Fatkhutdinov Aybulat, Stefan Catalin
Junior Research Group "INOWAS," Department of Hydrosciences, Technische Universität Dresden, Dresden, 01062, Germany.
Ground Water. 2019 Mar;57(2):238-244. doi: 10.1111/gwat.12793. Epub 2018 May 15.
This study demonstrates the utilization of a multi-objective hybrid global/local optimization algorithm for solving managed aquifer recharge (MAR) design problems, in which the decision variables included spatial arrangement of water injection and abstraction wells and time-variant rates of pumping and injection. The objective of the optimization was to maximize the efficiency of the MAR scheme, which includes both quantitative and qualitative aspects. The case study used to demonstrate the capabilities of the proposed approach is based on a published report on designing a real MAR site with defined aquifer properties, chemical groundwater characteristics as well as quality and volumes of injected water. The demonstration problems include steady state and transient scenarios. The steady state scenario demonstrates optimization of spatial arrangement of multiple injection and recovery wells, whereas the transient scenario was developed with the purpose of finding optimal regimes of water injection and recovery at a single location. Both problems were defined as multi-objective problems. The scenarios were simulated by applying coupled numerical groundwater flow and solute transport models: MODFLOW-2005 and MT3D-USGS. The applied optimization method was a combination of global (the non-dominated sorting genetic algorithm [NSGA-2]) and local (the Nelder-Mead downhill simplex search algorithms). The analysis of the resulting Pareto optimal solutions led to the discovery of valuable patterns and dependencies between the decision variables, model properties, and problem objectives. Additionally, the performance of the traditional global and the hybrid optimization schemes were compared.
本研究展示了一种多目标混合全局/局部优化算法在解决含水层管理回灌(MAR)设计问题中的应用,其中决策变量包括注水井和抽水井的空间布局以及抽水和注水的时变率。优化的目标是使MAR方案的效率最大化,该效率包括定量和定性两个方面。用于证明所提方法能力的案例研究基于一份已发表的报告,该报告涉及设计一个具有特定含水层特性、化学地下水特征以及注入水水质和水量的真实MAR场地。示范问题包括稳态和瞬态情景。稳态情景展示了多个注水井和回灌井空间布局的优化,而瞬态情景的设定目的是找到单个位置注水和回灌的最优方案。这两个问题均被定义为多目标问题。通过应用耦合的数值地下水流和溶质运移模型:MODFLOW - 2005和MT3D - USGS对情景进行了模拟。所应用的优化方法是全局方法(非支配排序遗传算法[NSGA - 2])和局部方法(Nelder - Mead下山单纯形搜索算法)的组合。对所得帕累托最优解的分析揭示了决策变量、模型属性和问题目标之间有价值的模式和相关性。此外,还比较了传统全局优化方案和混合优化方案的性能。