Abdul Aabid Shaikh, Md Abdul Raheman, M. Hrairi, Muneer Baig
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引用次数: 0
摘要
在过去的四十年中,粘接复合材料修复已被证明是解决裂纹损伤扩展的有效方法。另一方面,机器学习(ML)使得采用各种方法解决机械和航空航天问题成为可能,而这种重要的方法就是修复机制,因此在本研究中使用了 ML 算法来增强修复机制。目前的工作研究的是平面应力条件下单面复合材料贴片粘合在薄板上的效果。利用线性弹性断裂力学和罗斯分析模型,建立了单面复合材料补片修复的分析模型。根据分析模型,通过改变模型的所有可能参数,计算出了应力强度因子(SIF)。接下来,选择了 ML 算法,并进行了比较研究,以获得最佳性能,并确定参数对最佳 SIF 的影响。此外,分析模型还与现有工作进行了验证,结果显示两者吻合良好,误差小于 10%。这项研究对于基于分析模型设计单侧复合材料修补方法尤为重要。此外,在回归应用中比较 ML 算法和分析解决方案也很重要。
Improving the performance of damage repair in thin-walled structures with analytical data and machine learning algorithms
In the last four decades, bonded composite repair has proven to be an effective method for addressing crack damage propagation. On the other hand, machine learning (ML) has made it possible to employ a variety of approaches for mechanical and aerospace problems and such significant approach is the repair mechanism and hence ML algorithms used to enhance in the present work. The current work investigates the effect of the single-sided composite patch bonded on a thin plate under plane stress conditions. An analytical model was formulated for a single-sided composite patch repair using linear elastic fracture mechanics and Rose's analytical modelling. From the analytical model, the stress intensity factors (SIF) were calculated by varying all possible parameters of the model. Next, ML algorithms were selected, and comparative studies were conducted for the best possible performance and to identify the parametric effects on optimum SIF. Also, the analytical model is validated with existing work, and it shows good agreement with less than 10% error. This study is particularly important for designing the single-sided composite patch repair method based on analytical modelling. Also, it is important to compare ML algorithms with analytical solutions in regression applications.