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首页> 外文期刊>International journal of river basin management >Efficiency of artificial neural networks in determining scour depth at composite bridge piers
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Efficiency of artificial neural networks in determining scour depth at composite bridge piers

机译:在复合桥墩确定冲刷深度的人工神经网络效率

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摘要

Scouring is the most common cause of bridge failure. This study was conducted to evaluate the efficiency of the Artificial Neural Networks (ANN) in determining scour depth around composite bridge piers. The experimental data, attained in different conditions and various pile cap locations, were used to obtain the ANN model and to compare the results of the model with most well-known empirical, HEC-18 and FDOT, methods. The data were divided into training and evaluation sets. The ANN models were trained using the experimental data, and their efficiency was evaluated using statistical test. The results showed that to estimate scour at the composite piers, feed-forward propagation network with three neurons in the hidden layer and hyperbolic sigmoid tangent transfer function was with the highest accuracy. The results also indicated a better estimation of the scour depth by the proposed ANN than the empirical methods.
机译:彻底是桥梁失败的最常见原因。 进行该研究以评估人工神经网络(ANN)在复合桥墩周围确定冲刷深度的效率。 在不同条件和各种桩帽位置达到的实验数据用于获得ANN模型,并将模型的结果与最着名的经验,HEC-18和FDOT,方法进行比较。 数据分为培训和评估集。 ANN模型使用实验数据接受培训,并使用统计测试评估其效率。 结果表明,为了估计复合码头的冲刷,隐藏层中具有三个神经元的前馈传播网络和双曲线切线传递函数的最高精度。 结果还表明,通过拟议的ANN更好地估计了所提出的ANN的血液深度而不是经验方法。

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