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首页> 外文期刊>Remote Sensing of Environment: An Interdisciplinary Journal >Development and verification of a non-linear disaggregation method (NL-DisTrad) to downscale MODIS land surface temperature to the spatial scale of Landsat thermal data to estimate evapotranspiration
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Development and verification of a non-linear disaggregation method (NL-DisTrad) to downscale MODIS land surface temperature to the spatial scale of Landsat thermal data to estimate evapotranspiration

机译:开发和验证非线性分解方法(NL-DisTrad),以将MODIS地表温度降低到Landsat热数​​据的空间规模,以估计蒸散量

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A nonlinear method (NL-DisTrad) was developed and tested to disaggregate satellite-derived estimates of land surface temperature of MODIS (Moderate Resolution Imaging Spectrometer) with a resolution of 960. m to the scale of Landsat 7 ETM. + (Enhanced Thematic Mapper Plus) at 60. m. This method uses the relationship that is captured at the hot edge pixels in the feature space between the Normalised Difference Vegetation Index (NDVI) and the land surface temperature (LST) at a coarse resolution to disaggregate the LST to a finer resolution. The residuals that are generated at the coarse resolution are modelled using an Artificial Neural Network model (ANN), and the resulting residuals are added to the disaggregated LST at a fine resolution. The ANN model was built using the NDVI from the neighbourhood pixels. The hypothesis is that the LST of a pixel will not only be affected by the vegetation within the pixel but also by the vegetation of surrounding pixels. The performance of this hybrid model NL-DisTrad (Hot edge model. +. ANN model) is assessed by comparing the results to the existing disaggregation method, TsHARP, and the observed Landsat LST. The NL-DisTrad disaggregation results were comparable to the observed Landsat LST even for pixels with non-uniform vegetation. The statistical analysis indicated that the proposed model disaggregates the LST better than TsHARP, based on the high Nash Sutcliffe Efficiency (NSE. >. 0.80) and low root mean square error value (RMSE. <. 0.96. K). Furthermore, using SEBAL (Surface Energy Balance Algorithm for Land), it was found that the estimates of daily evapotranspiration (ET) from the LST that were disaggregated using NL-DisTrad were comparable to the ET estimates from the observed Landsat LST data. As the disaggregation method NL-DisTrad only needs the LST-NDVI relationship at the coarse resolution, the model could be used to disaggregate the coarse resolution MODIS temperature data to the fine resolution of satellites such as IRS-P6 or SPOT-5 that do not carry any thermal sensors.
机译:开发并测试了非线性方法(NL-DisTrad),以分解卫星衍生的MODIS(中分辨率成像光谱仪)的地表温度估算值,分辨率为960. m,与Landsat 7 ETM的比例。 +(增强的主题映射器增强版)在60. m。此方法使用在归一化植被指数(NDVI)和陆地表面温度(LST)之间的特征空间中的热边缘像素处捕获的关系,分辨率较高,可以将LST分解为更高分辨率。使用人工神经网络模型(ANN)对在粗分辨率下生成的残差建模,然后将所得的残差以精细的分辨率添加到分解的LST中。使用邻域像素的NDVI建立了ANN模型。假设是,像素的LST不仅会受到像素内的植被的影响,还会受到周围像素的植被的影响。通过将结果与现有的分解方法TsHARP和观察到的Landsat LST进行比较,可以评估此​​混合模型NL-DisTrad(热边缘模型+。ANN模型)的性能。即使对于植被不均匀的像素,NL-DisTrad分解结果也可以与观察到的Landsat LST相媲美。统计分析表明,基于高Nash Sutcliffe效率(NSE。> 0.80)和低均方根误差值(RMSE。<0.96。K),提出的模型比TsHARP更好地分解LST。此外,使用SEBAL(土地表面能量平衡算法),发现使用NL-DisTrad分解的LST的每日蒸散量(ET)估计值与观察到的Landsat LST数据的ET估计值可比。由于分解方法NL-DisTrad仅需要在粗分辨率下的LST-NDVI关系,因此该模型可用于将粗分辨率MODIS温度数据分解为不需要分辨率的卫星(如IRS-P6或SPOT-5)携带任何热传感器。

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