Mapping soft densification: a geospatial approach for identifying residential infill potentials

Q1 Engineering Buildings & cities Pub Date : 2023-05-25 DOI:10.5334/bc.295
Denise Ehrhardt, Martin Behnisch, Mathias Jehling, M. Michaeli
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引用次数: 3

Abstract

Infill development policies have been widely adopted as strategies to reduce urban sprawl and to promote sustainable urban transformation. However, little empirical data are available to analyse infill processes and to facilitate building activity on infill potentials. This is especially true for small-scale residential infill, which often takes place on vacant or underused lots as soft densification. To address this issue, a geospatial method is presented that enables automatic detection of vacant lots for large areas. Cadastral data are used to analyse spatio-temporal development for the period 2011–21 in a German study area, containing large cites as well as rural municipalities. The results show that every fourth vacant lot was mobilised since 2011. However, additional vacant lots emerged in rural areas as new residential development areas are not fully built-up, resulting in a net increase of vacant lots. Although the quantity of vacant lot areas in 2021 suggests a high potential for residential infill, the main development on these infill sites is expected to promote additional single-family housing rather than more dense structures. Practice relevance Automatic identification and monitoring of infill potentials and development are important both for policymaking and for local planning practitioners. For small municipalities with little financial capacities, the approach can provide an overview of their vacant lots and can serve as a basis for strategic planning decisions. For the regional or national level, a yearly monitoring schedule can be established at little cost. Although the approach proves to be robust regarding its precision and is promising for a nationwide application, the data availability for the whole of Germany is awaited and the method needs to be optimised to implement the workflow in practice.
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绘制软密度图:识别住宅填充潜力的地理空间方法
Infill发展政策已被广泛采用,作为减少城市蔓延和促进可持续城市转型的战略。然而,很少有经验数据可用于分析填充过程和促进填充潜力的建筑活动。小型住宅填充尤其如此,通常在空置或未充分利用的地块上进行软加密。为了解决这个问题,提出了一种地理空间方法,可以自动检测大面积的空地。地籍数据用于分析德国研究区2011-2021年期间的时空发展,该研究区包括大城市和农村城市。结果显示,自2011年以来,每四分之一的空地都被动员起来。然而,由于新的住宅开发区尚未完全建成,农村地区出现了更多的空地,导致空地净增加。尽管2021年的空地面积表明,住宅填充的潜力很大,但这些填充场地的主要开发预计将促进更多的独栋住房,而不是更密集的结构。实践相关性填充潜力和发展的自动识别和监测对政策制定和地方规划从业者都很重要。对于财政能力较弱的小城市来说,这种方法可以提供其空地的概览,并可以作为战略规划决策的基础。对于区域或国家一级,可以以很低的成本制定年度监测时间表。尽管该方法在精度方面被证明是稳健的,并有望在全国范围内应用,但整个德国的数据可用性仍在等待中,需要对该方法进行优化,以在实践中实施工作流程。
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来源期刊
CiteScore
5.40
自引率
0.00%
发文量
0
审稿时长
25 weeks
期刊最新文献
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