Current Situation of China's Marine Environment and Its Intelligent Monitoring Development Outlook
DOI:
https://doi.org/10.54097/v2rmd815Keywords:
Marine Environment Monitoring; Big Data; Intelligence; 3S Technology; Artificial Intelligence; Internet of Things (IoT).Abstract
In recent years, the quality of China's marine environment has improved, and the area of the sea area that meets the Seawater Quality Standard Grade I has increased significantly, but there is still a large area of seriously polluted water in the eastern coastal area, and disasters such as red tide and green tide still occur from time to time. In view of China's marine pollution problems, the study discusses the necessity and superiority of using artificial intelligence, machine learning, big data analysis and Internet of Things technology combined with intelligent sensor networks, automated monitoring equipment and remote data transmission systems and other advanced technological means to monitor and protect the environment of the ocean, and analyses and discusses the progress of research in related fields. At the meantime, we discusses the technical bottlenecks and solutions faced by the current intelligent monitoring of the marine environment. Finally, we discusses the technical bottlenecks and solutions to the current intelligent marine environmental monitoring.
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