The primary objective of this research is to monitor tool wear in face
milling on line. In this paper, two approaches to monitoring tool wea
r in face milling are presented. The first approach adopts neural netw
ork techniques to identify the tool wear conditions. The inputs to the
neural network are the mean values of cutting forces and other known
cutting parameters such as feed rate, and workpiece geometry. The neur
al network is trained to estimate the average flank wear on cutter ins
erts. The other approach uses a regression model to estimate tool wear
. The regression model is established based on data obtained from expe
riments. It is confirmed experimentally that the tool wear can be well
. estimated by both approaches when cutting aluminum with a multi-toot
h cutter and different workpiece geometries.