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A simplified method to predict fatigue damage of TTR subjected to short-term VIV using artificial neural network

Lookup NU author(s): Dr Do Kyun KimORCiD

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Abstract

Marine riser is the critical component transporting hydrocarbon and fluid from well to the platform and vice versa. Riser experiences vortex-induced vibration (VIV) caused by current, leading to fatigue damage. Estimation of VIV fatigue damage is essential in designing feasible and operable riser. A simplified approach for predicting fatigue damage is required to reduce the computation time to analyse the fatigue damage. This study aims to propose a simplified approach to predict VIV fatigue damage of top tensioned riser (TTR) using artificial neural network (ANN). A total of 21,532 riser model was generated with different combination of six main input parameters: riser outer diameter, wall thickness, top tension, water depth, surface and bottom current velocity. The modal analysis was performed using OrcaFlex and VIV fatigue damage of the riser was computed using SHEAR7. The six input parameters and corresponding fatigue damage results made up the database for training a 2-layer neural network. Weight and bias values acquired from the training of ANN were used to develop the VIV fatigue damage prediction model of the riser. The hyperparameters of the ANN model were tuned to optimize performance of the model. The results showed the final ANN model predict fatigue damage well with shorter time compared to conventional semi-empirical method. Hence, the proposed approach is suitable to be used for prediction of VIV fatigue damage of TTR at early design stage of TTR.


Publication metadata

Author(s): Wong EWC, Kim DK

Publication type: Article

Publication status: Published

Journal: Advances in Engineering Software

Year: 2019

Volume: 126

Pages: 100-109

Print publication date: 01/12/2018

Online publication date: 03/11/2018

Acceptance date: 30/09/2018

ISSN (print): 0965-9978

ISSN (electronic): 1873-5339

Publisher: Elsevier

URL: https://doi.org/10.1016/j.advengsoft.2018.09.011

DOI: 10.1016/j.advengsoft.2018.09.011


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