李放, 王德禹. 基于改进梯度提升决策树—蒙特卡罗法的超大型集装箱船绑扎桥可靠性分析[J]. 中国舰船研究, 2020, 15(2): 63–69. doi: 10.19693/j.issn.1673-3185.01613
引用本文: 李放, 王德禹. 基于改进梯度提升决策树—蒙特卡罗法的超大型集装箱船绑扎桥可靠性分析[J]. 中国舰船研究, 2020, 15(2): 63–69. doi: 10.19693/j.issn.1673-3185.01613
LI F, WANG D Y. Reliability analysis of lashing bridge of ultra-large container ship based on improved gradient boosting decision tree-Monte Carlo method[J]. Chinese Journal of Ship Research, 2020, 15(2): 63–69. doi: 10.19693/j.issn.1673-3185.01613
Citation: LI F, WANG D Y. Reliability analysis of lashing bridge of ultra-large container ship based on improved gradient boosting decision tree-Monte Carlo method[J]. Chinese Journal of Ship Research, 2020, 15(2): 63–69. doi: 10.19693/j.issn.1673-3185.01613

基于改进梯度提升决策树—蒙特卡罗法的超大型集装箱船绑扎桥可靠性分析

Reliability analysis of lashing bridge of ultra-large container ship based on improved gradient boosting decision tree-Monte Carlo method

  • 摘要:
      目的  对超大型集装箱船绑扎桥结构而言,复杂的设计结构和恶劣的载荷环境对其可靠性提出了更高的要求。针对大型船舶结构可靠性分析时计算效率低、计算精度差等问题,提出基于改进梯度提升决策树—蒙特卡罗(GBDT-MC)方法。
      方法  首先,通过Python库建立改进梯度提升决策树(GBDT)的近似模型,根据实验生成较少的样本点,并筛选位于失效面附近的样本点;接着,运用SMOTE算法合成新的样本点并参与有限元计算,进而结合原有的样本点形成训练集;然后,采用已训练的近似模型预测蒙特卡罗(MC)方法所产生的样本点信息,完成结构的可靠性分析;最后,运用算例验证改进GBDT-MC方法的可行性和准确性,并将其应用于超大型集装箱船绑扎桥结构的可靠性分析。
      结果  计算结果表明:案例中超大型集装箱船绑扎桥在静态绑扎力作用下的失效概率误差为 3.5%,改进GBDT-MC方法的计算耗时为2.55 h,而MC方法则需要416.7 h,可见在允许的计算误差范围内,改进GBDT-MC方法可以大为缩减可靠性分析的计算时间。
      结论  改进GBDT-MC方法能显著提高计算精度并缩短计算时间,可为结构可靠性的优化设计提供支持。

     

    Abstract:
      Objectives  For the structure of the lashing bridge of an ultra-large container ship, the complicated design and severe load environments lead to higher requirements for reliability. Aiming at the problems of the poor efficiency and low accuracy of large ship structure reliability analysis, this paper proposes an improved gradient boosting decision tree-Monte Carlo (GBDT-MC) method.
      Methods  First, an approximate model of the improved gradient boosting decision tree (GBDT) is established through the Python library, fewer sample points are generated through experiment design and the sample points near the failure surface are screened. The SMOTE algorithm is then used to synthesize new sample points and participate in finite element calculation, as well as being combined with the original sample points to form a training set. The trained approximate model is used to predict the sample point information generated by the Monte Carlo (MC) method, thereby completing the structural reliability analysis. Finally, the feasibility and accuracy of the improved GBDT-MC method is verified by two examples and applied to the reliability analysis of the structure of the lashing bridge of an ultra-large container ship.
      Results  The calculation results show that the failure probability error under the effect of static lashing force is 3.5% and the calculation time of the improved GBDT-MC method is 2.55 h, but the MC method requires 416.7 h. Therefore, within the allowable calculation error range, the improved GBDT-MC method can greatly reduce the calculation time of reliability analysis.
      Conclusions  This improved GBDT-MC method significantly improves calculation accuracy and shortens the calculation time, which can provide support for the optimization design of high reliability index structures.

     

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