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Predicting the Water Level Fluctuation in an Alpine Lake Using Physically Based, Artificial Neural Network, and Time Series Forecasting Models

机译:使用基于物理的人工神经网络和时间序列预测模型预测高山湖泊中的水位波动

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摘要

Accurate prediction of water level fluctuation is important in lake management due to its significant impacts in various aspects. This study utilizes four model approaches to predict water levels in the Yuan-Yang Lake (YYL) in Taiwan: a three-dimensional hydrodynamic model, an artificial neural network (ANN) model (back propagation neural network, BPNN), a time series forecasting (autoregressive moving average with exogenous inputs, ARMAX) model, and a combined hydrodynamic and ANN model. Particularly, the black-box ANN model and physically based hydrodynamic model are coupled to more accurately predict water level fluctuation. Hourly water level data (a total of 7296 observations) was collected for model calibration (training) and validation. Three statistical indicators (mean absolute error, root mean square error, and coefficient of correlation) were adopted to evaluate model performances. Overall, the results demonstrate that the hydrodynamic model can satisfactorily predict hourly water level changes during the calibration stage but not for the validation stage. The ANN and ARMAX models better predict the water level than the hydrodynamic model does. Meanwhile, the results from an ANN model are superior to those by the ARMAX model in both training and validation phases. The novel proposed concept using a three-dimensional hydrodynamic model in conjunction with an ANN model has clearly shown the improved prediction accuracy for the water level fluctuation.
机译:水位波动的准确预测在湖泊管理中非常重要,因为它会在各个方面产生重大影响。本研究利用四种模型方法来预测台湾元阳湖(YYL)中的水位:三维水动力模型,人工神经网络(ANN)模型(反向传播神经网络,BPNN),时间序列预测(具有外部输入的自回归移动平均值,ARMAX)模型,以及流体动力学和ANN组合模型。特别是,将黑匣子ANN模型和基于物理的流体力学模型耦合在一起,可以更准确地预测水位波动。每小时收集一次水位数据(总共7296个观测值),以进行模型校准(训练)和验证。三个统计指标(平均绝对误差,均方根误差和相关系数)用于评估模型性能。总体而言,结果表明,该流体动力学模型可以令人满意地预测在校准阶段的每小时水位变化,但不能在验证阶段。与流体动力学模型相比,ANN和ARMAX模型可以更好地预测水位。同时,在训练和验证阶段,ANN模型的结果均优于ARMAX模型。将三维水动力模型与ANN模型结合使用的新颖概念清楚地显示了水位波动的改进预测精度。

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  • 来源
    《Mathematical Problems in Engineering》 |2015年第13期|708204.1-708204.11|共11页
  • 作者单位

    Natl Taiwan Univ, Hydrotech Res Inst, Taipei 10617, Taiwan;

    Natl United Univ, Dept Civil & Disaster Prevent Engn, Miaoli 36063, Taiwan|Taiwan Typhoon & Flood Res Inst, Natl Appl Res Labs, Taipei 10093, Taiwan;

    Natl United Univ, Dept Civil & Disaster Prevent Engn, Miaoli 36063, Taiwan;

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