Urban morphology detection and it's linking with land surface temperature: A case study for Tehran Metropolis, Iran.

IF 11.7 1区 工程技术 Q1 Engineering Sustainable Cities and Society Pub Date : 2021-08-09 eCollection Date: 2021-11-01 DOI:10.1016/j.scs.2021.103228
Sajad Khoshnoodmotlagh, Alireza Daneshi, Shervan Gharari, Jochem Verrelst, Mohsen Mirzaei, Hossien Omrani
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引用次数: 8

Abstract

Expansion of urban areas and alteration of natural land cover exacerbate the local climate change. To find out the effect of land cover changes on the local climate, in this study, the Local Climate Zone (LCZ) concept was utilized to detect urban morphology in Tehran Metropolis. LCZ and Land Surface Temperature (LST) can be identified and classified based on available remote sensing products. Firstly, LCZ maps of Tehran metropolis were extracted using Landsat imagery, and secondly, relationships between LCZ and LST were explored for three years (1990, 2004, and 2018). We found that Tehran urban structure has 13 LCZs based on imagery from Landsat 5 and 14 LCZs based on images for Landsat 7 and 8. Overall accuracy and kappa coefficient were estimated at 62% and 0.60, respectively. Results show that built-up classes including compact high-rise, compact mid-rise, and heavy industrial areas tended to increase the surface temperature, while except for bare land, all other land cover types tended to decrease the surface temperature. The findings also suggest that complementary optical and thermal remote sensing data, such as the combination of OLI with TIRS imageries, were sufficient for supervised LCZ and LST classification in a semi-arid region of Tehran metropolis.

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城市形态检测及其与地表温度的关系:以伊朗德黑兰大都市为例。
城市面积的扩大和自然土地覆被的改变加剧了局部气候变化。为了了解土地覆被变化对当地气候的影响,本研究采用局地气候带(local climate Zone, LCZ)概念对德黑兰大都市的城市形态进行检测。地表温度(LST)和地表温度(LCZ)可以根据现有的遥感产品进行识别和分类。首先,利用Landsat影像提取德黑兰大都市的LCZ地图;其次,对LCZ与LST的关系进行了为期三年(1990年、2004年和2018年)的探索。我们发现,基于Landsat 5的图像,德黑兰城市结构有13个lcz,基于Landsat 7和8的图像,德黑兰城市结构有14个lcz。总体准确度和kappa系数估计分别为62%和0.60。结果表明:密实高层、密实中高层和重工业区等建成区地表温度有升高趋势,除裸地外,其他类型地表温度均有降低趋势;研究结果还表明,互补的光学和热遥感数据,如OLI与TIRS图像的结合,足以在德黑兰大都市半干旱区进行有监督的LCZ和LST分类。
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来源期刊
Sustainable Cities and Society
Sustainable Cities and Society CONSTRUCTION & BUILDING TECHNOLOGYGREEN &-GREEN & SUSTAINABLE SCIENCE & TECHNOLOGY
CiteScore
18.40
自引率
13.70%
发文量
810
期刊介绍: Sustainable Cities and Society (SCS) is an international journal focusing on fundamental and applied research aimed at designing, understanding, and promoting environmentally sustainable and socially resilient cities.
期刊最新文献
Corrigendum to “Investigating the realization of spatial justice based on multi-criteria decision-making methods in a metropolis in northwest Iran” [Sustainable Cities and Society, 99 (2023) 104986] Congestion Pricing for Sustainable Urban Transportation Systems Considering Carbon Emissions and Travel Habits Corrigendum to “Achieving resilient cities using data-driven energy transition: A statistical examination of energy policy effectiveness and community engagement” [Sustainable Cities and Society, Volume 101, February 2024, 105155] Energy consumption characteristics and rooftop photovoltaic potential assessment of elevated metro station Quantifying Sustainable and Reliable Urban Microgrid Energy Solutions: Probabilistic Analysis of Renewable Adoption, Economic Viability, and Technological Innovations
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