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基于双信号融合的超声振动钻削钻头磨损状态监测研究
引用本文:唐武生,魏志远,尹春梅,史尧臣. 基于双信号融合的超声振动钻削钻头磨损状态监测研究[J]. 制造技术与机床, 2022, 0(3): 34-39
作者姓名:唐武生  魏志远  尹春梅  史尧臣
作者单位:长春大学机械与车辆工程学院
基金项目:吉林省科技厅自然科学基金(YDZJ202101ZYTS150);长春市科技计划项目(18DY031)。
摘    要:为了监测超声振动钻削过程中钻头的磨损状态,构建了超声振动钻削钻头的振动信号和AE信号的采集系统,通过采集不同磨损状态下钻头的振动信号和AE信号,对其进行小波分解,得到与钻头磨损相关的特征值,将二者融合后作为神经网络的输入,输入至构建的12-10-3的BP神经网络中,进行钻头磨损状态的识别。试验结果表明,所建BP神经网络通过振动和AE的融合信号对钻头的有效识别率为91.7%,可以有效对钻头的磨损状态进行识别。

关 键 词:AE信号  小波分解  BP神经网络  钻头磨损状态

Research on wear state monitoring of ultrasonic vibration drilling bits based on dual signal fusion
TANG Wusheng,WEI Zhiyuan,YIN Chunmei,SHI Yaochen. Research on wear state monitoring of ultrasonic vibration drilling bits based on dual signal fusion[J]. Manufacturing Technology & Machine Tool, 2022, 0(3): 34-39
Authors:TANG Wusheng  WEI Zhiyuan  YIN Chunmei  SHI Yaochen
Affiliation:(College of Mechanical and Vehicle Engineering,Changchun University,Changchun 130022,CHN)
Abstract:In order to monitor the wear status of the drill bit in the process of ultrasonic vibration drilling,an acquisition system for the vibration signal and AE signal of the ultrasonic vibration drilling bit is constructed.By collecting the vibration signal and AE signal of the drill bit under different wear conditions,it is subjected to wavelet decomposition.Obtain the eigenvalues related to the wear of the drill bit,merge the two as the input of the neural network,and input it into the constructed 12-10-3 BP neural network to identify the wear status of the drill bit.The test results show that the built BP neural network has an effective recognition rate of 91.7%for the drill bit through the fusion signal of vibration and AE,which can effectively identify the wear state of the drill bit.
Keywords:AE signal  wavelet decomposition  BP neural network  bit wear condition
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