Improved Flower Pollination Algorithm for Optimal Groundwater Management

S. Akram
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引用次数: 1

Abstract

Groundwater management problems are typically of a large-scale nature, involving complex nonlinear objective functions and constraints, which are commonly evaluated through the use of numerical simulation models. Given these complexities, metaheuristic optimization algorithms have recently become popular choice for solving such complex problems which are difficult to solve by traditional methods. However, the practical applications of metaheuristics are severely challenged by the requirement of large number of function evaluations to achieve convergence. To overcome this shortcoming, many new metaheuristics and different variants of existing ones have been proposed in recent years. In this study, a recently developed algorithm called flower pollination algorithm (FPA) is investigated for optimal groundwater management. The FPA is improved, combined with the widely used groundwater flow simulation model MODFLOW, and applied to solve two groundwater management problems. The proposed algorithm, denoted as IFPA, is first tested on a hypothetical aquifer system, to minimize the total pumping to contain contaminated groundwater within a capture zone. IFPA is then applied to maximize the total annual pumping from existing wells in Rhis-Nekor unconfined coastal aquifer on the northern of Morocco. The obtained results indicate that IFPA is a promising method for solving groundwater management problems as it outperforms the standard FPA and other algorithms applied to the case studies considered, both in terms of convergence rate and solution quality.
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地下水最优管理的改进花授粉算法
地下水管理问题通常具有大规模性质,涉及复杂的非线性目标函数和约束,通常通过使用数值模拟模型来评估。鉴于这些复杂性,元启发式优化算法近年来成为解决传统方法难以解决的复杂问题的热门选择。然而,元启发式的实际应用受到了大量函数求值以实现收敛的严峻挑战。为了克服这一缺点,近年来提出了许多新的元启发式方法和现有方法的不同变体。本文研究了一种新的地下水优化管理算法——花授粉算法(FPA)。对FPA进行改进,结合广泛使用的地下水流量模拟模型MODFLOW,并应用于解决两个地下水管理问题。提出的算法,表示为IFPA,首先在一个假设的含水层系统上进行测试,以尽量减少总抽水,以在捕获区内容纳受污染的地下水。然后,利用IFPA最大限度地提高摩洛哥北部riss - nekor沿岸无承压含水层现有水井的年抽水总量。所获得的结果表明,IFPA是解决地下水管理问题的一种很有前途的方法,因为它在收敛速度和解质量方面都优于标准FPA和其他应用于案例研究的算法。
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