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Flood water level modeling and prediction using NARX neural network: Case study at Kelang river

机译:基于NARX神经网络的洪水水位建模与预测-以克朗河为例。

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Flood disaster has becomes major threat around the world because it causes loss of lives and damages to property. Thus, reliable flood prediction is very much needed in order to reduce the effects of flood disaster. Hence, an accurate flood water level prediction is an important task to achieve. Since flood water level fluctuation is highly nonlinear, it is very difficult to predict the flood water level. Artificial Neural Network is well known technique is solving nonlinear cases and Nonlinear Auto Regressive with Exogenous Input (NARX) model is one class of Artificial Neural Network model. Thus, this paper proposes flood water level modeling and prediction using Nonlinear Auto Regressive with Exogenous Input (NARX) model to overcome the nonlinearity problem and come out with an advanced neural network model for the prediction of flood water level 10 hours in advance. The input and output parameters used in this model are based on real-time data obtained from Department of Irrigation and Drainage Malaysia. Results showed that NARX model successfully predicted the flood water level 10 hours ahead of time.
机译:洪水灾害已经成为世界范围内的主要威胁,因为它造成人员伤亡和财产损失。因此,非常需要可靠的洪水预报以减少洪水灾害的影响。因此,准确的洪水水位预测是要实现的重要任务。由于洪水水位波动是高度非线性的,因此很难预测洪水水位。人工神经网络是解决非线性情况的公知技术,而带有外源输入的非线性自回归(NARX)模型是人工神经网络模型的一类。因此,为克​​服非线性问题,本文提出了利用外来输入非线性自回归(NARX)模型进行洪水水位建模和预测的方法,并提出了一种先进的神经网络模型来提前10小时预测洪水水位。该模型中使用的输入和输出参数基于从马来西亚灌溉排水部获得的实时数据。结果表明,NARX模型成功地提前了10小时预测了洪水位。

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