Department of Civil Engineering, Isfahan University of Technology, Isfahan, Iran.
Environ Monit Assess. 2020 Nov 19;192(12):767. doi: 10.1007/s10661-020-08727-y.
In this paper, a new version of the multi-objective particle swarm optimizer named the Diversity-enhanced fuzzy multi-objective particle swarm optimization (f-MOPSO/Div) algorithm is proposed. This algorithm is an improved version of our recently proposed f-MOPSO. In the proposed algorithm, a new characteristic of the particles in the objective space, which we named the "extremity," is also evaluated, along with the Pareto dominance, to appoint proper guides for the particles in the search space. Three improvements are applied to the f-MOPSO to mitigate its shortcomings, generating f-MOPSO/Div: (1) selecting the global best solution based on the diversity of the extreme solutions, (2) impeding the particles to be trapped in the local optima using a mutation scheme based on the dynamic probability, and (3) removing the pre-optimization process. To validate f-MOPSO/Div, it was compared with some other popular multi-objective algorithms on 14 standard low- and high-dimensional test problem suites. After the comparative results indicated the outperformance of the proposal, the f-MOPSO/Div was applied to solve an optimal conjunctive water use management problem, in a semi-arid study area in west-central Iran, over a 13-year long-term planning period with two main objectives: (1) maximizing the aquifer sustainability as an environmental goal, and (2) maximizing the crop yields as a socio-economic goal. As the results suggest, the cumulative groundwater level drawdown is considerably decreased over the whole planning period to make the aquifer sustainable, while the water productivity is held at a desirable level, demonstrating the superiority of the f-MOPSO/Div when also applied to solve a large-scale real-world optimization problem.
本文提出了一种名为多样性增强模糊多目标粒子群优化算法(f-MOPSO/Div)的新版本多目标粒子群优化算法。该算法是我们最近提出的 f-MOPSO 的改进版本。在提出的算法中,还评估了粒子在目标空间中的一个新特性,我们称之为“端点”,以及 Pareto 支配,以便为搜索空间中的粒子指定适当的指导。对 f-MOPSO 进行了三项改进,以减轻其缺点,生成 f-MOPSO/Div:(1)根据极端解的多样性选择全局最优解,(2)使用基于动态概率的突变方案阻止粒子陷入局部最优,(3)去除预优化过程。为了验证 f-MOPSO/Div,将其与其他一些流行的多目标算法在 14 个标准的低维和高维测试问题套件上进行了比较。在比较结果表明该提议的优越性之后,将 f-MOPSO/Div 应用于解决伊朗中西部半干旱地区一个 13 年长期规划期内的最优联合用水管理问题,有两个主要目标:(1)最大化含水层可持续性作为环境目标,(2)最大化作物产量作为社会经济目标。结果表明,整个规划期内地下水水位下降幅度明显减小,使含水层可持续,而水生产力保持在理想水平,证明了 f-MOPSO/Div 在解决大规模实际优化问题时的优越性。