An intelligent sensor system approach for reliable tool flank wear recognition

被引:0
|
作者
Y. M. Niu
Y. S. Wong
G. S. Hong
机构
[1] The National University of Singapore,Department of Mechanical and Production Engineering
关键词
Feature extraction; Intelligent sensors; Neural network; Reliability; Tool wear monitoring;
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学科分类号
摘要
An intelligent sensor system approach for reliable flank wear monitoring in turning is described. Based on acoustic emission and force sensing, an intelligent sensor system integrates multiple sensing, advanced feature extraction and information fusion methodology. Spectral, statistical and dynamic analysis have been used to determine primary features from the sensor signals. A secondary feature refinement is further applied to the primary features in order to obtain a more correlated feature vector for the tool flank wear process. An unsupervised ART2 neural network is used for the fusion of AE and force information and decision-making of the tool flank wear state. The experimental results confirm that the developed intelligent sensor system can be reliably used to recognise the tool flank wear state over a range of cutting conditions.
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页码:77 / 84
页数:7
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