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Quantifying the robustness of optimal reservoir operation for the Xinanjiang-Fuchunjiang Reservoir Cascade

机译:量化新安江-富春江水库梯级优化水库调度的稳健性

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In this research we investigate the robustness of the common implicit stochastic optimization (ISO) method for dam reoperation. As a case study, we focus on the Xinanjiang-Fuchunjiang reservoir cascade in eastern China, for which adapted operating rules were proposed as a means to reduce the impact of climate change and socio-economic developments. The optimizations were based on five different water supply and demand scenarios for the future period from 2011 to 2040. Main uncertainties in the optimization can be traced back to correctness of the assumed supply and demand scenarios and the quality and tuning of the applied optimization algorithm. To investigate the robustness of proposed operation rules, we (1) compare cross-scenario performance of all obtained Pareto-optimal rulesets and (2) investigate whether different metaheuristic optimization algorithms lead to the same results. For the latter we compare the originally used genetic algorithm (Nondominated Sorting Genetic Algorithm II, NSGA-II) with a particle swarm optimization algorithm (MOPSO). Reservoir performance was measured using the shortage index (SI) and mean annual energy production (MAEP) as main indicators. It is found that optimal operating rules, tailored to a specific scenario, deliver at most 2.4% less hydropower when applied to a different scenario, while the SI increases at most with 0.28. NSGA-II and MOPSO are shown to yield approximately the same Pareto-front for all scenarios, even though small differences can be observed.
机译:在这项研究中,我们研究了常见的隐性随机优化(ISO)大坝再操作方法的鲁棒性。作为案例研究,我们关注中国东部的新安江-富春江水库梯级,为此提出了适应性运行规则,以减少气候变化和社会经济发展的影响。优化是基于2011年至2040年未来五个不同的供水和需求情景。优化中的主要不确定性可以追溯到假设的供需情景的正确性以及所应用优化算法的质量和调整。为了研究提出的操作规则的鲁棒性,我们(1)比较所有获得的帕累托最优规则集的跨场景性能,以及(2)研究不同的元启发式优化算法是否得出相同的结果。对于后者,我们将最初使用的遗传算法(非排序排序遗传算法II,NSGA-II)与粒子群优化算法(MOPSO)进行了比较。使用短缺指数(SI)和年平均能源产量(MAEP)作为主要指标来测量储层性能。发现,针对特定情况量身定制的最佳运行规则在应用于不同情况时最多可减少2.4%的水力发电,而SI最多增加0.28。尽管可以观察到很小的差异,但在所有情况下,NSGA-II和MOPSO都显示出大致相同的Pareto-front。

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