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首页> 外文期刊>Journal of Hydroinformatics >Prediction of scour depth around bridge piers using self-adaptive extreme learning machine
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Prediction of scour depth around bridge piers using self-adaptive extreme learning machine

机译:自适应极限学习机预测桥墩冲刷深度

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摘要

Accurate prediction of pier scour can lead to economic design of bridge piers and prevent catastrophic incidents. This paper presents the application of self-adaptive evolutionary extreme learning machine (SAELM) to develop a new model for the prediction of local scour around bridge piers using 476 field pier scour measurements with four shapes of piers: sharp, round, cylindrical, and square. The model network parameters are optimized using the differential evolution algorithm. The best SAELM model calculates the scour depth as a function of pier dimensions and the sediment mean diameter. The developed SAELM model had the lowest error indicators when compared to regression-based predictionmodels for root mean square error (RMSE) (0.15, 0.65, respectively) and mean absolute relative error (MARE) (0.50, 2.0, respectively). The SAELM model was found to perform better than artificial neural networks or support vector machines on the same dataset. Parametric analysis showed that the new model predictions are influenced by pier dimensions and bed-sediment size and produce similar trends of variations of scour-hole depth as reported in literature and previous experimental measurements. The prediction uncertainty of the developed SAELM model is quantified and compared with existing regression-based models and found to be the least, +/- 0.03 compared with +/- 0.10 for other models.
机译:准确预测桥墩冲刷量可以对桥墩进行经济设计,并防止发生灾难性事件。本文介绍了自适应进化极限学习机(SAELM)的应用,该模型使用476种场墩冲刷测量方法(四种形状的尖锐,圆形,圆柱形和方形的墩形)开发了一种预测桥墩周围局部冲刷的新模型。 。使用差分进化算法优化模型网络参数。最好的SAELM模型计算出冲刷深度是码头尺寸和沉积物平均直径的函数。与基于回归的预测模型的均方根误差(RMSE)(分别为0.15、0.65)和平均绝对相对误差(MARE)(分别为0.50、2.0)相比,开发的SAELM模型具有最低的误差指标。发现SAELM模型在同一数据集上的性能优于人工神经网络或支持向量机。参数分析表明,新模型的预测受墩台尺寸和床沉积物尺寸的影响,并产生冲刷孔深度变化的相似趋势,如文献和先前的实验测量所报道的那样。对已开发的SAELM模型的预测不确定性进行量化,并与现有的基于回归的模型进行比较,发现最小,与其他模型的+/- 0.10相比,+ /-0.03。

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