Title of article :
Online Dimensional Controlling System for Drilling
Author/Authors :
Farshbaf Zinati, Reza Department of Mechanical Engineering - Tabriz Branch - Islamic Azad University , Habibi Zad navin, Ahmad Department of computer Engineering - Tabriz Branch - Islamic Azad University , Razfar, Mohammad Reza Department of Mechanical Engineering - AmirKabir University of Technology
Abstract :
The drilling is well known as one of the most common hole making processes in the industry.
Due to close tolerance requirement for drilled holes in the most of work pieces, online
controlling of the diameter of drilled holes seems to be necessary. In the current work, an online
dimensional controlling system was developed for drilling process. Doing this, drilling process
was executed in different cutting conditions (feed per tooth and cutting speed) and different flank
wear of cutting edges. In each drilling test, axial force and diameter of drilled hole was recorded.
According to the results obtained from analysis of variance (ANOVA), increase of flank wear in
cutting edges increases the axial force and hole-diameter. In this way, the axial cutting force, as
online measurable parameter, could be used for online estimation of the hole-diameter. Neural
network (NN) was used to model the correlation between axial force and the hole-diameter. In
this way, the obtained NN model estimates the maximum acceptable axial force by receiving
cutting conditions and maximum acceptable hole-diameter. The drilling process has to be
stopped as its axial force exceeds the estimated value for drill changing.
Keywords :
Drilling , axial cutting force , diameter tolerance , analysis of variance , Neural network
Journal title :
Astroparticle Physics