Abstract
In this study, the effect of tool wear is correlated with acoustic emission (AE) signal during microendmilling of aluminium alloy (AA 1100). The AE signals were acquired using Kistler make AE sensor and the signal features are analyzed in time domain (root mean square (RMS)) and frequency domain (dominant frequency and amplitude). The dominant frequency of the AE signal shows increasing trend with increase in the tool wear, where as AERMSshow uneven trend. The discrete wavelet transformation technique (DWT) has also been carried out by decomposing the required AE signal in different frequency bands. The AERMSand specific AE energy were computed for the decomposed AE signals. From the specific AE energy, it is observed that shearing occurs during microendmilling and also found to be similar that of macro-regieme endmilling. The result demonstrated that the AE signals are potential indicator for tool condition monitoring in microendmilling.
Publisher
Trans Tech Publications, Ltd.
Reference15 articles.
1. N.P. Mahalik, Micromanufacturing and Nanotechnology, Springer-Verlag, Berlin, Germany, (2006).
2. V.K. Jain, Introduction to Micromachining, Narosa Publishing House Pvt. Ltd, New Delhi, India, (2010).
3. D. Dornfeld, S. Min, and Y. Takeuchi, Recent advances in mechanical micromachining, Annals of CIRP, 55 (2006) 745-768.
4. A.B.M.A. Asad, T. Masaki, M. Rahman, H.S. Lim, and Y.S. Wong, Tool-based micro-machining, Journal of Material Processing Technology, 192-193 (2007) 204-211.
5. M. Prakash and M. Kanthababu, In-process tool condition monitoring using acoustic emission sensor in microendmilling, International Journal for Machining Science and Technology, 17 (2013) 209-227.
Cited by
1 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献