探索使用实时空间德尔菲和广义运算网络确定主动移动路径位置的混合模型。

IF 4.3 3区 工程技术 European Transport Research Review Pub Date : 2024-01-01 Epub Date: 2024-11-07 DOI:10.1186/s12544-024-00685-7
Yuri Calleo, Nadia Giuffrida, Francesco Pilla
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引用次数: 0

摘要

空间规划过程被认为是一个极其复杂的系统,因为它由相互关联和相互作用的不同变量组成。要有效解决这种空间复杂性问题,就必须采用多学科方法,因为统一的方法可能被证明是不够的。具体而言,在城市规划中,优先考虑自行车道、自行车站点和步行区,对于功能性交通基础设施的重要性与日俱增。这种方法可以改善空气质量、减少排放,并通过体育锻炼和事故预防来提高公众健康和安全,从而改善城市面貌。然而,实施这些变革需要精心规划、社区参与和利益相关者的合作。本文提出了一种混合模型,采用实时空间德尔菲和生成式对抗网络(GANs)来确定自行车道、自行车站点和步行区的最佳位置。实时空间德尔菲法是传统德尔菲法的改进版,它结合了实时反馈和小组反应的实时可视化,旨在实现区域内专家意见的趋同。然而,这些判断是一种在现实中不可见的空间表征,随着人工智能模型的普及,不同的实现方式可以为规划过程提供支持,例如使用 GANs。在这种情况下,可以通过采用专家判断得出的已有位置图像来利用 GANs,以说明拟议干预措施的视觉影响。为了证明混合模型的有效性,我们将其应用于都柏林市。结果展示了该方法如何帮助利益相关者、政策制定者和市民将拟议的变化可视化,并更精确地衡量其潜在影响。
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Exploring hybrid models for identifying locations for active mobility pathways using real-time spatial Delphi and GANs.

The spatial planning process is considered an extremely complex system, as it comprises different variables that interrelate and interact with each other. Effectively addressing this spatial complexity necessitates a multidisciplinary approach, as unified methodologies may prove insufficient. Specifically, in urban planning, it is increasingly crucial to prioritize bike lanes, bike stations, and pedestrian zones, for functional transportation infrastructures. This approach can enhance cities by improving air quality, reducing emissions, and boosting public health and safety through physical activity and accident prevention. However, implementing these changes requires careful planning, community engagement, and stakeholder collaboration. This paper proposes a hybrid model for identifying optimal locations for bike lanes, bike stations, and pedestrian zones adopting Real-Time Spatial Delphi and Generative Adversarial Networks (GANs). The Real-Time Spatial Delphi is a modified version of the traditional Delphi method that incorporates real-time feedback and visualization of group response in real-time, aiming to achieve a convergence of opinions among experts on the territory. Nevertheless, these judgments are a spatial representation not visible in reality, and with the spread of artificial intelligence models, different implementations can support the planning process, such as the use of GANs. In this case, GANs can be exploited by adopting pre-existing location images resulting from experts' judgments to illustrate the proposed intervention's visual impact. To demonstrate the effectiveness of our hybrid model, we apply it to the city of Dublin. The results showcased how the method helps stakeholders, policymakers, and citizens in visualizing the proposed changes and gauging their potential impact with greater precision.

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来源期刊
European Transport Research Review
European Transport Research Review Engineering-Mechanical Engineering
CiteScore
9.70
自引率
4.70%
发文量
49
期刊介绍: European Transport Research Review (ETRR) is a peer-reviewed open access journal publishing original high-quality scholarly research and developments in areas related to transportation science, technologies, policy and practice. Established in 2008 by the European Conference of Transport Research Institutes (ECTRI), the Journal provides researchers and practitioners around the world with an authoritative forum for the dissemination and critical discussion of new ideas and methodologies that originate in, or are of special interest to, the European transport research community. The journal is unique in its field, as it covers all modes of transport and addresses both the engineering and the social science perspective, offering a truly multidisciplinary platform for researchers, practitioners, engineers and policymakers. ETRR is aimed at a readership including researchers, practitioners in the design and operation of transportation systems, and policymakers at the international, national, regional and local levels.
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