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Flood prediction using NARX neural network and EKF prediction technique: A comparative study

机译:利用NARX神经网络和EKF预测技术洪水预测:比较研究

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Accurate and reliable flood water level prediction is very difficult to achieve as it is often characterized as chaotic in nature. Prediction using conventional neural network techniques with back propagation algorithm which was widely used does not provide reliable prediction results. Flood water level is characterizing as a dynamic nonlinear properties that cannot be represented by static neural network such as back propagation algorithm. Therefore, NARX NN is propose as the identification model because it could reflect the dynamic characteristics of the flood water level, as NARX structure includes the feedback of the network output. This paper compares the prediction performances of NARX model and EKF prediction technique in flood water level prediction. EKF is well known as the best nonlinear state estimator. Results showed that NARX model performed better than EKF prediction technique.
机译:准确可靠的洪水水平预测非常难以实现,因为它通常在性质上被称为混乱。使用常规神经网络技术的预测是广泛使用的背传播算法的预测不提供可靠的预测结果。洪水水平表征为动态非线性属性,不能由诸如反向传播算法的静态神经网络表示。因此,NARX NN建议作为识别模型,因为它可以反映洪水水平的动态特性,因为NARX结构包括网络输出的反馈。本文比较了洪水水平预测中鼻腔模型和EKF预测技术的预测性能。 EKF是众所周知的最佳非线性状态估计。结果表明,位于EKF预测技术的NARX模型更好。

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