Abstract
Performance-centric automated system plays a vital role in next-generation wireless networks. With reduction in size and cost, sensor devices have led to envision a world of ubiquitous wireless sensor networks. Inherent behavior of resource-constrained sensors results in energy-consuming hot spots (such as communication overhead, severe packet collision, network congestion and packet loss) causing premature death of sensor nodes and entire network. In this paper, a novel ‘Monkey Tree Search-based Location-Aware Smart Collector (MTS_LASC)’ that exploits fauna inspired Monkey Tree Search (MTS) behavioral model is explored. The MTS_LASC is an extremely dynamic and fascinating phenomenon comprising distributed smart collectors and a centralized meta-heuristic MTS engine used for solving hard and complex problem. The distributed smart collector is embedded with a client MTS module. It is capable of analyzing, categorizing and aggregating data collected from sensors and disseminating them to the sink using fuzzy inference mechanism, whereas the centralized MTS engine exploits meta-heuristic search to facilitate comprehensive situation awareness through energy-efficient route among multiple paths for crucial decision making in Internet of Things-based applications. Simulation results reveal promising gains with higher delivery ratio by significantly reducing redundant packet transmission and maintaining fidelity through data aggregation. Performance analysis shows that MTS_LASC remains stable even in high traffic-constrained setup as energy degrades more slowly resulting in prolonged network lifetime. By improving the life prospects of the sensor network commendably, the proposed scheme reflects high potential on practical implementation.















Similar content being viewed by others
References
G. Anastasi, M. Conti, M.D. Francesco, A. Passarella, Energy conservation in wireless sensor networks: a survey. Ad Hoc Netw. 7, 537–568 (2009)
W. Cai, M. Zhang, Data aggregation mechanism based on wavelet-entropy for wireless sensor networks, in IEEE WiCOM (2008), pp. 1–4
C. Cecchinel, F. Fouquet, S. Mosser, Leveraging live machine learning and deep sleep to support a self-adaptive efficient configuration of battery powered sensors, future generation computer systems. Int. J. ESci. 92, 225–240 (2019)
Q. Chen, H. Gao, Z. Cai, L. Cheng, J. Li, Distributed low-latency data aggregation for duty-cycle wireless sensor networks. IEEE/ACM Trans. Netw. 26(5), 2347–2360 (2018)
D.K.M. Chu, A. Deshpande, J.M. Hellerstein, W. Hong, Approximate data collection in sensor networks using probabilistic models, in IEEE Proceedings of the 22nd International Conference on Data Engineering, (2006), p. 48
A.C.S. Chung, H.C. Shen, Entropy-based Markov chains for multi sensor fusion. J. Intell. Rob. Syst. 29, 161–189 (2000)
R.V. Devi, S.S. Sathya, Monkey behavior based algorithms—a survey. Int. J. Intell. Syst. Appl. 9, 67–86 (2017)
W. Evans, A. Bahr, A. Martinoli, Evaluating Efficient Data Collection Algorithms for Environmental Sensor Networks Distributed Autonomous Robotic Systems (Springer, Berlin, 2011)
L. Galluccio, S. Palazzo, A.T. Campbell, Efficient data aggregation in wireless sensor networks: An entropy-driven analysis, in IEEE 19th International Symposium on Personal, Indoor and Mobile Radio Communications (PIMRC 2008) (2008), pp. 1–6
U. Ganesh, M. Anand, S. Arun, M. Dinesh, P. Gunaseelan, R. Karthik, Forest fire detection using optimized solar-powered Zigbee wireless sensor networks. Int. J. Sci. Eng. Res. 4, 586–596 (2013)
C. Huang, W.C. Lin, Data collection for multiple mobile users in wireless sensor networks. J. Super Comput. 72(7), 2651–2669 (2016)
Z.A. Khan, A study of machine learning in wireless sensor network. Int. J. Computer Netw. Appl. 4(4), 105–112 (2017)
R.V. Kulkarni, A. Forster, G.K. Venayagamoorthy, Computational intelligence in wireless sensor networks: a survey. IEEE Commun. Surv. Tutor. 13(1), 68–96 (2011)
J. Kulshrestha, M.K. Mishra, Energy balanced data gathering approaches in wireless sensor networks using mixed-hop communication. Computing 1–26 (2018)
J. Kulshrestha, M. Mishra, An adaptive energy balanced and energy efficient approach for data gathering in wireless sensor networks. Ad-hoc Netw. 54, 130–146 (2017)
Y. Lu, N. Sun, A resilient data aggregation method based on spatio-temporal correlation for wireless sensor networks. EURASIP J. Wirel. Commun. Netw. 1, 157 (2018)
Y. Ma, Y. Guo, X. Tian, M. Ghanem, Distributed clustering-based aggregation algorithm for spatial correlated sensor networks. IEEE Sens. J. 11(3), 641–648 (2011)
S. Mondal, P. Ghosh, S. Dutta, Energy efficient data gathering in wireless sensor networks using rough fuzzy C-means and ACO, in Industry Interactive Innovations in Science, Engineering and Technology, (Springer, 2018)
A. Nasridinov, Y. Park, A survey on machine learning techniques in wireless sensor networks. Adv. Sci. Technol. Lett./ 30, 106–108 (2013)
D. Peng, S.P. Li, Q.Y. Zhang, Efficient routing protocol of wireless sensor network for machine learning. Chim. OGGI-Chem. Today 36(6), 1845 (2018)
C.E. Perkins, P. Bhagwat, Highly dynamic destination sequence-vector routing (DSDV) for mobile computers. Comput. Commun. Rev. 24(4), 234–244 (1994)
S. Pirbhulal, H. Zhang, S.C. Mukhopadhyay, C. Li, Y. Wang, G. Li, W. Wu, Y.T. Zhang, An efficient biometric-based algorithm using heart rate variability for securing body sensor networks. Sensors, SCI 15, 15067–15089 (2015)
S. Pirbhulal, H. Zhang, M. Eshrat, E. Alahi, H. Ghayvat, S.C. Mukhopadhyay, Y.T. Zhang, A novel secure iot-based smart home automation system using a wireless sensor network. Sens. J. SCI 17, 69 (2016)
S. Pirbhulal, H. Zhang, W. Wu, S.C. Mukhopadhyay, Y.T. Zhang, Heart-beats based biometric random binary sequences generation to secure wireless body sensor networks, in IEEE Transactions on Biomedical Engineering, SCI (2018), pp. 1–1
K.C. Serdaroglu, S. Baydere, WiSEGATE: wireless sensor network gateway framework for internet of things. Wirel. Netw. 22(5), 1475–1491 (2016)
A. Sinha, D.K. Lobiyal, An entropic approach to data aggregation with divergence measure based clustering in sensor network, in ACC 2011, Part III, CCIS, Vol. 192 (2011), pp. 132–142
A. Sinha, D.K. Lobiyal, A multi-level strategy for energy efficient data aggregation in wireless sensor networks. Wirel. Pers. Commun. 72, 1513–1531 (2013)
D. Tulone, S. Madden, An energy-efficient querying framework in sensor networks for detecting node similarities, in Proceedings of the 9th ACM International Symposium on Modeling Analysis and Simulation of Wireless and Mobile Systems (2006), pp. 2–6
Y. Wang, H. Tan, Distributed probabilistic routing for sensor network lifetime optimization. Wirel. Netw. 22, 975–989 (2016)
Author information
Authors and Affiliations
Corresponding author
Additional information
Publisher's Note
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Rights and permissions
About this article
Cite this article
Soundari, A.G., Jyothi, V.L. Energy Efficient Machine Learning Technique for Smart Data Collection in Wireless Sensor Networks. Circuits Syst Signal Process 39, 1089–1122 (2020). https://doi.org/10.1007/s00034-019-01181-3
Received:
Revised:
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s00034-019-01181-3