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Reimagining City Configuration: Automated Urban Planning via Adversarial Learning

Published: 13 November 2020 Publication History

Abstract

Urban planning refers to the efforts of designing land-use configurations. Effective urban planning can help to mitigate the operational and social vulnerability of a urban system, such as high tax, crimes, traffic congestion and accidents, pollution, depression, and anxiety. Due to the high complexity of urban systems, such tasks are mostly completed by professional planners. But, human planners take longer time. The recent advance of deep learning motivates us to ask: can machines learn at a human capability to automatically and quickly calculate land-use configuration, so human planners can finally adjust machine-generated plans for specific needs? To this end, we formulate the automated urban planning problem into a task of learning to configure land-uses, given the surrounding spatial contexts. To set up the task, we define a land-use configuration as a longitude-latitude-channel tensor, where each channel is a category of POIs and the value of an entry is the number of POIs. The objective is then to propose an adversarial learning framework that can automatically generate such tensor for an unplanned area. In particular, we first characterize the contexts of surrounding areas of an unplanned area by learning representations from spatial graphs using geographic and human mobility data. Second, we combine each unplanned area and its surrounding context representation as a tuple, and categorize all the tuples into positive (well-planned areas) and negative samples (poorly-planned areas). Third, we develop an adversarial land-use configuration approach, where the surrounding context representation is fed into a generator to generate a land-use configuration, and a discriminator learns to distinguish among positive and negative samples. Finally, we devise two new measurements to evaluate the quality of land-use configurations and present extensive experiment and visualization results to demonstrate the effectiveness of our method.

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  • (2024)Land use and meteorological influences on dengue transmission dynamics in Dhaka city, BangladeshBulletin of the National Research Centre10.1186/s42269-024-01188-048:1Online publication date: 19-Mar-2024
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  • (2024)Fluid Grey 2: How Well Does Generative Adversarial Networks Learn Deeper Topology Structure in Architecture That Matches Images?Journal of Building Engineering10.1016/j.jobe.2024.111220(111220)Online publication date: Nov-2024
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    cover image ACM Conferences
    SIGSPATIAL '20: Proceedings of the 28th International Conference on Advances in Geographic Information Systems
    November 2020
    687 pages
    ISBN:9781450380195
    DOI:10.1145/3397536
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    Publication History

    Published: 13 November 2020

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    Author Tags

    1. generative adversarial networks
    2. graph neural networks
    3. representation learning
    4. urban planning

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    Cited By

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    • (2024)Land use and meteorological influences on dengue transmission dynamics in Dhaka city, BangladeshBulletin of the National Research Centre10.1186/s42269-024-01188-048:1Online publication date: 19-Mar-2024
    • (2024)A Survey of Machine Learning for Urban Decision Making: Applications in Planning, Transportation, and HealthcareACM Computing Surveys10.1145/369598657:4(1-41)Online publication date: 22-Nov-2024
    • (2024)Fluid Grey 2: How Well Does Generative Adversarial Networks Learn Deeper Topology Structure in Architecture That Matches Images?Journal of Building Engineering10.1016/j.jobe.2024.111220(111220)Online publication date: Nov-2024
    • (2024)Empowering Scenario Planning with Artificial Intelligence: A Perspective on Building Smart and Resilient CitiesEngineering10.1016/j.eng.2024.06.01243(272-283)Online publication date: Dec-2024
    • (2024)Towards effective urban region-of-interest demand modeling via graph representation learningData Mining and Knowledge Discovery10.1007/s10618-024-01049-438:6(3503-3530)Online publication date: 1-Nov-2024
    • (2023)Massive Trajectory Data Based on Patterns of LifeProceedings of the 31st ACM International Conference on Advances in Geographic Information Systems10.1145/3589132.3625592(1-4)Online publication date: 13-Nov-2023
    • (2023)UrbanKG: An Urban Knowledge Graph SystemACM Transactions on Intelligent Systems and Technology10.1145/358857714:4(1-25)Online publication date: 8-May-2023
    • (2023)Road Planning for Slums via Deep Reinforcement LearningProceedings of the 29th ACM SIGKDD Conference on Knowledge Discovery and Data Mining10.1145/3580305.3599901(5695-5706)Online publication date: 6-Aug-2023
    • (2023)Automated Urban Planning for Reimagining City Configuration via Adversarial Learning: Quantification, Generation, and EvaluationACM Transactions on Spatial Algorithms and Systems10.1145/35243029:1(1-24)Online publication date: 17-Jan-2023
    • (2023)Spatial planning of urban communities via deep reinforcement learningNature Computational Science10.1038/s43588-023-00503-53:9(748-762)Online publication date: 11-Sep-2023
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