DocumentCode
3159218
Title
Research on GA-SVM tool wear monitoring method using HHT characteristics of drilling noise signals
Author
Jia, Li ; Jian-ming, Zheng ; Xiao-Jing, Bian ; Lei, Wei Lei
Author_Institution
Sch. of Mech. & Precision Instrum. Eng., Xi´´an Univ. of Technol., Xi´´an, China
fYear
2011
fDate
16-18 April 2011
Firstpage
635
Lastpage
638
Abstract
Detection of tool wear is vital for the deep-hole drilling, because it can help increasing manufacturing productivity and decreasing tool cost. This paper uses the drilling noise to establish the BTA tool wear condition monitoring system in order to monitor the tool wear condition. After the improved Empirical Mode Decomposition (EMD) method is used to do the modal decomposition for noise signal which has been filtered, the Intrinsic Mode Function (IMF) of signal is obtained. Every IMF is analyzed and detected by the Hilbert-Huang transformation (HHT), and then the energy of marginal spectrum and the changing law of peak value along with the tool wear are extracted. For the relationship between the noise feature vector and tool wear has strong randomness and uncertainty in the process of drilling, so this paper proposes a drill wear state identification method which is based on the genetic support vector machine (GA-SVM). The experimental results show that after dealing the drilling noise signal with HHT, the energy spectrum and the peak spectrum of each frequency band can be extracted as the characteristic vector which can accurately depict the change of drilling system with tool wear. The statistical models of the condition of tool wear established by using GA-SVM can effectively track the trend of tool wear, so as to realize the monitoring of tool wear and tool´s life.
Keywords
Hilbert transforms; drilling; drilling machines; genetic algorithms; mechanical engineering computing; monitoring; noise; statistical analysis; support vector machines; wear; BTA tool wear condition monitoring system; GA-SVM tool wear monitoring; HHT characteristics; Hilbert-Huang transformation; deep-hole drilling; drill wear state identification method; drilling noise signals; empirical mode decomposition; genetic support vector machine; intrinsic mode function; manufacturing productivity; modal decomposition; noise feature vector; statistical models; Drilling machines; Feature extraction; Genetic algorithms; Monitoring; Noise; Support vector machines; Transforms; EMD; GA-SVM; HHT; IMF;
fLanguage
English
Publisher
ieee
Conference_Titel
Consumer Electronics, Communications and Networks (CECNet), 2011 International Conference on
Conference_Location
XianNing
Print_ISBN
978-1-61284-458-9
Type
conf
DOI
10.1109/CECNET.2011.5768795
Filename
5768795
Link To Document