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Water Pollution Prevention and Control Project, 2022, 3(1); doi: 10.38007/WPPCP.2022.030105.

Water Pollution Early Warning Method Based on Cloud Platform

Author(s)

Hartwig Andrea

Corresponding Author:
Hartwig Andrea
Affiliation(s)

Anadolu University, Turkey

Abstract

In order to meet the actual needs of environmental emergency management informatization, and to deal with the real-time nature of accidents and the in-depth treatment of pollution accidents in water pollution emergencies, this paper used cloud computing technology and mobile communication platform as the communication transmission network to build a cloud-based architecture, and proposed a cloud-based method for water pollution emergencies. Many researchers have provided new ideas for the research of water pollution early warning methods based on cloud platform, which is the research direction and basis of this paper. This paper analyzed the research of water pollution early warning methods, and carried out academic research and summary on the monitoring technologies commonly used in water pollution early warning methods. Then, an algorithm model was established and relevant algorithms were proposed to provide theoretical basis for the research of water pollution early warning methods based on cloud platform. At the end of the article, the simulation experiment was carried out, and the experiment was summarized and discussed. The accuracy of the early warning system for two cities in a certain region was analyzed, and the water quality before and after the use of City Y was discussed. Finally, the difference between the reference values of dissolved oxygen, turbidity and dissolved solids before and after the use of the city was 3, while the difference between the reference values of total bacterial count before and after the use of the city was 5. According to the description of the above data, the water pollution early warning system established by City Y based on the cloud platform is conducive to giving play to its advantages in water quality monitoring and helping sewage treatment points to carry out accurate early warning. At the same time, with the in-depth research of cloud platform, the application research of water pollution early warning methods is also facing new opportunities and challenges.

Keywords

Early Warning Methods, Water Pollution, Cloud Platform, Water Quality

Cite This Paper

Hartwig Andrea. Water Pollution Early Warning Method Based on Cloud Platform. Water Pollution Prevention and Control Project (2022), Vol. 3, Issue 1: 42-52. https://doi.org/10.38007/WPPCP.2022.030105.

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