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利用卫星数据对2003年至2019年墨西哥中部大都市每日环境温度进行时空重建。

A spatiotemporal reconstruction of daily ambient temperature using satellite data in the Megalopolis of Central Mexico from 2003 to 2019.

作者信息

Gutiérrez-Avila Iván, Arfer Kodi B, Wong Sandy, Rush Johnathan, Kloog Itai, Just Allan C

机构信息

Department of Environmental Medicine and Public Health Icahn School of Medicine at Mount Sinai New York New York USA.

Department of Geography Florida State University (FSU) Tallahassee Florida USA.

出版信息

Int J Climatol. 2021 Jun 30;41(8):4095-4111. doi: 10.1002/joc.7060. Epub 2021 Mar 18.

Abstract

While weather stations generally capture near-surface ambient air temperature (Ta) at a high temporal resolution to calculate daily values (i.e., daily minimum, mean, and maximum Ta), their fixed locations can limit their spatial coverage and resolution even in densely populated urban areas. As a result, data from weather stations alone may be inadequate for Ta-related epidemiology particularly when the stations are not located in the areas of interest for human exposure assessment. To address this limitation in the Megalopolis of Central Mexico (MCM), we developed the first spatiotemporally resolved hybrid satellite-based land use regression Ta model for the region, home to nearly 30 million people and includes Mexico City and seven more metropolitan areas. Our model predicted daily minimum, mean, and maximum Ta for the years 2003-2019. We used data from 120 weather stations and Land Surface Temperature (LST) data from NASA's MODIS instruments on the Aqua and Terra satellites on a 1 × 1 km grid. We generated a satellite-hybrid mixed-effects model for each year, regressing Ta measurements against land use terms, day-specific random intercepts, and fixed and random LST slopes. We assessed model performance using 10-fold cross-validation at withheld stations. Across all years, the root-mean-square error ranged from 0.92 to 1.92 K and the ranged from .78 to .95. To demonstrate the utility of our model for health research, we evaluated the total number of days in the year 2010 when residents ≥65 years old were exposed to Ta extremes (above 30°C or below 5°C). Our model provides much needed high-quality Ta estimates for epidemiology studies in the MCM region.

摘要

虽然气象站通常以高时间分辨率获取近地表环境空气温度(Ta)以计算日值(即每日最低、平均和最高Ta),但其固定位置可能会限制其空间覆盖范围和分辨率,即使在人口密集的城市地区也是如此。因此,仅来自气象站的数据可能不足以用于与Ta相关的流行病学研究,特别是当这些气象站不在人类暴露评估的感兴趣区域时。为了解决墨西哥中部大都市(MCM)的这一局限性,我们为该地区开发了首个基于卫星的时空分辨率混合土地利用回归Ta模型,该地区有近3000万人口,包括墨西哥城和另外七个大都市区。我们的模型预测了2003 - 2019年的每日最低、平均和最高Ta。我们使用了120个气象站的数据以及美国国家航空航天局(NASA)在Aqua和Terra卫星上的中分辨率成像光谱仪(MODIS)仪器获取的陆地表面温度(LST)数据,数据分辨率为1×1千米网格。我们为每年生成一个卫星混合效应模型,将Ta测量值与土地利用项、特定日期的随机截距以及固定和随机的LST斜率进行回归分析。我们在保留的气象站使用10折交叉验证来评估模型性能。在所有年份中,均方根误差范围为0.92至1.92K, 范围为0.78至0.95。为了证明我们的模型在健康研究中的实用性,我们评估了2010年65岁及以上居民暴露于极端Ta(高于30°C或低于5°C)的总天数。我们的模型为MCM地区的流行病学研究提供了急需的高质量Ta估计值。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/5153/8251982/f2adec8583a4/JOC-41-4095-g007.jpg

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