基于谱域残差学习的滚装船横梁腹板开孔应力分布预测方法

Spectral residual learning for stress prediction around openings in ro-ro ship beam webs

  • 摘要:
    目的 针对滚装船甲板横梁腹板开孔引起的应力集中现象,构建一种兼具可解释性与快速性的孔周应力分布预测方法,为开孔布置与补强设计提供早期快速评估依据。
    方法 将孔周应力表示为圆周域周期函数,并以截断阶数N=9的傅里叶级数将分布压缩为固定维度谱系数;以费氏空腹桁架理论计算得出的理论谱为力学基线,构建谱域残差学习网络,对理论谱进行数据驱动修正,并引入谐波置信度加权以强化主导低阶模态、抑制高阶噪声。
    结果 测试集上,模型峰值应力相对误差为8.8%,曲线相对 L_2 平均误差为0.133,峰值角度中位数误差为2°;相较点值监督曲线模型曲线相对 L_2 平均误差降低63.96%,峰位误差降低84.62%,峰值误差降低25.61%;相较频域监督模型曲线相对 L_2 误差降低48.45%,峰位误差降低84.62%。消融结果表明,移除残差结构后曲线相对 L_2 平均误差升至0.269、峰值角度中位数误差升至14°;移除置信度加权后曲线相对 L_2 平均误差升至0.345、峰值角度中位数误差升至11°,验证了两机制对分布重构与峰位定位的作用。
    结论 基于谱域编码与理论基线残差学习的深度学习模型可以稳定刻画孔周应力形态与峰值应力角度,为开孔布置与补强范围的早期快速评估提供了可解释的机器学习计算框架。

     

    Abstract:
    Objective Stress concentration around web openings represents a critical local-response challenge in the deck transverse beams of roll-on/roll-off (Ro-Ro) ships, with direct implications for opening arrangement, reinforcement extent, and structural reliability. While existing surrogate modeling approaches typically focus on a small number of characteristic stress values, the full circumferential stress distribution along the opening boundary — essential for identifying peak locations and characterizing local gradients — has rarely been reconstructed. To address this gap, the present study proposes an interpretable and computationally efficient framework for predicting the circumferential von Mises stress distribution around circular web openings.
    Method The stress field along the hole boundary is formulated as a periodic function in the angular domain and represented by a truncated Fourier series of order N = 9, mapping stress curves with varying numbers of sampling points into a unified fixed-dimensional spectral space. This spectral encoding avoids interpolation artifacts and nonphysical smoothing arising from inconsistent point densities across different hole diameters, while preserving dominant modes, peak positions, and overall distribution trends. To embed structural mechanics knowledge, the theoretical spectrum derived from Vierendeel mechanism theory is introduced as a physics-based baseline approximation of the opening-induced stress pattern. Rather than directly regressing finite-element stress curves, a spectral-domain residual learning network is developed to predict the discrepancy between the theoretical and finite-element spectra, reducing learning complexity and improving model interpretability under limited training data. A harmonic confidence weighting scheme is further designed based on the statistical deviation of individual harmonics between theoretical and finite-element solutions, so that low-order harmonics governing the principal stress pattern are prioritized while high-order components susceptible to noise are adaptively suppressed during optimization.
    Results Trained on finite-element samples, the proposed method achieves a peak-stress error of 8.8%, a mean relative curve L_2 error of 0.133, and a median peak-angle error of 2° on the test set. Compared with a pointwise-supervised curve model, the mean relative curve L_2 error is reduced by 63.96%, the peak-location error by 84.62%, and the peak-stress error by 25.61%. Ablation studies confirm that both the residual learning structure and the harmonic confidence weighting are essential for accurate distribution reconstruction and precise peak localization. The proposed model also generalizes effectively to out-of-distribution opening positions. In terms of computational efficiency, a single prediction requires approximately 0.12 s, compared with roughly 3 hours for a conventional local finite-element analysis.
    Conclusion By combining unified spectral encoding, theory-guided residual correction, and confidence-weighted optimization, the proposed framework offers a practical rapid-assessment tool for preliminary opening layout optimization, reinforcement design, and local-response screening in ship structural engineering.

     

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