首页> 外文期刊>Natural Hazards and Earth System Sciences Discussions >Estimation of evapotranspiration by the Food and Agricultural Organization of the United Nations (FAO) Penman–Monteith temperature (PMT) and Hargreaves–Samani (HS) models under temporal and spatial criteria – a case study in Duero basin (Spain)
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Estimation of evapotranspiration by the Food and Agricultural Organization of the United Nations (FAO) Penman–Monteith temperature (PMT) and Hargreaves–Samani (HS) models under temporal and spatial criteria – a case study in Duero basin (Spain)

机译:在时间和空间标准下,联合国粮食和农业组织(粮农组织)粮食和农业组织蒸发蒸发 - 在时间和空间标准下的哈尔格里夫斯 - 萨米(HS)模型 - 以Duero Basin(西班牙)为例

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The evapotranspiration-based scheduling method is the most common method for irrigation programming in agriculture. There is no doubt thatthe estimation of the reference evapotranspiration?(ETo) is a key factor in irrigated agriculture. However, the high cost and maintenance of agrometeorological stations and high number of sensors required to estimate it make it non-plausible, especially in rural areas. For this reason, the estimation of ETo using air temperature, in places where wind speed, solar radiation and air humidity data are not readily available, is particularly attractive. A daily data record of 49?stations distributed over Duero basin (Spain), for the period?2000–2018, was used for estimation of ETo based on seven models against Penman–Monteith (PM) FAO?56 (FAO – Food and Agricultural Organization of the United Nations) from a temporal (annual or seasonal) and spatial perspective. Two Hargreaves–Samani?(HS) models, with and without calibration, and five Penman–Monteith temperature?(PMT) models were used in this study. The results show that the models' performance changes considerably, depending on whether the scale is annual or seasonal. The performance of the seven models was acceptable from an annual perspective (R2>0.91, NSE > 0.88, MAE < 0.52?and RMSE < 0.69 mm d?1; NSE – Nash–Sutcliffe model efficiency; MAE – mean absolute error; RMSE – root-mean-square error). For winter, no model showed good performance. In the rest of the seasons, the models with the bestperformance were the following three models: PMTCUH (Penman–Monteith temperature with calibration of Hargreaves empirical coefficient – kRS, average monthly value of wind speed, and average monthly value of maximum and minimum relative humidity), HSC (Hargreaves–Samani with calibration of?kRS) and PMTOUH (Penman–Monteith temperature without calibration of?kRS, average monthly value of wind speed and average monthly value of maximum and minimum relative humidity). The HSC?model presents a calibration of the Hargreaves empirical coefficient?(kRS). In the PMTCUH model, kRS was calibrated and average monthly values were used for wind speed and maximum and minimum relative humidity. Finally, the PMTOUH model is like the PMTCUH model except thatkRS was not calibrated. These results are very useful for adoptingappropriate measures for efficient water management, especially in theintensive agriculture in semi-arid zones, under the limitation ofagrometeorological data.
机译:基于蒸发的调度方法是农业灌溉规划最常见的方法。毫无疑问,估计参考蒸散物?(ETO)是灌溉农业的关键因素。然而,农业气象站的高成本和维护和维护估计它所需的大量传感器使其使其不合理,特别是在农村地区。因此,使用空气温度估计eTO,在风速,太阳辐射和空气湿度数据不容易获得的地方,是特别有吸引力的。每日数据记录为49次,分布在Duero Basin(西班牙)的时期(西班牙),用于2000-2018,用于根据七个模型(PM)FAO?56(粮农组织 - 粮食和农业)估算ETO联合国组织)从时间(年度或季节性)和空间的角度来看。两个Hargreaves-Samani?(HS)模型,有和没有校准,并在本研究中使用了五个Penman-Monteith温度?(PMT)模型。结果表明,模型的性能大大变化,具体取决于规模是年度还是季节性的。七种模型的性能是可接受的,从年度视角(R2> 0.91,NSE> 0.88,MAE <0.52?和RMSE <0.69 mm D?1; NSE - NASH-SUTCLIFFE模型效率; MAE - 意味着绝对误差; RMSE - 根均方误差)。对于冬季,没有模型表现出良好的表现。在剩下的季节中,具有最佳形态的型号是以下三种型号:PMTCUH(Penman-Monteith温度,校准Hargreaves经验系数 - KRS,风速的平均月度值和最大和最小相对湿度的平均月度值),HSC(Hargreaves-Samani,具有校准?KRS)和PMTOUH(Penman-Monteith温度没有校准?KRS,风速的平均月度和最大月平均值值和最大相对湿度)。 HSC?模型呈现了Hargreaves经验系数的校准?(KRS)。在PMTCUH模型中,KRS被校准,平均每月值用于风速和最大和最小相对湿度。最后,PMTOUH模型就像是PMTCUH模型,但没有校准。这些结果对于采用高效水资源管理,特别是在半干旱地区的耐高采烈农业中,这些结果非常有用,特别是在半干旱区的局限性数据的限制下。

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