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A multi-time-scale power prediction model of hydropower station considering multiple uncertainties

机译:考虑多重不确定性的水电站多时标功率预测模型

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Hydropower, as one of renewable energies, has been widely used all over the world. The uncertainties such as reservoir inflows and electricity price cause random changes in the output power and the hydropower generation benefit. Thus, it is important to research on the power prediction of hydropower station considering the uncertainties. This study proposes a multi-time-scale power prediction model of hydropower station based on dynamic Bayesian network theory, considering the uncertainties of reservoir inflow, electricity price, and hydropower consumption rate. The proposed model consists of three components: a multi-time-scale coupling operation (MCO) model, a dynamic Bayesian network (DBN) model, and a probability-based prediction (PBP) model for decision making. The MCO model provides training data inputs for the DBN model, which is established based on expert knowledge and the relationships among the uncertainties. The PBP model performs power prediction of the hydropower station for decision making using the trained DBN. We apply the proposed model to the Tankeng hydropower station in China. The results show that the model not only quantitatively predicts the multi-time-scale output power and benefit of the hydropower station considering the uncertainties, but also provides the risks of power generation deficiency and power output deficiency. (C) 2019 Elsevier B.V. All rights reserved.
机译:水电作为可再生能源之一,已在世界范围内得到广泛使用。水库流量和电价等不确定性导致输出功率和水力发电收益的随机变化。因此,在考虑不确定性的前提下,对水力发电量的预测研究具有重要意义。考虑到水库入库水量,电价和水电消耗率的不确定性,本研究提出了基于动态贝叶斯网络理论的水电站多时标电力预测模型。所提出的模型由三个部分组成:多时间尺度耦合操作(MCO)模型,动态贝叶斯网络(DBN)模型和用于决策的基于概率的预测(PBP)模型。 MCO模型为基于专家知识和不确定性之间的关系而建立的DBN模型提供了训练数据输入。 PBP模型执行水电站的功率预测,以使用经过训练的DBN进行决策。我们将提出的模型应用于中国的坦肯水电站。结果表明,该模型不仅在不确定性的基础上定量预测了水电站的多时标输出功率和效益,而且还提供了发电不足和发电不足的风险。 (C)2019 Elsevier B.V.保留所有权利。

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