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Intelligent Generation and Analysis of the Municipal Road Construction Scheme Based on the KNN Algorithm

Author

Listed:
  • Ren Chenzhong
  • Kan Wenliang
  • Zhou Taihua
  • Su Dongdong
  • Geng YongLi
  • Wu Wenzheng
  • Wenlong Hang

Abstract

The construction of municipal road engineering is a complex system engineering, and its internal components are interconnected and mutually restricted, and the relationship is intricate. The quality of its construction plan directly affects the realization of the project's quality, safety, environment, progress, cost, and other goals, and the project construction plan occupies an important position in the construction of the project. The selection of construction plans for municipal road projects involves a wide range of areas. According to the characteristics of specific municipal road engineering projects, it is very important to establish a scientific construction scheme intelligent generation model and select the optimal construction scheme suitable for the project from many feasible construction schemes, which has very important theoretical research value and practical application value. After analyzing the knowledge characteristics of road construction technology and the content of road construction schemes, this study decomposes the knowledge of road construction schemes into two parts: case characteristics and solutions. Then, according to the needs of case retrieval technology, the data storage form of each subdivision index is proposed and the value range is explained, and a complete structure form of the road construction scheme case database is formed. Combined with actual engineering cases, the feasibility and applicability of the intelligent generation method of the road construction scheme based on the KNN algorithm is confirmed, which provides a new idea for the automation of road construction scheme preparation and the improvement of the scheme application effect.

Suggested Citation

  • Ren Chenzhong & Kan Wenliang & Zhou Taihua & Su Dongdong & Geng YongLi & Wu Wenzheng & Wenlong Hang, 2022. "Intelligent Generation and Analysis of the Municipal Road Construction Scheme Based on the KNN Algorithm," Mathematical Problems in Engineering, Hindawi, vol. 2022, pages 1-15, September.
  • Handle: RePEc:hin:jnlmpe:8752870
    DOI: 10.1155/2022/8752870
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