ASSESMENT OF ESTIMATION MODELS FOR SCOUR AROUND PIPELINES UNDER IRREGULAR WAVES

This study focuses on scour around submarine pipelines exposed to normal-incidence irregular waves over a live bed in shoaling region. The Artificial Neural Network (ANN) method was applied. The models of this study were compared to those of Kiziloz et al. (2013) who used multiple regression analysis method. Two wave characteristic pairs Hs -Tm and Hrms -Tp identify the sea state of irregular wave train as the representative wave parameter pairs of parametric model for scour process. Because these pairs result the same scour depth as regular waves do. The best ANN models for regular and irregular waves were obtained with Hs0-Tm0-d-D or Hs0-Lm0-d-D input parameters considering deep water wave parameters and Hs-Tm-d-D or Hs-Lm-Tm-D input parameters considering local wave parameters. The mean wave period, Tm, and the significant wave height, Hs, representing the irregular waves are more compatible with the wave period and wave height of regular waves, respectively.