Research on Multilevel Mobile Sensor Network Control Based on Probability Coverage Model

Article Preview

Abstract:

The control of mobile coverage model is the focus research of wireless sensor network. If a node can balance the network load according to the network needs, which can greatly reduce the consumption of the network, improve the network transmission efficiency and prolong the network life cycle. Accordingly, this paper uses probability coverage principle to improve multilevel mobile sensor network model, which improves the mobile sensor network coverage and enhances the energy-saving effect of the network nodes. In order to verify the effectiveness and reliability of the multilevel mobile sensor network model, this paper uses MATLAB simulation platform to test the performance of network, and design the control program of node region division and moving path for mobile sensor network, which realizes the node automatic classification and moving. Finally, this paper utilizes the Plot curve of MATLAB to obtain the coverage rate of multilevel mobile sensor network and the curve of energy saving changing with the number of nodes. It provides a theoretical reference for the research on mobile sensor network.

You might also be interested in these eBooks

Info:

Periodical:

Pages:

1214-1218

Citation:

Online since:

August 2014

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2014 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

* - Corresponding Author

[1] Wu Jiangning, Liu Qiaofeng. The text similarity algorithm based on maximum common sub graph [J]. Journal of information, 2010, 29(5): 785-791.

Google Scholar

[2] Pu Qiang, He Daqing, Yang Guowei. Query language estimation model based on statistical semantic clustering [J]. Journal of computer research and development, 2011(3): 34-36.

Google Scholar

[3] Zhong Maosheng, Liu Hui, Liu Lei. Quantitative semantic relations between words calculation method [J]. Chinese information technology, 2012, 23(2): 115-122.

Google Scholar

[4] Fan Xiaoping, Xiong Zheyuan, Chen Zhijie, Liu Shaoqiang, Qu Zhihua. Research on video coding in wireless multimedia sensor networks [J]. Journal of communication, 2011, 32(9): 137-146.

Google Scholar

[5] Fan Xiaoping, Xiong Zheyuan, Chen Zhijie, Liu Shaoqiang, Qu Zhihua. Research on video coding in wireless multimedia sensor networks [J]. Journal of communication, 2011, 32(9): 137-146.

Google Scholar

[6] Lu Yiming, Liu Dong, Liu Jinsong. Information integration requirements and model analysis of intelligent distribution network [J]. Automation of electric power systems, 2010, 34(8): 1-4.

Google Scholar

[7] Ni Jingmin, He Guangyu, Shen Chen et al. Overview of USA smart grid assessment [J]. Automation of electric power systems, 2010, 34(8): 9-13.

Google Scholar

[8] Hu Jing. Strategy jump of strong smart grid [J]. National grid, 2011, 5(3): 45-48.

Google Scholar

[9] Xiong Zheyuan, Fan Xiaoping, Liu Shaoqiang, Li Yongzhou, Zhong Zhi. Image mosaic algorithm of multimedia sensor networks [J]. Research on computer, 2011, 29(5): 1970-(1973).

Google Scholar

[10] Xiong Zheyuan, Fan Xiaoping, Liu Shaoqiang, Qu Zhihua, Zhong Lusheng. Analysis of image communication performance inwireless multimedia sensor network [J]. Computer engineering and application, 2012, 48(14): 27-32.

Google Scholar

[11] Zhang Qiang, Sun Yugeng, Yang Ting et al. Application of wireless sensor network in intelligent power grid [J]. China electric power, 2010, 43(6): 31-36.

Google Scholar