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Prediction Of Sand Ripple Geometry Under Waves Using An Artificial Neural Network

机译:利用人工神经网络预测波浪作用下的沙纹几何

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摘要

The length and height of a sand ripple in the seabed are the two basic parameters used to estimate the bottom shear stress and predict the transport of sand by wave action. These values are currently obtained with the help of many empirical equations. A different estimation method, in the form of an artificial neural network, is presented in this paper. The network is trained by measurements collected in the laboratory and in-situ under different forcing conditions. Validation of the present neural network results with different measurements shows that the new method can predict the ripple length and height much more accurately than the conventional empirical equations.
机译:海底沙纹的长度和高度是用于估计底部切应力和通过波浪作用预测沙的运输的两个基本参数。目前,这些值是通过许多经验方程式获得的。本文提出了一种不同的估算方法,以人工神经网络的形式。通过在实验室和不同强迫条件下就地收集的测量值对网络进行训练。对现有神经网络结果进行不同测量的验证表明,与传统经验方程相比,新方法可以更准确地预测波纹长度和高度。

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