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一种基于模式识别的刀具磨损监测方法
引用本文:龚至豪,李汉民.一种基于模式识别的刀具磨损监测方法[J].北京理工大学学报,1993,13(3):297-303.
作者姓名:龚至豪  李汉民
作者单位:北京理工大学自动控制系,北京理工大学自动控制系,北京理工大学机械工程系,北京理工大学机械工程系 北京 100081,北京 100081,北京 100081,北京 100081
摘    要:将刀具磨损状态的在线监测作为模式识别中的两类模式分类问题,从切削振动信号中抽取特征向量;根据投影原理构造了最佳特征平面.在此基础上提出了一种具有自学习功能的G(D)判别函数,对车削试验的磨损状态进行分类,确诊率达95%,漏诊率小于0.6%,判别时间少于15s,适用于在线监测。

关 键 词:模式识别  特征抽取  刀具  磨损  监测

Monitoring of Cutting-Tool Wear Based on Pattern Recognition
Gong Zhihao Su Zhong.Monitoring of Cutting-Tool Wear Based on Pattern Recognition[J].Journal of Beijing Institute of Technology(Natural Science Edition),1993,13(3):297-303.
Authors:Gong Zhihao Su Zhong
Abstract:The study of on-line tool wear monitoring is transformed into a problem of 2-class classifier design in statistical pattern recognition. Feature vector is extracted from vibration signal in the cutting process. The optimizing feature plane is formed according to projection theory. On the basis of this a discrimination function the G(D), having self-learning characteristics, has been proposed. It classifies situations of tool wear as the G(D). The results indicate that the recognition rate is 95%, the leak away rate less than 0.6%, discrimination time less than 15s on a microcomputer PC 286. The proposed method can provide an on-line monitoring of tool wear in the cutting process.
Keywords:pattern recognition  feature extraction  classifiers/tool wear
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