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Seasonal Hydropower Planning for Data-Scarce Regions Using Multimodel Ensemble Forecasts, Remote Sensing Data, and Stochastic Programming

机译:使用多模型集合预报,遥感数据和随机规划对数据匮乏地区进行季节性水电规划

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摘要

In data-scarce regions, seasonal hydropower planning is hindered by the unavailability of reliable long-term streamflow observations, which are required for the construction of inflow scenario trees. In this study, we develop a methodological framework to overcome the problem of streamflow data scarcity by combining precipitation forecasts from ensemble numerical weather prediction models, spatially distributed hydrologic models, and stochastic programming. We use evapotranspiration as a proxy for streamflow in generating reliable reservoir inflow forecasts. Using the framework, we compare three different formulations of inflow scenario structures and their applicability to data-scarce regions: (1) a single deterministic forecast, (2) a scenario fan with the first stage deterministic, and (3) a scenario fan with all stages stochastic. We apply the framework to a cascade of two reservoirs in the Omo-Gibe River basin in Ethiopia. Future reservoir inflows are generated using a 3-model 30-member ensemble seasonal precipitation forecast from the North American Multimodel Ensemble and the Noah-MP hydrologic model. We then perform deterministic and stochastic optimization for hydropower operation and planning. Comparing the results from the three different inflow scenario structures, we observe that the uncertainty in reservoir inflows is significant only for the dry stages of the planning horizon. In addition, we find that the impact of model parameter uncertainty on hydropower production is significant (0.14-0.18x10(6) MWh).
机译:在数据稀少的地区,由于缺乏可靠的长期水流观测值,季节性水电规划受到了阻碍,而这是流入情景树的构建所必需的。在这项研究中,我们通过结合整体数值天气预报模型,空间分布水文模型和随机规划中的降水预报,开发了一种方法框架来克服水流数据稀缺的问题。在生成可靠的储层入流预测时,我们使用蒸散量作为水流的代理。使用该框架,我们比较了流入情景结构的三种不同表示形式及其对数据稀缺区域的适用性:(1)单一确定性预测,(2)具有第一阶段确定性的情景迷,以及(3)具有所有阶段都是随机的。我们将该框架应用于埃塞俄比亚Omo-Gibe河流域的两个水库的级联。未来的水库流入量是使用由北美多模式合奏团和Noah-MP水文模型得出的3个模型,由30个成员组成的集合性季节性降水预报而产生的。然后,我们对水电运营和规划进行确定性和随机性优化。比较来自三种不同流入情景结构的结果,我们观察到水库流入的不确定性仅在计划阶段的干旱阶段才有意义。此外,我们发现模型参数不确定性对水力发电的影响很大(0.14-0.18x10(6)MWh)。

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