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利用美国马萨诸塞州卫星地表温度测量数据评估最低气温的时空变化。

Temporal and spatial assessments of minimum air temperature using satellite surface temperature measurements in Massachusetts, USA.

机构信息

Department of Environmental Health — Exposure, Epidemiology and Risk Program, Harvard School of Public Health, Landmark Center 401 Park Dr West, Boston, MA 02215, USA.

出版信息

Sci Total Environ. 2012 Aug 15;432:85-92. doi: 10.1016/j.scitotenv.2012.05.095. Epub 2012 Jun 20.

Abstract

Although meteorological stations provide accurate air temperature observations, their spatial coverage is limited and thus often insufficient for epidemiological studies. Satellite data expand spatial coverage, enhancing our ability to estimate near surface air temperature (Ta). However, the derivation of Ta from surface temperature (Ts) measured by satellites is far from being straightforward. In this study, we present a novel approach that incorporates land use regression, meteorological variables and spatial smoothing to first calibrate between Ts and Ta on a daily basis and then predict Ta for days when satellite Ts data were not available. We applied mixed regression models with daily random slopes to calibrate Moderate Resolution Imaging Spectroradiometer (MODIS) Ts data with monitored Ta measurements for 2003. Then, we used a generalized additive mixed model with spatial smoothing to estimate Ta in days with missing Ts. Out-of-sample tenfold cross-validation was used to quantify the accuracy of our predictions. Our model performance was excellent for both days with available Ts and days without Ts observations (mean out-of-sample R(2)=0.946 and R(2)=0.941 respectively). Furthermore, based on the high quality predictions we investigated the spatial patterns of Ta within the study domain as they relate to urban vs. non-urban land uses.

摘要

尽管气象站提供了准确的空气温度观测,但它们的空间覆盖范围有限,因此在流行病学研究中往往不够用。卫星数据扩大了空间覆盖范围,提高了我们估算近地表空气温度(Ta)的能力。然而,从卫星测量的地表温度(Ts)推算 Ta 远非易事。在这项研究中,我们提出了一种新方法,该方法结合了土地利用回归、气象变量和空间平滑,首先对 Ts 与 Ta 进行每日校准,然后在没有卫星 Ts 数据的情况下预测 Ta。我们应用了具有每日随机斜率的混合回归模型,对 2003 年 MODIS Ts 数据与监测到的 Ta 测量值进行了校准。然后,我们使用具有空间平滑的广义加性混合模型来估计 Ts 缺失日的 Ta。使用十折外推交叉验证来量化我们预测的准确性。对于有 Ts 数据的日子和没有 Ts 观测的日子,我们的模型性能都非常出色(分别为平均外推 R²=0.946 和 R²=0.941)。此外,基于高质量的预测,我们研究了研究区域内 Ta 的空间分布模式,因为它们与城市和非城市土地利用有关。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/cb66/4372645/e70ed9643944/nihms670502f1.jpg

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