铣刀磨损监测中的声发射信号的特征优选

Selection of Optimum Features of Acoustic Emission Signal in Monitoring the Tool Wear of Milling Cutters

  • 摘要: 为保证在铣刀的磨损监控中铣刀状态分类的可靠性,针对小铣刀磨损监控的特点,合理选择信号特征,给出了一种根据模式可分性测度大小进行特征优选的方法,实验证明,经过本方法优选的特征所组成的特征向量,可以有效地应用于铣刀磨损状态的识别中。

     

    Abstract: Develops a method for feature selection based on the differences in the measurement of separability of features according to the peculiarity of tool wear monitoring for small sized milling cutters. Experiments showed that characteristic vectors comprising the acoustic emission features optimized by this method can be effectively employed in the pattern recognition for tool wear monitoring.

     

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