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EDITORIAL article

Front. Built Environ.

Sec. Urban Science

Volume 11 - 2025 | doi: 10.3389/fbuil.2025.1726686

This article is part of the Research TopicIntelligence and Big Data for Sustainable Urban Built EnvironmentView all 8 articles

Editorial: Intelligence and Big Data for Sustainable Urban Built Environment

Provisionally accepted
  • 1Southeast University, Nanjing, China
  • 2Nanjing Tech University, Nanjing, China
  • 3University of the West of England, Bristol, United Kingdom

The final, formatted version of the article will be published soon.

As the global population is increasingly concentrated in urban areas, cities have become the centers of economic growth and cultural development, resulting in a series of complex and unexpected challenges. For instance, climate change is leading to more frequent and intense events, such as urban flooding and heatwaves, and high-density living generates more pollution and puts greater pressure on public health systems. Moreover, balancing development with environmental quality and cultural preservation is becoming more difficult. To address these challenges, a paradigm shift in urban management is emerging, from traditional, passive practices to active, data-driven strategies. This Research Topic compiles a series of studies that are leading this transformation and demonstrates how advanced digital technologies can help create more sustainable, resilient, and livable cities. This collection of articles explores the application of digital technologies in various areas and scales of urban management. A key focus is on the utilization of highresolution spatial technologies to monitor, assess, and manage environmental risks more efficiently and accurately. For example, Woo et al. ( 2024) developed a methodology using Unmanned Aerial Vehicles (UAVs) and Geographic Information Systems (GIS) to rapidly estimate flood areas and volumes in urban environment. By creating detailed 3D terrain models from aerial images, the proposed approach provides decision-makers with a valuable tool for urban disaster management by enabling them to access accurate and actionable data much faster than with traditional surveys or satellite images.Similarly, with the focus on advanced spatial data for sustainable urban management, Ezz et al. ( 2025) demonstrated the feasibility of using 3D GIS to preserve UNESCO World Heritage Sites in Saudi Arabia. By integrating historical records, building designs, and structural details into a single digital system, a comprehensive platform was built for planning conservation work, assessing risks, and supporting informed decision-making. underscores that urban resilience relies not only on environmental protection but also on the preservation of cultural heritage for future generations. In this mission, digital twin technologies have proven to be essential tools.In addition to environment monitoring and assessment, computational modeling and simulation are also key tools for designing healthier urban spaces. Wang, Yuen, and Wang (2025) investigated the effect of urban ventilation on mitigating the urban heat island and improving public health. To this end, a new hybrid grid method was developed for Computational Fluid Dynamics (CFD) simulations that effectively balances computational cost and accuracy. By using fewer grids, this method makes large-scale, detailed studies of urban airflow more practical. This advancement assists architects and planners in designing buildings and city layouts that enhance the natural ventilation.Qiao and Luo (2025) introduced a novel deep learning framework to analyze the complex, nonlinear demand for urban green spaces. Moving beyond single-indicator assessments, an autoencoder was employed to integrate environmental data, such as land surface temperature and CO2 concentration, with social indicators, such as population density. The findings revealed significant variations in demand for green space across different locations, providing a data-based tool to determine optimal locations for green infrastructure development. This work exemplifies the shift toward using artificial intelligence (AI) to better understand and address the multifaceted needs of both urban environments and their inhabitants.The power of digitization to create change extends beyond specific applications to the broader realms of economic policy and governance. Jiang, Li, and Xu (2025) examined the relationship between the digital economy and urban ecological development. Using an advanced double machine learning method with data from 282 Chinese cities, they proved strong evidence that the digital economy can improve ecological resilience and recovery. The analysis further revealed the mechanisms through which this occurs, namely, by promoting green innovation, enhancing environmental efficiency, and optimizing industrial structures. Similarly, Zhang et al. ( 2025) assessed the impact of industrial digitization on the synergistic reduction of pollution and carbon emissions. The findings confirmed that digitization has direct positive impacts and generates beneficial spatial spillover effects, promoting cleaner practices in neighboring regions by using more renewable energy and developing greener industrial processes.Finally, to bridge the gap between broad policy initiatives and real-life human behavior, Wang et al. (2025) introduced a mobile crowdsensing framework of "CrowdRadar", which is designed to assess the safety risks associated with green travel modes, such as cycling and walking. By leveraging mobile edge devices, computer vision, and deep learning, the developed system can detect high-risk behaviors in real time while protecting user privacy. The authors emphasized that a sustainable city must prioritize safety first and highlighted how citizen-centered data collection methods can provide detailed insights to help create urban settings that better support low-carbon transportation.In summary, the articles in this Research Topic provide a clear picture of the rapidly evolution of intelligent and digital technologies in urban studies. This collection shows that digital innovations are equipping us with the essential tools to address the challenges of urban growth, from drone mapping floodwaters to AI models that analyze park usage to digital economies that foster green growth and smartphones that help secure safer streets. Although creating sustainable and resilient cities is challenging, these studies in the collection demonstrate that big data and smart technologies can play a critical role in advancing this future transition.

Keywords: Urban Heat Island, urban air pollution, intelligent sensing, Low-carbon development, Sustainable built environment, Safety and health, big-data analytics, artificial intelligence

Received: 16 Oct 2025; Accepted: 20 Oct 2025.

Copyright: © 2025 Ren, ZHANG, Zhuang, Luo and Wang. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) or licensor are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.

* Correspondence: Junqi Wang, junqi_wang@seu.edu.cn

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