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基于小波模糊神经网络刀具监控系统研究
引用本文:李小俚,姚英学,袁哲俊.基于小波模糊神经网络刀具监控系统研究[J].机械工程学报,1998,34(1):59-63.
作者姓名:李小俚  姚英学  袁哲俊
作者单位:昆明理工大学机械系;哈尔滨工业大学
基金项目:国防基金资助,中科院机器人学开放实验室资助
摘    要:针对切削过程中振动信号和AE信号的特点,利用小波分析技术提取信号深层特征,建立了新型的基于模糊推理的神经网络模型,该模型能融合振动和AE信号的特征和描述信号特征与刀具状态的非线性关系,以此识别刀具状态。试验表明小波模糊神经网络对提高在线刀具监控系统的可靠性极为有效。

关 键 词:刀具监控  模糊神经网络  声发射信号  小波  振动信号  

STUDY ON TOOL MONITORING SYSTEM USING WAVELET FUZZY NEURAL NETWORK
Li Xiaoli,Yao Yingxue,Yuan Zhejun.STUDY ON TOOL MONITORING SYSTEM USING WAVELET FUZZY NEURAL NETWORK[J].Chinese Journal of Mechanical Engineering,1998,34(1):59-63.
Authors:Li Xiaoli  Yao Yingxue  Yuan Zhejun
Affiliation:Kunming University of Science and Technology Harbin Institute of Technology
Abstract:The features of vibration signal and AE signal in cutting proceeding is analyzed, the signal intrinsic features are extracted using wavelet analysis, the signals are fused and the nonlinear relationship between signal feature and tool condition is described in order to identify tool condition using new wavelet fuzzy neural network. The experimental results show it is very effective to improve tool monitoring system reliability.
Keywords:Wavelet  Fuzzy neural network  Tool monitoring  Vibration signal  AE signal  
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