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首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part M. Journal of Engineering for the Maritime Environment >Optimal pile design of dolphin structure considering axial compressive pressure-bending moment ratio under offshore load conditions
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Optimal pile design of dolphin structure considering axial compressive pressure-bending moment ratio under offshore load conditions

机译:海豚结构的最佳桩设计考虑轴向压缩压力弯矩比在海上负荷条件下

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摘要

This study proposes an optimal design of a dolphin structure under offshore load conditions such as berthing, mooring, wind, wave, and current loads. The design objective is to reduce the total weight of the pile structure by determining its diameter, thickness, and arraying direction with constraints of axial compressive pressure-bending moment ratio and total displacement. As design requirements, the stress has to be satisfied under the allowable compressive pressure-bending moment, and the total displacement of the steel piles should be less than 0.1m on the upper deck. The structural analysis data are generated using Box-Behnken design based on the design of experiments. In the meta-model-based approximate optimization process, the pressure-bending moment ratio and total displacement are expressed using a backpropagation neural network, and the structural weight of the pile is approximated via a second-order polynomial-based response surface model. Compared with the initial design, the optimal solution of the total weight of the steel piles reduces by 27.37% under the satisfied constraint conditions. For the post-optimization study, the optimal sensitivity analysis with respect to the seabed level is conducted.
机译:本研究提出了在海上负载条件下的海豚结构的最佳设计,例如Berthing,系泊,风,波浪和电流负荷。设计目的是通过确定其直径,厚度和排列方向来减小桩结构的总重量,其具有轴向压缩压力弯曲力矩比和总位移的约束。作为设计要求,在允许的压缩压力弯矩下必须满足应力,并且钢桩的总位移应小于上甲板的0.1米。结构分析数据是使用基于实验设计的Box-Behnken设计来产生的。在基于元模型的近似优化过程中,使用反向衰减神经网络表示压力弯矩比和总位移,并且通过基于二阶多项式的响应表面模型来近似桩的结构重量。与初始设计相比,在满意的约束条件下,钢桩总重量的最佳解决方案减少了27.37%。对于优化后研究,对海底级别进行了最佳敏感性分析。

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