134 Int. J. Mechatronics and Manufacturing Systems, Vol. 8, Nos. 3/4, 2015
Copyright © 2015 Inderscience Enterprises Ltd.
Stochastic tool wear assessment in milling difficult to
machine alloys
Farbod Akhavan Niaki*
International Center for Automotive Research,
Clemson University,
Greenville, SC, USA
Email: fakhava@clemson.edu
*Corresponding author
Durul Ulutan
Mechanical Engineering Department,
Bucknell University,
Lewisburg, PA, USA
Email: du005@bucknell.edu
Laine Mears
International Center for Automotive Research,
Clemson University,
Greenville, SC, USA
Email: mears@clemson.edu
Abstract: In the machining industry, maximising profit is intuitively a
primary goal; therefore continuously increasing machining process uptime and
consequently productivity and efficiency is crucial. Tool wear plays an
important factor in both machining uptime and quality, and since tool failure is
related to the surface quality and the dimensional accuracy of the end product,
it is essential to quantify and predict this phenomenon with the best possible
certainty. One of the most common ways of tool wear prediction is through the
use of low cost spindle current sensing technology which is used to measure
spindle power consumption in CNC machines and relate power increase to tool
wear. In this work, two methods of stochastic filtering (i.e. Kalman and particle
filter) were used in predicting tool flank wear in machining difficult-to-machine
materials through spindle power consumption measurements. Results show a
maximum of 15% average error in estimation, which indicates the good
potential of using stochastic filtering techniques in estimating tool flank wear.
In addition, the particle filter was used for online estimation of a spindle power
model parameter with uniform and Gaussian mixture models as the initial
probability density functions, and the evolution of this parameter to the true
posterior density function over time was investigated.
Keywords: tool wear; Kalman filter; particle filter; milling.
Reference to this paper should be made as follows: Akhavan Niaki, F.,
Ulutan, D. and Mears, L. (2015) ‘Stochastic tool wear assessment in milling
difficult to machine alloys’, Int. J. Mechatronics and Manufacturing Systems,
Vol. 8, Nos. 3/4, pp.134–159.