An innovative integrated approach to automatic defect detection system of cell phone case manufacturing in an empirical implementation
Chao-Chang Liao,
Chih-Ching Hsu,
Hong-Tsu Young and
Kuan-Ming Li ()
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Chao-Chang Liao: National Taiwan University
Chih-Ching Hsu: 3Dfamily Technology Co. Ltd.
Hong-Tsu Young: National Taiwan University
Kuan-Ming Li: National Taiwan University
Journal of Intelligent Manufacturing, 2024, vol. 35, issue 6, No 9, 2613-2624
Abstract:
Abstract In this study an innovative integrated approach is proposed to develop a design schema for automatic defect detection system. This system has been successfully implemented in an empirical factory setting. In addition, this novel design has been authorized a new patent. This integrated methodology is literally comprised of vertical thinking mode coupled with lateral mode, which results a much better solution than employing traditional way alone. The vertical mode includes DMAIC, 8D methodology, and ECRS techniques. And the lateral counter-part consists of Design Thinking and 3I Design Methodology. The empirical implementation of this integrated approach focuses on the automated defect detection of manufacturing cell phone case. The patented novel design has been proven to be empirical efficacy and effectiveness. The testing results reveal considerable savings both in labor expenditures and reduced costs.
Keywords: Design thinking; Intelligent manufacture process; Defect detection; Problem solving; Mechanism design (search for similar items in EconPapers)
Date: 2024
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DOI: 10.1007/s10845-023-02155-8
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