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Get Free AccessThe response of berm breakwaters to wave forces has been examined with rebuild and cumulative experiments. In rebuild experiments, the breakwaters were reconstructed after each test, whereas in cumulative experiments the structural damages were examined at the end of the experiment. This study presents a new method to investigate the berm breakwaters recession considering datasets collected of both types of experiments. Cumulative experimental results were converted to their equivalent rebuild experimental results by modifying the number of waves for the reported damage. After homogenizing the data, the datasets were divided into the train, validation, and test subsets. The data were analyzed using the Multi-Objective Genetic Programming (MOGP) approach, and a prediction model was created to evaluate the berm breakwater recession. The results obtained from the MOGP model were compared to outcomes computed using implicit formulas available in the literature showing that the MOGP model is accurate (R2 = 0.911 and RMSE = 0.111) with a relatively broader applicability range. The impact of each input parameter on the berm breakwater recession was examined using parametric and sensitivity analyses. The stability number was the most important parameter impacting the damage on the coastal structure. The results are in line with findings reported in previous studies.
Alireza Sadat Hosseini, Amir Kabiri, Amir Gandomi, Mehdi Shafieefar (2023). Genetic programming for the prediction of berm breakwaters recession. Ocean Engineering, 279, pp. 114465-114465, DOI: 10.1016/j.oceaneng.2023.114465.
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Type
Article
Year
2023
Authors
4
Datasets
0
Total Files
0
Language
English
Journal
Ocean Engineering
DOI
10.1016/j.oceaneng.2023.114465
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