Dynamic Characterization and Predictive Maintenance Concept of Machine Tool Spindle

Author:

Zapciu Miron1,K'nevez Jean Yves2,Laheurte Raynald2,Darnis Philippe2

Affiliation:

1. University Politehnica of Bucarest

2. Université de Bordeaux

Abstract

Vibration analysis has long been used for detection and identification of the machine tool dynamic condition. Predictive maintenance is directed towards recognizing the earliest significant changes in machinery condition. In contrast with the protective condition monitoring in which fast response is the primary requirement, predictive monitoring is not limited by time and may use a greater range of complex characteristics. The main focus is to identify a procedure in order to obtain natural frequencies values for the machine tool spindle using tracking dynamic analysis.

Publisher

Trans Tech Publications, Ltd.

Reference15 articles.

1. M. Zapciu; M. Paraschiv: Predictive maintenance and use of tracking concept to analyze dynamics of machine tool spindle, in Proceedings of the 11th Int. Conf. – TMCR (2007), p.512.

2. Cl. Bisu, Ph. D. Thesis: Etude des vibrations auto-entretenues en coupe tridimensionnelle: nouvelle modélisation appliquée au tournage, Université Bordeaux 1 and U.P. Bucharest (2007).

3. J.F. Rigal, M. Zapciu, T. Mabrouki, S. Belhadi: Sawtooth chip formation in hard turning and the approach to separate process segmentation and machine assembly vibration frequencies, in Proceedings of the Int. Conference on Manufacturing Systems (2006).

4. G. Sutter, A. Molinari: Analysis of the Cutting Force Components and Friction in High Speed Machining, J. Manuf. Sc. Engineering, Trans. of the ASME, vol. 127 (2005), p.245.

5. M. Zapciu, J-Y. K'Nevez, A. Gérard: Tracking analysis and predictive maintenance in order to obtain dynamics of machine tool spindle, in Proceedings of the 5th Int. Conference of Advanced Manufacturing Technologies (2007) p.195.

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