Computer Science ›› 2020, Vol. 47 ›› Issue (6A): 596-598.doi: 10.11896/JsJkx.190900194

• Interdiscipline & Application • Previous Articles     Next Articles

Low Power Long Distance Marine Environment Monitoring System Based on 6LoWPAN

WANG Dong1, WANG Hu2 and JIANG Qian-li3   

  1. 1 Library,OceanUniversity of China,Qingdao,Shangdong 266100,China
    2 Academy of Ocean of China,Qingdao,Shangdong 266100,China
    3 Institute for Advanced Ocean Study,Ocean University of China,Qingdao,Shangdong 266100,China
  • Published:2020-07-07
  • About author:WANG Dong, Ph.D.His research areas are machine vision, embedded system, software programming, and IoT design.JIANG Qian-li, Ph.D.His research areas are underwater robots, and ROV design.
  • Supported by:
    This work was supported by the Fundamental Research Funds for the Central Universities (201953001) and CERNET Innouation ProJect (NGII20170309).

Abstract: Marine environmental monitoring is characterized with decentralized monitoring nodes,a large quantity of nodes,complicated of measurement data types,variety of information exchange and communication.Wireless sensor networks can reduce the number of cable connections,and decrease the costs of deployment and maintenance.Based on IEEE802.15.4,6LoWPAN technology realizes the transmission of IPV6 data packets in wireless sensor networks,hence it is an ideal technology for the interconnection between wireless sensor network and Internet.Based on the research of the topology and protocol of Contiki 6LoWPAN network,the TI CC1310 platform is used to build the wireless sensor nodes and edge routers.The node data is sent to the monitoring system on severs through the edge routers and Internet,to achieve the dynamic monitoring of ocean data.Experiments show that the system has the advantages of easy network construction,long transmission distance,and low cost and power consumption.

Key words: CC1310, IPv6, Marine environmental monitoring, Wireless sensor network

CLC Number: 

  • TP393
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