RS-SVM Machine Learning Approach Driven by Case Data for Selecting Urban Drainage Network Restoration Scheme

Author:

Jiang Li1,Geng Zheng1,Gu Dongxiao1,Guo Shuai2,Huang Rongmin3,Cheng Haoke3,Zhu Kaixuan4

Affiliation:

1. School of Management, Hefei University of Technology, Hefei 230002, China

2. College of Civil Engineering, Hefei University of Technology, Hefei 230002, China

3. Yangtze Ecology and Environment Co.,Ltd., Wuhan 430062, China

4. Luddy School of Intelligent System and Engineering, Indianan university, Bloomington, Indiana 47404, USA

Abstract

ABSTRACT Urban drainage pipe network is the backbone of urban drainage, flood control and water pollution prevention, and is also an essential symbol to measure the level of urban modernization. A large number of underground drainage pipe networks in aged urban areas have been laid for a long time and have reached or practically reached the service age. The repair of drainage pipe networks has attracted extensive attention from all walks of life. Since the Ministry of ecological environment and the national development and Reform Commission jointly issued the action plan for the Yangtze River Protection and restoration in 2019, various provinces in the Yangtze River Basin, such as Anhui, Jiangxi and Hunan, have extensively carried out PPP projects for urban pipeline restoration, in order to improve the quality and efficiency of sewage treatment. Based on the management practice of urban pipe network restoration project in Wuhu City, Anhui Province, this paper analyzes the problems of lengthy construction period and repeated operation caused by the mismatch between the design schedule of the restoration scheme and the construction schedule of the pipe network restoration in the existing project management mode, and proposes a model of urban drainage pipe network restoration scheme selection based on the improved support vector machine. The validity and feasibility of the model are analyzed and verified by collecting the data in the project practice. The research results show that the model has a favorable effect on the selection of urban drainage pipeline restoration schemes, and its accuracy can reach 90%. The research results can provide method guidance and technical support for the rapid decision-making of urban drainage pipeline restoration projects.

Publisher

MIT Press

Subject

Artificial Intelligence,Library and Information Sciences,Computer Science Applications,Information Systems

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