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基于NSGA-II的拱桥拱轴线多目标形态优化

NSGA-II-Based Multi-objective Optimization of Arch Bridge Axis

  • 摘要: 针对传统压力线理论在拱桥设计中难以兼顾主拱弯矩最小化与复杂构造要求的问题,本文提出一种基于非支配排序遗传算法(NSGA-II)的拱轴线多目标形态优化方法。以安徽省池州市某30 m跨径无铰拱桥为工程背景,建立基于悬链线方程的参数化几何模型,推导分布式荷载作用下的弯矩分布函数与弯曲应变能计算模型,进而构建以最小化主拱弯曲应变能及精确控制拱脚坡度为双目标的优化模型,通过NSGA-II算法的非支配排序与精英保留策略搜索Pareto最优解集。结果表明:优化后的拱轴系数由初始的2.000调整至2.484,在确保拱脚坡度处于合理构造范围的前提下,主拱圈弯曲应变能降低了13.40%;与经典五点重合法相比,NSGA-II优化方案在局部弯曲指标上有所牺牲,但总应变能降低约7.27%,实现了轴压与弯曲性能的科学权衡。参数敏感性测试与稳定性验证显示,算法在100代演化内即可稳定收敛,独立运行变异系数仅为1.56%,具有良好的鲁棒性。本研究揭示了拱轴系数与结构力学响应的内在关联,为中、小跨径拱桥在多目标权衡下的选型设计提供了量化路径与理论支撑。

     

    Abstract: Aiming at the difficulty of balancing the minimization of main arch bending moments with complex structural requirements in arch bridge design using the traditional pressure line theory, a multi-objective shape optimization method for arch axes based on the non-dominated sorting genetic algorithm (NSGA-II) was proposed in this paper. Based on a 30 m-span hingeless arch bridge in Chizhou City, Anhui Province, a parametric geometric model was established using the catenary equation. The bending moment distribution function and the bending strain energy calculation model under distributed loads were derived. Subsequently, a dual-objective optimization model was constructed, aimed at minimizing the bending strain energy of the main arch while precisely controlling the slope at the arch foot. The Pareto optimal solution set was searched using the non-dominated sorting and elite retention strategies of the NSGA-II algorithm. The results show that the optimized arch axis coefficient is adjusted from an initial value of 2.000 to 2.484, leading to a 13.40% reduction in the bending strain energy of the main arch ring while ensuring the arch foot slope remains within a reasonable structural range. Compared with the classic five-point coincidence method, the NSGA-II optimization scheme exhibits a slight compromise in local bending indicators, but the total strain energy is reduced by approximately 7.27%, achieving a scientific trade-off between axial compression and bending performance. Parameter sensitivity tests and stability verification demonstrate that the algorithm converges stably within 100 generations, with a coefficient of variation of only 1.56% across independent runs, indicating good robustness. This study reveals the intrinsic correlation between the arch axis coefficient and the structural mechanical response, providing a quantitative pathway and theoretical support for the type selection design of small- and medium-span arch bridges under multi-objective trade-offs.

     

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