Leveraging generative AI for urban digital twins: a scoping review on the autonomous generation of urban data, scenarios, designs, and 3D city models for smart city advancement

被引:0
|
作者
Haowen Xu [1 ]
Femi Omitaomu [1 ]
Soheil Sabri [2 ]
Sisi Zlatanova [3 ]
Xiao Li [4 ]
Yongze Song [5 ]
机构
[1] Computational Urban Sciences Group,
[2] Oak Ridge National Laboratory,undefined
[3] Urban Digital Twin Lab,undefined
[4] School of Modeling,undefined
[5] Simulation,undefined
[6] and Training,undefined
[7] University of Central Florida,undefined
[8] The School of Built Environment,undefined
[9] UNSW,undefined
[10] Transport Studies Unit,undefined
[11] University of Oxford,undefined
[12] School of Design and the Built Environment,undefined
[13] Curtin University,undefined
来源
Urban Informatics | / 3卷 / 1期
关键词
Generative artificial intelligence; Smart city; Urban digital twin; 3D city modeling; Urban planning; Deep learning;
D O I
10.1007/s44212-024-00060-w
中图分类号
学科分类号
摘要
The digital transformation of modern cities by integrating advanced information, communication, and computing technologies has marked the epoch of data-driven smart city applications for efficient and sustainable urban management. Despite their effectiveness, these applications often rely on massive amounts of high-dimensional and multi-domain data for monitoring and characterizing different urban sub-systems, presenting challenges in application areas that are limited by data quality and availability, as well as costly efforts for generating urban scenarios and design alternatives. As an emerging research area in deep learning, Generative Artificial Intelligence (GenAI) models have demonstrated their unique values in content generation. This paper aims to explore the innovative integration of GenAI techniques and urban digital twins to address challenges in the planning and management of built environments with focuses on various urban sub-systems, such as transportation, energy, water, and building and infrastructure. The survey starts with the introduction of cutting-edge generative AI models, such as the Generative Adversarial Networks (GAN), Variational Autoencoders (VAEs), Generative Pre-trained Transformer (GPT), followed by a scoping review of the existing urban science applications that leverage the intelligent and autonomous capability of these techniques to facilitate the research, operations, and management of critical urban subsystems, as well as the holistic planning and design of the built environment. Based on the review, we discuss potential opportunities and technical strategies that integrate GenAI models into the next-generation urban digital twins for more intelligent, scalable, and automated smart city development and management.
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