Damage assessment of composite material based on variational mode decomposition and BiLSTM

被引:0
作者
Billel Aklouche
Tarak Benkedjouh
Houssem Habbouche
Said Rechak
机构
[1] Ecole Militaire Polytechnique,
[2] LMS,undefined
[3] Bordj Elbahri,undefined
[4] ENP,undefined
[5] Laboratoire Genie Mécanique & developpement,undefined
来源
The International Journal of Advanced Manufacturing Technology | 2023年 / 129卷
关键词
Composite material; Deep learning; Blind deconvolution; Variational mode decomposition; Damage; Health assessment;
D O I
暂无
中图分类号
学科分类号
摘要
In industry, the failure of composite material may have negative consequences on the productivity, security, and the environment. To avoid such situations, the structural health monitoring (SHM) of the physical system used for tracking damage growth in these structures with minimal human intervention, predict future structural performance schedule maintenance. To overcome these problems, a new approach has been proposed based on bidirectional long short-term memory (BiLSTM) for the damage severity estimation of composite material. The proposed method focused on detecting and quantifying damage evolution in composite materials. Lamb wave (LW) is frequently used to evaluate the damage and its geometrical shape, and the test results need to be interpreted by trained experts. This approach is demonstrated on data collected from a run-to-failure tension-tension fatigue experiment measuring the damage progression in carbon fiber reinforced polymer (CFRP). The time frequency analysis used in this study with three kinds of neural networks RNN, LSTM, and BiLSTM to analyze the attributes with different severity of damage. Then, trained models are applied to identify the depth information of impact damage. VMD is a signal processing technique used to decompose signals into different band-limited intrinsic mode functions (IMFs), then the IMFs are used as input to feed the development model based on BiLSTM. Among all models, the proposed method based on VMD-BiLSTM has a good adaptive performance of modeling with respect to the efficiency and effectiveness by comparing with traditional learning techniques. Experimental results show that the proposed method based on VMD-BiLSTM can reflect effectively the damage assessment of CFRP and leads to a significant improvement of the predictive accuracy.
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收藏
页码:1801 / 1815
页数:14
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共 169 条
[1]  
Abbas S(2018)A review on SHM techniques and current challenges for characteristic investigation of damage in composite material components of aviation industry Mater Perform Charact 7 224-58
[2]  
Li F(2023)Delamination damage imaging method of CFRP composite laminate plates based on the sensitive guided wave mode Compos Struct 306 131-42
[3]  
Qiu J(2020)Factors affecting direct lightning strike damage to fiber reinforced composites: a review Compos Part B: Eng 183 153-83
[4]  
Zhang H(2019)Internal damage evaluation of composite structures using phased array ultrasonic technique: impact damage assessment in CFRP and 3D printed reinforced composites Compos Part B: Eng 165 77-54
[5]  
Sun J(2022)Structural health monitoring in composite structures: a comprehensive review Sensors 22 1687814020913761-52
[6]  
Rui X(2021)Advanced deep learning model-based impact characterization method for composite laminates Compos Sci Technol 207 44-474
[7]  
Liu S(2019)Reliability assessment of pulsed thermography and ultrasonic testing for impact damage of CFRP panels NDT & E Int 102 1417-174
[8]  
Kumar V(2020)Non-destructive testing and evaluation of composite materials/structures: a state-of-the-art review Adv Mech Eng 12 466-364
[9]  
Yokozeki T(2019)Parameters influencing the impact response of fiber-reinforced polymer matrix composite materials: a critical review Compos Struct 224 160-452
[10]  
Karch C(2020)A review of failure modes and fracture analysis of aircraft composite materials Eng Fail Anal 115 349-94