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Multistage stochastic programming modeling for farmland irrigation management under uncertainty

机译:不确定性下农田灌溉管理的多级随机编程模型

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Farmland management and irrigation scheduling are vital to a productive agricultural economy. A multistage stochastic programming model is proposed to maximize farmers’ annual profit under uncertainty. The uncertainties considered include crop prices, irrigation water availability, and precipitation. During the first stage, pre-season decisions including seed type and plant density are made, while determinations of when to irrigate and how much water to be used for each irrigation are made in the later stages. The presented case study, based on a farm in Nebraska, U.S.A., showed that a 10% profit increase could be achieved by taking the corn price and irrigation water availability uncertainties into consideration using two-stage stochastic programming. An additional 13% profit increase could be achieved by taking precipitation uncertainty into consideration using multistage stochastic programming. The stochastic model outperforms the deterministic model, especially when there are limited water supplies. These results indicate that multistage stochastic programming is a promising method for farm-scale irrigation management and can increase farm profitability.
机译:农田管理和灌溉调度对生产性农业经济至关重要。提出了一种多级随机编程模型,以最大化农民在不确定性下的年度利润。考虑的不确定性包括作物价格,灌溉水可用性和降水。在第一阶段,制备包括种子类型和植物密度的季前决照决定,同时确定何时灌溉的时间以及每次灌溉的时间是多少次灌溉。基于内布拉斯加州的农场的案例研究表明,使用两阶段随机规划考虑玉米价格和灌溉水可用性不确定性,可以实现10%的利润增加。通过使用多级随机编程考虑降水不确定性,可以实现额外的13%利润增加。随机模型优于确定性模型,特别是当水供应有限时。这些结果表明,多级随机编程是用于农业规模灌溉管理的有希望的方法,可以提高农业盈利能力。

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