Comput 16.6:1691–1704
Kafi MA, Othman JB, Badache N (2017) A survey on reliability protocols in wireless sensor networks. ACM Comput Surv (CSUR) 50.2:31
Anisi MH et al. (2017) Energy harvesting and battery power based routing in wireless sensor networks. Wireless Netw 23.1:249–266
Lazarescu MT (2017) Wireless sensor networks for the internet of things: barriers and synergies. In: Components and services for IoT platforms. Springer, Cham, pp 155–186
Das S et al. (2017) Extending lifetime of wireless sensor networks using multi-sensor data fusion. Sdhan 42.7:1083–1090
Yaqoob I et al. (2017) Internet of things architecture: recent advances, taxonomy, requirements, and open challenges. IEEE Wireless Commun 24.3:10–16
Shokouhifar M, Jalali A (2017) Optimized sugeno fuzzy clustering algorithm for wireless sensor networks. Eng Appl Artif Intel 60:16–25
Nguyen TG et al. (2017) A novel energy-efficient clustering protocol with area coverage awareness for wireless sensor networks. Peer-to-Peer Network Appl 10.3:519–536
Shokrollahi A, Maybodi BM-N (2017) An energy-efficient clustering algorithm using fuzzy c-means and genetic fuzzy system for wireless sensor network. J Circ Syst Comput 26.01:1750004
Arjunan S, Pothula S (2017) A survey on unequal clustering protocols in wireless sensor networks. Journal of King Saud University-Computer and Information Sciences
Darabkh KA, Albtoush WY, Jafar IF (2017) Improved clustering algorithms for target tracking in wireless sensor networks. J Supercomput 73.5:1952–1977
Xia T, He S (2017) New energy-efficient time synchronization algorithm design for wireless sensor networks automation (YAC). In: 2017 32nd Youth Academic annual conference of Chinese association of IEEE
Hsu YL, Chou PH, Chang HC, Lin SL, Yang SC, Su HY, Kuo YC (2017) Design and implementation of a smart home system using multisensor data fusion technology. Sensors 17(7):1631
Chi X et al. (2017) A novel intelligent healthcare system and the sensor network deployment strategy based on multimodal fused information. Int J Biomed Eng Technol 23.2-4:345–362
Belmonte-Hernández A, Hernández-Peñaloza G, Álvarez F, Conti G (2017) Adaptive fingerprinting in multi-sensor fusion for accurate indoor tracking. IEEE Sensors J 17(15):4983–4998
Ehala J et al. (2017) Situation awareness via internet of things and in-network data processing. Int J Distrib Sens Netw 13.1:1550147716686578
Collotta M, Pau G, Bobovich AV (2017) A fuzzy data fusion solution to enhance the QoS and the energy consumption in wireless sensor networks. Wirel Commun Mob Comput, 2017
Zowj AY, Bongard JC, Skalka C (2017) A genetic programming approach to cost-sensitive control in wireless sensor networks. In: Computational intelligence in wireless sensor networks. Springer, Cham, pp 1–31
Aiello G et al. (2017) A decision support system based on multisensor data fusion for sustainable greenhouse management. Journal of Cleaner Production
Abrardo A, Martalò M, Ferrari Gi (2017) Information fusion for efficient target detection in large-scale surveillance wireless sensor networks. Inform Fusion 38:55–64
Abrardo A, Barni M, Kallas K, Tondi B (2018) A message passing approach for decision fusion in adversarial multi-sensor networks. Inform Fusion 40:101–111
Al-Baz A, El-Sayed A (2017) A new algorithm for cluster head selection in LEAcluster head protocol for wireless sensor networks. International Journal of Communication Systems
Singh R, Kainthola A, Singh T (2012) Estimation of elastic constant of rocks using an ANFIS approach. Appl Soft Comput 12(1):40–45
Kennedy J, Eberhart RC (1995) Particle swarm optimization. In: Proc. IEEE 1995 International conference on neural networks, IV. Piscataway, pp 1942–1948
Lal KN, Kumar Anoj (2017) A centrality measures based caching scheme for content centric networking (CCN) multimedia tools and applications. https://doi.org/10.1007/s11042-017-5183-y
Karami A, Guerrero-Zapata M (2015) An anfis-based cache replacement method for mitigating cache pollution attacks in named data networking. Comput Netw 80:51–65
Srinivas NS (2015) OFDM system implementation, channel estimation and performance comparison of OFDM signal. In: 2015 13th International conference on electromagnetic interference and compatibility (INCEMIC). IEEE, pp 212–219
Author information
Authors and Affiliations
Corresponding author
Rights and permissions
About this article
Cite this article
Kumar, S., Lal, N. & Chaurasiya, V.K. A forwarding strategy based on ANFIS in internet-of-things-oriented wireless sensor network (WSN) using a novel fuzzy-based cluster head protocol. Ann. Telecommun. 73, 627–638 (2018). https://doi.org/10.1007/s12243-018-0656-1
Received:
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s12243-018-0656-1