
A novel design of surveillance drone using Internet of Things with surface monitoring provisions
- 1 Department of Electronics and Communication Engineering, K.S.Rangasamy College of Technology Tiruchengode, India.
- 2 Department of Electronics and Communication Engineering, K.S.Rangasamy College of Technology Tiruchengode, India.
- 3 Department of Electronics and Communication Engineering, K.S.Rangasamy College of Technology Tiruchengode, India.
- 4 Department of Electronics and Communication Engineering, K.S.Rangasamy College of Technology Tiruchengode, India.
* Author to whom correspondence should be addressed.
Abstract
The Unmanned Aerial Vehicle (UAV) environmental monitoring system in an area is multipurpose and easy to use. With the use of targeted mobile networks and drone flight control, the relevant staff can effectively monitor regional temperature and humidity. This study draws on the author's previous expertise to outline the key points of a programme demonstration and system design, as well as to examine the software flow architecture of regional environmental monitoring. As a result of this work, users will be able to easily collect weather as well as other data by using a drone that can be controlled from an Android phone and flown to some faraway, inaccessible site. The mobile node MCU may receive commands from the WiFi module and relay them to the drone. The drone will be flown when the instructions have been sent via the IoT based NodeMCU module. From there, it will gather data via the network and communicate that information to the cloud database over WiFi. This setup has the potential to be implemented into a model for a weather prediction that can accurately foretell winds and temperatures in the immediate vicinity of the surface to an accuracy of 100 meters.
Keywords
unmanned aerial vehicle, AV, DHT11 Sensor, NodeMCU, Blynk app
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Cite this article
B.,M.G.;G.,S.;S.,J.;P.,K. (2023). A novel design of surveillance drone using Internet of Things with surface monitoring provisions. Applied and Computational Engineering,20,6-12.
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