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首页> 外文期刊>The Science of the Total Environment >Turning down the heat: An enhanced understanding of the relationship between urban vegetation and surface temperature at the city scale
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Turning down the heat: An enhanced understanding of the relationship between urban vegetation and surface temperature at the city scale

机译:降低热量:在城市规模上加深对城市植被与地表温度之间关系的理解

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摘要

Guiding urban planners on the cooling returns of different configurations of urban vegetation is important to protect urban dwellers from adverse heat impacts. To this end, we estimated statistical models that fused multi-temporal very fine spatial (20 cm) and vertical (1 mm) resolution imagery, that captures the complexity of urban vegetation, with remotely sensed temperature data to assess how urban vegetation configuration influences urban temperatures. Perth, Western Australia, was used as a case-study for this analysis. Panel regression models showed that within a location an increase in tree and shrub cover has a larger cooling effect than grass coverage. On average, holding all else equal, an approximate 1 km(2) increase in shrub (tree) cover within a location reduces surface temperatures by 12 degrees C (5 degrees C). We included a range of robustness checks for the observed relationships between urban vegetation type and temperature. Geographically weighted regression models showed spatial variation in the cooling effect of different vegetation types; this indicates that i) unobserved factors moderate temperature-vegetation relationships across urban landscapes, and ii) that urban vegetation type and temperature relationships are complex. Machine learning models (Random Forests) were used to further explore complex and non-linear relationships between different urban vegetation configurations and temperature. The Random Forests showed that vegetation type explained 31.84% of the out-of-bag variance in summer surface temperatures, that increased cover of large vegetation within a location increases cooling, and that different configurations of urban vegetation structure can lead to cooling gains. The models in this study were trained with vegetation data capturing local detail, multiple time-periods, and entire city coverage. Thus, these models illustrate the potential to develop locally-detailed and spatially explicit tools to guide planning of vegetation configuration to optimise cooling at local- and city-scales. (C) 2018 Published by Elsevier B.V.
机译:指导城市规划者不同配置的城市植被的降温收益对保护城市居民免受不利的热影响很重要。为此,我们估算了统计模型,这些模型融合了多时相非常精细的空间(20厘米)和垂直(1毫米)分辨率的图像,捕获了城市植被的复杂性,并通过遥感温度数据评估了城市植被配置如何影响城市温度。西澳大利亚州的珀斯被用作该分析的案例研究。面板回归模型显示,在某个位置内,树木和灌木覆盖的增加比草覆盖的覆盖具有更大的降温效果。平均而言,在其他条件相同的情况下,某个位置的灌木(树木)覆盖率大约增加1 km(2),会使表面温度降低12摄氏度(5摄氏度)。我们为观察到的城市植被类型与温度之间的关系包括了一系列的稳健性检查。地理加权回归模型显示了不同植被类型的降温效果的空间变化;这表明:i)不可观测的因素会缓和整个城市景观之间的温度-植被关系,并且ii)城市植被类型和温度关系很复杂。机器学习模型(随机森林)用于进一步探索不同城市植被配置和温度之间的复杂和非线性关系。随机森林显示,植被类型解释了夏季地表温度的31.84%的袋外变化,一个地点内大型植被的覆盖增加会增加降温,并且城市植被结构的不同配置可导致降温。本研究中的模型是使用植被数据训练的,该数据捕获了局部细节,多个时间段以及整个城市范围。因此,这些模型说明了开发局部细节和空间明确工具的潜力,以指导植被配置规划,以优化局部和城市规模的降温。 (C)2018由Elsevier B.V.发布

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