International Journal of Frontiers in Engineering Technology, 2023, 5(10); doi: 10.25236/IJFET.2023.051006.
Qingliang Guo, Fangyu Wu, Chao Zhang
School of Physics and Electronic Engineering, Taishan University, Tai’an, 271000, China
This project designs a new type of marine pollution and removal device. It is mainly used to monitor plastic, fishing nets and other garbage floating in the ocean. The device uses a metal shell and adopts a streamlined design, which is conducive to activities in seawater. It is equipped with a microwave radiometer, which passively receives microwave radiation from various objects to monitor all kinds of garbage or data existing in the ocean, and can transmit information to the Internet by using Internet of Things communication to achieve the function of monitoring the marine environment. When it detects that there is a lot of garbage in the sea area, it can send the real-time location to inform the marine department to send ships to clean it up in time. At the same time, it is equipped with infrared module and tracking to prevent collision with rocks and marine life. At the same time, it can be located by Beidou navigation for real-time tracking, so as to prevent the device from being recycled in time after an accident, thus bringing pollution to the ocean.
Marine environmental monitoring, marine pollution prevention, microwave radiometer, Internet of Things, STM32, LoRa wireless transmission
Qingliang Guo, Fangyu Wu, Chao Zhang. Marine environment monitoring device based on artificial intelligence. International Journal of Frontiers in Engineering Technology (2023), Vol. 5, Issue 10: 34-37. https://doi.org/10.25236/IJFET.2023.051006.
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