257
Views
1
CrossRef citations to date
0
Altmetric
Original Articles

APPLICATION OF WAVELET PACKET ANALYSIS IN DRILL WEAR MONITORING

, &
Pages 413-432 | Published online: 02 Oct 2007

REFERENCES

  • Abu-Mahfouz , I. ( 2003 ) Drilling wear detection and classification using vibration signals and artificial neural network . International Journal of Machine Tools & Manufacture , 43 : 707 – 720 .
  • Abu-Mahfouz , I. ( 2005 ) Drill flank wear estimation using supervised vector quantization neural networks . Neural Computing and Application , 14 ( 3 ): 167 – 175 .
  • Byrne , G. ; Dorfeld , D. ; Inasaki , I. ; Ketteler , G. ; Konig , W. ; Teti , R. ( 1995 ) Tool condition monitoring (TCM) – the status of research and industrial application . Annals of CIRP , 44 ( 2 ): 541 – 567 .
  • Daubechies , I. ( 1990 ) The wavelet transform, time-frequency localization and signal analysis . IEEE Transaction on Information Theory , 36 ( 5 ): 961 – 1005 .
  • Dimla Snr , D.E. ( 2000 ) Sensor signal for tool wear monitoring in metal cutting operations – a review of methods . International Journal of Machine Tools and Manufacture , 40 : 1073 – 1098 .
  • Dimla , D.E. ; Lister , P.M. ; Leighton , N.J. ( 1997 ) Neural network solution to the tool condition monitoring problem in metal cutting – a critical review of methods . International Journal of Machine Tools and Manufacture , 37 ( 9 ): 1219 – 1241 .
  • Franco-Gasca , L.A. ; Herrera-Ruiz , G. ; Peniche-Vera , R. ; Romero-Troncoso , R.D.J. ; Leal-Tafolla , W. ( 2006 ) Sensorless tool failure monitoring system for drilling machines . International Journal of Machine Tools & Manufacture , 46 : 381 – 386 .
  • Haykin , S. ( 1998 ) Neural Network, A Comprehensive Foundation, , 2nd edition , Pearson Education Pte. Ltd. , Singapore , pp. 161 – 175 .
  • Hong , G.S. ; Rahman , M. ; Zhou , Q. ( 1996 ) Using neural network for tool condition monitoring based on wavelet decomposition . International Journal of Machine Tools & Manufacture , 36 ( 5 ): 551 – 566 .
  • Huseyin , M.E. ; Kenneth , A.L. ; Hasan , O. ( 2001 ) Tool wear condition monitoring in drilling operations using hidden markov models (HMMs) . International Journal of Machine Tools and Manufacture , 41 : 1363 – 1384 .
  • Jantunen , E. ( 2002 ) A summary of methods applied to tool condition monitoring in drilling . International Journal of Machine Tools and Manufacture , 42 : 997 – 1010 .
  • Li , X. ; Dong , S. ; Yuan , Z. ( 1999 ) Discrete wavelet transform for tool breakage monitoring . International Journal of Machine Tools & Manufacture , 39 : 1935 – 1944 .
  • Li , X. ; Tso , S.K. ; Wang , J. ( 2000 ) Real-time tool condition monitoring using wavelet transforms and fuzzy techniques . IEEE Transactions on Systems, Man, and Cybernetics-part C: Applications and Reviews , 30 ( 3 ): 352 – 357 .
  • Liu , T. I. ; Chen , W.Y. ; Anatharaman , K. S. ( 1998 ) Intelligent detection of drill wear . Mechanical Systems and Signal Processing , 12 ( 6 ): 863 – 873 .
  • Mallat , S.G. (1989) A theory for multiresolution signal decomposition: the wavelet representation. IEEE Transactions on Pattern Analysis and Machine Intelligence , 11(5): 674–693.
  • Mannan , M.A. ; Broms , S. ( 1989 ) Monitoring and adaptive control of cutting process by means of motor power and current measurements . Annals of CIRP , 38 ( 1 ): 347 – 350 .
  • Mathworks , Inc. ( 2004 ) Wavelet Toolbox, MATLAB 7.0.
  • Noori-Khajavi , A. ; Komanduri , R. ( 1995 ) Frequency and time domain analysis of sensor signals in drilling -I. Correlation with drill wear . International Journal of Machine Tools and Manufacture , 35 ( 6 ): 775 – 793 .
  • Patra , K. ; Pal , S.K. ; Bhattacharyya , K. ( 2007 ) Artificial neural network based prediction of drill flank wear from motor current signals . Applied Soft Computing , 7 : 929 – 935 .
  • Sun , Q. ; Tang , Y. ; Ji , Y. ( 2005 ) Feature extraction with discrete wavelet transform for drill wear monitoring . Journal of Vibration and Control , 11 ( 11 ): 1375 – 1396 .
  • Tansel , I.N. ; Mekdeci , C. ; Rodriguez , O. ; Uragan , B. ( 1993 ) Monitoring drill conditions with wavelet based encoding and neural networks . International Journal of Machine Tools and Manufacture , 33 ( 4 ): 559 – 575 .
  • Velayudham , A. ; Krishnamurthy , R. ; Soundarapandian , T. ( 2005 ) Acoustic emission based drill condition monitoring during drilling of glass/phenolic polymeric composite using wavelet packet transform . Materials Science and Engineering , A 412 : 141 – 145 .
  • Walnut , D.F. ( 2002 ) An Introduction To Wavelet Analysis , Birkhauser , Boston , pp. 335 – 368 .
  • Xiaoli , L. ( 1999 ) On-line detection of the breakage of small diameter drills using current signature wavelet transform . International Journal of Machine Tools and Manufacture , 39 : 157 – 164 .
  • Xiaoli , L. ; Tso , S.K. ( 1999 ) Drill wear monitoring based on current signals . Wear , 231 : 172 – 178 .
  • Xiaoli , L. ; Zhejun , Y. ( 1998 ) Tool wear monitoring with wavelet packet transform-fuzzy clustering method . Wear , 219 : 145 – 154 .
  • Yao , Y. ; Xiaoli , L. ; Zhejun , Y. ( 1999 ) Tool wear detection with fuzzy classification and wavelet fuzzy neural network . International Journal of Machine Tools and Manufacture , 39 : 1525 – 1538 .
  • Zhang , M.Z. ; Lui , Y.B. ; Zhou , H. ( 2001 ) Wear mechanism maps of uncoated hss tools drilling die-cast aluminum alloy . Tribology International , 34 : 727 – 731 .

Reprints and Corporate Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

To request a reprint or corporate permissions for this article, please click on the relevant link below:

Academic Permissions

Please note: Selecting permissions does not provide access to the full text of the article, please see our help page How do I view content?

Obtain permissions instantly via Rightslink by clicking on the button below:

If you are unable to obtain permissions via Rightslink, please complete and submit this Permissions form. For more information, please visit our Permissions help page.