...
首页> 外文期刊>Journal of the Brazilian Society of Mechanical Sciences and Engineering >Matrix cracking and delamination detection in GFRP laminates using pre-trained CNN models
【24h】

Matrix cracking and delamination detection in GFRP laminates using pre-trained CNN models

机译:使用预训练的 CNN 模型检测 GFRP 层压板中的基体开裂和分层

获取原文
获取原文并翻译 | 示例

摘要

The demand for fiber-reinforced polymer composites is increasing steadily because of their superior mechanical properties, high specific strength and stiffness, and high corrosion resistance. Matrix cracking and delamination are one of the most significant kind of damage in laminated composite structures. In this research work, our main objective is to differentiate whether the randomly oriented chopped glass fiber composite laminate is undamaged or damaged (matrix cracking and delamination) using five distinct convolutional neural network (CNN) models with transfer learning techniques. A microscopic examination is conducted on a composite laminate in the thickness direction just before and after the three-point bending test at 100 mu m. Thereafter, data augmentation techniques such as mirroring, rotation, affine transformation, and noise addition are performed, and a total of 13,464 images are obtained from 2 base images. Additionally, these images are given as input to five different deep CNN models, including VGG-16, ResNet-101, NasNetMobile, MobileNet-V2, and DenseNet-201. Using augmented image datasets, the pre-trained CNN models with transfer learning are trained, validated, and tested in the proportion of 70:15:15. Thereafter, comparative studies are carried out to analyze the total trainable and non-trainable parameters, computation time, training, validation, testing accuracy, and F1 score of different CNN models. VGG-16 has 138 million trainable parameters and thus requires maximum computation time. However, MobileNet-V2 has 3 million trainable parameters that needs minimum computation time. DenseNet-201, VGG-16, MobileNet-V2, and NasNetMobile converge very fast and produce minimum validation loss and maximum accuracy whereas ResNet-101 seems not to be converged easily which leads to maximum validation loss and minimum accuracy. The highest training, validation, testing, and F1 score were observed for VGG-16, NasNetMobile, MobileNet-V2, and DenseNet-201 and the lowest for the ResNet-101 CNN model. Finally, it can be concluded that the MobileNet-V2 model performed better than the other four CNN models in terms of accuracy with respect to total parameters and computation time over the other models.
机译:纤维增强聚合物复合材料因其优异的机械性能、高比强度和刚度以及高耐腐蚀性而稳步增长。基体开裂和分层是层压复合材料结构中最重要的损伤之一。在这项研究工作中,我们的主要目标是使用五种不同的卷积神经网络 (CNN) 模型和迁移学习技术来区分随机取向的短切玻璃纤维复合材料层压板是否未损坏或损坏(基体开裂和分层)。在100μm的三点弯曲试验前后,在厚度方向上对复合材料层压板进行显微镜检查。此后,进行镜像、旋转、仿射变换、噪声加法等数据增强技术,从2张基础图像中共获得13,464张图像。此外,这些图像被作为五种不同的深度CNN模型的输入,包括VGG-16、ResNet-101、NasNetMobile、MobileNet-V2和DenseNet-201。使用增强图像数据集,以 70:15:15 的比例对具有迁移学习的预训练 CNN 模型进行训练、验证和测试。此后,进行对比研究,分析不同CNN模型的总可训练和不可训练参数、计算时间、训练、验证、测试精度和F1分数。VGG-16 有 1.38 亿个可训练参数,因此需要最长的计算时间。但是,MobileNet-V2 有 300 万个可训练参数,需要最少的计算时间。DenseNet-201、VGG-16、MobileNet-V2 和 NasNetMobile 收敛速度非常快,并产生最小的验证损失和最大的精度,而 ResNet-101 似乎不容易收敛,导致最大的验证损失和最小的精度。VGG-16、NasNetMobile、MobileNet-V2 和 DenseNet-201 的训练、验证、测试和 F1 得分最高,而 ResNet-101 CNN 模型的训练、验证、测试和 F1 得分最低。最后,可以得出结论,MobileNet-V2模型在总参数和计算时间的准确性方面优于其他四个CNN模型。

著录项

获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号