Abstract
The off-line scheduling scheme of existing wireless sensor network is improved in this paper. Firstly, Bayesian method is introduced and Poisson distribution parameter followed by the number of sensor nodes is regarded as a random variable. We estimate the parameter by Bayesian posteriori estimate and obtain Bayesian estimated correction value. Then, we discuss the relationship between instantaneous event capture probability, average capture probability, average capture energy efficiency and Bayesian estimate value of the distribution parameter. Finally, considering the fact that Bayesian estimation value can be adjusted automatically after posterior samples are included, we propose an online scheduling scheme for asynchronous wireless sensor network. Through simulation comparison between online scheduling scheme and off-line scheduling scheme, our results show that online scheduling scheme can lower the probability of failure to capture stochastic events, increase the probability of capturing events and further save the energy of wireless sensor network, and be more flexible to capturing stochastic events. Moreover, expanding the perception radius of sensors can also enhance capture efficiency on the basis of controlling the working duration of wireless sensor network.




Similar content being viewed by others
References
Rashmi S, Shankariah S, Pooja K et al (2020) An application of IOT and WSN to monitor the temperature of AC transmission line EAI endorsed transactions on Smart Cities 2018:163990
Lin Y, Cheung W (2020) Developing WSN/BIM-based environmental monitoring management system for parking garages in smart cities J Manag Eng 36(3)
Li G (2020) Application of IoT and countermeasure in agriculture of Shandong Province, China. Int Things Cloud Comput 8(1):8–11
Jadidoleslamy H (2013) An introduction to various basic concepts of clustering techniques on wireless sensor networks Int J Mobile Netw Commun Telemat
Ahmadi A, Shojafar M, Hajeforsh SF (2014) An efficient routing algorithm to preserve k-coverage in wireless sensor networks. J Supercomput 68(2):599–623
Gupta H, Rao S, Venkatesh T (2016) Sleep scheduling protocol for k-coverage of three-dimensional heterogeneous WSNs IEEE Transactions Veh Technol 2016(99)
Hochbaum DS, Pathria A (2015) Analysis of the greedy approach in problems of maximum k-coverage. Nav Res Logist 45(6):615–627
Ren Z, Cheng P, Chen J (2014) Dynamic activation policies for event capture in rechargeable sensor network. IEEE Trans Parallel Distrib Syst 25(12):3124–3134
Wang J, Hu X, Xu X. Event inter-arrival time weighted activation policies for rechargeable wireless sensors Changchun, China: International Conference on Computer Science and Network Technology IEEE, 2013
Cheng P, He S, Jiang F (2013) Optimal scheduling for quality of monitoring in wireless rechargeable sensor networks. IEEE Trans Wireless Commun 12(6):3072–3084
Liu J, Zhao B, Ning Z (2014) Mobile sensors oriented random event capturing Chin J Sensors Actuators 257–261
Li C, Sun Z, Wang H (2016) A novel energy-efficient k -coverage algorithm based on probability driven mechanism of wireless sensor networks. Int J Distrib Sens Netw 1(2):1–9
Islam MM, Ahasanuzzaman M, Razzaque MA (2015) Target coverage through distributed clustering in directional sensor networks. EURASIP J Wirel Commun Netw 2015(1):167
Tian J, Gao M, Ge G (2016) Wireless sensor network node optimal coverage based on improved genetic algorithm and binary ant colony algorithm. EURASIP J Wirel Commun Netw 2016(1):104–115
Dai H, Wu X, Xu L (2015) Practical scheduling for stochastic event capture in energy harvesting sensor networks. Int J Sensor Netw 18(2):85–96
He S., Chen J., Yau D.K.Y. Energy-Efficient Capture of Stochastic Events under Periodic Network Coverage and Coordinated Sleep. IEEE Transactions on Parallel and Distributed Systems, 2012, 23.
Garrido-Castellano JA, Murillo-Fuentes JJ (2015) On the implementation of distributed asynchronous non-linear kernel methods over wireless sensor networks. EURASIP J Wirel Commun Netw 2015(1):171
Srbinovska M, Gavrovski C, Dimcev V (2015) Environmental parameters monitoring in precision agriculture using wireless sensor networks. J Clean Prod 88:297–307
Anisi MH, Abdul-Salaam G, Abdullah AH (2015) A survey of wireless sensor network approaches and their energy consumption for monitoring farm fields in precision agriculture. Precision Agric 16(2):216–238
Nandurkar SR, Thool VR, Thool RC (2014) Design and development of precision agriculture system using wireless sensor network. First International Conference on Automation, Control, Energy and Systems IEEE 1–6
Prabhu B (2014) Environmental monitoring and greenhouse control by distributed sensor network Int J Adv Netw Appl
Paek J, Hicks J, Coe S et al (2014) Image-based environmental monitoring sensor application using an embedded wireless sensor network. Sensors 14(9):15981–16002
Malhotra BD et al (2015) Organic-inorganic hybrid nanocomposite-based gas sensors for environmental monitoring. Chem Rev
Xiao K, Wang R, Fu T (2017) Divide-and-conquer architecture based collaborative sensing for target monitoring in wireless sensor networks. Information Fusion 36:162–171
Mahboubi H, Masoudimansour W, Aghdam AG (2016) Maximum lifetime strategy for target monitoring with controlled node mobility in sensor networks with obstacles. IEEE Trans Autom Control 61(11):3493–3508
Feng J, Huang C, Zhi-Liang XU (2014) Research on multi-node cooperative monitoring target and positioning algorithm for wireless sensor networks J Henan Polytechnic Univ
Huang J, Wu X, Wu X (2021) Application of wireless sensor network in remote medical monitoring system J Ambient Intell Humaniz Comput
Chenait M, Zebbane B, Benzaid C (2017) Energy-efficient coverage protocol based on stable and predictive scheduling in wireless sensor networks. Computer Netw 127:1–12
Wang Z, Chen Y, Liu B, Yang H, Zhu Y (2019) A sensor node scheduling algorithm for heterogeneous wireless sensor networks. Int J Distrib Sens Netw 15(1):155014771982631
Alayev Y (2014) Scheduling and resource allocation in wireless sensor networks City University of New York
Qin Y, Boyle D, Yeatman E (2019) Radio diversity for heterogeneous communication with wireless sensors. 2019 IEEE 5th World Forum on Internet of Things (WF-IoT'19), 2019, pp 955–960
Al-Shaikhi A, Abdul-Rashid R, Masoud A (2019) Asynchronous time synchronization protocol for WSNs 2019 16th International Multi-Conference on Systems, Signals & Devices (SSD), 2019, pp 518–523
Siddiqui S, Ghani S, Khan AA (2018) PD-MAC: design and implementation of polling distribution-MAC for improving energy efficiency of wireless sensor networks Int J Wireless Information Netw
Islam KM, Kewen X, Ahmad A et al (2017) Energy-aware task scheduling by a true online reinforcement learning in wireless sensor networks. Int J Sensor Netw 25(4):244
Delamo M, Felici-Castell S, Pérez-Solano JJ (2015) Designing an open source maintenance-free environmental monitoring application for wireless sensor networks. J Syst Softw 103(May):238–247
Rokhmana CA (2015) The potential of UAV-based remote sensing for supporting precision agriculture in Indonesia. Procedia Environ Sci 24:245–253
Xiao X, Tang B, Deng L (2017) High accuracy synchronous acquisition algorithm of multi-hop sensor networks for machine vibration monitoring. Measurement 102:10–19
Abouzar P, Michelson DG, Hamdi M (2016) RSSI-based distributed self-localization for wireless sensor networks used in precision agriculture. IEEE Trans Wireless Commun 15(10):6638–6650
Tokekar P, Hook JV, Mulla D (2016) Sensor planning for a symbiotic UAV and UGV system for precision agriculture. IEEE Trans Rob 99:1–1
Wang K, Gao H, Xu X (2016) An energy-efficient reliable data transmission scheme for complex environmental monitoring in underwater acoustic sensor networks. IEEE Sens J 16(11):1–1
Livinsa ZM, Shri SJ (2016) Monitoring moving target localization in wireless sensor networks. Indian J Sci Technol 9(3):1–5
Soong TT (1969) An extension of the moment method in statistical estimation. SIAM J Appl Math 17(3):560–568
Dallidis SE, Karafyllidis IG (2014) Boolean network model of the Pseudomonas aeruginosa quorum sensing circuits. IEEE Trans Nanobioscience 13(3):343–349
Funding
This work was supported by National Natural Science Foundation of China (no. 71802065), Soft Science Research Project of Zhejiang Province (No. 2021C35052) and the Fundamental Research Funds for the Provincial Universities of Zhejiang (No. GK219909299001-216).
Author information
Authors and Affiliations
Corresponding author
Ethics declarations
Conflict of interest
The authors declare that they have no competing interests.
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
Cheng, Z., Tan, H., Wang, J. et al. A scheduling scheme for stochastic event capture based on Bayes statistical method. J Supercomput 78, 13511–13529 (2022). https://doi.org/10.1007/s11227-022-04403-9
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s11227-022-04403-9