Department of Civil Engineering, Isfahan University of Technology, Isfahan, Iran.
Environ Monit Assess. 2022 Mar 8;194(4):261. doi: 10.1007/s10661-022-09909-6.
Gradually, the previously proposed water resource management schemes and reservoir operating policies adjusted to the historically experienced climatic conditions are losing their validity and efficacy, urging building up the models compatible with the likely climatic change conditions at the future. This paper aims at optimizing the reservoir operation under climate change conditions targeting the objectives including (1) minimizing the shortages in meeting the reservoir downstream water demands and (2) maximizing the sustainability of the reservoir storage. For evaluating the effects of the climate change, six general circulation models (GCMs) built up under the representative concentration pathway (RCP4.5) emission scenario are adopted and utilized to predict the climate variables over a 30-year planning period. To solve this problem, an improved version of our recently proposed fuzzy multi-objective particle swarm optimization (f-MOPSO) algorithm, named f-MOPSO-II, is proposed. The f-MOPSO takes a novel approach to handle multi-objective nature of the optimization problems. In this approach, the common concept of "diversity" is replaced with "extremity," to choose the better guides of the search agents in the algorithm. The f-MOPSO-II is based on the f-MOPSO. However, it is aimed at simultaneously mitigating the f-MOPSO computational complexity and enhancing the quality of the final results presented by this algorithm. The results obtained by the f-MOPSO-II were then compared with those yielded by the popular non-dominated sorting genetic algorithm-II (NSGA-II). As the results suggest, the f-MOPSO-II is capable of simultaneously meeting the water demands and holding the reservoir storage sustainable, much better than the NSGA-II.
逐渐地,先前提出的水资源管理方案和水库运行策略调整以适应历史上经历的气候条件,正在失去其有效性和功效,因此迫切需要建立与未来可能的气候变化条件相兼容的模型。本文旨在针对以下目标,优化气候变化条件下的水库运行:(1)将满足水库下游用水需求的短缺降至最低,(2)将水库存储的可持续性最大化。为了评估气候变化的影响,采用了在代表性浓度途径 (RCP4.5) 排放情景下建立的六个通用循环模型 (GCM),用于预测 30 年规划期内的气候变量。为了解决这个问题,提出了我们最近提出的模糊多目标粒子群优化 (f-MOPSO) 算法的改进版本,称为 f-MOPSO-II。f-MOPSO 采用了一种新颖的方法来处理优化问题的多目标性质。在这种方法中,用“极端”代替了“多样性”的概念,以便在算法中选择更好的搜索代理的指南。f-MOPSO-II 基于 f-MOPSO。然而,它旨在同时降低 f-MOPSO 的计算复杂度,并提高该算法最终结果的质量。然后将 f-MOPSO-II 的结果与流行的非支配排序遗传算法-II (NSGA-II) 的结果进行比较。结果表明,f-MOPSO-II 能够同时满足用水需求并保持水库存储可持续性,比 NSGA-II 要好得多。