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A Bayesian framework for fatigue life prediction of composite laminates under co-existing matrix cracks and delamination

机译:贝叶斯框架预测复合材料层合裂纹和分层下复合材料的疲劳寿命

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摘要

This paper proposes a particle filter-based Bayesian framework for damage prognosis of composite laminates exhibiting concurrent matrix cracks and delamination. Literature shows a number of applications of particle filtering for real-time prognosis of metallic structures and, recently, matrix crack density evolution in composites. The work presented here enhances the methodology proposed in previous papers by extending the Bayesian framework to multiple damage mechanisms, and validates the approach using damage progression data from notched cross-ply CFRP coupons subject to tension-tension fatigue. A multiple damage-mode model for the estimation of the strain energy release rate and the remaining stiffness of damaged laminates constitutes the core of the particle filtering algorithm, thus allowing the prognostic framework to extend for monitoring of simultaneous, coexisting damages. Also, the damage state can be evolved into the future enabling simulation of damage progression and prediction of remaining useful life of the composite material. The proposed prognostic unit successfully predicts damage growth and fatigue life of the laminate, and the results are critically discussed with respect to filtered estimation of damage progression and remaining life prediction.
机译:本文提出了一种基于粒子过滤器的贝叶斯框架,用于同时出现基体裂纹和分层的复合材料层压板的损伤预后。文献显示了粒子过滤在金属结构实时预测和最近复合材料中基体裂纹密度演变中的许多应用。此处提出的工作通过将贝叶斯框架扩展到多种损伤机制来增强先前论文中提出的方法,并使用来自带有槽口的交叉CFRP试样受拉-拉疲劳的损伤进展数据验证了该方法。用于估计应变能释放速率和受损层压板的剩余刚度的多重损伤模式模型构成了粒子过滤算法的核心,从而允许扩展预后框架以监控同时存在的损伤。而且,损伤状态可以发展到未来,从而能够模拟损伤的进展并预测复合材料的剩余使用寿命。所提出的预后单元可以成功地预测层压板的损伤增长和疲劳寿命,并就损伤进展的滤波估计和剩余寿命预测进行严格讨论。

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