Affiliation:
1. Institute of Geospatial Information, Information Engineering University, Zhengzhou 450001, China
Abstract
The division of urban functional zones is crucial for understanding urban characteristics and aiding in urban management and planning. Traditional methods, like dividing based on blocks and grids, are insufficient for modern demands. To address this, a knowledge-graph-supported method for building functional category division is proposed. Firstly, the associations between points of interest (POI) and buildings are established using triangulation and buffer zones. Then, a knowledge graph of buildings is constructed through entity and relationship extraction. A functional category classification model supported by the Z-score is designed using the semantic characterizations of surrounding POIs for inference rules. The results demonstrate high accuracy in building functional category division, supporting the refinement and intelligent expression of urban functional zones for urban construction, planning, and management.
Funder
The National Natural Science Foundation of China
Key Laboratory of Smart Earth
Reference52 articles.
1. Krier, L. (1998). Architecture: Choice or Fate, Papadakis Publisher.
2. Theories and Models of Functional Zoning in Urban Space;Sorin;Rev. Manag. Comp. Int.,2020
3. Classification of Urban Functional Areas by Convolution Neural Network Recognition Combined with Sliding Window and Semantic Reasoning;Wang;Geomat. Inf. Sci. Wuhan Univ.,2023
4. Revealing Urban Traffic Demand by Constructing Dynamic Networks With Taxi Trajectory Data;Zhang;IEEE Access,2020
5. Land use efficiency of functional urban areas: Global pattern and evolution of development trajectories;Schiavina;Habitat Int.,2022