D. Yan et al., A MULTISENSOR STRATEGY FOR TOOL FAILURE-DETECTION IN MILLING, International journal of machine tools & manufacture, 35(3), 1995, pp. 383-398
A multi-sensor monitoring strategy for detecting tool failure during t
he milling process is presented. In this strategy, both cutting forces
and acoustic emission signals are used to monitor the tool condition.
A feature extracting algorithm is developed based on a first order au
to-regressive (AR) model for the cutting force signals. This AR(1) mod
el is obtained by using average tooth period and revolution difference
methods. Acoustic emission (AE) monitoring indices are developed and
used in determining the setting threshold lever on-line. This approach
was beneficial in minimizing false alarms due to tool runout, cutting
transients and variations of cutting conditions. The proposed monitor
ing system has been verified experimentally by end milling Inconel 718
with whisker reinforced ceramic tools at spindle speeds up to 3000 rp
m.