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Analysis of experimental data sets for local scour depth around bridge abutments using artificial neural networks

机译:利用人工神经网络分析桥台周围局部冲刷深度的实验数据

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摘要

The performance of soft computing techniques to analyse and interpret the experimental data of local scour depth around bridge abutment, measured at different laboratory conditions and environment, is presented. The scour around bridge piers and abutments is, in the majority of cases, the main reason for bridge failures. Therefore, many experimental and theoretical studies have been conducted on this topic. This study sought to answer the following questions: Firstly, can data collected by different researchers at different times be combined in one data set? Secondly, can we determine any unqualified effects such as data differences, laboratory conditions and measurement devices? Artificial neural networks (ANN) are used and a basic ANN model is selected to observe the application problems, in order to avoid any misleading conclusion arising due to the model parameters selected and the compilation of different subsets of experimental data into one set. At the first stage, seven experimental data sets are compiled to address the first question and an ANN model is used to discovery any existing discrepancies between available data groups. The importance of selected model parameters for the model's performance was demonstrated by increasing the number of parameters. Then, each data subset was inspected to expose the importance of the homogeneity of data groups in order to obtain a best-fit ANN model. Finally, a sensitivity analysis was carried out to obtain the dominant parameters of the problem. It was concluded that the use of 'soft' computational techniques such as ANN can be beneficial, provided the user is aware of the heterogeneity of the data set and the physical context of the subject or problem being addressed. However, as with other data analysis techniques, elaborate inspection of data and results is required.
机译:介绍了软计算技术在不同实验室条件和环境下测量和分析桥梁桥台周围局部冲刷深度实验数据的性能。在大多数情况下,桥墩和桥台周围的冲刷是造成桥梁破坏的主要原因。因此,已经对该主题进行了许多实验和理论研究。这项研究试图回答以下问题:首先,可以将不同研究人员在不同时间收集的数据合并到一个数据集中吗?其次,我们能否确定任何不合格的影响,例如数据差异,实验室条件和测量设备?使用人工神经网络(ANN)并选择一个基本的ANN模型来观察应用问题,以避免由于选择的模型参数以及将实验数据的不同子集汇总到一组而引起的任何误导性结论。在第一阶段,将编译七个实验数据集以解决第一个问题,并使用ANN模型来发现可用数据组之间的任何现有差异。通过增加参数数量,可以证明所选模型参数对模型性能的重要性。然后,检查每个数据子集以暴露数据组同质性的重要性,以获得最佳拟合的ANN模型。最后,进行敏感性分析以获得问题的主要参数。得出的结论是,只要用户了解数据集的异质性以及要解决的主题或问题的物理背景,使用诸如ANN之类的“软”计算技术将是有益的。但是,与其他数据分析技术一样,需要对数据和结果进行详尽的检查。

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