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IMAGE ANALYSIS FOR TURNING DEFECT OF COMMUTATOR SURFACE
ID:118 View protection:Participant Only Updated time:2024-10-14 06:47:22 Views:548 Virtual Presentation

Start Time:2024-10-25 15:00

Duration:15min

Session:[RS2] Regular Session 2 [RS2-1] IoT and applications

Abstract
The quality of commutator surfaces in DC motors significantly affects the performance and longevity of the motors. Traditional methods of inspecting commutator surface defects, such as roundness and roughness meters, have limitations in detecting subtle and complex surface irregularities. This study proposes an image analysis technique combined with convolutional neural networks (CNNs) to enhance the detection of commutator surface defects. Our method improves the identification and classification of defects, correlating these findings with the assembly quality of DC motors. Although the experimental results are premilitary, it validates the effectiveness of the proposed approach, demonstrating improvements in defect detection accuracy. Future work will focus on expanding the image dataset and refining the CNN model to enhance its accuracy and real-time application capabilities.
Keywords
defect detection, DC motor quality control, surface defects, correlation table, convolutional neural networks (CNNs)
Speaker
Zhong-Ping Shao
Huafan University

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Important Dates
  • Conference date

    10-24

    2024

    -

    10-27

    2024

  • 10-14 2024

    Draft paper submission deadline

  • 10-29 2024

    Registration deadline

  • 10-31 2024

    Presentation submission deadline

Sponsored By

United Societies of Science
King Mongkut's University of Technology North Bangkok (KMUTNB)
IEEE Thailand Section
IEEE Thailand Section C Chapter

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