Spatial patterns of urban blue-green landscapes on land surface temperature: A case of Addis Ababa, Ethiopia

IF 3.7 Q2 ENVIRONMENTAL SCIENCES
Neway Kifle Bekele, Binyam Tesfaw Hailu, Karuturi Venkata Suryabhagavan
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引用次数: 9

Abstract

Drastic changes in the urban landscape can lead to irreversible changes in the spatiotemporal pattern of the land surface temperature (LST). The present study was aimed to map the effects of blue-green urban landscapes on LST using geospatial techniques in Addis Ababa during 2006–2021. Object-based image analysis (OBIA) was used to produce land-use/land-cover (LULC) maps using high-resolution imagery from SPOT 5 and Sentinel 2A. Land surface temperature was retrieved from thermal imageries of Landsat 7 ETM+ (band 6) and Landsat 8 TIRS (band 10) using the Mono-Window Algorithm (MWA). Built-up area was the most dominant LULC in the city with expanding trend with an annual growth of 4.4% at the expense of farmland, vegetation, and bare land. In contrast, 53.7% of farmland, 48.1% of vegetation, and 59.4% of bare land were transformed into built-up class during 2006–2021. Mean LST showed an increasing trend from 25.8 °C in 2006 to 27.2 °C and 28.2 °C during 2016 and 2021, respectively. Highest mean LST was observed at bare land having average values of 26.9 °C, 28.7 °C, and 30.1 °C in 2006, 2016 and 2021, respectively. Regression analysis has revealed a strong negative correlation between NDVI and LST, a strong positive correlation between NDBI and LST, and a weak negative correlation between MNDWI and LST. Built-up areas and vegetation cover play a decisive role in the variation of LST compared to surface water. These findings are helpful for understanding urban green as well as land-use planning to minimize the potential impacts of urbanization.

地表温度对城市蓝绿色景观空间格局的影响——以埃塞俄比亚亚的斯亚贝巴为例
城市景观的剧烈变化会导致地表温度时空格局的不可逆变化。本研究旨在利用地理空间技术绘制2006-2021年亚的斯亚贝巴蓝绿色城市景观对地表温度的影响。基于目标的图像分析(OBIA)利用spot5和Sentinel 2A的高分辨率图像生成土地利用/土地覆盖(LULC)地图。采用单窗算法(MWA)从Landsat 7 ETM+(波段6)和Landsat 8 TIRS(波段10)热像图中反演地表温度。建成区是城市最主要的土地利用价值,并呈扩大趋势,年均增长4.4%,农田、植被和裸地的土地利用价值减少。2006-2021年期间,53.7%的耕地、48.1%的植被和59.4%的裸地转变为建成区。平均地表温度从2006年的25.8°C增加到2016年和2021年的27.2°C和28.2°C。2006年、2016年和2021年裸地平均温度最高,分别为26.9°C、28.7°C和30.1°C。回归分析显示,NDVI与LST呈强负相关,NDBI与LST呈强正相关,MNDWI与LST呈弱负相关。与地表水相比,建成区和植被覆盖对地表温度的变化起决定性作用。这些发现有助于理解城市绿化和土地利用规划,以尽量减少城市化的潜在影响。
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来源期刊
Current Research in Environmental Sustainability
Current Research in Environmental Sustainability Environmental Science-General Environmental Science
CiteScore
7.50
自引率
9.10%
发文量
76
审稿时长
95 days
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