Application of probabilistic neural network to design breakwater armor blocks |
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Authors: | Dookie Kim Dong Hyawn Kim Seongkyu Chang |
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Affiliation: | aDepartment of Civil and Environmental Engineering, Kunsan National University, Kunsan, Jeonbuk, Republic of Korea;bDepartment of Ocean System Engineering, Kunsan National University, Miryong, Kunsan 573 701, Jeonbuk, Republic of Korea |
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Abstract: | This study presents a probabilistic neural network (PNN) technique for predicting the stability number of armor blocks of breakwaters. The PNN is prepared using the experimental data of Van der Meer. The predicted stability numbers of the PNN are compared with those of previous studies, i.e. by an empirical formula and a previous neural network model. The agreement index between the measured and predicted stability numbers by PNN are better than those by the previous studies. The PNN offers a way to interpret the network's structure in the form of a probability density function and it is easy to implement. Therefore, it can be an effective tool for designers of rubble mound breakwaters. |
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Keywords: | Breakwater Armor block Stability number Probabilistic neural network Probability density function |
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