China Mechanical Engineering ›› 2015, Vol. 26 ›› Issue (20): 2733-2739.

Previous Articles     Next Articles

Tool Wear  Monitoring  of  Diamond  Single-point  Dresser  Based  on  SMO-SVM

Yue Tai;Li Haolin;Chi  Yulun   

  1. University  of  Shanghai  for  Science  and  Technology,Shanghai,200093
  • Online:2015-10-25 Published:2015-10-20

基于SMO-SVM的单点金刚笔钝化监测

岳泰;李郝林;迟玉伦   

  1. 上海理工大学,上海,200093
  • 基金资助:
    国家科技重大专项(2013ZX04008-011)

Abstract:

An intelligent monitoring model was proposed based on support vector  machine to solve the problem of identifying the wear of diamond single-point dresser in the dressing process of grinding wheel. To obtain the required samples for modeling,wavelet packet analysis was used to extract the feature informations  from acoustic emission signals during the dressing process,and the diameter of wear platform was  employed to define the threshold of dresser wear. Besides, for improving the practicability of the model, a SOM method was applied to train the support vector classifier,the parameters of the model were selected by using genetic algorithm as well as cross validation method. Experimental results show that the model has higher performance than general intelligent model, and can monitor the wear of the dresser effectively.

Key words: diamond single-point dresser;support vector classifier;acoustic emission signal;sequential  , minimal optimization(SMO) method;diameter of wear platform

摘要:

针对单点金刚笔在砂轮修整过程中易于钝化且难以检测的问题,使用支持向量机建立智能模型。为了得到建立模型所需的样本库,使用小波包分析等方法在线提取修整时声发射信号中的特征信息,并引入钝化平台直径定义钝化临界值。模型本身选用基于串行优化算法的支持向量分类机,使用交叉验证法搭配遗传算法以达到优化模型参数的目的。实验结果表明,该模型在分类精度和计算时间上均优于一般的智能模型,可以有效地监测金刚笔的钝化。

关键词: 单点金刚笔, 支持向量分类机, 声发射信号, 串行优化算法, 钝化平台直径

CLC Number: