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Artificial Life and Robotics

, Volume 24, Issue 4, pp 471–479 | Cite as

Wireless sensor monitoring system of Canadian Poplar Forests based on Internet of Things

  • Xu YunjieEmail author
Original Article
  • 53 Downloads

Abstract

In the current ecological measurement of commonweal forest, there are many problems such as high intensity of operation and continuous measurement of environmental factors. In this paper, the technology of Internet of Things is applied to the automatic measurement of ecological cultivation of public-welfare forest, and the structure of automatic monitoring system of ecological cultivation based on Internet of Things is put forward. Implementation in production practice: according to the basic flow of the ecological cultivation of commonweal forest, the cultivation environment of the ecological cultivation link of the Canadian Poplar Forests was analyzed. The environmental factors influencing the growth of trees in the Canadian Poplar Forests were summarized and the best environment for the ecological cultivation was established. The preliminary experiments show that the system has the advantages of low power consumption, flexible networking, scalable and friendly human–machine interface, and can meet the application requirements of ecological cultivation information monitoring of Canadian Poplar Forests.

Keywords

Canadian Poplar Forests Internet of Things (IOT) Monitoring Wireless sensor 

Notes

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Copyright information

© International Society of Artificial Life and Robotics (ISAROB) 2019

Authors and Affiliations

  1. 1.School of TechnologyHuzhou UniversityHuzhouChina

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