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Bayesian Statistic Forecasting Model for Middle-Term and Long-Term Runoff of a Hydropower Station

机译:水电站中长期径流的贝叶斯统计预测模型

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The middle-term and long-term runoff forecasting model of the hydropower station reservoir is established with the Bayesian statistic forecasting theory; uncertainty of the hydrological forecasting is quantitatively described in the form of a probability distribution to explore the statistic forecasting theory and its application value. The uncertainty of the input factor is processed with the forecasting model of grey correlation of meteorological factors, and real-time weather data are effectively combined with the historical hydrological data to break through the restriction of traditional deterministic forecasting methods in the aspects of information utilization and sample study to improve the precision of hydrological forecasting. The established model has been assessed by the example of the reservoir of the Fengman hydropower plant. It is indicated by the analog computation result that this model, compared with the deterministic runoff forecasting method, has advantages not only in quantitatively considering the uncertainty in decision making, but also in improving the precision of runoff forecasting in the expected significance, and has comparatively high application value.
机译:利用贝叶斯统计预测理论建立了水电站水库中长期径流量预报模型。以概率分布的形式定量描述了水文预报的不确定性,以探讨统计预报理论及其应用价值。输入因子的不确定性用气象因子的灰色关联预测模型进行处理,实时气象数据与历史水文数据有效结合,突破了传统确定性预测方法在信息利用和信息利用方面的局限性。抽样研究,以提高水文预报的精度。以丰满水电站水库为例对建立的模型进行了评估。模拟计算结果表明,与确定性径流预报方法相比,该模型不仅在定量考虑决策中的不确定性方面具有优势,而且在提高径流预报精度方面具有预期意义,具有比较优势。高应用价值。

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