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Smart irrigation forecast using satellite LANDSAT data and meteo-hydrological modeling

机译:智能灌溉预测采用卫星山顶数据和迈进水文建模

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The paper discusses advances in coupling satellite driven soil water balance model and meteorological forecast as support for precision smart irrigation use in a case study of an operative farm in the South of Italy where semiarid climatic conditions holds. Crop water needs forecast are computed with the intuitive idea of forcing the soil water balance model with the meteorological model outlooks. Discussion on the methodology approach is presented, comparing, for a reanalysis period between June and September 2014, the forecast system outputs with observed soil moisture and crop water needs. Two main issues are here in emphasized: the characteristic of soil moisture water balance model, that due to its state variables may be directly calibrated and validated using satellite or near sensing land surface temperatures; the accuracy of those forecast meteorological variables that are the most important in driving the soil water and energy balance. The soil water balance model performances are then discussed highlighting the importance of using a model which state variable (the pixel surface equilibrium temperature) is the same as the data detected by satellite (Land Surface Temperature), so that it can be used for calibrating and validating soil hydrological parameters. Model outputs are also validated with a comparison of ground latent and sensible heat fluxes from an eddy covariance station and soil moisture data. Problems insight into the meteorological modeling, such as temporal and spatial scale, and their influence on soil moisture forecast are discussed showing on the base of several observation periods the need to increase the meteorological forcings accuracy for this type of applications.
机译:本文讨论了卫星驱动的土壤水平模型和气象预测的进步,因为在意大利南部的手术农场进行精密智能灌溉用途的支持。随着气象模型前景强制土壤水平模型的直观思想,计算了作物水需求预测。对方法方法的讨论,比较,在2014年6月至9月的再分析期间,预测系统输出具有观察到的土壤水分和农作物需求。这里强调了两个主要问题:土壤湿水平衡模型的特征,由于其状态变量可以使用卫星或附近的传感陆地表面温度直接校准和验证;这些预测气象变量的准确性是驱动土壤水和能量平衡最重要的。然后讨论了土壤水平模型性能突出显示使用状态变量(像素表面平衡温度)与卫星(陆表面温度)检测到的数据相同的模型的重要性,从而可用于校准和校准和验证土壤水文参数。还验证了模型输出,并与涡流协方识站和土壤湿度数据的地面潜热和明智的热量通量进行了验证。讨论了几个观察期的基础上讨论了逐时和空间尺度的气象建模,以及它们对土壤水分预测的影响的问题。

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