Tool shear strees and temperature distributions prediction using FEM simulation.
Patrascu, Gabriela ; Carutasu, Nicoleta Luminita
1. INTRODUCTION
Computer simulation has been an expanding field being used in
research studies and increasingly used in industrial applications for
tool wear (Carutasu 2007). Many companies have software on the market to
simulate tool wear for a wide variety of machining operations. These
simulations provide information on how the cutting tool will react and
respond to the workpiece properties. The simulation outcome depends
largely on the model and laws it follows (Oxley 1998).
Many of the simulations use finite element analysis as a base to
evaluate the phenomena (Jawahir 1991).
In the recent decades, with the emergency of more and more powerful
computer and the development of numerical technique, numerical methods
such as finite element method (FEM), finite difference method (FDM) and
artificial Intelligence (AI) are widely used in machining industry
(Kalhori 2001). Among them, FEM has become a powerful tool in the
simulation of cutting process because various variables in the cutting
process such as cutting force, cutting temperature, strain, strain rate,
stress, etc can be predicted by performing chip formation and heat
transfer analysis in metal cutting, including those very difficult to
detect by experimental method (Huang et. al., 2003). Therefore a new
tool wear prediction method may be developed by integrating FEM
simulation of cutting process with tool wear model (Jawahir et. al.,
1993).
Cutting tools are subjected to an extremely severe rubbing process.
They are in metal-to-metal contact, between the chip and work piece,
under conditions of very high stress at high temperature. The situation
is further aggravated due to the existence of extreme stress and
temperature gradients near the surface of the tool.
Interfacial friction on the tool rake face is not continuous and is
a function of the normal and frictional stress distributions.
According to Zorev, the normal stress is greatest at the tool tip
and gradually decreases to zero at the point where the chip separates
from the rake face. The frictional shearing stress distribution is more
complicated. Over the portion of the tool-chip contact area near the
cutting edge, sticking friction occurs, and the frictional shearing
stress is equal to the average shear flow stress at tool-chip interface
in the chip. Over the remainder of the tool-chip contact area, sliding
friction occurs, and the frictional shearing stress can be calculated
using the coefficient of friction.
2. CASE STUDY
This paper presents the current modelling capabilities available in
AdvantEdge 4.5 software to simulate metal cutting environment in turning
process.
AdvantEdge machining modelling software is a central difference
explicit finite element code using a Lagrangian mesh. The material model
accounts for elastic-plastic strains and has an isotropic power law for
strain hardening. The strain rate also affects the flow stress.
The material properties are temperature dependent and thereby it
also accounts for thermal softening. A staggered method for coupled
transient mechanical and heat transfer analysis is utilized. First an
isothermal mechanical step is taken followed by a rigid transient heat
transfer step with constant heating from plastic work and friction. Both
steps have identical meshes. The central difference scheme is also used
for the time integration in the thermal analysis. A six-node quadratic
triangle element is used. The mesh, which becomes much distorted around
the cutting edge, is periodically updated both refining large elements
and coarsening small elements.
For turning process simulation it was used a plane strain
deformation model. The insert and a part of work piece were meshed in
order to have a practical number of elements for calculations. Work
piece was made of Romanian OLC45 steel (AISI 1045). The TNMG 332 insert
with PF chip breaker geometry (figure 1) were made available in STL
form, generated from CATIA V5R8 system (Patrascu, 2007).
The cutting process parameters were:
* Cutting depth: 0.635 mm.
* Feed: 0.254 mm/rot.
* Cutting speed: 200 ... 400 m/min.
For the proposed orthogonal machining model, cutting conditions and
the material properties of the workpiece are the inputs. The outputs are
process related variables, such as tool stress distributions, tool wear
and temperature distribution in the chip and along the tool-chip
interface (Patrascu, 2007).
[FIGURE 1 OMITTED]
[FIGURE 2 OMITTED]
[FIGURE 3 OMITTED]
Our FEM results provided a good estimation of temperature and shear
stress values. The simulation is good for observing the influence of
cutting conditions (speed, feed and depth of cut) and tool geometry.
Comparison of computed values and the values from other studies on shear
stress and temperature show a good agreement, even if FEM results
overestimate the temperature levels.
The FEM results indicate a greater region of the tool to be above
1100[degrees]C, and maximum shear stress above 4900 MPa.
The results of our study prove the effectiveness of FEM simulation
of turning process in order to select the optimum cutting process
parameters.
3. CONCLUSION
This paper introduces a predictive modelling technique to determine
forces, stresses, and temperature distributions in machining while
considering influence of tool flank wear. The technique introduced in
this paper combines oblique moving band heat source theory with
nonuniform heat intensity at tool-chip interface and modified
Oxley's parallel shear zone theory with ploughing effects due to
tool flank wear to predict cutting forces, stress, and temperature
distributions.
The proposed technique has been applied to machining of AISI-1045
steel using a carbide tool, and promising results have been obtained.
The results have helped explain the heat partition behaviour of the
tool-chip and tool-workpiece interfaces as width of flank wear
increases.
Further studies are underway for improving the model to study the
effects of chip-groove parameters on the natural contact length,
fracture, the tool temperature and contact stress distribution, etc.
Acknowledgments: The authors would like to thank Prof. Jawahir I.S.
from University of Kentucky for his support and Mr. Luis
Zamorano--Applications Engineer from Third Wave Systems for the use of
five months free evaluation license of AdvantEdge 4.5 software and for
his support in using this license.
4. REFERENCES
Carutasu, N.L. (2007). Contribution Regarding Designing
Machines-Tools Structure Elements for High Speed Machining, Ph.D.
Thesis, University POLITEHNICA of Bucharest, Bucharest, Romania.
Huang, Y., & Liang, S.Y. (2003). Modelling of the Cutting
Temperature Distribution Under the Tool Flank Wear Effect, Proc. Inst.
Mech. Eng., Part C: J. Mech. Eng. Sci., 217, pp. 1195-1208.
Jawahir, I.S. (1991). An Investigation of Three-Dimensional Chip
Flow in Machining of Steels with Grooved Chip Forming Tool Inserts,
Transactions of NAMRI/SME, Vol. XIX, pp. 222-231, 1991.
Jawahir, I.S. & van Luttervelt, C.A. (1993). Recent
Developments in Chip Control Research and Applications, Annals of the
CIRP, Vol. 42 (2), 1993, pp. 659-693.
Kalhori, V. (2001). Modelling and Simulation of Mechanical Cutting,
Ph.D. Thesis, Lulea University of Technology, Sweeden.
Oxley, P. (1998). Development And Application Of A Predictive
Machining theory, Proc. CIRP International Workshop on Modeling of
Machining Operations, Atlanta, GA, USA, May 1998, ISBN 0-9666706-0-4,
University of Kentucky.
Patrascu, G. (2007). Research Concerning the Optimization Through
Simulation of the Cutting Process, Ph.D. Thesis, University POLITEHNICA
of Bucharest, Bucharest, Romania.