Mapping Street Patterns with Network Science and Supervised Machine Learning

被引:1
|
作者
Wu, Cai [1 ]
Wang, Yanwen [1 ]
Wang, Jiong [1 ]
Kraak, Menno-Jan [1 ]
Wang, Mingshu [2 ]
机构
[1] Univ Twente, Fac Geoinformat Sci & Earth Observat ITC, NL-7522 NB Enschede, Netherlands
[2] Univ Glasgow, Sch Geog & Earth Sci, Glasgow G12 8QQ, Scotland
关键词
street pattern; urban spatial structure; urban morphology; machine learning; URBAN MORPHOLOGY; ACCESSIBILITY; SPACE; GROWTH;
D O I
10.3390/ijgi13040114
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
This study introduces a machine learning-based framework for mapping street patterns in urban morphology, offering an objective, scalable approach that transcends traditional methodologies. Focusing on six diverse cities, the research employed supervised machine learning to classify street networks into gridiron, organic, hybrid, and cul-de-sac patterns with the street-based local area (SLA) as the unit of analysis. Utilising quantitative street metrics and GIS, the study analysed the urban form through the random forest method, which reveals the predictive features of urban patterns and enables a deeper understanding of the spatial structures of cities. The findings showed distinctive spatial structures, such as ring formations and urban cores, indicating stages of urban development and socioeconomic narratives. It also showed that the unit of analysis has a major impact on the identification and study of street patterns. Concluding that machine learning is a critical tool in urban morphology, the research suggests that future studies should expand this framework to include more cities and urban elements. This would enhance the predictive modelling of urban growth and inform sustainable, human-centric urban planning. The implications of this study are significant for policymakers and urban planners seeking to harness data-driven insights for the development of cities.
引用
收藏
页数:15
相关论文
共 50 条
  • [1] Supervised Machine Learning in Detecting Patterns in Competitive Actions
    Valtonen, L.
    Makinen, S. J.
    Kirjavainen, J.
    2021 IEEE INTERNATIONAL CONFERENCE ON INDUSTRIAL ENGINEERING AND ENGINEERING MANAGEMENT (IEEE IEEM21), 2021, : 442 - 446
  • [2] A supervised machine learning approach to author disambiguation in the Web of Science
    Rehs, Andreas
    JOURNAL OF INFORMETRICS, 2021, 15 (03)
  • [3] A QUANTITATIVE ANALYSIS ON THE USE OF SUPERVISED MACHINE LEARNING IN EARTH SCIENCE
    Virts, Katrina
    Shirey, Ashlyn
    Priftis, George
    Ankur, Kumar
    Ramasubramanian, Muthukumaran
    Muhammad, Hassan
    Acharya, Ashish
    Ramachandran, Rahul
    IGARSS 2020 - 2020 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM, 2020, : 2252 - 2255
  • [4] Supervised prediction of production patterns using machine learning algorithms
    Kim, Jungyeon
    LINGUISTICS VANGUARD, 2024, 10 (01): : 629 - 640
  • [5] Identifying Student Learning Patterns with Semi-Supervised Machine Learning Models
    Matayoshi, Jeffrey
    Cosyn, Eric
    26TH INTERNATIONAL CONFERENCE ON COMPUTERS IN EDUCATION (ICCE 2018), 2018, : 11 - 20
  • [6] Cocrystal Discovery with Network Science and Machine Learning
    Devogelaer, J. J.
    Meekes, H.
    Tinnemans, P.
    Vlieg, E.
    De Gelder, R.
    ACTA CRYSTALLOGRAPHICA A-FOUNDATION AND ADVANCES, 2022, 78 : E224 - E224
  • [7] Mineral Prospectivity Mapping Using Semi-supervised Machine Learning
    Li, Quanke
    Chen, Guoxiong
    Wang, Detao
    MATHEMATICAL GEOSCIENCES, 2025, 57 (02) : 275 - 305
  • [8] Integration of hard and soft supervised machine learning for flood susceptibility mapping
    Andaryani, Soghra
    Nourani, Vahid
    Haghighi, Ali Torabi
    Keesstra, Saskia
    JOURNAL OF ENVIRONMENTAL MANAGEMENT, 2021, 291
  • [9] Supervised Machine Learning Techniques for Efficient Network Intrusion Detection
    Aboueata, Nada
    Alrasbi, Sara
    Erbad, Aiman
    Kassler, Andreas
    Bhamare, Deval
    2019 28TH INTERNATIONAL CONFERENCE ON COMPUTER COMMUNICATION AND NETWORKS (ICCCN), 2019,
  • [10] Generative tensor network classification model for supervised machine learning
    Sun, Zheng-Zhi
    Peng, Cheng
    Liu, Ding
    Ran, Shi-Ju
    Su, Gang
    PHYSICAL REVIEW B, 2020, 101 (07)