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首页> 外文期刊>Journal of Advances in Modeling Earth Systems >Lessons Learned From Modeling Irrigation From Field to Regional Scales
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Lessons Learned From Modeling Irrigation From Field to Regional Scales

机译:从地区到区域尺度的灌溉中学到的经验教训

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Correctly calculating the timing and amount of crop irrigation is crucial for capturing irrigation effects on surface water and energy budgets and land‐atmosphere interactions. This study incorporated a dynamic irrigation scheme into the Noah with multiparameterization land surface model and investigated three methods of determining crop growing season length by agriculture management data. The irrigation scheme was assessed at field scales using observations from two contrasting (irrigated and rainfed) AmeriFlux sites near Mead, Nebraska. Results show that crop‐specific growing‐season length helped capture the first application timing and total irrigation amount, especially for soybeans. With a calibrated soil‐moisture triggering threshold (IRR_CRI), using planting and harvesting dates alone could reasonably predict the first application for maize. For soybeans, additional constraints on growing season were required to correct an early bias in the first modeled application. Realistic leaf area index input was essential for identifying the leaf area index‐based growing season. When transitioning from field to regional scales, the county‐level calibrated IRR_CRI helped mitigate overestimated (underestimated) total irrigation amount in southeastern Nebraska (lower Mississippi River Basin). In these two heavily irrigated regions, irrigation produced a cooling effect of 0.8–1.4 K, a moistening effect of 1.2–2.4 g/kg, a reduction in sensible heat flux by 60–105 W/m 2 , and an increase in latent heat flux by 75–120 W/m 2 . Most of irrigation water was used to increase soil moisture and evaporation, rather than runoff. Lacking regional‐scale irrigation timing and crop‐specific parameters makes transferring the evaluation and parameter‐constraint methods from field to regional scales difficult.
机译:正确计算作物灌溉的时间和数量对于捕获对地表水和能源预算和土地气氛相互作用的灌溉作用至关重要。该研究将动态灌溉方案纳入NoAH,用多次拉米表面模型,并研究了农业管理数据确定作物生长季节长度的三种方法。在现场鳞片中评估灌溉方案,使用来自Mead附近的麦布拉斯加州附近的两种对比(灌溉和雨量)的Ameriflux位点的观察来评估。结果表明,作物特异性生长季节长度有助于捕获第一个应用时机和全灌溉量,特别是对于大豆。通过校准的土壤 - 水分触发阈值(IRR_CRI),单独使用种植和收获日期可以合理地预测玉米的第一个应用。对于大豆,需要对生长季节的额外限制来纠正第一个建模应用中的早期偏见。现实叶面积指数输入对于识别叶面积指数的生长季节至关重要。当从现场转变为区域尺度时,县级校准的IRR_CRI有助于减轻内布拉斯加州东南部的高估(低估)总灌溉量(小密西西比河流域)。在这两种灌溉区域中,灌溉产生的冷却效果为0.8-1.4k,润湿效果为1.2-2.4g / kg,可显着的热通量减少60-105 w / m 2,并增加潜热的增加助焊剂通过75-120 w / m 2。大多数灌溉用水用于增加土壤水分和蒸发,而不是径流。缺乏区域规模的灌溉时机和作物特定参数使得从现场转移到区域尺度的评估和参数约束方法困难。

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