• CN:11-2187/TH
  • ISSN:0577-6686

›› 2011, Vol. 47 ›› Issue (18): 158-164.

• 论文 • 上一篇    下一篇

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Logistic回归模型在机床刀具可靠性评估中的应用

陈保家;陈雪峰;李兵;曹宏瑞;蔡改改;何正嘉   

  1. 西安交通大学机械制造系统工程国家重点实验室
  • 发布日期:2011-09-20

Reliability Estimation for Cutting Tool Based on Logistic Regression Model

CHEN Baojia;CHEN Xuefeng;LI Bing;CAO Hongrui;CAI Gaigai;HE Zhengjia   

  1. State Key Laboratory for Manufacturing Systems Engineering, Xi’an Jiaotong University
  • Published:2011-09-20

摘要: 刀具系统作为数控装备的一个重要部件,其可靠性必然会影响到整个装备系统的加工效率和稳定性。为有效地识别刀具磨损状态,降低生产成本,保证加工质量,提出一种基于Logistic回归模型的可靠性评估方法。通过试验在线测取车刀加工过程中的振动信号和刀具磨损数据,利用小波包分解、时域统计和相关分析,提取刀具磨损的特征频带和显著能量、时域特征指标,结合刀具状态信息,建立Logistic可靠性评估模型,准确地估计出实际使用刀具的可靠度指标和失效时间,对于变化的失效阈值,评估模型同样有效。该方法将设备运行状态信息引入到性能评估和可靠性分析当中,更能反映设备的时间动态特性,且不需要对设备失效过程和分布函数作过多假设。

关键词: Logistic回归模型, 刀具, 可靠性评估, 相关分析, 小波包分解

Abstract: As an important part of CNC machine, cutting tool reliability plays an important role to the total manufacturing effectiveness and stability of equipment. With an accurate identification of cutting tool wear state, a reliability estimation method based on logistic regression model is proposed to reduce tools costs and guarantee a certain surface machining quality. During the manufacturing process,tool vibration signals are measured on-line by experiment. Wavelet packet (WP) transform is employed to decompose vibration signals in order to find out the feature frequency band. Correlation analysis is used to extract the salient feature parameters, which are composed of energy, energy entropy, and time-domain feature. Combined with tool state, a reliability estimation model based on logistic regression is set up and applied to evaluate the reliability indices of the other in-used tool. Under different failure threshold, the reliability and failure time are all estimated accurately. In this method, the operation condition information of equipment is introduced into reliability analysis to reflect the asset time-varying characteristics. It is not necessary to make much assumption about degradation path and distribution function of condition feature.

Key words: Correlation analysis, Cutting tool, Logistic regression model, Reliability estimation, Wavelet packet decomposition

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