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An Optimal Operation Model for Hydropower Stations Considering Inflow Forecasts with Different Lead-Times

机译:考虑提前期流量预测的水电站优化调度模型

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摘要

To make full use of inflow forecasts with different lead times, a new reservoir operation model that considers the long-, medium- and short-term inflow forecasts (LMS-BSDP) for the real-time operation of hydropower stations is presented in this paper. First, a hybrid model, including a multiple linear regression model and the Xinanjiang model, is developed to obtain the 10-day inflow forecasts, and ANN models with the circulation indexes as inputs are developed to obtain the seasonal inflow forecasts. Then, the 10-day inflow forecast is divided into two segments, the first 5days and the second 5days, and the seasonal inflow forecast is deemed as the long-term forecast. Next, the three inflow forecasts are coupled using the Bayesian theory to develop LMS-BSDP model and the operation policies are obtained. Finally, the decision processes for the first 5days and the entire 10days are made according to their operation policies and the three inflow forecasts, respectively. The newly developed model is tested with the Huanren hydropower station located in China and compared with three other stochastic dynamic programming models. The simulation results demonstrate that LMS-BSDP performs best with higher power generation due to its employment of the long-term runoff forecast. The novelties of the present study lies in that it develops a new reservoir operation model that can use the long-, medium- and short-term inflow forecasts, which is a further study about the combined use of the inflow forecasts with different lead times based on the existed achievements.
机译:为了充分利用不同提前期的流量预测,本文提出了一种新的水库运行模型,该模型考虑了水电站实时运行的长期,中期和短期流量预测(LMS-BSDP)。 。首先,建立了包括多元线性回归模型和新安江模型的混合模型,以获得10天的流量预测,并建立了以流通指数为输入的ANN模型,以获取季节性流量预测。然后,将10天的流量预测分为两个部分,前5天和后5天,并将季节性流量预测视为长期预测。接下来,利用贝叶斯理论将三个入流预测结合起来,建立LMS-BSDP模型,并获得运行策略。最后,分别根据其操作策略和三个流量预测来制定前5天和整个10天的决策过程。新开发的模型已在位于中国的the仁水电站进行了测试,并与其他三个随机动态规划模型进行了比较。仿真结果表明,由于采用了长期径流预报,因此LMS-BSDP在发电量更高的情况下表现最佳。本研究的新颖之处在于,它开发了一种可以使用长期,中期和短期流量预测的新油藏运行模型,这是对基于不同提前期的流量预测组合使用的进一步研究。关于已有的成就。

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