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Forecasting Quarterly Inflow to Reservoirs Combining a Copula-Based Bayesian Network Method with Drought Forecasting

机译:将基于Copula的贝叶斯网络方法与干旱预测相结合的储层季度流量预测

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Especially for periods of drought, the higher the accuracy of reservoir inflow forecasting is, the more reliable the water supply from a dam is. This article focuses on the probabilistic forecasting of quarterly inflow to reservoirs, which determines estimates from the probabilistic quarterly inflow according to drought forecast results. The probabilistic quarterly inflow was forecasted by a copula-based Bayesian network employing a Gaussian copula function. Drought forecasting was performed by calculation of the standardized inflow index value. The calendar year is divided into four quarters, and the total inflow volume of water to a reservoir for three months is referred to as the quarterly inflow. Quarterly inflow forecasting curves, conforming to drought stages, produce estimates of probabilistic quarterly inflow according to the drought forecast results. The forecasted estimates of quarterly inflow were calculated by using the inflow records of Soyanggang and Andong dams in the Republic of Korea. After the probability distribution of the quarterly inflow was determined, a lognormal distribution was found to be the best fit to the quarterly inflow volumes in the case of the Andong dam, except for those of the third quarter. Under the threshold probability of drought occurrences ranging from 50% to 55%, the forecasted quarterly inflows reasonably matched the corresponding drought records. Provided the drought forecasting is accurate, combining drought forecasting with quarterly inflow forecasting can produce reasonable estimates of drought inflow based on the probabilistic forecasting of quarterly inflow to a reservoir.
机译:特别是在干旱时期,水库入库量预测的准确性越高,大坝的供水就越可靠。本文着重于对水库季度入库流量的概率预测,该预测根据干旱预测结果从概率的季度入库流量确定估算值。概率季度流入量是通过采用高斯系函数的基于系的贝叶斯网络预测的。通过计算标准入水指数值进行干旱预报。日历年分为四个季度,三个月到水库的水总流入量称为季度流入量。符合干旱阶段的季度流量预报曲线根据干旱预测结果得出概率性季度流量估算值。使用大韩民国的Soyanggang和Andong大坝的入水记录来计算季度入水量的预测值。确定季度入水量的概率分布后,对于安东大坝,除了第三季度的对数正态分布被发现最适合季度入水量。在干旱发生阈值概率为50%至55%的情况下,预测的季度流入量与相应的干旱记录合理匹配。如果干旱预测是准确的,则将干旱预测与季度入流量预测相结合可以根据对水库季度入库流量的概率预测得出合理的干旱入流估计。

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