在资源有限的情况下优先考虑城市绿地

IF 12.4 Q1 ENVIRONMENTAL SCIENCES Resources Environment and Sustainability Pub Date : 2024-02-06 DOI:10.1016/j.resenv.2024.100150
Mihir Rambhia , Rebekka Volk , Behzad Rismanchi , Stephan Winter , Frank Schultmann
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引用次数: 0

摘要

城市绿地管理需要多维度的循证方法,以有效平衡社会、环境和经济目标。目前,城市管理者缺乏以数据为导向的框架,无法在受限情况下分配资源,从而导致主观决策。现有文献缺乏管理城市规模绿地的客观解决方案,而每个绿地都有其独特的特点。另一个挑战是如何处理城市应用所需的不同空间尺度。本研究提出了一种基于目标编程的新型城市绿地管理模型,该模型包含多个效益目标,如保护树木中的固碳、提高公园的质量和可达性,以及处理对水和人员等可用资源的需求限制。我们在柏林和墨尔本这两个条件各异的城市演示了所提出的方法,并对各种效益指标(如分配的绿地单位、消耗的资源和实现的目标)进行了评估。该模型对不同空间尺度的资源分配决策和目标进行了分析。当以城市级别的目标在分区范围内分配资源时,可观察到最高的效益实现率和资源分配率。另外,在区一级设定目标可使资源分配更加均匀,但代价是整体效益降低。结果表明,建议的方法增加了总收益,同时有效平衡了相互冲突的目标和制约因素。此外,该方法还能将城市的偏好和优先事项纳入其中,为各种城市应用中的知情决策提供可扩展的解决方案。根据数据的可用性,这种方法可以扩展到其他城市,包括所需的额外效益和资源限制。
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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Prioritizing urban green spaces in resource constrained scenarios

Urban Green Space management requires a multi-dimensional, evidence-based approach to effectively balance social, environmental, and economic objectives. City administrators currently lack a data-driven framework for allocating resources during constraint scenarios, leading to subjective decisions. Existing literature lacks objective solutions for managing city-scale green spaces, each with its distinct characteristics. Another challenge is handling varied spatial scales required for urban applications. This study proposes a novel goal programming-based model for urban green space management wherein multiple benefit objectives, such as conserving sequestered carbon in trees and enhancing quality and accessibility of parks, as well as handling demand constraints on available resources like water and personnel, are included. The proposed method was demonstrated in two cities with diverse conditions, Berlin and Melbourne, and evaluated on various benefit metrics, such as allocated green space units, resources consumed, and goals achieved. The model was analyzed with resource allocation decisions and goals at different spatial scales. The highest benefit achievement and resource allocation were observed when resources were allocated at the sub-district scale with a city-level target. Alternatively, setting targets at the district level provided a more even resource distribution; however, at the cost of reduced overall benefits. Results show that the proposed method increased the total benefits gained while effectively balancing conflicting goals and constraints. Additionally, it allows incorporating the city’s preferences and priorities, offering a scalable solution for informed decision-making in varied urban applications. Depending on data availability, this approach can be scaled to other cities, including additional benefits and resource constraints as required.

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来源期刊
Resources Environment and Sustainability
Resources Environment and Sustainability Environmental Science-Environmental Science (miscellaneous)
CiteScore
15.10
自引率
0.00%
发文量
41
审稿时长
33 days
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