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Neuro-genetic Approach to Predict Scour Depth Around Vertical Bridge Abutment

机译:神经遗传方法预测垂直桥桥周围的冲刷深度

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Scour is caused by the erosive action of flowing water. Although, different researchers have proposed various empirical models to predict the equilibrium local scour depth around bridge abutment, these are suitable to a particular abutment condition. In this study, an integrated model that combines genetic algorithms (GA) and multilayer perceptron (MLP) network, a class of artificial neural network (ANN), is developed to estimate the scour depth around vertical bridge abutment. The equilibrium scour depth was modeled as a function of four affecting parameters of scour, abutment length, median grain size, approaching flow depth, and average approach flow velocity, and these parameters are considered as input parameter to the MLP model. The efficiency of the developed models is compared with the empirical equations over a dataset collected from literature. The MLP is found to outperform the empirical equations for the dataset considered in the present study. The performance of the best case MLP is further improved by applying GA for weight initialization. The results indicate that the GA-based MLP is more effective in terms of accuracy of predicted results and is a promising approach compared to MLP as well as the previous empirical approaches in predicting the scour depth at bridge abutments.
机译:冲刷是由流动水的腐蚀作用引起的。虽然,不同的研究人员提出了各种经验模型来预测桥桥周围的局部苏格兰峡深层,这些是适合于特定的邻接条件。在本研究中,开发了一种结合遗传算法(GA)和多层Perceptron(MLP)网络(MLP)网络(ANN)的集成模型,以估计垂直桥桥周围的冲刷深度。平衡冲刷深度被建模为四个影响冲刷,校长长度,中值晶粒尺寸,接近流动深度和平均接近流速的函数的函数,并且这些参数被认为是MLP模型的输入参数。将开发模型的效率与从文献中收集的数据集上的经验方程进行了比较。发现MLP优于本研究中考虑的数据集的经验方程。通过施加GA进行重量初始化,进一步改善了最佳案例MLP的性能。结果表明,基于GA的MLP在预测结果的准确性方面更有效,并且与MLP相比是一个有希望的方法,以及之前预测桥梁桥面的冲刷深度的先验方法。

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