Abstract
This paper proposes an energy-efficient dynamic decision model for wireless multi-sensor network, which is based on the dynamic analysis of the energy consumption characteristics of wireless multi-sensor nodes. We analyze the behaviors of the nodes in wireless multi-sensor network and introduce the existing energy-efficient decision methods, then propose a simple dynamic decision model and prove it theoretically. This paper uses MATLAB 2015 to carry out simulation experiments under the condition of fixed routing protocol based on tree topology and two low-power routing protocols based on mesh topology, and simulation results show that the network lifetime is obviously prolonged. Extending the application of the proposed decision model to aquaculture environmental monitoring system, testing results show that the proposed decision model can effectively reduce the network energy consumption, and be promising when generalized to other applications.









Similar content being viewed by others
References
Gartner, Maturity Model for the Internet of Things. Accessed 20 Nov 2017. https://www.gartner.com/doc/3236023/maturity-model-internet-things
Wang J, Cao J, Sherratt RS et al (2017) An improved ant colony optimization-based approach with mobile sink for wireless sensor networks. J Supercomput 2017:1–13
Shila DM, Cao X, Cheng Y et al (2014) Ghost-in-the-wireless: energy depletion attack on zigbee. arXiv preprint arXiv:1410.1613
Kwon D, Chung KH, Choi K (2013) A dynamic Zigbee protocol for reducing power consumption. J Inf Process Syst 9(1):41–52
Shih C, Liang B (2012) A model driven software framework for ZigBee based energy saving systems. In: 2012 Third International Conference on Intelligent Systems, Modelling and Simulation (ISMS). IEEE, pp 487–492
Kumar P, Babu MN, Jain V (2017) Analysis of energy efficiency in WSN by considering SHM application. IOP Conf Seri Mater Sci Eng 225(1):012231
He C, Kiziroglou ME, Yates DC et al (2011) A MEMS self-powered sensor and RF transmission platform for WSN nodes. IEEE Sens J 11(12):3437–3445
Rhimi M, Lajnef N (2010) Tunable energy harvesting from ambient vibrations. In: ASME 2010 Conference on Smart Materials, Adaptive Structures and Intelligent Systems. American Society of Mechanical Engineers, pp 529–534
Amato F, Beaulieu CM, Haile AT et al (2015) 5.8 GHz energy harvesting of space based solar power using inkjet printed circuits on a transparent substrate. In: 2015 IEEE International Conference on Wireless for Space and Extreme Environments (WiSEE). IEEE, pp 1–3
Wunderlich W (2015) Energy harvesting under large temperature gradient comparison of silicides, half-heusler alloys and seramics. Energy Harvest Syst 2(1–2):37–46
Liang Y, Yu H (2005) Energy adaptive cluster-head selection for wireless sensor networks. In: Sixth International Conference on Parallel and Distributed Computing, Applications and Technologies, PDCAT 2005. IEEE, pp 634–638
Narayanaswamy S, Kawadia V, Sreenivas RS et al (2002) Power control in ad-hoc networks: theory, architecture, algorithm and implementation of the COMPOW protocol. Eur Wirel Conf 2002:156–162
Gomez J, Campbell AT, Naghshineh M et al (2003) PARO: supporting dynamic power controlled routing in wireless ad hoc networks. Wireless Netw 9(5):443–460
Chen B, Jamieson K, Balakrishnan H et al (2002) Span: an energy-efficient coordination algorithm for topology maintenance in ad hoc wireless networks. Wireless Netw 8(5):481–494
Zhang H, Shen H (2010) Energy-efficient beaconless geographic routing in wireless sensor networks. IEEE Trans Parallel Distrib Syst 21(6):881–896
Wang Y, Li XY, Song WZ et al (2011) Energy-efficient localized routing in random multihop wireless networks. IEEE Trans Parallel Distrib Syst 22(8):1249–1257
Heinzelman WR, 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, 2000, vol 2. IEEE, p 10
Qing L, Zhu Q, Wang M (2006) Design of a distributed energy-efficient clustering algorithm for heterogeneous wireless sensor networks. Comput Commun 29(12):2230–2237
Jung S, Kang B, Yeoum S et al (2016) Trail-using ant behavior based energy-efficient routing protocol in wireless sensor networks. Int J Distrib Sens Netw 12(4):7350427
Chen Y, Zhang C, Liu Z (2010) Energy efficient routing protocol for ad hoc networks. In: 2010 International Conference on Computer Design and Applications (ICCDA), vol 5. IEEE, pp V5-320–V5-323
Yuan W, Krishnamurthy SV, Tripathi SK (2003) Synchronization of multiple levels of data fusion in wireless sensor networks. In: IEEE on Global Telecommunications Conference, GLOBECOM’03, vol 1. IEEE, pp 221–225
Zhang Z, Li J, Liu L (2016) Distributed state estimation and data fusion in wireless sensor networks using multi-level quantized innovation. Sci China Inf Sci 59(2):1–15
Tian Y, Zhou Q, Zhang F et al (2017) Multi-hop clustering routing algorithm based on fuzzy inference and multi-path tree. Int J Distrib Sens Netw 13(5):1550147717707897
Wang J, Cao J, Ji S et al (2017) Energy-efficient cluster-based dynamic routes adjustment approach for wireless sensor networks with mobile sinks. J Supercomput 2017:1–14
Liu F, Zhang D, Wang L (2012) Clustering routing protocol based on local optimization for wireless sensor networks. In: 2012 2nd International Conference on Consumer Electronics, Communications and Networks (CECNet). IEEE, pp 934–937
Yang X, Zhou Q, Han G et al (2015) Energy-efficient aquaculture environmental monitoring system based on ZigBee. Trans Chin Soc Agric Eng 31(17):183–190
Li Y, Zhou Q, Zhou J et al (2014) Assimilating remote sensing information into a coupled hydrology-crop growth model to estimate regional maize yield in arid regions. Ecol Model 291:15–27
Zhou Q, Bai S, Hu B et al (2010) A novel portable multimedia QoS monitor: independent and high efficiency. Wirel Commun Mobile Comput 10(10):1320–1333
Li C, Zhou Q, Ding Y et al (2009) The analysis of wireless sensor networks for environmental monitoring implementation. In: 2009 Joint Conferences on Pervasive Computing (JCPC). IEEE, pp 615–618
Acknowledgements
This work was supported by National Natural Science Foundation of China under Grant Nos. 61402210 and 60973137, State Grid Corporation Science and Technology Project under Grant No. SGGSKY00FJJS1700302, Program for New Century Excellent Talents in University under Grant No. NCET-12-0250, Major National Project of High Resolution Earth Observation System under Grant No. 30-Y20A34-9010-15/17, Key R&D projects in Gansu Province under Grant No. 17YF1GA013, Gansu Academy of Sciences application development project under Grant No. 2017JK-06, Strategic Priority Research Program of the Chinese Academy of Sciences with Grant No. XDA03030100, Google Research Awards and Google Faculty Award.
Author information
Authors and Affiliations
Corresponding author
Rights and permissions
About this article
Cite this article
Yang, X., Zhou, Q., Wang, J. et al. An energy-efficient dynamic decision model for wireless multi-sensor network. J Supercomput 76, 1585–1603 (2020). https://doi.org/10.1007/s11227-018-2419-1
Published:
Issue Date:
DOI: https://doi.org/10.1007/s11227-018-2419-1