State recognition of fine blanking stamping dies through vibration signal machine learning |
Seok-Kwan Hong
(Department of Molding & Metal Forming R&D, Korea Institute of Industrial Technology)
Eui-Chul Jeong (Department of Molding & Metal Forming R&D, Korea Institute of Industrial Technology) Sung-Hee Lee (Department of Molding & Metal Forming R&D, Korea Institute of Industrial Technology) Ok-Rae Kim (Department of Molding & Metal Forming R&D, Korea Institute of Industrial Technology) Jong-Deok Kim (Technology Laboratory, DAESUNG FINE TEC Co., LTD.) |
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