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基于人工智能的切削刀具疲劳强度预测方法

王荔檬 赵莹莹 杨铨

模具技术Issue(6):65-72,8.
模具技术Issue(6):65-72,8.

基于人工智能的切削刀具疲劳强度预测方法

Prediction method of cutting tool fatigue strength based on artificial intelligence

王荔檬 1赵莹莹 1杨铨1

作者信息

  • 1. 广西工业职业技术学院,广西 南宁 530001
  • 折叠

摘要

Abstract

Traditional methods have poor ability to handle raw signal noise and outliers.Poor quality signals affect the integrity of feature extraction results,affect the prediction of tool wear,and cause the prediction of cutting tool fatigue strength to be inconsistent with the actual situation.Research is being conducted on an artificial intelligence based method for predicting cutting tool fatigue strength.Using wavelet denoising method to filter signal noise and remove contained outliers;Targeting time-domain and frequency-domain features,extract more complete signal features,use Pearson coefficient method and MIC coefficient method to sort the feature signals,complete signal feature fusion through kernel principal component analysis,train different feature signals using generalized regression neural network,and predict the fatigue strength of cutting tools based on the obtained tool wear amount.The experimental results show that the traditional method of using BPNN to obtain wear accuracy is low,and the predicted crack width of the tool rapidly expands from the 45th hour onwards.After working for more than 60 hours,the tool head will break;The research method processed the head and tail noise and mid section outliers in the initial stage,and the wear amount obtained by GRNN was more accurate.It predicted that the crack width of the tool would expand from the 75th hour,and the tool head would only break after working for more than 80 hours.The difference between this prediction and the actual results was minimal,indicating that the prediction of the method in this paper is more accurate.

关键词

人工智能/切削刀具/疲劳强度/预测

Key words

artificial intelligence/cutting tools/fatigue strength/forecast

分类

机械制造

引用本文复制引用

王荔檬,赵莹莹,杨铨..基于人工智能的切削刀具疲劳强度预测方法[J].模具技术,2024,(6):65-72,8.

基金项目

广西重点研发计划机械门锁复合防盗锁芯结构及其防盗方法的研究与应用(编号:2023AB01165) (编号:2023AB01165)

广西重点研发计划智慧农机动力域控制系统关键技术开发及应用(编号:2021AB01008). (编号:2021AB01008)

模具技术

OACSTPCD

1001-4934

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