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Quantifying how landscape composition and configuration affect urban land surface temperatures using machine learning and neutral landscapes

机译:使用机器学习和中性景观量化景观组成和配置如何影响城市地表温度

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The urban heat island effect is an important 21st century issue because it intersects with the complex challenges of urban population growth, global climate change, public health and increasing energy demand for cooling. While the effects of urban landscape composition on land surface temperature (LST) are well-studied, less attention has been paid to the spatial arrangement of land cover types especially in smaller, often more diverse cities. Landscape configuration is important because it offers the potential to provide refuge from excessive heat for both people and buildings.We present a novel approach to quantifying how both composition and configuration affect LST derived from Landsat imagery in Southampton, UK. First, we trained a machine-learning (generalized boosted regression) model to predict LST from landscape covariates that included the characteristics of the immediate pixel and its surroundings. The model achieved a correlation between predicted and measured 1ST of 0.956 on independent test data (n = 102,935) and included predictors for both the immediate and adjacent land use. In contrast to other studies, we found adjacency effects to be stronger than immediate effects at 30 m resolution. Next, we used a landscape generation tool (Landscape Generator) to alter landscape configuration by varying natural and built patch sizes and arrangements while holding composition constant. The generated neutral landscapes were then fed into the machine learning model to predict patterns of LST.When we manipulated landscape configuration, the average city temperature remained the same but the local minima varied by 0.9 degrees C and the maxima by 4.2 degrees C. The effects on LST and heat island metrics correlated with landscape fragmentation indices. Moreover, the surface temperature of buildings could be reduced by up to 2.1 degrees C through landscape manipulation.We found that the optimum mix of land use types is neither at the land-sharing nor land-sparing extremes, but a balance between the two. In our city, maximum cooling was achieved when similar to 60% of land was left natural and distributed in 7-8 patches km(-2) although this could be location dependent and further work is needed. Opportunities for urban cooling should be required in the planning process and must consider both composition and configuration at the landscape scale if cities are to build capacity for a growing population and climate change.
机译:城市热岛效应是21世纪的一个重要问题,因为它与城市人口增长,全球气候变化,公共卫生以及冷却能源需求不断增长等复杂挑战相交。尽管对城市景观组成对地表温度(LST)的影响进行了充分研究,但对土地覆盖类型的空间布置的关注却很少,尤其是在较小且通常更为多样化的城市中。景观配置非常重要,因为它提供了为人和建筑物提供过热保护的潜力。我们提出了一种新颖的方法来量化成分和配置如何影响源自英国南安普敦Landsat影像的LST。首先,我们训练了一种机器学习(广义增强回归)模型,以根据景观协变量(包括即时像素及其周围环境的特征)预测LST。该模型在独立测试数据(n = 102,935)上实现了0.956的预测和测得的1ST之间的相关性(n = 102,935),并包括了直接和邻近土地利用的预测因子。与其他研究相比,我们发现在30 m分辨率下,邻接效应要强于即时效应。接下来,我们使用景观生成工具(Landscape Generator)来改变景观配置,方法是在保持构图不变的情况下,改变自然和内置补丁的大小和排列。然后将生成的中性景观输入到机器学习模型中以预测LST的模式。当我们操纵景观配置时,平均城市温度保持不变,但局部最小值变化了0.9摄氏度,最大值变化了4.2摄氏度。 LST和热岛指标与景观破碎指数相关。此外,通过景观操纵可以使建筑物的表面温度降低2.1摄氏度。我们发现,土地利用类型的最佳组合既不是在土地共享也不在土地节约的极端,而是两者之间的平衡。在我们的城市中,当自然界中约有60%的土地自然分布并分布在7-8平方公里km(-2)中时,可实现最大程度的降温,尽管这可能取决于位置,需要进一步的工作。在规划过程中应要求有城市降温的机会,如果城市要为人口增长和气候变化的能力建设,必须考虑景观规模的构成和配置。

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