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Optimization of hydropower reservoirs operation balancing generation benefit and ecological requirement with parallel multi-objective genetic algorithm

机译:并行多目标遗传算法优化水库运行平衡发电效益和生态需求

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摘要

Recently, with increasing attention paid to energy production and ecological protection, the hydropower reservoirs operation balancing generation benefit and ecological requirement is playing an important role in water resource and power systems. Thus, the parallel multi-objective genetic algorithm is introduced to effectively resolve this multi-objective constrained optimization problem with two competing objectives and numerous physical constraints. In the proposed method, the original large-sized swarm is decomposed into several smaller subpopulations that will be simultaneously evolved on several computing units, effectively enhancing the execution efficiency and population diversity. During the evolutionary process, the chaotic initialization method is used to enhance the quality of initial population, while the feasible space identification method and the modified domination strategy are designed to improve the feasibility of solution and convergence rate of individuals. The results from the Wu hydropower system of China show that the presented method can make full use of computationally expensive resources to improve the performance of population. For instance, compared with the traditional method, the presented method can make 69.23% and 27.44% improvements in the standard deviation of power generation and water deficit in normal year, respectively. Thus, this paper provides an effective tool to support the multi-objective operation optimization of hydropower system.
机译:近来,随着对能源生产和生态保护的日益重视,水电库运行在发电效益和生态需求之间取得平衡,在水资源和电力系统中发挥着重要作用。因此,引入并行多目标遗传算法可以有效地解决具有两个竞争目标和众多物理约束的多目标约束优化问题。在提出的方法中,将原始的大群分解为几个较小的子种群,这些子种群将同时在几个计算单元上演化,从而有效地提高了执行效率和种群多样性。在进化过程中,采用混沌初始化方法提高初始种群的质量,设计可行的空间识别方法和改进的控制策略,以提高个体求解和收敛速度的可行性。中国the水电系统的结果表明,该方法可以充分利用计算上昂贵的资源来提高人口的绩效。例如,与传统方法相比,该方法可以使正常年份的发电和缺水标准偏差分别提高69.23%和27.44%。因此,本文为水电系统的多目标运行优化提供了有效的工具。

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