Computational Optimisation of Urban Design Models: A Systematic Literature Review

J. Tay, F. P. Ortner, Thomas Wortmann, Elif Esra Aydin
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Abstract

The densification of urban spaces globally has contributed to a need for design tools supporting the planning of more sustainable, efficient, and liveable cities. Urban Design Optimisation (UDO) responds to this challenge by providing a means to explore many design solutions for a district, evaluate multiple objectives, and make informed selections from many Pareto-efficient solutions. UDO distinguishes itself from other forms of design optimisation by addressing the challenges of incorporating a wide range of planning goals, managing the complex interactions among various urban datasets, and considering the social–technical aspects of urban planning involving multiple stakeholders. Previous reviews focusing on specific topics within UDO do not sufficiently address these challenges. This PRISMA systematic literature review provides an overview of research on topics related to UDO from 2012 to 2022, with articles analysed across seven descriptive categories. This paper presents a discussion on the state-of-the-art and identified gaps present in each of the seven categories. Finally, this paper argues that additional research to improve the socio-technical understanding and usability of UDO would require: (i) methods of optimisation across multiple models, (ii) interfaces that address a multiplicity of stakeholders, (iii) exploration of frameworks for scenario building and backcasting, and (iv) advancing AI applications for UDO, including generalizable surrogates and user preference learning.
城市设计模型的计算优化:系统性文献综述
全球城市空间的密集化促使人们需要设计工具来支持更可持续、更高效、更宜居的城市规划。城市设计优化(UDO)正是为了应对这一挑战,提供了一种方法来探索一个地区的多种设计方案,评估多种目标,并从众多帕累托效率方案中做出明智的选择。UDO 有别于其他形式的设计优化,它解决了纳入广泛的规划目标、管理各种城市数据集之间的复杂互动以及考虑涉及多个利益相关者的城市规划的社会技术方面的挑战。以往针对《城市设计与优化》中特定主题的综述并未充分应对这些挑战。本 PRISMA 系统性文献综述概述了 2012 年至 2022 年有关 UDO 相关主题的研究情况,并对七类描述性文章进行了分析。本文讨论了七个类别中每个类别的最新研究成果和发现的差距。最后,本文认为,要开展更多的研究来提高社会-技术对《未定义的任务》的理解和可用性,就需要(i) 跨多个模型的优化方法,(ii) 针对多个利益相关者的界面,(iii) 探索情景构建和反向预测的框架,以及 (iv) 推进人工智能在 UDO 中的应用,包括可通用的代理和用户偏好学习。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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