Abstract
Wireless sensor networks (WSNs) produce a huge amount of application-specific data. These data need to be processed and transmitted to base station, which is a costly affair. Since WSN nodes are resource-constrained, efficient data processing and conserving energy are prime challenges. It has been observed that most of the data sensed by the sensors are redundant in nature. If data redundancy can be reduced, then it will lead to an increased lifetime of the network and reduced latency. In this paper, we surveyed different techniques for reducing redundancy in data, and in particular through aggregation. We have discussed data aggregation taxonomy, challenges and critically analysed aggregation techniques proposed in the last 10 years.
Access this chapter
Tax calculation will be finalised at checkout
Purchases are for personal use only
Notes
- 1.
Packet length.
- 2.
Node which aggregates the incoming data [38].
- 3.
The sensing area in which sensors are deployed.
References
Akyildiz I, Su W, Sankarasubramaniam Y, Cayirci E (2002) Wireless sensor networks: a survey. Comput Networks 38(4):393–422
Pantazis NA, Nikolidakis SA, Vergados DD (2013) Energy-efficient routing protocols in wireless sensor networks: a survey. IEEE Commun Surveys Tutorials 15(2):551–591
Rault T, Bouabdallah A, Challal Y (2014) Energy efficiency in wireless sensor networks: a top-down survey. Comput Networks 67(Suppl C):104–122
Zuhra FT, Bakar KA, Ahmed A, Tunio MA (2017) Routing protocols in wireless body sensor networks: a comprehensive survey. J Network Comput Appl 99(Suppl C):73–97
Rai R, Rai P (2019) Survey on energy-efficient routing protocols in wireless sensor networks using game theory. In: Advances in communication, cloud, and big data. Springer, Berlin, pp. 1–9
Heinzelman W, Chandrakasan A, Balakrishnan H (2002) An application-specific protocol architecture for wireless microsensor networks. IEEE Trans Wireless Commun 1:660–670
Wang A, Sodini C (2004) A simple energy model for wireless microsensor transceivers. In: Global telecommunications conference (GLOBECOM ’04). IEEE, vol 5, pp 3205–3209, Nov 2004
Miller M, Vaidya N (2005) A mac protocol to reduce sensor network energy consumption using a wakeup radio. IEEE Trans Mob Comput 4:228–242
Mallinson M, Drane P, Hussain S (2007) Discrete radio power level consumption model in wireless sensor networks. In: IEEE International conference on mobile adhoc and sensor systems (MASS 2007), pp 1–6, Oct 2007
Han B, Zhang D, Yang T (2008) Energy consumption analysis and energy management strategy for sensor node. In: International conference on information and automation (ICIA 2008), pp 211–214, June 2008
Halgamuge MN, Zukerman M, Ramamohanarao K, Vu HI (2009) An estimation of sensor energy consumption. In: Progress in electromagnetics research B
Zhou H-Y, Luo D-Y, Gao Y, Zuo D-C (2011) Modeling of node energy consumption for wireless sensor networks. Wireless Sens Network 3(01):18
Kumar V, Yadav S, Kumar V, Sengupta J, Tripathi R, Tiwari S (2018) Optimal clustering in weibull distributed wsns based on realistic energy dissipation model. In: Progress in computing, analytics and networking, pp 61–73. Springer, Berlin
Madden S, Franklin MJ, Hellerstein JM, Hong W (2002) Tag: a tiny aggregation service for ad-hoc sensor networks. ACM SIGOPS Oper Syst Rev 36:131–146
Roy NR, Chandra P (2018) A note on optimum cluster estimation in leach protocol. IEEE Access 6:65690–65696
Hoang AT, Motani M (2005) Exploiting wireless broadcast in spatially correlated sensor networks. In: IEEE international conference on commun (ICC 2005), vol 4, pp 2807–2811. IEEE
Hoang AT, Motani M (2007) Collaborative broadcasting and compression in cluster-based wireless sensor networks. ACM Trans Sens Networks (TOSN) 3(3):17
Kimura N, Latifi S (2005) A survey on data compression in wireless sensor networks. In: International conference on information technology: coding and computing (ITCC 2005), vol 2, pp 8–13. IEEE
Srisooksai T, Keamarungsi K, Lamsrichan P, Araki K (2012) Practical data compression in wireless sensor networks: a survey. J Network Comput Appl 35(1):37–59
Barr KC, Asanović K (2006) Energy-aware lossless data compression. ACM Trans Comput Syst (TOCS) 24(3):250–291
Oka A, Lampe L (2008) Energy efficient distributed filtering with wireless sensor networks. IEEE Trans Signal Process 56(5):2062–2075
Teng J, Snoussi H, Richard C (2010) Decentralized variational filtering for target tracking in binary sensor networks. IEEE Trans Mob Comput 9(10):1465–1477
Tang Z, Glover I, Evans A, Monro D, He J (2006) An adaptive distributed source coding scheme for wireless sensor networks. In: 12th European wireless conference, University of Bath
Wang W, Peng D, Wang H, Sharif H, Chen H-H (2009) Cross-layer multirate interaction with distributed source coding in wireless sensor networks. IEEE Trans Wireless Commun 8(2):787–795
Shao-Liang P, Shan-Shan L, Yu-Xing P, Pei-Dong Z, Nong X (2007) A delay sensitive feedback control data aggregation approach in wireless sensor network. In: International conference on computational science. Springer, Berlin, pp 393–400
Heinzelman W, Chandrakasan A, Balakrishnan H (2000) Energy-efficient communication protocol for wireless microsensor networks. In: Proceedings of the 33rd annual Hawaii international conference on system sciences, vol 2, p 10, Jan 2000
Younis O, Fahmy S (2004) Heed: a hybrid, energy-efficient, distributed clustering approach for ad hoc sensor networks. IEEE Trans Mob Comput 3(4):366–379
Smaragdakis G, Matta I, Bestavros A (2004) Sep: a stable election protocol for clustered heterogeneous wireless sensor networks. Technical report, Boston University, Computer Science Department
González-Manzano L, de Fuentes JM, Pastrana S, Peris-Lopez P, Hernández-Encinas L (2016) Pagiot-privacy-preserving aggregation protocol for internet of things. J Network Comput Appl 71:59–71
Kim KT, Lyu CH, Moon SS, Youn HY (2010) Tree-based clustering (tbc) for energy efficient wireless sensor networks. In: IEEE 24th international conference on advanced information networking and applications workshops (WAINA). IEEE, pp 680–685
Kalpakis K, Dasgupta K, Namjoshi P (2002) Maximum lifetime data gathering and aggregation in wireless sensor networks. In: Networks. World Scientific, pp 685–696
Han Z, Wu J, Zhang J, Liu L, Tian K (2014) A general self-organized tree-based energy-balance routing protocol for wireless sensor network. IEEE Trans Nuclear Sci 61(2):732–740
Shivkumar S, Kavitha A, Swaminathan J, Navaneethakrishnan R (2016) General self-organizing tree-based energy balance routing protocol with clustering for wireless sensor network. Asian J Inform Technol 15(24):5067–5074
Bahi JM, Makhoul A, Medlej M (2012) Frequency filtering approach for data aggregation in periodic sensor networks. In: Network operations and management symposium (NOMS). IEEE, pp 570–573
Dasgupta K, Kalpakis K, Namjoshi P (2003) An efficient clustering-based heuristic for data gathering and aggregation in sensor networks. In: Wireless communications and networking (WCNC 2003). IEEE, vol 3, pp 1948–1953
Zhang B, Guo W, Chen G, Li J (2013) In-network data aggregation route strategy based on energy balance in wsns. In: WiOpt, pp 540–547
Xiao S, Li B, Yuan X (2015) Maximizing precision for energy-efficient data aggregation in wireless sensor networks with lossy links. Ad Hoc Networks 26:103–113
Atoui I, Ahmad A, Medlej M, Makhoul A, Tawbe S, Hijazi A (2016) Tree-based data aggregation approach in wireless sensor network using fitting functions. In: 2016 sixth international conference on digital information processing and communications (ICDIPC). IEEE, pp 146–150
Yu Y, Prasanna VK, Krishnamachari B (2006) Energy minimization for real-time data gathering in wireless sensor networks. IEEE Trans Wireless Commun 5(11):3087–3096
Bagaa M, Younis M, Ouadjaout A, Badache N (2013) Efficient multi-path data aggregation scheduling in wireless sensor networks. In: 2013 IEEE international conference on communications (ICC). IEEE, pp 1560–1564
Kumar S, Kim H (2019) Energy efficient scheduling in wireless sensor networks for periodic data gathering. In: IEEE access
Sarangi K, Bhattacharya I (2019) A study on data aggregation techniques in wireless sensor network in static and dynamic scenarios. In: Innovations in systems and software engineering, pp 1–14
Yadav S, Yadav RS (2019) Redundancy elimination during data aggregation in wireless sensor networks for iot systems. In: Recent trends in communication, computing, and electronics. Springer, Berlin, pp 195–205
SreeRanjani N, Ananth A, Reddy LS (2018) An energy efficient data gathering scheme in wireless sensor networks using adaptive optimization algorithm. J Comput Theor Nanosci 15(11–12):3456–3461
Khriji S, Raventos GV, Kammoun I, Kanoun O (2018) Redundancy elimination for data aggregation in wireless sensor networks. In: 2018 15th international multi-conference on systems, signals & devices (SSD). IEEE, , pp 28–33
Mottaghi S, Zahabi MR (2015) Optimizing leach clustering algorithm with mobile sink and rendezvous nodes. AEU-Int J Electron Commun 69(2):507–514
Yuan F, Zhan Y, Wang Y (2014) Data density correlation degree clustering method for data aggregation in wsn. IEEE Sens J 14(4):1089–1098
Guo S, Wang C, Yang Y (2013) Mobile data gathering with wireless energy replenishment in rechargeable sensor networks. In: INFOCOM, 2013 Proceedings IEEE. IEEE, , pp 1932–1940
Jin N, Chen K, Gu T (2012) Energy balanced data collection in wireless sensor networks. In: 2012 20th IEEE international conference on network protocols (ICNP). IEEE, pp 1–10
Mathapati BS, Patil SR, Mytri V (2012) Energy efficient reliable data aggregation technique for wireless sensor networks. In: 2012 international conference on computing sciences (ICCS). IEEE, pp 153–158
Zhao M, Ma M, Yang Y (2011) Efficient data gathering with mobile collectors and space-division multiple access technique in wireless sensor networks. IEEE Trans Comput 60(3):400–417
Yang C, Yang Z, Ren K, Liu C (2011) Transmission reduction based on order compression of compound aggregate data over wireless sensor networks. In: 2011 6th international conference on pervasive computing and applications (ICPCA). IEEE, pp 335–342
Zhao M, Yang Y (2010) Data gathering in wireless sensor networks with multiple mobile collectors and sdma technique sensor networks. In: 2010 IEEE Wireless communications and networking conference (WCNC). IEEE, pp 1–6
Author information
Authors and Affiliations
Corresponding author
Editor information
Editors and Affiliations
Rights and permissions
Copyright information
© 2020 Springer Nature Singapore Pte Ltd.
About this paper
Cite this paper
Roy, N.R., Chandra, P. (2020). Analysis of Data Aggregation Techniques in WSN. In: Khanna, A., Gupta, D., Bhattacharyya, S., Snasel, V., Platos, J., Hassanien, A. (eds) International Conference on Innovative Computing and Communications. Advances in Intelligent Systems and Computing, vol 1059. Springer, Singapore. https://doi.org/10.1007/978-981-15-0324-5_48
Download citation
DOI: https://doi.org/10.1007/978-981-15-0324-5_48
Published:
Publisher Name: Springer, Singapore
Print ISBN: 978-981-15-0323-8
Online ISBN: 978-981-15-0324-5
eBook Packages: Intelligent Technologies and RoboticsIntelligent Technologies and Robotics (R0)