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A pareto design of evolutionary hybrid optimization of ANFIS model in prediction abutment scour depth

机译:预测基台冲刷深度的ANFIS模型进化混合优化的对等设计

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In this paper, a novel pareto evolutionary structure of adaptive neuro-fuzzy inference system (ANFIS) network is presented for abutment scour depth predicting. The genetic algorithm (GA) and singular value decomposition (SVD) is utilized in optimizing design of nonlinear antecedent parts and linear consequentparts of TSK-type of fuzzy rules simultaneously in ANFIS design for the first time. To this end, first the parameters affecting the scour in the vicinity of abutments are detected. After that, 11 ANFIS-GA/SVD models are introduced through the combination of the parameters affecting the scour. Based on the modeling results, the ANFIS-GA/SVD models predict the scour around abutments with a reasonable accuracy. The superior model forecasts more than 63% of scours with an error of less than 8%. The correlation coefficient (R) for the model is computed roughly 0.978. The value of the average discrepancy ratio for the model is obtained 0.981. In addition, the results of the sensitivity analysis demonstrate that the Froude number (Fr) and the ratio of the flow depth to the radius of the scour hole (h/L) are the most noticeable parameters affecting the scour depth in the vicinity ofthe abutments. Ultimately, a comparison between the superior model and the previous studies are presented which reveal that the current study has better performance to predict scour depth around abutments.
机译:本文提出了一种新的自适应神经模糊推理系统(ANFIS)的pareto进化结构,用于预测基台冲深。首次将遗传算法(GA)和奇异值分解(SVD)应用于ANFIS设计中同时优化TSK型模糊规则的非线性先行部分和线性结果部分的设计。为此,首先检测影响基台附近冲刷的参数。之后,通过组合影响冲刷的参数,引入了11种ANFIS-GA / SVD模型。根据建模结果,ANFIS-GA / SVD模型以合理的精度预测基台周围的冲刷。优越的模型预测百分之六十三以上的冲刷,误差小于百分之八。模型的相关系数(R)约为0.978。该模型的平均差异比值为0.981。此外,敏感性分析的结果表明,弗洛德数(Fr)和流深与冲孔半径的比值(h / L)是影响基台附近冲深的最明显参数。 。最终,将高级模型与以前的研究进行了比较,结果表明当前的研究具有更好的预测基台周围冲刷深度的性能。

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