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Agricultural Water Allocation by Integration of Hydro-Economic Modeling with Bayesian Networks and Random Forest Approaches

机译:通过贝叶斯网络与随机森林方法相结合的水力经济模型进行农业用水分配

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Sustainable utilization of water resources requires preventive measures that must be taken to promote optimal use of water resources together with consideration of stakeholder interests and the economic value of water. The main objective of this study is to present an integrated hydro-economic model for allocating agricultural water based on its economic value. The study region covered six irrigation networks downstream of the Zayandeh Rood Dam in Iran. In fact, this study addresses questions of how to allocate scarce water to different consumers, in order to achieve the highest efficiency and economic benefits. To gain this goal, the existing agricultural activities in each irrigation network were simulated by applying the Positive Mathematical Programming (PMP) economic model and then by coupling the economic model with a water allocation planning model of the basin (MODSIM), the hydro-economic framework was generated. These tools helped to allocate water based on its economic value, maximize net profit by determining the optimal cultivating area and analyze the effects of various allocation scenarios on employment, economic productivity, and reliability indicators. Moreover, Bayesian Networks and Random Forest algorithms were developed as an automated substitute to simplify the process and reduce computational complexity. The results showed that the Nekoabad Network enjoys top priority followed by the Barkhar, Mahyar, Sonati, Abshar, and Rodasht Networks. After implementing the Bayesian Network, the four criteria of MAE, MAPE, R-2, and the Nash-Sutcliffe index for the irrigation networks were 9 MCM, 24%, 0.738, and 0.644 respectively, which indicated the model has good accuracy. Random Forest method was also employed as a novel technique in automated allocation, and the values obtained for the four mentioned criteria were 7 MCM, 15%, 0.861, and 0.80, which showed it is more accurate. The results indicated the capability of the presented hydro-economic model as well as the intelligent models substituting it in allocating agricultural water.
机译:水资源的可持续利用需要采取预防措施,以促进水资源的最佳利用,同时考虑利益相关者的利益和水资源的经济价值。这项研究的主要目的是提出一个综合的水-经济模型,用于根据其经济价值分配农业用水。该研究区域覆盖了伊朗Zayandeh Rood大坝下游的六个灌溉网络。实际上,这项研究解决了如何将稀缺水分配给不同消费者的问题,以实现最高的效率和经济效益。为了实现这一目标,通过应用正数学规划(PMP)经济模型,然后将该经济模型与流域水分配计划模型(MODSIM)耦合,模拟了每个灌溉网络中现有的农业活动。框架已生成。这些工具有助于根据水的经济价值分配水,通过确定最佳耕种面积来最大化净利润,并分析各种分配方案对就业,经济生产率和可靠性指标的影响。此外,贝叶斯网络和随机森林算法被开发为自动替代品,以简化过程并降低计算复杂性。结果表明,Nekoabad网络具有最高优先级,其次是Barkhar,Mahayar,Sonati,Abshar和Rodasht网络。实施贝叶斯网络后,灌溉网络的MAE,MAPE,R-2和Nash-Sutcliffe指数的四个标准分别为9 MCM,24%,0.738和0.644,这表明该模型具有良好的准确性。随机森林法也被用作自动分配中的一种新技术,四个提到的标准获得的值分别为7 MCM,15%,0.861和0.80,这表明它更准确。结果表明,所提出的水力经济模型的功能以及替代农业用水的智能模型的能力。

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