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利用个人气象站和时空贝叶斯模型改进高分辨率热暴露评估

Improved High Resolution Heat Exposure Assessment With Personal Weather Stations and Spatiotemporal Bayesian Models.

作者信息

Marquès Eva, Messier Kyle P

机构信息

Division of Translational Toxicology National Institute of Environmental Health Sciences Durham NC USA.

出版信息

Geohealth. 2025 Sep 8;9(9):e2025GH001451. doi: 10.1029/2025GH001451. eCollection 2025 Sep.

Abstract

Most of the United States (US) population resides in cities, where they are subjected to the urban heat island effect. In this study, we develop a method to estimate hourly air temperatures at resolution, improving exposure assessment of US population when compared to existing gridded products. We use an extensive network of personal weather stations to capture the intra-urban variability. The uncertainty associated with this crowdsourced data set is addressed through a spatiotemporal Bayesian model implemented with the Integrated Nested Laplace Approximation-Stochastic Partial Differential Equation approach. We evaluate the model on Philadelphia (PA), New York City (NY), Phoenix (AZ), and the Triangle area (NC). These case studies span different climatic zones and urban landscapes. They cover several meteorological events including a deadly heatwave in Phoenix and a snowstorm hitting part of the US in winter 2021. We obtain an overall root mean square error of , demonstrating the versatility of our model, and its applicability across various regions in the US. The high granularity of our model allows for the precise identification of hotspots that were previously undetected with daymet and gridMET products. Using the data generated by our method, we show that neighborhoods with high population concentration are more likely to experience elevated temperatures and prolonged hot nights, thus encouraging the use of our model for further epidemiological investigations on the impact of heat or cold stress on human health.

摘要

美国大部分人口居住在城市,在那里他们受到城市热岛效应的影响。在本研究中,我们开发了一种方法来估算每小时的气温,其分辨率有所提高,与现有的网格化产品相比,改进了对美国人口暴露情况的评估。我们使用广泛的个人气象站网络来捕捉城市内部的变化。通过采用集成嵌套拉普拉斯近似 - 随机偏微分方程方法实现的时空贝叶斯模型,解决了与这个众包数据集相关的不确定性。我们在费城(宾夕法尼亚州)、纽约市、凤凰城(亚利桑那州)和三角地区(北卡罗来纳州)对该模型进行了评估。这些案例研究涵盖了不同的气候区和城市景观。它们涵盖了多个气象事件,包括凤凰城的致命热浪以及2021年冬季袭击美国部分地区的暴风雪。我们获得的总体均方根误差为 ,证明了我们模型的通用性及其在美国各地区的适用性。我们模型的高分辨率能够精确识别以前使用daymet和gridMET产品未检测到的热点。利用我们方法生成的数据,我们表明人口高度集中的社区更有可能经历气温升高和漫长的炎热夜晚,从而鼓励使用我们的模型对热或冷应激对人类健康的影响进行进一步的流行病学调查。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1f73/12415529/ef5fa853536c/GH2-9-e2025GH001451-g003.jpg

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