Accurate Prediction of Wave-induced Seabed Liquefaction at Shallow depths using Multi-Artificial Neural Networks
نویسندگان
چکیده
In past decades, considerable effort has been devoted to the phenomenon of wave-induced liquefaction, because it is one of the most important factors for analysing the seabed and designing marine structures. As waves propagate and fluctuate over the ocean surface, energy is carried within the medium of the water particles. This energy could be transmitted into the seabed, which results in the rather complex mechanisms of soil behaviour and significantly affects the stability of the seabed.
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