Feature representations for monitoring of tool wear

We address the general problem of reliable, real-time detection of faults in metal-removal processes in manufacturing. As has long been recognized by skilled machine operators, mechanical and acoustic vibrations can be reliable sources of cues for such monitoring. However, conventional dull-tool monitoring systems, which are generally based on stationary signal processing methods, are inadequate for real-time control of drilling procedure. Making use of a database from nine different drill bits, we (a) identify different features which seem to contain tool wear information, (b) document what we found to be superior signal processing tools to identify, extract and process these non-stationary features, and (c) stress the need for a fully annotated public-domain manufacturing signal database.<<ETX>>

[1]  Monson H. Hayes,et al.  Monitoring rotating machine signals , 1992, [Proceedings] ICASSP-92: 1992 IEEE International Conference on Acoustics, Speech, and Signal Processing.

[2]  Victor Zue,et al.  Speech database development at MIT: Timit and beyond , 1990, Speech Commun..

[3]  Robert J. Marks,et al.  The use of cone-shaped kernels for generalized time-frequency representations of nonstationary signals , 1990, IEEE Trans. Acoust. Speech Signal Process..

[4]  David Dornfeld,et al.  Tool Wear Detection Using Time Series Analysis of Acoustic Emission , 1989 .

[5]  Les E. Atlas,et al.  Bilinear time-frequency representations: new insights and properties , 1993, IEEE Trans. Signal Process..

[6]  Hossein Hakim,et al.  A comparative study of non-parametric spectral estimators for application in machine vibration analysis , 1992 .

[7]  Les Atlas,et al.  Advantages of cascaded quadratic detectors for analysis of manufacturing sensor data , 1992, [1992] Proceedings of the IEEE-SP International Symposium on Time-Frequency and Time-Scale Analysis.

[8]  A. Galip Ulsoy,et al.  Control of Machining Processes , 1993 .

[9]  Larry P. Heck Signal processing research in automatic tool wear monitoring , 1993, 1993 IEEE International Conference on Acoustics, Speech, and Signal Processing.

[10]  Ciro Neal Ramirez,et al.  Drill Wear Monitoring in Circuit Board Manufacturing Using Drilling Forces and Their Spectra , 1992 .

[11]  Les E. Atlas,et al.  Quadratic detectors for energy estimation , 1995, IEEE Trans. Signal Process..