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The International Journal of Advanced Manufacturing Technology | Vol., Issue. | 2020-05-06 | Pages 1-21

The International Journal of Advanced Manufacturing Technology

Technical data-driven tool condition monitoring challenges for CNC milling: a review

Joon Huang Chuah   Shi Yuen Wong   Hwa Jen Yap  
Abstract

CNC milling is a highly complex machining process highly valued in various industries, including the automotive and aerospace industries. With the increasi

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Technical data-driven tool condition monitoring challenges for CNC milling: a review

CNC milling is a highly complex machining process highly valued in various industries, including the automotive and aerospace industries. With the increasi

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Joon Huang Chuah,Shi Yuen Wong,Hwa Jen Yap,.Technical data-driven tool condition monitoring challenges for CNC milling: a review. (),1-21.

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