Online Tool Wear Classification during Dry Machining Using Real Time Cutting Force Measurements and a CNN Approach
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Svetan Ratchev | Giovanna Martínez-Arellano | Germán Terrazas | Panorios Benardos | S. Ratchev | P. Benardos | G. Terrazas | G. Martínez-Arellano | Giovanna Martínez-Arellano
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