Comparative evaluation of machine learning models for assessment of seabed liquefaction using finite element data
Xing Du,
Yupeng Song,
Dong Wang
et al.
Abstract:Predicting wave-induced liquefaction around submarine pipelines is crucial for marine engineering safety. However, the complex of interactions between ocean dynamics and seabed sediments makes rapid and accurate assessments challenging with traditional numerical methods. Although machine learning approaches are increasingly applied to wave-induced liquefaction problems, the comparative accuracy of different models remains under-explored. We evaluate the predictive accuracy of four classical machine learning mo… Show more
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