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Optimal Reservoir Operation Using Multi-Objective Evolutionary Algorithm

机译:多目标进化算法的水库优化调度

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This paper presents a Multi-objective Evolutionary Algorithm (MOEA) to derive a set of optimal operation policies for a multipurpose reservoir system. One of the main goals in multi-objective optimization is to find a set of well distributed optimal solutions along the Pareto front. Classical optimization methods often fail in attaining a good Pareto front. To overcome the drawbacks faced by the classical methods for Multi-objective Optimization Problems (MOOP), this study employs a population based search evolutionary algorithm namely Multi-objective Genetic Algorithm (MOGA) to generate a Pareto optimal set. The MOGA approach is applied to a realistic reservoir system, namely Bhadra Reservoir system, in India. The reservoir serves multiple purposes irrigation, hydropower generation and downstream water quality requirements. The results obtained using the proposed evolutionary algorithm is able to offer many alternative policies for the reservoir operator, giving flexibility to choose the best out of them. This study demonstrates the usefulness of MOGA for a real life multi-objective optimization problem.
机译:本文提出了一种多目标进化算法(MOEA),以导出一套针对多用途水库系统的最优运行策略。多目标优化的主要目标之一是沿着Pareto前沿找到一组分布良好的最优解。经典的优化方法通常无法获得良好的帕累托优势。为了克服传统的多目标优化问题(MOOP)方法所面临的缺点,本研究采用了基于种群的搜索进化算法,即多目标遗传算法(MOGA)来生成帕累托最优集。 MOGA方法已应用于印度的实际储层系统,即Bhadra储层系统。该水库可满足多种用途的灌溉,水力发电和下游水质要求。使用所提出的进化算法获得的结果能够为油藏算子提供许多替代策略,从而可以灵活地选择最佳策略。这项研究证明了MOGA对于现实生活中多目标优化问题的有用性。

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