Guided wave-driven machine learning for damage classification with limited dataset in aluminum panel

被引:8
|
作者
Rezazadeh, Nima [1 ]
Perfetto, Donato [1 ]
Polverino, Antonio [1 ]
De Luca, Alessandro [1 ]
Lamanna, Giuseppe [1 ]
机构
[1] Univ Campania L Vanvitelli, Dept Engn, Via Roma 29, I-81031 Aversa, Italy
关键词
Ultrasonic-guided waves; machine learning; limited data; synthesized data; generative adversarial network; METALLIC STRUCTURES; FEATURE-EXTRACTION; LAMB WAVES; SCATTERING;
D O I
10.1177/14759217241268394
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
The goal of this research study is to classify damages in an aluminum panel using ultrasonic-guided waves (UGWs). The study is carried out on the premise that only a limited dataset, consisting of only two receivers, is available. In the experimental phase, three distinct parts, that is, stainless steel masses, were located on the surface of the panel, assumed to be mapped into four triangular regions, to experimentally simulate the effects induced by circular artificial damage of varied sizes. UGW-driven damage classification was thus performed via machine learning. A data synthesis technique called conditional generative adversarial network (cGAN) was used to generate 2000 samples (signals) for each of the 12 different malfunction scenarios (classes), based on the combination of damage region and size. Damage features were extracted using the wavelet time scattering technique, while the classification task was performed via a long short-term memory network with tuned hyperparameters. A validation procedure was executed to ensure that the classification network was not overfitted. Furthermore, two testing stages were performed to evaluate the designed framework. The designed framework was thus tested on the observations excluded from the training and validation phases, as well as on 10 additional novel experimental samples. The high accuracy and F1-score values of the validation and the two testing stages-97.7%, 98.5%, and 96.6%, respectively-attest to the generality of this methodology, which is neither underfitted nor overfitted. To further assess the robustness of the methodology, the cGAN was tested on a new sensor placement, demonstrating a consistent performance (95.3%) and confirming the framework applicability under different sensor configurations, showcasing potential extension to other classification problems featuring a limited dataset.
引用
收藏
页数:24
相关论文
共 50 条
  • [1] Composite Panel Damage Classification Based on Guided Waves and Machine Learning: An Experimental Approach
    Perfetto, Donato
    Rezazadeh, Nima
    Aversano, Antonio
    De Luca, Alessandro
    Lamanna, Giuseppe
    APPLIED SCIENCES-BASEL, 2023, 13 (18):
  • [2] Bifocal focusing and polarization demultiplexing by a guided wave-driven metasurface
    Xie, Chenkai
    Huang, Lirong
    Liu, Wenbing
    Hong, Wei
    Ding, Jifei
    Wu, Wei
    Guo, Min
    OPTICS EXPRESS, 2021, 29 (16) : 25709 - 25719
  • [3] Molding free-space light with guided wave-driven metasurfaces
    Guo, Xuexue
    Ding, Yimin
    Chen, Xi
    Duan, Yao
    Ni, Xingjie
    SCIENCE ADVANCES, 2020, 6 (29)
  • [4] Handling Imbalanced Dataset Classification in Machine Learning
    Yadav, Seema
    Bhole, Girish P.
    2020 IEEE PUNE SECTION INTERNATIONAL CONFERENCE (PUNECON), 2020, : 38 - 43
  • [5] Tiny Machine Learning Implementation for Guided Wave-Based Damage Localization
    Henkmann, Jannik
    Memmolo, Vittorio
    Moll, Jochen
    SENSORS, 2025, 25 (02)
  • [6] A MULTIMODAL DATASET FOR FOREST DAMAGE DETECTION AND MACHINE LEARNING
    Yailymova, Hanna
    Yailymov, Bohdan
    Salii, Yevhenii
    Kuzin, Volodymyr
    Kussul, Nataliia
    Shelestov, Andrii
    IGARSS 2024-2024 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM, IGARSS 2024, 2024, : 2949 - 2953
  • [7] Machine learning for Gravity Spy: Glitch classification and dataset
    Bahaadini, S.
    Noroozi, V.
    Rohani, N.
    Coughlin, S.
    Zevin, M.
    Smith, J. R.
    Kalogera, V.
    Katsaggelos, A.
    INFORMATION SCIENCES, 2018, 444 : 172 - 186
  • [8] Sugarcane leaf dataset: A dataset for disease detection and classification for machine learning applications
    Thite, Sandip
    Suryawanshi, Yogesh
    Patil, Kailas
    Chumchu, Prawit
    DATA IN BRIEF, 2024, 53
  • [9] ELECTROMAGNETIC WAVE-DRIVEN DEEP LEARNING FOR STRUCTURAL EVALUATION OF REINFORCED CONCRETE STRENGTH
    Putranto, Alan
    Huang, Bo-Xun
    Lin, Tzu-Hsuan
    JOURNAL OF CIVIL ENGINEERING AND MANAGEMENT, 2024, 30 (01) : 57 - 75
  • [10] Terahertz Airy beam generated by Pancharatnam-Berry phases in guided wave-driven metasurfaces
    Xi, Kelei
    Fang, Bin
    Ding, Li
    Li, Lin
    Zhuang, Songlin
    Cheng, Qingqing
    OPTICS EXPRESS, 2022, 30 (10) : 16699 - 16711