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Water Pollution Prevention and Control Project, 2021, 2(2); doi: 10.38007/WPPCP.2021.020206.

Exploration on Water Pollution Cloud Monitoring Method Based on Spectral Method

Author(s)

Bulychev Nikolay

Corresponding Author:
Bulychev Nikolay
Affiliation(s)

Tech Univ Cluj Napoca, Cluj Napoca 400114, Romania

Abstract

The rapid development of industry, construction and agriculture has played a huge role in promoting social and economic development, but also brought water pollution. The decline in the quality of water resources poses a threat to people’s water safety. To ensure the quality and safety of water resources, it is necessary to strengthen the monitoring and control of water resources. In this case, it is of great significance to study an efficient water pollution monitoring method for water pollution control. Based on this, this paper proposed a method of water pollution cloud monitoring through the study of water pollution monitoring, that is, to establish a water pollution cloud monitoring system based on spectral method. At the same time, this paper drew the following conclusions through the research of cloud monitoring system: the average absolute error of the new water pollution cloud monitoring system was 3.28 lower than that of the traditional water pollution monitoring system; the mean square error of the new water pollution cloud monitoring system was 22.17 lower than that of the traditional water pollution monitoring system; the water pollution cloud monitoring system proposed in this paper has better monitoring effect than the traditional water pollution monitoring system. In addition, experts in water pollution monitoring technology also have high evaluation scores for water pollution cloud monitoring system. The water pollution cloud monitoring system based on spectral method has certain practical value.

Keywords

Water Pollution, Cloud Monitoring, Spectroscopic Detection, Absolute Error Average, Mean Squared Error Value

Cite This Paper

Bulychev Nikolay. Exploration on Water Pollution Cloud Monitoring Method Based on Spectral Method. Water Pollution Prevention and Control Project (2021), Vol. 2, Issue 2: 53-62. https://doi.org/10.38007/WPPCP.2021.020206.

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