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首页> 外文期刊>Human and ecological risk assessment >Multi-objective optimization of cascade reservoirs using NSGA- Ⅱ: A case study of the Three Gorges-Gezhouba cascade reservoirs in the middle Yangtze River, China
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Multi-objective optimization of cascade reservoirs using NSGA- Ⅱ: A case study of the Three Gorges-Gezhouba cascade reservoirs in the middle Yangtze River, China

机译:基于NSGA-Ⅱ的梯级水库多目标优化-以长江中游三峡-葛洲坝梯级水库为例。

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A multi-objective optimization model of cascade reservoirs was developed to maximize the power generation and minimizie the appropriate ecological flow shortage index (AEFSI) downstream from the reservoir. Additionally, the non-dominated sorting genetic algorithm (NSGA-II) was used to search for multi-objective Pareto optimal solutions. The paper took the Three Gorges-Gezhouba cascade reservoirs as a case study. After validating the model, data from three typical years were used in the optimization. The results indicated that maximizing power generation by adjusting the optimal rules increased power generation by 1.07%, 0.91%, and 1.03% in normal, wet, and dry hydrological years, respectively, while increasing the AEFSI by 22.12%, 11.78%, and 14.67% (compared to real operations). The AEFSI was improved (decreased) by 21.90%, 10.27%, and 18.52% when the optimal rules favored the downstream ecology, but power generation decreased by 1.61%, 1.06%, and 2.29%, respectively, in the different hydrological years. Moreover, the results provide a set of well-distributed optimal solutions along the Pareto front that allow decision-makers to easily determine the best compromised solutions based on the trade-offs between the economic and ecological benefits. The results of this study provide guidance for decision-makers to improve the comprehensive benefits of the Three Gorges-Gezhouba cascade reservoirs.
机译:建立了梯级水库的多目标优化模型,以最大化发电量并最小化水库下游的适当生态流量短缺指数(AEFSI)。此外,非支配排序遗传算法(NSGA-II)用于搜索多目标Pareto最优解。本文以三峡—葛洲坝梯级水库为例进行了研究。验证模型后,将使用三个典型年份的数据进行优化。结果表明,通过调整最佳规则来最大化发电量,分别在正常,潮湿和干燥水文年期间分别将发电量提高了1.07%,0.91%和1.03%,而将AEFSI分别提高了22.12%,11.78%和14.67 %(与实际操作相比)。当最佳规则有利于下游生态时,AEFSI改善(降低)了21.90%,10.27%和18.52%,但是在不同的水文年中,发电量分别减少了1.61%,1.06%和2.29%。此外,结果提供了一组沿Pareto前沿分布良好的最佳解决方案,使决策者可以根据经济效益和生态效益之间的权衡取舍轻松确定最佳折衷方案。研究结果为决策者提高三峡—葛洲坝梯级水库综合效益提供了指导。

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