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Applying Genetic Algorithm and Neural Network to the Conjunctive Use of Surface and Subsurface Water

机译:遗传算法和神经网络在地表水与地下水联合利用中的应用

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The conjunctive use of surface and subsurface water is one of the most effective ways to increase water supply reliability with minimal cost and environmental impact. This study presents a novel stepwise optimization model for optimizing the conjunctive use of surface and subsurface water resource management. At each time step, the proposed model decomposes the nonlinear conjunctive use problem into a linear surface water allocation sub-problem and a nonlinear groundwater simulation sub-problem. Instead of using a nonlinear algorithm to solve the entire problem, this decomposition approach integrates a linear algorithm with greater computational efficiency. Specifically, this study proposes a hybrid approach consisting of Genetic Algorithm (GA), Artificial Neural Network (ANN), and Linear Programming (LP) to solve the decomposed two-level problem. The top level uses GA to determine the optimal pumping rates and link the lower level sub-problem, while LP determines the optimal surface water allocation, and ANN performs the groundwater simulation. Because the optimization computation requires many groundwater simulations, the ANN instead of traditional numerical simulation greatly reduces the computational burden. The high computing performance of both LP and ANN significantly increase the computational efficiency of entire model. This study examines four case studies to determine the supply efficiencies under different operation models. Unlike the high interaction between climate conditions and surface water resource, groundwater resources are more stable than the surface water resources for water supply. First, results indicate that adding an groundwater system whose supply productivity is just 8.67 % of the entire water requirement with a surface water supply first (SWSF) policy can significantly decrease the shortage index (SI) from 2.93 to 1.54. Second, the proposed model provides a more efficient conjunctive use policy than the SWSF policy, achieving further decrease from 1.54 to 1.13 or 0.79, depending on the groundwater rule curves. Finally, because of the usage of the hybrid framework, GA, LP, and ANN, the computational efficiency of proposed model is higher than other models with a purebred architecture or traditional groundwater numerical simulations. Therefore, the proposed model can be used to solve complicated large field problems. The proposed model is a valuable tool for conjunctive use operation planning.
机译:地表水和地下水的联合使用是以最小的成本和对环境的影响来提高供水可靠性的最有效方法之一。这项研究提出了一个新的逐步优化模型,以优化地表和地下水资源管理的联合使用。在每个时间步长,所提出的模型都将非线性联合使用问题分解为线性地表水分配子问题和非线性地下水模拟子问题。这种分解方法不是使用非线性算法来解决整个问题,而是集成了具有更高计算效率的线性算法。具体而言,本研究提出了一种由遗传算法(GA),人工神经网络(ANN)和线性规划(LP)组成的混合方法,以解决分解后的两级问题。最高层使用GA来确定最佳抽水速率并联系较低层的子问题,而LP则确定最佳的地表水分配,而ANN进行地下水模拟。由于优化计算需要许多地下水模拟,因此人工神经网络代替了传统的数值模拟,大大减轻了计算负担。 LP和ANN的高计算性能大大提高了整个模型的计算效率。本研究检查了四个案例研究,以确定不同运营模式下的供应效率。与气候条件和地表水资源之间的高度相互作用不同,地下水资源比地表水资源更稳定。首先,结果表明,采用地表水优先(SWSF)策略添加供水生产率仅为总需水量的8.67%的地下水系统可以将短缺指数(SI)从2.93大大降低到1.54。其次,所提出的模型提供了比SWSF政策更有效的联合使用政策,取决于地下水规则曲线,该模型从1.54进一步降低到1.13或0.79。最后,由于使用了混合框架GA,LP和ANN,因此所提出模型的计算效率要高于其他具有纯种架构或传统地下水数值模拟的模型。因此,提出的模型可用于解决复杂的大领域问题。所提出的模型是用于联合使用操作计划的有价值的工具。

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