Experimental investigation and application of soft computing models for predicting flow energy loss in arc-shaped constrictions

H. Abbaszadeh, R. Daneshfaraz, Veli Sume, John Abraham
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Abstract

This investigation focuses on flow energy, a crucial parameter in the design of water structures such as channels. The research endeavors to explore the relative energy loss (ΔEAB/EA) in a constricted flow path of varying widths, employing Support Vector Machine (SVM), Artificial Neural Network (ANN), Gene Expression Programming (GEP), Multiple Adaptive Regression Splines (MARS), M5 and Random Forest (RF) models. Experiments span a Froude number range from 2.85 to 8.85. The experimental findings indicate that the ΔEAB/EA exceeds that observed in a classical hydraulic jump with constriction section. Within the SVM model, the linear kernel emerges as the best predictor of ΔEAB/EA, outperforming polynomial, radial basis function (RBF), and sigmoid kernels. In addition, in the ANN model, the MLP network was more accurate compared to the RBF network. The results indicate that the relationship proposed by the MARS model can play a significant role resulting in high accuracy compared to the non-linear regression relationship in predicting the target parameter. Upon comprehensive evaluation, the ANN method emerges as the most promising among the candidates, yielding superior performance compared to the other models. The testing phase results for the ANN-MLP are noteworthy, with R = 0.997, average RE% = 0.63%, RMSE = 0.0069, BIAS = −0.0004, DR = 0.999, SI = 0.0098 and KGE = 0.995.
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用于预测弧形收缩中流动能量损失的软计算模型的实验研究与应用
这项研究的重点是水流能量,这是水渠等水利工程设计中的一个关键参数。研究采用支持向量机 (SVM)、人工神经网络 (ANN)、基因表达编程 (GEP)、多重自适应回归样条 (MARS)、M5 和随机森林 (RF) 模型,努力探索不同宽度的收缩流道中的相对能量损失 (ΔEAB/EA)。实验的弗劳德数范围从 2.85 到 8.85。实验结果表明,ΔEAB/EA 超过了在有收缩段的经典水力跃迁中观察到的ΔEAB/EA。在 SVM 模型中,线性核是预测 ΔEAB/EA 的最佳方法,其性能优于多项式核、径向基函数 (RBF) 核和西格玛核。此外,在 ANN 模型中,MLP 网络比 RBF 网络更准确。结果表明,在预测目标参数时,与非线性回归关系相比,MARS 模型提出的关系能发挥重要作用,从而获得较高的准确度。经过综合评估,在候选模型中,ANN 方法最有前途,与其他模型相比性能更优。ANN-MLP 的测试阶段结果值得注意:R = 0.997、平均 RE% = 0.63%、RMSE = 0.0069、BIAS = -0.0004、DR = 0.999、SI = 0.0098 和 KGE = 0.995。
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