Coastal structures may cease to function properly due to seabed scouring. Hence, prediction of the maximum scour depth is of great importance for the protection of these structures. Since scour is the result of a complicated interaction between structure, sediment, and incoming waves, empirical equations are not as accurate as machine learning schemes, which are being widely employed for the coastal engineering modeling. In this paper, which can be regarded as an extension of Pourzangbar et al. (2016), two soft computing methods, a support vector regression (SVR), and a model tree algorithm (M5'), have been implemented to predict the maximum scour depth due to non-breaking waves. The models predict the relative scour depth (S-max/H-0) on the basis of the following variables: relative water depth at the toe of the breakwater (h(toe)/L-0), Shields parameter (a), non-breaking wave steepness (H-0/L-0), and reflection coefficient (Cr). 95 laboratory data points, extracted from dedicated experimental studies, have been used for developing the models, whose performances have been assessed on the basis of statistical parameters. The results suggest that all of the developed models predict the maximum scour depth with high precision, the M5' model performed marginally better than the SVR model and also allowed to define a set of transparent and physically sound relationships. Such relationships, which are in good agreement with the existing empirical findings, show that the relative scour depth is mainly affected by wave reflection. (C) 2017 Elsevier Ltd. All rights reserved.

Prediction of scour depth at breakwaters due to non-breaking waves using machine learning approaches / Ali Pourzangbar; Maurizio Brocchini; Aniseh Saber; Javad Mahjoobi; Masoud Mirzaaghasi; Mohammad Barzegar. - In: APPLIED OCEAN RESEARCH. - ISSN 0141-1187. - ELETTRONICO. - 63:(2017), pp. 120-128. [10.1016/j.apor.2017.01.012]

Prediction of scour depth at breakwaters due to non-breaking waves using machine learning approaches

Aniseh Saber
Methodology
;
2017

Abstract

Coastal structures may cease to function properly due to seabed scouring. Hence, prediction of the maximum scour depth is of great importance for the protection of these structures. Since scour is the result of a complicated interaction between structure, sediment, and incoming waves, empirical equations are not as accurate as machine learning schemes, which are being widely employed for the coastal engineering modeling. In this paper, which can be regarded as an extension of Pourzangbar et al. (2016), two soft computing methods, a support vector regression (SVR), and a model tree algorithm (M5'), have been implemented to predict the maximum scour depth due to non-breaking waves. The models predict the relative scour depth (S-max/H-0) on the basis of the following variables: relative water depth at the toe of the breakwater (h(toe)/L-0), Shields parameter (a), non-breaking wave steepness (H-0/L-0), and reflection coefficient (Cr). 95 laboratory data points, extracted from dedicated experimental studies, have been used for developing the models, whose performances have been assessed on the basis of statistical parameters. The results suggest that all of the developed models predict the maximum scour depth with high precision, the M5' model performed marginally better than the SVR model and also allowed to define a set of transparent and physically sound relationships. Such relationships, which are in good agreement with the existing empirical findings, show that the relative scour depth is mainly affected by wave reflection. (C) 2017 Elsevier Ltd. All rights reserved.
2017
Prediction of scour depth at breakwaters due to non-breaking waves using machine learning approaches / Ali Pourzangbar; Maurizio Brocchini; Aniseh Saber; Javad Mahjoobi; Masoud Mirzaaghasi; Mohammad Barzegar. - In: APPLIED OCEAN RESEARCH. - ISSN 0141-1187. - ELETTRONICO. - 63:(2017), pp. 120-128. [10.1016/j.apor.2017.01.012]
Ali Pourzangbar; Maurizio Brocchini; Aniseh Saber; Javad Mahjoobi; Masoud Mirzaaghasi; Mohammad Barzegar
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/908028
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