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Assessment of the agricultural water budget in southern Iran using Sentinel-2 to Landsat-8 datasets

机译:利用Sentinel-2对伊朗南部农业水预算的评估,以LANDSAT-8数据集

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This paper is a first attempt to compute the total water needs of an agricultural plain with remote sensing and ground data in Iran. The cropping areas were mapped with Sentinels-2 images, based on NDVI profiles classification. This model was validated and 85% of the areas were correctly classified. Second, the crop water needs were computed using PYSEBAL and Landsat-8 images. Crop evapotranspiration (ETseason) and Irrigation Requirements (IRseason) were calculated for each crop and then validated by comparing IR collected in the field from farmers with computed IRPYSEBAL on 5 plots. IRPYSEBAL underestimated the reality with an average of 10% while the overestimation average was 17%. The second validation was the comparison of Daily ET from FAO-56 method and Daily ET PYSEBAL showed a RMSE of 0.67 mm/day and MAE of 0.52 mm/day, which assesses the accuracy of PYSEBAL. ETseason varies according to weather parameters in the plain and IRseason according to different irrigation practices. The most water demanding crops were identified: rice (IR: 1427 mm) and corn (669). The total water balance of Marvdasht was negative in 2018 with 0.2859 km(3) of extracted groundwater for irrigation for only 0.098 km(3) of available water for aquifers recharge.
机译:本文是第一次尝试计算农业平原与伊朗遥感和地面数据的农业平原的总需求。基于NDVI配置文件分类,使用Sentinels-2图像映射裁剪区域。该模型被验证,85%的地区被正确分类。其次,使用PySebal和Landsat-8图像计算作物水需求。为每种作物计算作物蒸散(eteason)和灌溉要求(IRSEAREASEASEASEASEASEASEASEAR),然后通过比较在5个地块上的农民中收集的土地中收集的IR验证。虹量股票低估了平均10%的现实,而高度估计平均值为17%。第二次验证是从FAO-56的日常等比较方法,每日ET PySebal都显示出0.67毫米/天的RMSE,MAE为0.52毫米/天,评估PySebal的准确性。根据不同的灌溉实践,etseason根据平原和灾难中的天气参数而异。确定了最多的水需求作物:米(IR:1427 mm)和玉米(669)。 2018年Marvdasht的总水平为阴性,其中0.2859 km(3)米提取的地下水,仅供含水层的可用水供水。

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