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利用多源遥感数据量化城市热岛的空间格局及蓝绿景观的相关降温效应。

Quantifying the spatial pattern of urban heat islands and the associated cooling effect of blue-green landscapes using multisource remote sensing data.

机构信息

College of Mathematics and Computer Science, Zhejiang A&F University, Hangzhou 311300, China; Key Laboratory of Forestry Intelligent Monitoring and Information Technology of Zhejiang Province, Hangzhou 311300, China; Key Laboratory of State Forestry and Grassland Administration on Forestry Sensing Technology and Intelligent Equipment, Hangzhou 311300, China.

College of Environmental and Resource Sciences, Zhejiang University, Hangzhou 310058, China.

出版信息

Sci Total Environ. 2022 Oct 15;843:156829. doi: 10.1016/j.scitotenv.2022.156829. Epub 2022 Jun 21.

Abstract

Surface urban heat islands (SUHIs) are a global concern. Although their spatial pattern and the cooling effect of blue-green landscapes have been documented, exploring more accurate and quantitative results is still necessary. For Hangzhou, we combined nighttime light (NTL) data with LST images to investigate the spatial morphology of SUHIs and analyze the cooling effect of blue-green landscapes. The radiative transfer equation (RTE) method was used to derive the land surface temperature (LST). Then, based on the unique feature of Luojia1-01 NTL data, the concentric zone model (CZM) was proposed to depict the urban spatial structure. The CZM was applied to construct a number of equal-area concentric belts along the urban-rural gradient to determine the SUHI range and the corresponding blue-green landscape cooling effects. Finally, local Moran's I indices were adopted to identify the cold-hot spots of the SUHI and the relationship with land use. The minimum, average and maximum LSTs were 21.81 °C, 32.79 °C and 44.79 °C, respectively. Additionally, 59.16 % of the study area was affected by the SUHI, and the mean LST inside the SUHI was 36.4 °C, clearly higher than that of the rural area. The SUHI hotpots were clustered in regions with intensive human activities, forming archipelagos. Due to the different blue-green landscape densities, the cooling capacity had spatial heterogeneity in different urban rural belts (URBs), and the cooling capacity of URB was approximately 71 times that of URB. The cooling efficiency increased with blue-green landscape density in general; hence, blue-green landscape density thresholds of 40 % and 70 % were recommended in the urban planning of different urban function zones. Relating the pattern of NTL data to LST images provide meaningful insight into the spatial pattern of SUHIs and the optimization of urban planning.

摘要

地表城市热岛(SUHI)是一个全球性的关注点。尽管已经记录了它们的空间格局和蓝绿景观的降温效果,但探索更准确和定量的结果仍然是必要的。对于杭州,我们结合夜间灯光(NTL)数据和 LST 图像来研究 SUHI 的空间形态,并分析蓝绿景观的降温效果。辐射传输方程(RTE)方法用于推导地表温度(LST)。然后,基于 Luojia1-01 NTL 数据的独特特征,提出了同心区模型(CZM)来描述城市空间结构。CZM 被应用于构建沿着城乡梯度的多个等面积同心带,以确定 SUHI 范围和相应的蓝绿景观降温效果。最后,采用局部 Moran's I 指数来识别 SUHI 的冷热点及其与土地利用的关系。LST 的最小、平均和最大温度分别为 21.81°C、32.79°C 和 44.79°C。此外,研究区有 59.16%受到 SUHI 的影响,SUHI 内部的平均 LST 为 36.4°C,明显高于农村地区。SUHI 热点集中在人类活动密集的区域,形成群岛。由于蓝绿景观密度的不同,在不同的城乡带(URB)中,降温能力具有空间异质性,URB 的降温能力大约是 URB 的 71 倍。冷却效率通常随蓝绿景观密度的增加而增加;因此,建议在不同城市功能区的城市规划中采用 40%和 70%的蓝绿景观密度阈值。将 NTL 数据的模式与 LST 图像相关联,为 SUHI 的空间格局和城市规划的优化提供了有意义的见解。

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