碳纳米管增强 FG 复合材料机翼的扑翼研究与深度学习预测

IF 1.1 Q4 MECHANICS Curved and Layered Structures Pub Date : 2024-01-01 DOI:10.1515/cls-2022-0218
Aseel J. Mohammed, H. K. Kadhom
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引用次数: 0

摘要

摘要 研究了用功能分级碳纳米管 (CNT) 增强的复合材料机翼的扑翼问题。矩形板模拟了具有悬臂边界条件的超音速机翼。为了确定中等厚度板的位移场,采用了剪切变形理论。利用汉密尔顿原理,采用一阶活塞理论模拟超音速气流。本研究考察了四种类型的 CNT 厚度。此外,还研究了四种不同的 CNT 分布模式。在双层非对称复合材料中,研究了贴片质量、质量分布、纤维取向角和 CNT 分布的影响。此外,研究结果还与其他研究进行了比较和验证。质量比越大,扑翼边界越小,而添加质量越长,扑翼边界越大。随着取向角的增加,CNT 纤维取向分布模式的变化导致非对称复合材料的扑翼边界表现不同。利用人工神经网络预测阻尼比,结果显示与研究结果相比非常准确。为了更好地优化预测模型,采用了超参数调整。
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Flutter investigation and deep learning prediction of FG composite wing reinforced with carbon nanotube
Abstract The flutter of a composite wing reinforced with functionally graded carbon nanotubes (CNTs) has been investigated. A rectangular plate models a supersonic wing with cantilever boundary conditions. To determine displacement fields of a moderately thick plate, shear deformation theory is used. Using the Hamilton principle, a first-order piston theory was used to simulate supersonic airflow. This study examines four types of CNT thickness. Also, four different CNT distribution patterns are investigated. In a two-layer asymmetric composite, the effects of patch mass, mass distribution, fiber orientation angle, and distribution of CNTs were examined. Moreover, the results are compared and verified with other studies. A greater mass ratio led to a smaller flutter boundary, while a longer added mass increased the flutter boundary. A variation in the distribution pattern in CNT fiber orientation results in a distinct behavior of the flutter boundary for asymmetric composites with increasing orientation angles. The artificial neural network is utilized to predict the damping ratio, and the results showed great accuracy compared to the study results. Hyperparameter tuning is employed for better optimizing the predictive models.
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来源期刊
CiteScore
2.60
自引率
13.30%
发文量
25
审稿时长
14 weeks
期刊介绍: The aim of Curved and Layered Structures is to become a premier source of knowledge and a worldwide-recognized platform of research and knowledge exchange for scientists of different disciplinary origins and backgrounds (e.g., civil, mechanical, marine, aerospace engineers and architects). The journal publishes research papers from a broad range of topics and approaches including structural mechanics, computational mechanics, engineering structures, architectural design, wind engineering, aerospace engineering, naval engineering, structural stability, structural dynamics, structural stability/reliability, experimental modeling and smart structures. Therefore, the Journal accepts both theoretical and applied contributions in all subfields of structural mechanics as long as they contribute in a broad sense to the core theme.
期刊最新文献
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