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首页> 外文期刊>Remote Sensing >A Synergetic Algorithm for Mid-Morning Land Surface Soil and Vegetation Temperatures Estimation Using MSG-SEVIRI Products and TERRA-MODIS Products
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A Synergetic Algorithm for Mid-Morning Land Surface Soil and Vegetation Temperatures Estimation Using MSG-SEVIRI Products and TERRA-MODIS Products

机译:用MSG-SEVIRI产品和TERRA-MODIS产品估算土地中午中期土壤和植被温度的协同算法

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Land surface is normally considered as a mixture of soil and vegetation. Many applications, such as drought monitoring and crop-yield estimation, benefit from accurate retrieval of both soil and vegetation temperatures through satellite observation. A preliminary study has been conducted in this study on the estimation of land surface soil and vegetation component temperature using the geostationary satellite data acquired by Spinning Enhanced Visible and Infrared Imager (SEVIRI) onboard the Meteosat Second Generation (MSG) and TERRA-MODIS data. A synergetic algorithm is proposed to derive soil and vegetation temperatures by using the temporal and spatial information in SEVIRI and MODIS products. The approach is applied to both simulation data and satellite data. For simulation data, the component temperatures are well estimated with root mean squared error (RMSE) close to 0 K. For satellite data application, reasonable spatial distributions of the soil and vegetation temperatures are derived for eight cloud-free days in the Iberian Peninsula from June to August 2009. An evaluation is performed for the estimated vegetation temperature against the near surface air temperature. The correlation analysis between two datasets is found that the R-squareds are from 0.074 to 0.423 and RMSEs are within 4 K. Considering the impact of fraction of vegetation cover (FVC) on the validation, the pixels with FVC less than 30% are excluded in the total data comparison, and an obvious improvement is achieved with R-squared from 0.231 to 0.417 and RMSE from 2.9 K to 2.58 K. The validation indicates that the proposed algorithm is able to provide reasonable estimations of soil and vegetation temperatures. It is a potential way to map soil and vegetation temperature for large areas.
机译:土地表面通常被认为是土壤和植被的混合物。通过卫星观测准确检索土壤和植被温度,许多应用(例如干旱监测和作物产量估算)受益。在这项研究中,已经进行了初步的研究,利用气象卫星第二代(MSG)和TERRA-MODIS数据上的自旋增强型可见光和红外成像仪(SEVIRI)获得的对地静止卫星数据,估算了地表土壤和植被的温度。提出了一种协同算法,利用SEVIRI和MODIS产品中的时空信息导出土壤和植被温度。该方法适用于模拟数据和卫星数据。对于模拟数据,可以很好地估计组件温度,且均方根误差(RMSE)接近0K。对于卫星数据应用,可以得出伊比利亚半岛八个无云日土壤和植被温度的合理空间分布,具体取决于2009年6月至2009年8月。针对近地面空气温度对估计的植被温度进行了评估。两个数据集之间的相关性分析发现,R平方在0.074至0.423之间,RMSE在4 K以内。考虑到植被覆盖率(FVC)对验证的影响,FVC小于30%的像素被排除在外在总数据比较中,R平方从0.231到0.417,RMSE从2.9 K到2.58 K取得了明显的改善。验证表明,该算法能够提供合理的土壤和植被温度估算。这是绘制大面积土壤和植被温度的潜在方法。

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