Advancements in predicting scour depth induced by turbulent wall jets: A comparative analysis of mathematical formulations and machine learning models

Author:

Devi Kamalini1ORCID,Khuntia Jnana Ranjan1ORCID,Mumtaz Mohd Aamir2ORCID,Elgamal Mohamed H.2ORCID,Shankar Das Bhabani3ORCID

Affiliation:

1. Civil Engineering Department, Chaitanya Bharathi Institute of Technology (A) 1 , Hyderabad 500075, India

2. Civil Engineering Department, College of Engineering, Imam Mohammad Ibn Saud Islamic University (IMSIU) 2 , Riyadh 11432, Saudi Arabia

3. Civil Engineering Department, National Institute of Technology 3 , Patna 800005, India

Abstract

This study examines the scour depth induced by turbulent wall jets and proposes novel mathematical formulations to predict the depth of scouring. Through a comprehensive gamma test, key parameters influencing the scour depth are identified, including the apron length, densimetric Froude number, median sediment size, tailwater level, Reynolds number, and Froude number of the jet. Regression analysis is subsequently conducted to establish relationships between the dependent parameter and the aforementioned independent variables. A comparative analysis is then undertaken between the measured scour depths and those predicted by existing equations from previous studies. Furthermore, predictive models leveraging the support vector machine, artificial neural network with particle swarm optimization, M5 tree algorithm, gene expression programming, and adaptive neuro-fuzzy inference system (ANFIS) are developed using the collected data. Statistical metrics are employed to evaluate the performance of each model and the regression equation. The effectiveness of each model in predicting scour depth is demonstrated. Notably, ANFIS yields a coefficient of determination of 0.809 and a root mean square error (RMSE) of 1.585. Multi-nonlinear regression analysis exhibits a coefficient of determination of 0.752 and an RMSE of 0.421, while the M5 tree achieves a coefficient of determination of 0.739 and an RMSE of 1.874, demonstrating superior performance compared to other machine learning techniques and regression equations employed in this study.

Funder

Deanship of Scientific Research, Imam Mohammed Ibn Saud Islamic University

Publisher

AIP Publishing

Reference60 articles.

1. Review of literature on local scour under plane turbulent wall jets;Phys. Fluids,2016

2. Prediction of local scour depth downstream of an apron under wall jets,2017

3. Estimation of maximum scour depth downstream of an apron under submerged wall jets;J. Hydroinf.,2019

4. Effect of apron roughness on flow characteristics and scour depth under submerged wall jets;Acta Geophys.,2021

5. Soft-computing approach to scour depth prediction under wall jets;Zakwan,2022

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