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Quarter Circular Breakwater: Prediction of Transmission Using Multiple Regression and Artificial Neural Network

机译:四分之一圆形防波堤:基于多元回归和人工神经网络的传播预测

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摘要

The physical model study of coastal structures is a nonlinear process influenced by innumerable parameters. As a result of a lack of definite systems, intricacies, and high costs involved in the physical models, we need a simple mathematical tool to predict wave transmission through quarter circular breakwater (QBW). QBW is a state-of-the-art breakwater essentially based on the exploitation of the concepts of semicircular breakwater. This paper discusses the use of soft computing tools such as MATLAB-based multiple regression (MR) and artificial neural network (ANN) to predict the wave transmission coefficient of QBW. To assess the accuracy of the proposed model and its ability to forecast, correlation coefficient and mean squared error are availed. On comparing the results obtained from MR and ANN, it is concluded that ANN gives more accurate results and can be used as a powerful tool for the modeling of hydrodynamic breakwater transmission through QBW. It serves as a viable alternative to the conventional physical model to simulate the hydrodynamic transmission performance of QBW.
机译:海岸结构的物理模型研究是一个受无数参数影响的非线性过程。由于缺乏确定的系统,复杂性以及物理模型涉及的高成本,我们需要一个简单的数学工具来预测通过四分之一圆形防波堤(QBW)的波浪传输。 QBW基本上是基于半圆形防波堤概念的开发的最新防波堤。本文讨论了如何使用软计算工具(如基于MATLAB的多元回归(MR)和人工神经网络(ANN))预测QBW的波传输系数。为了评估所提出模型的准确性及其预测能力,可以利用相关系数和均方误差。通过比较从MR和ANN获得的结果,可以得出结论:ANN给出了更准确的结果,可以用作通过QBW进行流体动力防波堤建模的有力工具。它可以替代传统的物理模型来模拟QBW的流体动力传递性能。

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