Unsupervised Machine Learning for Blind Rivets Quality Inspection

被引:0
|
作者
Martin Rebe, Ander [1 ]
Penalva, Mariluz [1 ]
Veiga, Fernando [1 ,2 ]
Gil Del Val, Alain [1 ,3 ]
El Moussaoui Abousoliman, Bilal [1 ]
机构
[1] TECNALIA, Basque Res & Technol Alliance BRTA, Parque Cient & Tecnol Guipuzcoa, Donostia San Sebastian 20009, Spain
[2] Univ Publ Navarra, Dept Ingn, Edificio Dept Los Pinos,Campus Arrosadia, Navarra 31006, Spain
[3] Int Univ La Rioja UNIR, Logrono, La Rioja, Spain
关键词
Riveting; Quality Monitoring; Time-series clustering;
D O I
10.1007/978-3-031-57496-2_8
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Fastening plays a crucial role in aircraft manufacturing, and the demand for automated solutions has grown. Blind rivets are appealing for automation but require indirect assessment of the formed head for quality monitoring. Unsupervised machine learning holds potential for blind rivet inspection and extends to industrial data clustering/classification. In this context, labeling industrial data is challenging due to production focus and the need for NO OK labels. Unsupervised machine learning and advanced data analysis methods offer opportunities to optimize quality control processes without manual labeling or costly experiments. This paper proposes two approaches to address the issue by clustering time-dependent signals in the riveting process. After preprocessing the signals, different clustering techniques are applied to time-series and signal features to obtain OK and NO OK installation clusters. The first approach, using Euclidean distance and Dynamic Time Warping, yields poor clustering results. The second approach involves feature extraction using time domain and expert descriptors, along with dimensional reduction techniques (PCA, UMAP), followed by clustering techniques. UMAP combined with DBSCAN clustering achieves interesting results, with high precision and accuracy values (above 0.8) for both OK and NO OK clusters.
引用
收藏
页码:73 / 80
页数:8
相关论文
共 50 条
  • [1] Machine Learning For Product Quality Inspection
    Citak, Erol
    Genc, Yakup
    2017 25TH SIGNAL PROCESSING AND COMMUNICATIONS APPLICATIONS CONFERENCE (SIU), 2017,
  • [2] BLIND RIVETS
    FREEMAN, TR
    MACHINE DESIGN, 1967, 39 (14) : 83 - &
  • [3] BLIND RIVETS
    不详
    MACHINE DESIGN, 1969, 41 (21) : 81 - &
  • [4] BLIND RIVETS
    RAGAN, LJ
    DESIGN NEWS, 1971, 26 (09) : 84 - &
  • [5] AGILE SURFACE INSPECTION FRAMEWORK FOR AEROSPACE COMPONENTS USING UNSUPERVISED MACHINE LEARNING
    Nandagopal, Arun
    Kulkarni, Abhishek
    Acton, Colin
    Manohar, Krithika
    Chen, Xu
    PROCEEDINGS OF 2024 INTERNATIONAL SYMPOSIUM ON FLEXIBLE AUTOMATION, ISFA 2024, 2024,
  • [6] QUALES: Machine Translation Quality Estimation via Supervised and Unsupervised Machine Learning
    Etchegoyhen, Thierry
    Martinez Garcia, Eva
    Azpeitia, Andoni
    Alegria, Inaki
    Labaka, Gorka
    Otegi, Arantza
    Sarasola, Kepa
    Cortes, Itziar
    Jauregi, Amaia
    Ellakuria, Igor
    Calonge, Eusebi
    Martin, Maite
    PROCESAMIENTO DEL LENGUAJE NATURAL, 2018, (61): : 143 - 146
  • [7] OpenStreetMap quality assessment using unsupervised machine learning methods
    Jacobs, Kent T.
    Mitchell, Scott W.
    TRANSACTIONS IN GIS, 2020, 24 (05) : 1280 - 1298
  • [8] FOOD QUALITY INSPECTION AND SORTING USING MACHINE VISION, MACHINE LEARNING AND ROBOTICS
    Drogalis, Conor
    Zampino, Christopher
    Chauhan, Vedang
    PROCEEDINGS OF ASME 2023 INTERNATIONAL MECHANICAL ENGINEERING CONGRESS AND EXPOSITION, IMECE2023, VOL 3, 2023,
  • [9] Tiny Machine Learning for High Accuracy Product Quality Inspection
    Albanese, Andrea
    Nardello, Matteo
    Fiacco, Gianluca
    Brunelli, Davide
    IEEE SENSORS JOURNAL, 2023, 23 (02) : 1575 - 1583
  • [10] An unsupervised machine learning method for assessing quality of tandem mass spectra
    Wenjun Lin
    Jianxin Wang
    Wen-Jun Zhang
    Fang-Xiang Wu
    Proteome Science, 10