Please use this identifier to cite or link to this item: https://dspace.iiti.ac.in/handle/123456789/11415
Title: Estimation of time dependent scour depth around circular bridge piers: Application of ensemble machine learning methods
Authors: Goyal, Manish Kumar
Keywords: Adaptive boosting;Flow of water;Forecasting;Machine learning;Scour;Websites;Adaboost regressor;Bagging regressor;Clear water flow;Local scour;Machine learning methods;Scour depth;Sediment beds;Support vector regressor;Time-dependent scours;Water flows;Bridge piers;bridge;machine learning;pier;prediction;scour;support vector machine;water flow
Issue Date: 2023
Publisher: Elsevier Ltd
Citation: Kumar, S., Goyal, M. K., Deshpande, V., & Agarwal, M. (2023). Estimation of time dependent scour depth around circular bridge piers: Application of ensemble machine learning methods. Ocean Engineering, 270 doi:10.1016/j.oceaneng.2022.113611
Abstract: Scour is a major issue which impacts the life of a hydraulic structure. In this work, we have considered a bridge as an example of a hydraulic structure. Scour depth increases or decreases from time to time because of variations in flow scenarios. Scour phenomena have been extensively studied and many empirical as well as data-driven approaches have been proposed to estimate the scour depth. However, there are relatively few studies which can predict the time-dependent scour depth. In this study, we use a laboratory dataset compiled from several sources to predict time-dependent scour depth using ensemble and standalone machine learning methods. For scour depth estimation, various factors such as river bed properties (d50), sigmag, rhos, Ucr), flow properties around a pier (rhof, U, mu, g, y), bridge pier geometry (Al, Sh, Dp), and time (t, tR) are used. In this study, we apply two ensemble methods: Bagging Regressor (BR), AdaBoost Regressor (ABR), and one standalone machine learning method, Support Vector Regression (SVR), for the prediction of time-dependent scour depth. Out of these machine learning methods, both the ensemble methods provide superior predictions in comparison to the standalone variant and empirical equations, viz., Bagging Regressor (r2 = 0.913), AdaBoost Regressor (r2 = 0.887), followed by Support Vector Regressor (r2 = 0.814). We have also developed an open-source web-based tool to predict the time-dependent scour depth with the proposed machine learning methods. The web-based tool is generic enough to work with any dataset and allows the end user to select various input combinations, visualizations, and error metrics. © 2022
URI: https://doi.org/10.1016/j.oceaneng.2022.113611
https://dspace.iiti.ac.in/handle/123456789/11415
ISSN: 0029-8018
Type of Material: Journal Article
Appears in Collections:Department of Civil Engineering

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