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Probability Analysis of Crop Water Stress Index: An Application of Double Bounded Density Function (DB-CDF)

机译:作物水分胁迫指数的概率分析:双界密度函数(DB-CDF)的应用

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摘要

Soil moisture is an uncertain variable due to rainfall randomness. Furthermore, its density function is hybrid in nature, with spikes at maximum and minimum soil moisture (saturation and field capacity). Both of these properties are also considered for crop water stress index. The crop water stress index can be used to show the sensitivity of a crop to deficit irrigation. In this paper, a new methodology is proposed to probability analysis of water stress index using Double Bounded Density Function (DB-CDF) and moment analysis of crop water stress index. For this purpose, two equations were developed for the first and second moments of water stress index. To find out the value of the proposed moment equations, they are used as constraints in a stochastic model of crop water allocation as developed previously by Ganji and Shekarrizfard (Water Resour Manage 25:547-561, 2010). After verification of the model, the DB-CDF of soil moisture stress index was estimated using the value of proposed moments in the growing periods. The results show that in case of deficit irrigation, the probability of crop water stress occurrence is high and as a consequence, any unpredictable water shortage leads to yield reduction. The application of the proposed methodology is novel and has not been reported in the literature to date.
机译:由于降雨的随机性,土壤水分是不确定的变量。此外,它的密度函数本质上是混合的,在最大和最小土壤湿度(饱和度和田间持水量)上都有峰值。这两个特性也被认为是作物水分胁迫指数。作物水分胁迫指数可用于显示作物对亏缺灌溉的敏感性。本文提出了一种利用双界密度函数(DB-CDF)对作物水分胁迫指数进行概率分析和对作物水分胁迫指数进行矩分析的新方法。为此,针对水压力指数的第一和第二时刻开发了两个方程式。为了找出拟议的矩方程的值,它们被用作Ganji和Shekarrizfard先前开发的农作物水分配随机模型的约束(Water Resour Manage 25:547-561,2010)。在模型验证之后,使用建议的生长期矩值估算了土壤水分胁迫指数的DB-CDF。结果表明,在灌溉不足的情况下,作物水分胁迫发生的可能性很高,因此,任何不可预测的缺水都会导致产量下降。所提出的方法的应用是新颖的,迄今为止尚未在文献中进行报道。

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