Modelling urban mixed land-use prediction using influence parameters

IF 0.7 Q3 GEOGRAPHY
GeoScape Pub Date : 2021-06-01 DOI:10.2478/geosc-2021-0006
P. Ghosh, P. Raval
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引用次数: 4

Abstract

Abstract Mixed land-use is a popular concept in urban planning due to its expected role in improving environmental sustainability as well as citizen’s quality of life. Land use planning and regulations are not stringent in many cities like those in India, and policies are liberal towards mixed land uses. In these cities, mixed land-uses are a natural phenomenon manifesting under various influencing parameters. However, for studies on mixed land-uses, these cities pose data insufficiency challenges, as vital comprehensive spatial information related to land-uses is not available. Moreover, there is no standardised methodology established to assess the spatial distribution of mixed land-uses at the city level. This research has developed a GIS-based model using Weighted Overlay Analysis to predict and visualise the probability of mixed land-use at the macro or city level for the case of Pune, India. The model uses the easily available spatial data of influencing parameters of mixed land-use as input for prediction instead of comprehensive real land-use data. The model is validated by comparing the predicted mixed land-use intensities with established indicators of mixed land-use for four neighbourhoods. It is found that parameters that influence mixed land-use such as connectivity, grain pattern, population density and access to amenities can be used to predict the probability of mixed land-use. Around 35 per cent of the city area of Pune has more than 0.67 probability of mixed land-use. The model can produce the probable mixed land-use distribution across the city and can be used to compute mixed land-use intensities for neighbourhoods. Highlights for public administration, management and planning: • Mixed land-use probability distribution for Pune City, India is generated using Weighted Overlay Analysis in GIS. • As vital spatial data of land-use was unavailable, the prediction model uses data of influencing parameters of mixed land-uses such as population density, connectivity, grain pattern and access to amenities. • The mixed land-use probabilities predicted can be used to compute mixed land-use intensities of neighbourhoods. It is validated by comparing with traditional mixed land-use indicators.
基于影响参数的城市混合土地利用预测模型
摘要混合土地利用是城市规划中的一个流行概念,因为它在提高环境可持续性和公民生活质量方面发挥着预期的作用。在像印度这样的许多城市,土地利用规划和法规并不严格,对混合土地利用的政策也很自由。在这些城市中,混合土地利用是在各种影响参数下表现出来的一种自然现象。然而,对于混合土地利用的研究,这些城市带来了数据不足的挑战,因为无法获得与土地利用相关的重要综合空间信息。此外,还没有建立标准化的方法来评估城市一级混合土地用途的空间分布。本研究开发了一个基于GIS的模型,使用加权叠加分析来预测和可视化印度浦那宏观或城市层面混合土地利用的概率。该模型使用易于获得的混合土地利用影响参数的空间数据作为预测输入,而不是综合的真实土地利用数据。通过将预测的混合土地利用强度与四个街区的混合土地使用既定指标进行比较,验证了该模型。研究发现,影响混合土地利用的参数,如连通性、粮食格局、人口密度和便利设施的使用情况,可以用来预测混合土地使用的可能性。浦那市约35%的地区混合使用土地的可能性超过0.67。该模型可以产生整个城市可能的混合土地利用分布,并可用于计算街区的混合土地使用强度。公共行政、管理和规划的亮点:•印度浦那市的混合土地利用概率分布是使用GIS中的加权叠加分析生成的。•由于无法获得土地利用的重要空间数据,预测模型使用了混合土地利用的影响参数数据,如人口密度、连通性、粮食模式和便利设施的使用。•预测的混合土地利用概率可用于计算街区的混合土地使用强度。通过与传统的混合土地利用指标的比较,对其进行了验证。
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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来源期刊
GeoScape
GeoScape GEOGRAPHY-
CiteScore
2.70
自引率
7.70%
发文量
7
审稿时长
4 weeks
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