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首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Modeling diurnal land temperature cycles over Los Angeles using downscaled GOES imagery
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Modeling diurnal land temperature cycles over Los Angeles using downscaled GOES imagery

机译:使用缩小的GOES影像模拟洛杉矶的昼夜土地温度周期

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摘要

Land surface temperature is a key parameter for monitoring urban heat islands, assessing heat related risks, and estimating building energy consumption. These environmental issues are characterized by high temporal variability. A possible solution from the remote sensing perspective is to utilize geostationary satellites images, for instance, images from Geostationary Operational Environmental System (GOES) and Meteosat Second Generation (MSG). These satellite systems, however, with coarse spatial but high temporal resolution (sub-hourly imagery at 3-10 km resolution), often limit their usage to meteorological forecasting and global climate modeling. Therefore, how to develop efficient and effective methods to disaggregate these coarse resolution images to a proper scale suitable for regional and local studies need be explored. In this study, we propose a least square support vector machine (LSSVM) method to achieve the goal of downscaling of GOES image data to half-hourly 1-km LSTs by fusing it with MODIS data products and Shuttle Radar Topography Mission (SRTM) digital elevation data. The result of downscaling suggests that the proposed method successfully disaggregated GOES images to half-hourly 1-km LSTs with accuracy of approximately 2.5 K when validated against with MODIS LSTs at the same over-passing time. The synthetic LST datasets were further explored for monitoring of surface urban heat island (UHI) in the Los Angeles region by extracting key diurnal temperature cycle (DTC) parameters. It is found that the datasets and DTC derived parameters were more suitable for monitoring of daytime- other than nighttime-UHI. With the downscaled GOES 1 -km LSTs, the diurnal temperature variations can well be characterized. An accuracy of about 2.5 K was achieved in terms of the fitted results at both 1 km and 5 km resolutions.
机译:地表温度是监测城市热岛,评估与热有关的风险以及估算建筑能耗的关键参数。这些环境问题的特点是时间变化大。从遥感的角度来看,一种可能的解决方案是利用对地静止卫星图像,例如对地静止作战环境系统(GOES)和第二代气象卫星(MSG)的图像。但是,这些卫星系统虽然具有粗糙的空间但具有较高的时间分辨率(3-10 km分辨率下的亚小时图像),经常将其使用范围限制在气象预报和全球气候模拟中。因此,需要探索如何开发有效和有效的方法来将这些粗分辨率图像分解为适合区域和本地研究的适当比例。在这项研究中,我们提出了一种最小二乘支持向量机(LSSVM)方法,通过将其与MODIS数据产品和Shuttle Radar Topography Mission(SRTM)digital融合在一起,以实现将GOES图像数据缩减为半小时1公里LST的目标。高程数据。缩小结果表明,当在相同的越过时间用MODIS LST进行验证时,所提出的方法将GOES图像成功分解为半小时的1 km LST,精度约为2.5K。通过提取关键的昼夜温度周期(DTC)参数,进一步探索了合成的LST数据集,以监测洛杉矶地区的地表城市热岛(UHI)。结果发现,数据集和DTC导出的参数比夜间UHI更适合于白天的监视。使用缩小的GOES 1公里LST,可以很好地描述昼夜温度变化。在1 km和5 km的分辨率下,根据拟合结果获得的精度约为2.5K。

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