Prediction of Scour Depth Around Bridge Piers Using Evolutionary Neural Network

A. Ismail
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引用次数: 3

Abstract

Abstract An empirical formula based on evolutionary regression network is proposed in this paper for predicting the equilibrium depth of scour around bridge piers. The formula expresses the equilibrium scour depth as a function of variables including flow depth and mean velocity, critical flow velocity, median grain size and pier diameter. The empirical formula is developed by training and testing an evolutionary network using scour data available in the literature. The use of the evolutionary algorithm in developing the formula is informed by the need to reduce the model complexity while sacrificing its predictive accuracy. The results of performance comparisons with existing models showed that the proposed formula model produces reasonably accurate estimates of equilibrium scour depth with a much smaller number of fitting constants compared with backpropagation neural networks.
基于进化神经网络的桥墩周围冲刷深度预测
摘要本文提出了基于进化回归网络的桥墩冲刷平衡深度预测经验公式。该公式将平衡冲刷深度表示为流深、平均流速、临界流速、中位粒径和桥墩直径等变量的函数。经验公式是通过使用文献中可用的冲刷数据训练和测试进化网络而开发的。在开发公式时使用进化算法是因为需要在牺牲其预测精度的同时降低模型的复杂性。与现有模型的性能比较结果表明,与反向传播神经网络相比,所提出的公式模型可以较准确地估计平衡冲刷深度,且拟合常数的数量要少得多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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