A Review of Indirect Tool Condition Monitoring Systems and Decision-Making Methods in Turning: Critical Analysis and Trends
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Tadeusz Mikolajczyk | Munish Kumar Gupta | Wojciech Kapłonek | Danil Yurievich Pimenov | Shubham Sharma | Khaled Giasin | Mustafa Kuntoğlu | Abdullah Aslan | Üsame Ali Usca | Emin Salur | Shubham Sharma | D. Pimenov | M. Gupta | W. Kapłonek | Mustafa Kuntoğlu | T. Mikołajczyk | Abdullah Aslan | E. Salur | K. Giasin
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