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Water Pollution Prevention and Control Project, 2022, 3(1); doi: 10.38007/WPPCP.2022.030104.

Construction of Road Drainage System Based on Remote Sensing Technology and Support Vector Machine Algorithm

Author(s)

Bhre Wangsa Lenggana

Corresponding Author:
Bhre Wangsa Lenggana
Affiliation(s)

Taif University, Saudi Arabia

Abstract

The problem of water pollution is not just a regional problem. Many local departments are dealing with this problem. With the acceleration of urbanization, there are more and more people in cities, and more and more urban domestic sewage has gradually destroyed its original balance. The problem of urban water pollution has also received more and more attention. The quality of the sewage system has a great impact on the environment, life, economy, health and other aspects. Many researchers have provided new ideas for the construction and research of road sewage system, which is the research direction and basis of this paper. This paper analyzed the significance of building road sewage system, and then carried out academic research and summary on the construction of road sewage system and the application of road sewage system based on remote sensing technology and support vector machine algorithm. Then an algorithm model was established, and relevant algorithms were proposed to provide a theoretical basis for the construction of road sewage system based on remote sensing technology and support vector machine algorithm. At the end of the article, the simulation experiment was carried out, and the experiment was summarized and discussed. According to the satisfaction of citizens in the four cities of Y region with the main road and auxiliary road sewage system, the satisfaction of the main road sewage system in cities A and D has reached more than 90, while the satisfaction of city B was only 87. Different from the main road sewage system, the satisfaction of citizens of the auxiliary road sewage system in the four cities was below 90. At the same time, with the in-depth research of fusion remote sensing technology and support vector machine algorithm, the application research of road sewage system is also facing new opportunities and challenges.

Keywords

Road Sewage Discharge System, Remote Sensing Technology, Support Vector Machine, Sewage Treatment Plant

Cite This Paper

Bhre Wangsa Lenggana. Construction of Road Drainage System Based on Remote Sensing Technology and Support Vector Machine Algorithm. Water Pollution Prevention and Control Project (2022), Vol. 3, Issue 1: 32-41. https://doi.org/10.38007/WPPCP.2022.030104.

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