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f-MOPSO: An alternative multi-objective PSO algorithm for conjunctive water use management

机译:f-MOPSO:用于联合用水管理的另一种多目标PSO算法

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In recent years, evolutionary techniques have been widely used to search for the global optimum of combinatorial non-linear non-convex problems. In this paper, we present a new algorithm, named fuzzy Multi-Objective Particle Swarm Optimization (f-MOPSO) to improve conjunctive surface water and groundwater management. The f-MOPSO algorithm is simple in concept, easy to implement, and computationally efficient. It is based on the role of weighting method to define partial performance of each point (solution) in the objective space. The proposed algorithm employs a fuzzy inference system to consider all the partial performances for each point when optimizing the objective function values. The f-MOPSO algorithm was compared with two other well-known MOPSOs through a case study of conjunctive use of surface and groundwater in Najafabad Plain in Iran considering two management models, including a typical 12-month operation period and a 10-year planning horizon. Overall, the f-MOPSO outperformed the other MOPSO algorithms with reference to performance criteria and Pareto-front analysis while nearly fully satisfying water demands with least monthly and cumulative groundwater level (GWL) variation. The proposed algorithm is capable of finding the unique optimal solution on the Pareto-front to facilitate decisions to address large-scale optimization problems. (C) 2016 International Association for Hydro-environment Engineering and Research, Asia Pacific Division. Published by Elsevier B.V. All rights reserved.
机译:近年来,进化技术已广泛用于寻找组合非线性非凸问题的全局最优。在本文中,我们提出了一种新的算法,称为模糊多目标粒子群算法(f-MOPSO),以改善地表水和地下水的联合管理。 f-MOPSO算法概念简单,易于实现且计算效率高。它基于加权方法的作用来定义目标空间中每个点(解决方案)的部分性能。所提出的算法采用模糊推理系统在优化目标函数值时考虑每个点的所有部分性能。通过对伊朗Najafabad平原地表水和地下水的联合使用进行了案例研究,将f-MOPSO算法与其他两个著名的MOPSO进行了比较,其中考虑了两种管理模型,包括典型的12个月运行时间和10年规划期。总体而言,f-MOPSO在性能标准和Pareto前沿分析方面均优于其他MOPSO算法,同时几乎完全满足了用水需求,且每月和累积地下水位(GWL)的变化最少。所提出的算法能够在Pareto-front上找到唯一的最优解,从而有助于解决大规模优化问题的决策。 (C)2016年国际水环境工程与研究协会亚太分会。由Elsevier B.V.发布。保留所有权利。

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