Initial study on the use of support vector machine (SVM) in tool condition monitoring in chipboard drilling

被引:0
作者
Albina Jegorowa
Jarosław Górski
Jarosław Kurek
Michał Kruk
机构
[1] Warsaw University of Life Sciences,Faculty of Wood Technology
[2] Warsaw University of Life Sciences,Faculty of Applied Informatics and Mathematics
来源
European Journal of Wood and Wood Products | 2019年 / 77卷
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摘要
The paper presents the idea of using support vector machine algorithm in a tool wear identification system in chipboard drilling. The indirect sources of information about tool wear were: feed force, cutting torque, acceleration of jig vibration, audible noise, and ultrasonic acoustic emission signals. The drills were classified (analogous to traffic rules) as “Green” (able to work), “Yellow” (warning state) or “Red” (unable to work–replacement needed).
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页码:957 / 959
页数:2
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