Citizen and machine learning-aided high-resolution mapping of urban heat exposure and stress

Xuewei Wang, A. Hsu, T. Chakraborty
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Abstract

Through conversion of land cover to more built-up, impervious surfaces, cities create hotter environments than their surroundings for urban residents, with large differences expected between different parts of the city. Existing measurements of ambient air temperature and heat stress, however, are often insufficient to capture the intra-urban variability in heat exposure. This study provides a replicable method for modeling air temperature, humidity, and moist heat stress over the urban area of Chapel Hill while engaging citizens to collect high-temporal and spatially-resolved air temperature and humidity measurements. We use low-cost, consumer-grade sensors combined with satellite remote sensing data and machine learning to map urban air temperature and relative humidity over various land-cover classes to understand intra-urban spatial variability of ambient heat exposure at a relatively high resolution (10 m). Our findings show that individuals may be exposed to higher levels of air temperature and moist heat stress than weather station data suggest, and that the ambient heat exposure varies according to land cover type, with tree-covered land the coolest and built-up areas the warmest, and time of day, with higher air temperatures observed during the early afternoon. Combining our resulting dataset with sociodemographic data, policymakers and urban planners in Chapel Hill can use data output from this method to identify areas exposed to high temperature and moist heat stress as a first step to design effective mitigation measures.
市民和机器学习辅助的城市热暴露和压力的高分辨率地图
通过将土地覆盖转化为更多的建筑,不透水的表面,城市为城市居民创造了比周围更热的环境,城市不同地区之间的差异很大。然而,现有的环境空气温度和热应力测量往往不足以捕捉城市内部热暴露的变异性。该研究提供了一种可复制的方法来模拟教堂山城区的空气温度、湿度和湿热应力,同时吸引市民收集高时间和空间分辨率的空气温度和湿度测量数据。我们使用低成本的消费级传感器,结合卫星遥感数据和机器学习,绘制了不同土地覆盖类别的城市空气温度和相对湿度图,以相对高分辨率(10米)了解城市内部环境热暴露的空间变异性。我们的研究结果表明,个体暴露于空气温度和湿热应力的水平可能高于气象站数据所显示的水平。环境热暴露根据土地覆盖类型而变化,树木覆盖的土地最冷,建筑物覆盖的地区最热,并且在一天中的时间,下午早些时候观察到的空气温度较高。将我们的结果数据集与社会人口统计数据相结合,教堂山的政策制定者和城市规划者可以使用该方法的数据输出来确定暴露于高温和湿热应力的区域,作为设计有效缓解措施的第一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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