首页> 外文期刊>Journal of Applied Meteorology >Estimating the Urban Bias of Surface Shelter Temperatures Using Upper-Air and Satellite Data. Part I: Development of Models Predicting Surface Shelter Temperatures
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Estimating the Urban Bias of Surface Shelter Temperatures Using Upper-Air and Satellite Data. Part I: Development of Models Predicting Surface Shelter Temperatures

机译:使用高空和卫星数据估算城市庇护所温度的城市偏差。第一部分:预测表面庇护所温度的模型的开发

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Multiple regression techniques were used to predict surface shelter temperatures based on the time period 1986-89 using upper-air data from the European Centre for Medium-Range Weather Forecasts to represent the background climate and site-specific data to represent the local landscape. Global monthly mean temperature models were developed using data from over 5000 stations available in the Global Historical Climate Network (GHCN). Monthly maximum, mean, and minimum temperature models for the UnitedStates were also developed using data from over 1000 stations available in the U.S. Cooperative (COOP) Network and comparative monthly mean temperature models were developed using over 1150 U.S. stations in the GHCN. Initial correlation analyses revealedthat data from 700 mb were sufficient to represent the upper-air or background climate. Three-, six-, and full-variable models were developed for comparative purposes. Inferences about the variables selected for the various models were easier for the GHCN models, which displayed month-to-month consistency in which variables were selected, than for the COOP models, which were assigned a different list of variables for nearly every month. These and other results suggest that global calibration is preferred because data from the global spectrum of physical processes that control surface temperatures are incorporated in a global model. All of the models that were developed in this study validated relatively well, especially the global models. Recalibration of the models with validation data resulted in only slightly poorer regression statistics, indicating that the calibration list of variables was valid. Predictions using data from the validation dataset in the calibrated equation were better for the GHCN models, and the globally calibrated GHCN models generally provided better U.S. predictions than the U.S.-calibrated COOP models. Overall, the GHCN and COOP models explained approximately 64%-95% of the total variance of surface shelter temperatures, depending on the month and the number of model variables. The R~2's for the GHCN models ranged between 0.86 and 0.95, whereas the R~2's for the COOP models ranged between 0.64 and 0.92. In addition, root-mean-square errors (rmse's) were over 3°C for GHCNmodels and over 2"C for COOP models for winter months, and near 2°C for GHCN models and near 1.5°C for COOP models for summer months. The results of this study--a large amount of explained variance and a relatively small rmse--indicate the usefulnessof these models for predicting surface temperatures. Urban landscape data are incorporated into these models in Part II of this study to estimate the urban bias of surface temperatures.
机译:使用多个回归技术根据欧洲中距离天气预报中心的高空数据,根据1986-89年的时间段预测地表掩体温度,以表示背景气候,并根据特定地点的数据来表示本地景观。使用来自全球历史气候网络(GHCN)的5000多个站点的数据开发了全球月平均温度模型。还使用来自美国合作社(COOP)网络的1000多个站点的数据开发了美国的每月最高,平均和最低温度模型,并使用了GHCN的1150多个美国站点开发了比较月平均温度模型。初步的相关分析表明,700 mb的数据足以代表高空或背景气候。为了进行比较,开发了三变量,六变量和全变量模型。对于GHCN模型而言,关于为各种模型选择的变量的推论要比COOP模型更容易,因为GHCN模型显示了每个月选择变量的一致性,而对于COOP模型则几乎每个月都分配了不同的变量列表。这些结果和其他结果表明,首选全局校准,因为将控制表面温度的物理过程全局光谱中的数据合并到全局模型中。在这项研究中开发的所有模型都相对较好地验证了,尤其是全局模型。使用验证数据对模型进行重新校准只会导致回归统计数据稍差,表明变量的校准列表是有效的。对于GHCN模型,在校正方程式中使用来自验证数据集的数据进行的预测更好,并且与美国校正的COOP模型相比,全球校正的GHCN模型通常提供更好的美国预测。总体而言,GHCN和COOP模型解释了表层掩体温度总变化的大约64%-95%,具体取决于月份和模型变量的数量。 GHCN模型的R〜2在0.86至0.95之间,而COOP模型的R〜2在0.64至0.92之间。另外,冬季的GHCN模型的均方根误差(rmse's)超过3°C,COOP模型的均方根误差超过2“ C,GHCN模型的均方根误差均接近2°C,夏季的COOP模型则接近1.5°C本研究的结果(大量的解释方差和相对较小的均方根值)表明了这些模型在预测地表温度方面的有用性,在本研究的第二部分中将城市景观数据纳入了这些模型中,以估计城市偏差表面温度。

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