1. 上海交通大学上海市复杂薄板结构数字化制造重点实验室,上海,200240
2. 中国商飞上海飞机制造有限公司,上海,201324
纸质出版:2026
移动端阅览
禹文材, 刘禹铭, 林清源, 等. 考虑多源变量的复合材料螺栓连接变形预测[J]. 航空制造技术, 2026,69(3).
YU Wencai, LIU Yuming, LIN Qingyuan, et al. Deformation Prediction of Composite Bolted Joints Considering Multi-Source Variables[J]. Aeronautical Manufacturing Technology, 2026, 69(3).
禹文材, 刘禹铭, 林清源, 等. 考虑多源变量的复合材料螺栓连接变形预测[J]. 航空制造技术, 2026,69(3). DOI: 10.16080/j.issn1671-833x.25020040.
YU Wencai, LIU Yuming, LIN Qingyuan, et al. Deformation Prediction of Composite Bolted Joints Considering Multi-Source Variables[J]. Aeronautical Manufacturing Technology, 2026, 69(3). DOI: 10.16080/j.issn1671-833x.25020040.
碳纤维增强复合材料(CFRP)螺栓连接结构,凭借其良好的可拆卸性与轻质特性,在航空航天领域展现出应用潜力。然而,该结构在多源装配变量影响下的变形分析问题,一直是制约其广泛应用的技术瓶颈。鉴于此,本研究针对CFRP 螺栓连接结构变形分析,提出了一种名为“碳纤维增强复合材料– 螺栓连接– 生成对抗网络”(CFRP–BJ–GAN)的分析框架。该框架首先引入基于关键特征统计参数的多尺度几何偏差建模方法,精确捕捉结构在不同尺度下的变形特征。随后,通过引入先进的ViT 编码器架构,实现对多种异构数据的深度整合与高效处理,从而提升变形预测的精度与效率。试验验证结果显示,CFRP–BJ–GAN 框架在所提出的评估指标上均优于传统数值模拟方法,且单次预测耗时仅需8 s,显著提高了分析速度。因此,本研究提出的CFRP–BJ–GAN 框架为解决CFRP 螺栓连接结构的变形分析问题提供了一种高效、准确且实用的解决方案。
Carbon fiber reinforced polymer (CFRP) bolted joint structures
with their excellent detachability and lightweight properties
have exhibited great application potential in the aerospace field. However
the deformation analysis of such structures under the effect of multi-source assembly variables has been a technical bottleneck restricting its wide application. In view of this
this study proposes an analytical framework named “CFRP–bolted joint–generative adversarial network” (CFRP–BJ–GAN) for the deformation analysis of CFRP bolted structures. The framework first introduces a multi-scale geometric deviation modeling method based on statistical parameters of key features
which enables accurate capture of the structural deformation characteristics at different scales. Subsequently
by introducing an advanced ViT encoder architecture
it realizes the deep integration and efficient processing of multiple types of heterogeneous data
thus enhancing the accuracy and efficiency of deformation prediction. The experimental validation results show that the CFRP–BJ–GAN framework outperforms traditional numerical simulation methods in the calculation of all the proposed evaluation metrics
while a single prediction takes only 8 s
which significantly improves the analysis speed. Therefore
the CFRP–BJ–GAN framework proposed in this study provides an efficient
accurate and practical solution for the deformation analysis of CFRP bolted joint structures.
0
浏览量
2
下载量
0
CSCD
关联资源
相关文章
相关作者
相关机构
京公网安备11010802024621
