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Spatio-temporal prediction of daily temperatures using time-series of MODIS LST images

机译:使用MODIS LST图像的时间序列预测每日温度的时空

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A computational framework to generate daily temperature maps using time-series of publicly available MODIS MOD11A2 product Land Surface Temperature (LST) images (1 km resolution; 8-day composites) is illustrated using temperature measurements from the national network of meteorological stations (159) in Croatia. The input data set contains 57,282 ground measurements of daily temperature for the year 2008. Temperature was modeled as a function of latitude, longitude, distance from the sea, elevation, time, insolation, and the MODIS LST images. The original rasters were first converted to principal components to reduce noise and filter missing pixels in the LST images. The residual were next analyzed for spatio-temporal auto-correlation; sum-metric separable variograms were fitted to account for zonal and geometric space-time anisotropy. The final predictions were generated for time-slices of a 3D space-time cube, constructed in the R environment for statistical computing. The results show that the space-time regression model can explain a significant part of the variation in station-data (84%). MODIS LST 8-day (cloud-free) images are unbiased estimator of the daily temperature, but with relatively low precision (±4.1℃); however their added value is that they systematically improve detection of local changes in land surface temperature due to local meteorological conditions and/or active heat sources (urban areas, land cover classes). The results of 10-fold cross-validation show that use of spatio-temporal regression-kriging and incorporation of time-series of remote sensing images leads to significantly more accurate maps of temperature than if plain spatial techniques were used. The average (global) accuracy of mapping temperature was ±2.4℃. The regression-kriging explained 91% of variability in daily temperatures, compared to 44% for ordinary kriging. Further software advancement-interactive spacetime variogram exploration and automated retrieval, resampling and filtering of MODIS images-are anticipated.
机译:利用国家气象站网络的温度测量结果,说明了使用公开的MODIS MOD11A2产品陆面温度(LST)图像(1 km分辨率; 8天合成图)的时间序列生成每日温度图的计算框架(159)在克罗地亚。输入数据集包含2008年的每日地面温度57,282个。温度是根据纬度,经度,距海的距离,海拔,时间,日照度和MODIS LST图像进行建模的。首先将原始栅格转换为主要成分,以减少噪声并过滤LST图像中的缺失像素。接下来分析残差的时空自相关。求和度量可分离变异函数被拟合以解决区域和几何时空各向异性。最终预测是针对在R环境中构建的用于统计计算的3D时空立方体的时间片生成的。结果表明,时空回归模型可以解释台站数据变化的很大一部分(84%)。 MODIS LST 8天(无云)图像是每日温度的无偏估计量,但精度较低(±4.1℃);但是,它们的附加价值在于,它们可以系统地改善对由于当地气象条件和/或活跃热源(城市地区,土地覆盖类别)而引起的地表温度局部变化的检测。 10倍交叉验证的结果表明,使用时空回归克里金法和结合遥感图像的时间序列可比使用普通空间技术产生更准确的温度图。测绘温度的平均(整体)精度为±2.4℃。回归克里金法解释了日常温度中91%的变化,而普通克里金法则为44%。预计将进一步进行软件改进-交互式时空变异函数探索以及MODIS图像的自动检索,重采样和过滤。

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