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An evolutionary optimized artificial intelligence model for modeling scouring depth of submerged weir

机译:一种用于模拟淹没堰井深度的进化优化人工智能模型

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摘要

The advancement in computer aid and artificial intelligence (AI) models have received a noticeable progression in several engineering applications. In this research, an investigation for the capacity of a hybrid artificial intelligence model for predicting depth scouring of submerged weir. Scouring phenomena is one of the most complex problems in the field of the river and hydraulic engineering. Accurate and precise prediction for the depth scouring (d_s) is one of the essential processes for maintaining a sustainable hydraulic structure. This article introduces a new predictive model called tBPSO-SVR, which is a hybridization of an enhanced binary particle swarm optimization (PSO) algorithm with support vector regression (SVR) model as an efficient predictive model. The roles of the PSO algorithm are tuning the internal hyperparameters of the SVR model in addition to the optimization of the predictors selection "feature selection" for the d_s modeling. The prediction matrix is constructed based on several related geometric dimensions, flow information and sediment properties. The proposed model is validated against several well-established machine learning models introduced over the literature. The prediction potential of the proposed tBPSO-SVR model exhibited a superior capability. In quantitative terms, tBPSO-SVR attained minimum mean absolute error (MAE = 0.012 m) and maximum coefficient of determination (R~2 = 0.956). Remarkably, the proposed hybrid artificial intelligence demonstrated an efficient prediction model for depth scouring prediction with reducing the input parameters.
机译:计算机辅助和人工智能(AI)模型的进步已经在若干工程应用中获得了明显的进展。在该研究中,对混合人工智能模型预测淹没堰的深度疏水能力的研究。冲洗现象是河流和液压工程领域中最复杂的问题之一。对深度冲刷(D_S)的精确精确预测是用于维持可持续液压结构的基本方法之一。本文介绍了一种名为TBPSO-SVR的新的预测模型,它是增强二进制粒子群优化(PSO)算法的杂交,其具有支持向量回归(SVR)模型作为一种有效的预测模型。除了为D_S建模的预测器选择“特征选择”的优化之外,PSO算法的角色还在调整SVR模型的内部超参数。基于若干相关几何尺寸,流量信息和沉积物特性构建预测矩阵。拟议的模型是针对在文献中引入的几种既定机器学习模型的验证。所提出的TBPSO-SVR模型的预测电位表现出优异的能力。在定量术语中,TBPSO-SVR获得最小平均绝对误差(MAE = 0.012米)和最大的测定系数(R〜2 = 0.956)。值得注意的是,所提出的混合人工智能证明了一种有效的预测模型,用于减少输入参数的深度冲洗预测。

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