Design of Moving Coverage Algorithm of Ecological Monitoring Network for Curved Surface

Authors

  • Song Liu Guizhou Normal University, China
  • Runlan Zhang Guizhou Vocational Technology Institute, China
  • Yongheng Shi Guizhou Vocational Technology Institute, China

DOI:

https://doi.org/10.15837/ijccc.2022.6.4588

Keywords:

mobile sensor network , curved surface, coverage, algorithm, simulation.

Abstract

Micro-structured sensors that can perceive and communicate at the same time have emerged as a result of the quick growth of microelectronics technology, wireless communication technology, and sensor technology. This little gadget has the ability to sense many types of environmental data, gather it at the sink node, and then send it to the data centre. In the civic, industrial, agricultural, military, and other domains, wireless sensor networks are frequently employed. A virtual force model of curved surface ecological monitoring network for moving coverage is presented, and a moving coverage algorithm for curved surface ecological monitoring network is given, according to the actual needs of curved surface ecological monitoring, such as grasslands, wetlands, deserts, and coastal beaches. The moving coverage algorithm of curved surface ecology monitoring network pushes the sensor nodes to the uncovered area on the monitored surface and fixes the monitoring blind zone on the monitored surface using a virtual force between sensor nodes in the ecological monitoring network. The moving coverage process of the moving coverage algorithm of the ecological monitoring network is simulated in order to verify the efficiency of the moving coverage algorithm of curved surface ecological monitoring network. The simulation results demonstrate that the moving coverage algorithm suggested in this paper can successfully increase the coverage of the ecological monitoring network on the monitoring surface by precisely locating the monitoring blind zone of the ecological monitoring network and pushing the sensor nodes to the monitoring blind zone for coverage. The final coverage ratio is greater than 95%, and the node deployment phase’s coverage ratio can reach 85% to 90%.

References

Boubrima A, Bechkit W, Hervé R. On the deployment of wireless sensor networks for air quality mapping: optimization models and algorithms. IEEE/ACM Transactions on Networking. 2019.

https://doi.org/10.1109/TNET.2019.2923737

Mei Xiwei. Research on coverage control optimization algorithm for wireless sensor networks [D]. Jiangnan University, 2017.

Jean-Matthieu Etancelin, André Fabbri, Frédéric Guinand, Martin Rosalie. DACYCLEM: a decentralized algorithm for maximizing coverage and lifetime in a mobile wireless sensor network[J]. Ad Hoc Networks, 2018.

https://doi.org/10.1016/j.adhoc.2018.12.008

Shen Xianhao, Li Jun, Naihe. Scan coverage optimization algorithm for mobile sensor nodes with limited perception [J]. Computer Applications, 2017, 37 (1): 60-64.

Chen Yourong, Lu Siyi, Liu banteng, Yang Haibo, Xu Sen, Zhu Yunkai, Lu Yunwei. Mobile sensing path selection algorithm for mobile wireless sensor networks [J]. Sensor Technology, 2019,01:117-126.

Zhou Fei, Guo Haotian, Yang Yi. An improved coverage enhancement algorithm for virtual force relocation [J]. Journal of Electronics. 2020,09:2194-2200.

Nguyen T G, Nguyen N G. An efficient coverage hole-healing algorithm for area-coverage improvements in mobile sensor networks[J]. Peer-to-Peer Networking and Applications. 2019.

Karthik, A., MazherIqbal, J.L. Efficient Speech Enhancement Using Recurrent Convolution Encoder and Decoder. Wireless Pers Commun 119, 1959-1973 (2021).

https://doi.org/10.1007/s11277-021-08313-6

Joshitha K L, Jayashri S. A novel redundant hole identification and healing algorithm for a homogeneous distributed wireless sensor network. Wireless Personal Communications. 2019.

https://doi.org/10.1007/s11277-018-6079-5

Arivudainambi D, Balaji S, Poorani T S. Sensor deployment for target coverage in under water wireless sensor network[C]. Proceedings of the 2017 International Conference on Performance Evaluation and Modeling in Wired and Wireless Networks. Piscataway, NJ:IEEE,2017:1-6.

https://doi.org/10.23919/PEMWN.2017.8308032

Dang Xiaochao, Shao Chenguang, Hao Zhanjun. 3D coverage algorithm for wireless sensor networks with adjustable radius [J]. Computer Applications, 2018,38 (09): 2581-2586.

Hao Zhanjun, Qu Nanjiang, Dang Xiaochao. A 3D coverage algorithm for WSN with multiple mobile nodes in complex environment [J]. Computer Engineering, 2018, 1:1-11.

Tan Li, Yang Chaoyu, Yang Minghua, Tang Xiaojiang. Autonomous coverage algorithm for 3D space targets in directed mobile sensor networks [J]. Computer Engineering, 2018,44 (05): 71-77.

Guo Xinming, Chen Wei, Xie Fei, Li Kang. Mountainous 3D ring fence coverage algorithm for wireless sensor network [J]. Sensors and Micro Systems, 2021,40 (06): 149-151+160.

Zhang Tong, Ma Xinyuan, Zhao Taifei. An underwater 3D sensor network coverage algorithm based on vertical sampling [J]. Computer System Applications, 2019,28(02): 125-131.

Zhang Lei, Jiao Zhenghua, Xu Zhao, Li Xingwu, Li Peng, Guo Song, Wang Sicheng. 3D wireless sensor network coverage enhancement method based on particle swarm optimization algorithm

[J]. Journal of Yangtze University (Natural Science ), 2020, 17 (02): 98-103.

Jiankai Xue, Bo Shen. A Novel Swarm Intelligence Optimization Approach: Sparrow Search Algorithm [J]. Systems Science & Control Engineering.

Zhendong Wang, Huamao Xie, Daojing He, Sammy Chan. Wireless Sensor Network Deployment Optimization Based on Two Flower Pollination Algorithms [J]. IEEE Access. 2019

https://doi.org/10.1109/ACCESS.2019.2959949

Sun Aijing,Wang Lei"Zhu Xinxin. Coverage optimization of three-dimensional wireless sensor network based on fusion algorithm[J]. Sensors and Micro-systems, 2021,40(11):146-149.

Wang Zhendong,Wang Jiabao,Li Dahai. Wireless Sensor Network Coverage Optimization Study for an Enhanced Sparrow Search Algorithm [J]. Journal of Sensing Technology, 2021,34(06):818- 828.

Wang Ting,Sui Jianghua. Coverage distribution optimization of sensor networks using improved particle swarm optimization [J]. Journal of Liaoning University of Engineering and Technology (Natural Science),2020,39(03):280-286.

Zhang Runlan. Research on clustering protocol and network coverage of mobile sensor networks [D]. Guizhou University. 2016

Guan Zhiyan, Huang Xiangsheng. Optimal algorithm for directed sensor network coverage under random obstacles [J]. Minicomputer System, 2020,41(11): 2380-2385.

Zhang Chun. Coverage algorithm based on virtual force in wireless sensor networks [J] Computer Application Research,2019,36(06):1854-1857.

Liu Haoran, Zhao Heyao, Deng Yujing, Wang Xingqi, Yin Rongrong. Wireless sensor network coverage control algorithm based on non-cooperative game [J]. Journal of Communications, 2019,40(01): 71-78.

Qi Sheng, Sun Yanrui. Wireless sensor network coverage efficiency optimization simulation [J]. Computer simulation, 2017,34 (08): 297-301+345.

Yu-Yao Lin, Chien-Chun Ni, Na Lei, X. Gu and Jie Gao. Robot Coverage Path planning for general surfaces using quadratic differentials [C]. Proceedings of the 2017 IEEE International Conference on Robotics and Automation (ICRA), 2017, pp. 5005-5011.

https://doi.org/10.1109/ICRA.2017.7989583

Qiangyi Li, Ningzhong Liu. Monitoring area coverage optimization algorithm based on nodes perceptual mathematical model in wireless sensor networks [J]. Computer Communications, 2020, 155: 227-234.

https://doi.org/10.1016/j.comcom.2019.12.040

Additional Files

Published

2022-12-14

Most read articles by the same author(s)

Obs.: This plugin requires at least one statistics/report plugin to be enabled. If your statistics plugins provide more than one metric then please also select a main metric on the admin's site settings page and/or on the journal manager's settings pages.