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Prediction of Time-varying Maximum Scour Depth Around Short Abutments using Soft Computing Methodologies - A Comparative Study

机译:软计算方法预测短基台周围时变最大冲刷深度-对比研究

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摘要

Maximum depth of scouring around bridge abutments is a significant criterion in design of safe depth for abutment foundation. Many studies done on maximum scouring depth are limited to specific shape of abutment and there is no general equation in the estimation of time varying scour depth at short abutments. In this research, maximum depth and also the temporal variation of local scour at a vertical-wall, wing-wall and semicircular abutments, and spur dike as well, were investigated experimentally. About 1400 sets of experimental data were collected. The results indicated that 70-90% of the equilibrium scouring depths occurred during the first 20% of overall time of scouring tests. According to the collected data, Multiple Nonlinear Regression (MNLR), Artificial Neural Networks (ANN) and Adaptive Neuro Fuzzy Inference System (ANFIS) were adopted to predict the time variation of scour depth around abutments. The computer models were compared to the other empirical equations presented in the literature. The study showed that the conducted regression model is rather precise and practical (R-2 = 0.88). Also, the results of the numerical modeling indicated that ANFIS model produced the best results (R-2 = 0.98) in comparison with ANN models using feed forward back propagation (R-2 = 0.96) and radial basis function (R-2 = 0.94).
机译:桥基周围的最大冲刷深度是设计基台安全深度的重要标准。关于最大冲刷深度的许多研究仅限于特定的基台形状,并且在估算短基台时随时间变化的冲刷深度时没有通用方程式。在这项研究中,通过实验研究了最大深度,以及垂直壁,翼壁和半圆形基台以及丁坝的局部冲刷的时间变化。收集了约1400套实验数据。结果表明,在整个冲刷试验的前20%时间内,出现了70-90%的平衡冲刷深度。根据采集的数据,采用多元非线性回归(MNLR),人工神经网络(ANN)和自适应神经模糊推理系统(ANFIS)来预测基台周围冲刷深度的时间变化。将计算机模型与文献中提供的其他经验公式进行了比较。研究表明,进行的回归模型相当精确和实用(R-2 = 0.88)。此外,数值建模的结果表明,与使用前馈传播(R-2 = 0.96)和径向基函数(R-2 = 0.94)的ANN模型相比,ANFIS模型产生的最佳结果(R-2 = 0.98) )。

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