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A Probabilistic Nonlinear Model for Forecasting Daily Water Level in Reservoir

机译:储集层每日水位预报的概率非线性模型

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Accurate prediction and monitoring of water level in reservoirs is an important task for the planning, designing, and construction of river-shore structures, and in taking decisions regarding irrigation management and domestic water supply. In this work, a novel probabilistic nonlinear approach based on a hybrid Bayesian network model with exponential residual correction has been proposed for prediction of reservoir water level on daily basis. The proposed approach has been implemented for forecasting daily water levels of Mayurakshi reservoir (Jharkhand, India), using a historic data set of 22 years. A comparative study has also been carried out with linear model (ARIMA) and nonlinear approaches (ANN, standard Bayesian network (BN)) in terms of various performance measures. The proposed approach is comparable with the observed values on every aspect of prediction, and can be applied in case of scarce data, particularly when forcing parameters such as precipitation and other meteorological data are not available.
机译:准确预测和监测水库中的水位是规划,设计和建造河岸结构以及做出有关灌溉管理和生活用水决策的重要任务。在这项工作中,提出了一种基于带指数残差校正的混合贝叶斯网络模型的新型概率非线性方法,用于每日预测水库水位。使用22年的历史数据集,已经实施了拟议的方法来预测Mayurakshi水库(印度贾坎德邦)的每日水位。就各种性能指标而言,还已经使用线性模型(ARIMA)和非线性方法(ANN,标准贝叶斯网络(BN))进行了比较研究。所提出的方法在各个方面都可以与观测值相比较,并且可以用于缺乏数据的情况,特别是在诸如降水和其他气象数据等强迫参数不可用时。

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