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A Study on the Design and Implementation of Fine Dust Measurement LED Using Drone

  • Park, Jong-Youel (Department of Smart IT, Baewha Women's University) ;
  • Ko, Chang-Bae (Department of Business Administration, Kyungdong University)
  • Received : 2020.08.10
  • Accepted : 2020.08.18
  • Published : 2020.11.30

Abstract

Researchers recognized air pollution changes causing diseases and difficulties in living due to environmental pollution following various human activities, and have studied how to avoid fine dust harmful to the human respiratory system to be healthy. To this end, Arduino is used to equip fine dust level sensors in drones to measure the fine dust levels, visualize the measurements with LED indicator colors depending on the measurements to inform users of the danger of fine dust, and use the benefits of drones to specify dangerous fine dust zones and measure the fine dust levels. Users can see the changes depending on the fine dust levels in real time with the LED indicators. This will contributes to measuring fine dust levels easily in dangerous areas. Mission Planner (ArduPilot) is used to set up the GPS of drone, and store the data from the dust sensor as contents. This study aims to establish a method for improving the environment to measure fine dust levels with drones with LED indicators for fine dust, and reduce fine dust.

Keywords

References

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