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作 者:YAN Jun LI Wen-bo Murilo Augusto VAZ LU Hai-long ZHANG Heng-rui DU Hong-ze BU Yu-feng
机构地区:[1]State Key Laboratory of Structural Analysis for Industrial Equipment,Department of Engineering Mechanics,Dalian University of Technology,Dalian 116024,China [2]Ningbo Research Institute of Dalian University of Technology,Ningbo 315016,China [3]Ocean Engineering Program,Federal University of Rio de Janeiro,Rio de Janeiro 21941-901,Brazil
出 处:《China Ocean Engineering》2023年第1期42-52,共11页中国海洋工程(英文版)
基 金:financially supported by the National Key R&D Program of China (2021YFA1003501);the National Natural Science Foundation of China (No.U1906233,11732004);the Fundamental Research Funds for the Central Universities (DUT20ZD213,DUT20LAB308)。
摘 要:The carcass layer of flexible pipe comprises a large-angle spiral structure with a complex interlocked stainless steel cross-section profile, which is mainly used to resist radial load. With the complex structure of the carcass layer, an equivalent simplified model is used to study the mechanical properties of the carcass layer. However, the current equivalent carcass model only considers the elastic deformation, and this simplification leads to huge errors in the calculation results. In this study, radial compression experiments were carried out to make the carcasses to undergo plastic deformation. Subsequently, a residual neural network based on the experimental data was established to predict the load-displacement curves of carcasses with different inner diameter in plastic states under radial compression.The established neural network model’s high precision was verified by experimental data, and the influence of the number of input variables on the accuracy of the neural network was discussed. The conclusion shows that the residual neural network model established based on the experimental data of the small-diameter carcass layer can predict the load-displacement curve of the large-diameter carcass layer in the plastic stage. With the decrease of input data, the prediction accuracy of residual network model in plasticity stage will decrease.
关 键 词:flexible pipe CARCASS radial compression experiment load−displacement curves residual neural network
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