Research on Optimization Selection Algorithm of Track and Field Based on Adaptive Wireless Sensor Network Node Speed

Article Preview

Abstract:

By using the adaptive search algorithm of particle swarm layout, we optimize 3D space nodes of wireless network, and obtain the optimum mathematical model of particle swarm optimization distribution of nodes in wireless network. Using the tree structure and the wireless network hardware equipment we design algorithm the optimization platform of track and field technique. In order to verify the stability and reliability of platform running, we use the wireless network node division method and transmission time groups of control network to control athlete’s technical movement. And we use Java technology to calculate the athlete’s action to verify the stability. Through calculation, for the same optimization task, the time of adaptive search algorithm is short, and the search is less, which is a rapid and effective optimization algorithm.

You might also be interested in these eBooks

Info:

Periodical:

Pages:

5690-5694

Citation:

Online since:

May 2014

Authors:

Export:

Price:

Permissions CCC:

Permissions PLS:

Сopyright:

© 2014 Trans Tech Publications Ltd. All Rights Reserved

Share:

Citation:

* - Corresponding Author

[1] Mao Xiaofeng, Yang Min, Mao Dilin. Overview of wireless sensor network application [J]. Computer application and software, 2012, 25(3): 179-181.

Google Scholar

[2] Gao Feng, Yu Li, Wang Yong et al. The PC software development of crop water status monitoring system of wireless sensor network [J]. Journal of agricultural engineering, 2010, 26(5): 175-181.

Google Scholar

[3] Li Caiyu, Gao Hongju, Jiang Jianzhao. The effect of antenna height in wheat tank on the 2. 4GHz wireless channel propagation characteristics [J]. Journal of agricultural engineering, 2011, 25(2): 184-189.

Google Scholar

[4] Wang Daihua, Song Linli, Kong Xiangshan, Zhang Zhijie. The path loss modeling of wireless channel in grassland environment [J]. Optics and precision engineering, 2012, 20(6): 1406-1413.

Google Scholar

[5] Zhang Junben, Li Zhaofeng, Ju Hong Yun. Automatic classification of a SOM and GRNN combination mode [J]. Computer engineering and application, 2011, 43(13): 49-51.

Google Scholar

[6] Wang Ling, liu Bo. Particle swarm optimization and scheduling algorithm [M]. Beijing: Tsinghua University press, 2011: 20-60.

Google Scholar

[7] Chen Lijun, Mao Yingchi, Chen Daoxu et al. The average constraint of wireless sensor network topology control [J]. Chinese journal of computers, 2012, 30(9): 1544-1550.

Google Scholar

[8] Cheng Weifang, Liao Xiangke, Shen Changxiang. The maximum coverage scheduling algorithm of sensor networks [J]. Journal of software, 2012(4): 975-984.

Google Scholar

[9] Wen Jun, Jiang Jie, Dou Wenhua. The fair direction sensor network optimization and node scheduling algorithm [J]. Journal of software, 2011, 20(3): 644-659.

Google Scholar

[10] Tao Dan, Ma Huadong, Liu Liang. Path coverage enhancement algorithm of video sensor network [J]. Acta electronica Sinica, 2011, 36(7): 26-31.

Google Scholar