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International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 04 Issue: 07 | July -2017 www.irjet.net p-ISSN: 2395-0072
© 2017, IRJET | Impact Factor value: 5.181 | ISO 9001:2008 Certified Journal | Page 3197
OPTIMIZATION OF CUTTING PARAMETERS BASED ON TAUGCHI
METHOD OF AISI316 USING CNC LATHE MACHINE
Lakhan Singh1, Rajeev Choudhary2, Deepak Kumar Juneja3
1Research Scholar, Department of Mechanical Engineering, Gaeta Engineering College, Panipat, Haryana
2Research Scholar, Department of Mechanical Engineering, IIT (BHU), Varanasi (U.P)
3 Head of Department Department of Mechanical Engineering, Gaeta Engineering College, Panipat, Haryana
-----------------------------------------------------------------------------***----------------------------------------------------------------------------
Abstract-The main aim of this research work is focused
on the analysis of optimum cutting conditions to get
lowest surface roughness in CNC turning of austenitic
stainless steel AISI 316 using carbide insert coated with
TiN under dry condition. Taguchi method is used for
design this experiment and the total 27 experiment
performed to find out optimum values of level of
different factors in order to minimize surface roughness
of austenitic stainless steel AISI 316 in turning. The
analysis of variance (ANOVA) is used for calculating the
percentage of contribution of each factor in quality of
surface roughness. The result show that the maximum
effect on surface roughness produce by feed and the
minimum effect on surface roughness produce by depth
of cut. The surface of workpiece is least effected by
cutting speed.
Keywords: Taguchi’s Techniques, ANOVA. CNC
Turning, Surface roughness.
1. INTRODUCTION
The main aim of this research work to find out the factor
affecting the surface roughness. This research work is
conducting for optimizing these factors. Now a day’s it is
great challenge for obtained high quality, good surface
finish and high material removal rate for every
machining enterprises. The quality of every product is
depending on surface smoothness. So in this research
work we shall obtain a group of factor on which surface
roughness is minimum and surface smoothness
maximum. The group of factor is determining with help
of Taugchi method in this present work. This research
work concerned with the determination of optimal
turning parameters for reduced roughness and increased
hardness of the machined surfaces while turning of
workpiece austenitic stainless steel AISI 316 using
carbide insert coated with TiN under dry condition. Yang
et al. [1] conducted an experiment to study the optimize
the turning operation of S45C steel bars using tungsten
carbide cutting tools and reported that cutting speed,
feed rate, and depth of cut were the significant cutting
parameters for affecting surface roughness. They found
out the contribution order of the cutting parameters for
surface roughness is feed rate, then depth of cut, and
then cutting speed. Zhang et al. [2] have used Taguchi
method for surface finish optimization in end milling of
Aluminium blocks. The experimental results indicate
that in this study the effects of spindle speed and feed
rate on surface finish were larger than depth of cut for
milling operation. Nalbant et al. [3] conducted an
experimental study which was focused on the analysis
of optimum cutting conditions to get Lowest surface
roughness used Taguchi method to find optimum cutting
parameters for surface roughness in turning of AISI 1030
carbon steel bars using TiN coated tools. Three cutting
parameters namely, insert radius, feed rate, and depth of
cut were optimized. In turning, use of greater insert
radius, low feed rate and low depth of cut were used to
obtain better surface roughness for the specific test
range. Ghani et al. [4] conducted an experimental study
which was focused on the analysis of optimum cutting
conditions to get lowest surface roughness and cutting
force in end milling when machining hardened steel AISI
H13 with TiN coated P10 carbide insert tool under semi-
finishing and finishing conditions of high speed cutting.
Taguchi method was used for experiment study. The
milling parameters cutting speed, feed rate, and depth of
cut were determine. The result show in end milling, use
of high cutting speed, low feed rate and low depth of cut
were recommended to obtain better surface roughness
and low cutting force. Pranav R. Kshirsagar et al.
[5]study in their experimental work the effect of the
cutting speed, feed rate and depth of cut on surface
roughness of EN8 steel using coated carbide inserts
cutting tool on CNC turning machine in dry condition.
Taguchi method was used for Design of experiments. The
Statistical analysis for Variance (ANOV) based on S/N
ratio was used to determine the optimum levels of
control factors which affect on surface roughness. The
results show that the surface roughness was affected by
feed rate only in CNC turning of EN8 steel. Thamizhmani
et.al [6] investigated the optimum cutting conditions to
get lowest surface roughness of AISI410 by PCBN cutting
tool. Results show that surface roughness value was low
at high cutting speed with low feed rate. ICiftci [7]
investigated the Machining characteristics of austenitic
stainless steels (AISI 304 and AISI 316) using CVD multi
layer coated carbide tools. The turning tests were
conducted at four different cutting speeds with a
constant feed rate and depth of cut. The effect of work
International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 04 Issue: 07 | July -2017 www.irjet.net p-ISSN: 2395-0072
© 2017, IRJET | Impact Factor value: 5.181 | ISO 9001:2008 Certified Journal | Page 3198
piece grade, cutting tool coating top layer and cutting
speed were conducted on cutting forces and machined
surface roughness. Results show that surface finish
values decreased with increasing in cutting speed until
a minimum value was reached, beyond which they
increased. Sujan Debnath et al. [8]. conducted an
experimental to study to investigated the effect of
various cutting fluid levels and cutting parameters on
surface roughness and tool wear of mild steel bar using a
TiCN + Al2O3 + TiN coated carbide tool by using Taguchi
and orthogonal array in C NC turning process. Llhan
Asilturk et al. [9] conducted an experimental to study the
modelling of experimental data of surface roughness of
Co28Cr6Mo medical alloy machined on a CNC lathe.
Three cutting parameters spindle rotational speed, feed
rate, and depth of cut were used and tool tip radius
based on the Taguchi orthogonal test design and RSM.
Supriya Sahu et al. [10] investigated the optimum
cutting conditions to get lowest surface roughness in
turning and the performance of multi-layer TiN coated
tool in machining of hardened steel (AISI 4340 steel)
under high speed turning and found the effect of cutting
parameters (speed, feed, and depth of cut) on surface
roughness using Taguchi method. Feng and Wang [11]
conducted an experiment to study for obtained the
surface roughness in finish turning operation by
developing an empirical model through considering
working parameters. R.K.Suresh et.al [12] focused to
investigate the effect of cutting parameters on EN-41 B
alloy steel using Taguchi technique. An accurate
regression model is developed for material removal rate.
Result show that feed is the most dominant parameter
for MRR. R. B. Mandavia [13] conducted an experiment
to study to effect of different input parameters
temperature, cutting speed, feed etc. And their effect on
surface roughness, hardness, material removal rate, tool
wear, tool life. Taguchi method was used for designed
this experiment. Based on the study it is observed that
depth of cut, speed and feed affected the surface
roughness while turning of austenitic stainless steel
AISI316 significantly. So more study and investigation is
required to investigate the factor affected the surface
roughness under various operations.
2. DESIGN OF EXPERIMENTS
This presented work is based on Taguchi method of
design of experiments. Taguchi strategy is effective
technique for planning process that works reliably and
ideally finished the types of conditions .When number of
factor in a design is increase then it is very complex for
solution .then a special designed method in which the
use of orthogonal array to study the whole parameter
space with lesser was suggested by Taguchi.
2.1. Smaller the Better
In situations where you need to limit the events of some
undesirable item qualities, you would figure the
accompanying S/N proportions/N ratio of smaller the
better is given below
(S/N) smaller the better = −10*log (Σ (Y2)/n)
Where Y = responses for the given factor level
combination
And n = number of responses in the factor level
combination.
2.2. Larger the Better
Cases of this kind of building issue are mileage (miles per
gallon) of a car, quality of solid, resistance of protecting
materials, and so forth. The accompanying S/N
proportion ought to be utilized and this is given below
(S/N)larger the better = −10*log (Σ (1/Y2)/n)
Where Y = responses for the given factor level
combination
And n = number of responses in the factor level
combination.
2.3. Nominal the better
In case of nominal the better you have a fixed signal
value (nominal value), and the variance around this
value can be considered the result of noise factors:
(S/N)nominal the better = −10*log (s2)
Where Y = responses for the given factor level
combination
And n = number of responses in the factor level
combination.
3 .EXPERIMENTAL SETUP
Experimental setup in this research work is consist of
workpiece (AISI316), CNC lathe machine, Micrometre,
tungsten carbide insert type cutting tool and surface
tester.
4. WORKPIECE MATERIAL
The material of workpiece which is requirement is
austenitic stainless steel AISI 316.Austenitic stainless
steel contains 18% chromium and 8% nickel. Stainless
steel AISI 316 is an alloy of iron which containing least
10.5% Chromium. Due to excellent mechanical
properties austenite stainless steel AISI 316 are widely
used in various areas.
International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 04 Issue: 07 | July -2017 www.irjet.net p-ISSN: 2395-0072
© 2017, IRJET | Impact Factor value: 5.181 | ISO 9001:2008 Certified Journal | Page 3199
Table- 1: The Chemical Composition of AISI316.
Element Weight %
C 0.058
S 0.019
Mo 2.086
Cu 0.559
Si 0.349
Cr 16.536
V 0.014
Mn 1.080
Table- 2: Mechanical Properties of AISI 316.
Yield Strength 290 MPa
Modulus of elasticity 193 MPa
Tensile strength 580 MPa
Density 800 kg/mm3
BHN 217
4. CUTTING TOOL INSERTS
Tungsten inserts carbide type cutting tool is used for
turning of stainless steel AISI316 in current work. The
nomenclature of cutting inserts is given below. In this
research paper cutting tool insert TNMG160408 is use
for turning.
5. CNC LATHE MACHINE
The CNC lathe machine “Midas 8i” is used for turning of
stainless steel AISI316 in this present work. This
machine is manufacturing by GALAXY MACHINERY PVT.
LTD
Table- 3: The Full Specification of Midas 8i CNC Lathe
Machine
Capacity
Turning Diameter 280mm
Max. Turning 522mm
Length
Maximum Swing
Clearance
Diameter of Over
Carriage
230mm
Maximum Swing
Clearance
Diameter over
Way Covers
430mm
Chuck
Chuck Size 210 mm
Bar Capacity 50 mm
Spindle Drive
Spindle Power 40 rpm – 4000 rpm
Range of Spindle 12 hp-10 hp
6. SURFACE TESTER
The surface roughness of workpiece in this research
work is measuring by Mitutoyo SJ-201P.The surface
roughness of workpiece will trace by a pick-up which
attached to the detector SJ-201P.
7. FACTORS AND THEIR LEVEL
The factor and there level used in this research work are
given below.
1. Cutting speed in rpm
2. Feed in mm/rev
3. Depth of cut in mm
Table- 4: Factor and level for Experiment
Factor Unit
Level
1
Level
2
Level
3
Feed mm/rev 0.05 0.1 015
Depth of
Cut
mm 0.4 0.8 1.2
Cutting
speed
rpm 500 700 900
Fig.1: Workpiece Material Fig. 4: CNC Midas 8i
International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 04 Issue: 07 | July -2017 www.irjet.net p-ISSN: 2395-0072
© 2017, IRJET | Impact Factor value: 5.181 | ISO 9001:2008 Certified Journal | Page 3200
Fig.2: Cutting Tool Inserts Fig.5: Workpiece Turning
Fig.3: Workpiece after Machining Fig.6: Mitutoyo SJ-201P (Surface Tester)
Table -5: Surface Roughness, MRR and S/N ratio
S.N.
Depth
of cut
(d)
mm
Feed (f)
mm/rev
Speed
(N)
rpm
Cutting
Speed
(V)
m/min.
MMR
mm3/sec
Avg.
Roughness(Ra)
µm
RMS
Roughness
(Rq)
µm
S/N for Ra
1 0.4 0.05 500 50.265 16.7551 0.42 0.51 7.53501419
2 0.4 0.05 700 70.371 23.45714 0.33 0.41 9.6297212
3 0.4 0.05 900 90.477 30.15918 0.29 0.37 10.75204
4 0.4 0.1 500 50.265 33.5102 0.47 0.58 6.55804284
5 0.4 0.1 700 70.371 46.91428 0.40 0.49 7.95880017
6 0.4 0.1 900 90.477 60.31836 0.37 0.45 8.63596552
7 0.4 0.15 500 50.265 50.2653 0.80 1.01 1.93820026
8 0.4 0.15 700 70.371 70.37142 0.81 1.04 1.83029962
9 0.4 0.15 900 90.477 90.47754 0.76 0.99 2.38372815
10 0.8 0.05 500 50.265 33.5102 0.38 0.47 8.40432807
11 0.8 0.05 700 70.371 46.91428 0.32 0.40 9.89700043
International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 04 Issue: 07 | July -2017 www.irjet.net p-ISSN: 2395-0072
© 2017, IRJET | Impact Factor value: 5.181 | ISO 9001:2008 Certified Journal | Page 3201
12 0.8 0.05 900 90.477 60.31836 0.24 0.30 12.3957752
13 0.8 0.1 500 50.265 67.0204 0.45 0.55 6.93574972
14 0.8 0.1 700 70.371 93.82856 0.40 0.49 7.95880017
15 0.8 0.1 900 90.477 120.63672 0.42 0.51 7.53501419
16 0.8 0.15 500 50.265 100.5306 0.77 0.95 2.2701855
17 0.8 0.15 700 70.371 140.74284 0.79 1.00 2.04745817
18 0.8 0.15 900 90.477 180.95508 0.78 1.00 2.15810795
19 1.2 0.05 500 50.265 50.2653 0.34 0.44 9.37042166
20 1.2 0.05 700 70.371 70.37142 0.33 0.42 9.6297212
21 1.2 0.05 900 90.477 90.47754 0.32 0.41 9.89700043
22 1.2 0.1 500 50.265 100.5306 0.44 0.53 7.13094647
23 1.2 0.1 700 70.371 140.74284 0.42 0.51 7.53501419
24 1.2 0.1 900 90.477 180.95508 0.41 0.50 7.74432287
25 1.2 0.15 500 50.265 150.7959 0.84 1.08 1.51441428
26 1.2 0.15 700 70.371 211.11426 0.82 1.02 1.72372295
27 1.2 0.15 900 90.477 271.43262 0.82 1.03 1.72372295
8. RESULT AND DISCUSSION
Table- 6: Response Table for Signal to Noise Ratio
Level depth of
cut (mm)
feed
(mm/rev)
speed
(rpm)
1 6.358 9.723 4.740
2 6.622 7.555 6.468
3 6.252 1.954 7.025
Delta 0.370 7.769 1.285
Rank 3 1 2
Fig.7: The Main Effect Plot for SN ratios Data Means
From the plot diagram it is clear that when depth of cut
is increase then mean of SN ratio is increase at a point
but after increasing in depth of cut mean of SN ratio is
decrease. When feed is increase then means of SN ratio is
decrease. When speed is increase then mean of SN ratio
is also increase.
Fig.9: Surface Plot of Ra Vs Feed, and Depth of Cut
This figure shows variation of surface roughness with
feed and depth of cut. We can obtain the minimum value
of surface roughness with respect to feed and depth of
cut.
0.50
0.75
1.00
0.2
0.4
0.6
0.10
0.050
1.25
0.10
0.15
0.8
aR
)ver/mm(deef
)mm(tucfohtped
urface Plot of Ra vs feedS mm/rev), depth of cut (mm)(
International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 04 Issue: 07 | July -2017 www.irjet.net p-ISSN: 2395-0072
© 2017, IRJET | Impact Factor value: 5.181 | ISO 9001:2008 Certified Journal | Page 3202
Fig.10: Surface Plot of Ra Vs Speed, and Depth of Cut
This figure shows variation of surface roughness with
feed and depth of cut. We can obtain the minimum value
of surface roughness with respect to speed and depth of
cut.
Fig. 11: Surface Plot of Ra vs Speed, and Feed
This figure shows variation of surface roughness with
feed and depth of cut. We can obtain the minimum value
of surface roughness with respect to speed and feed.
9. REGRESSION EQUATION
It is use for obtained the relationship between depth of
cut, speed and fee rate with surface roughness.
Ra =0.1346 + 0.0125depth of cut (mm) + 3.689feed
(mm/rev) -0.000139 speed (rpm)
10. ANOVA
Table- 7: Analysis of Variance
Model Summary
S R-sq R-sq(adj) R-sq(prep)
0.0293888 98.50% 98.04% 97.26%
Analysis of variance shows the contribution of the
parameter which effect on surface roughness.
CONCLUSION
 In this research work we investigate the effects
of cutting parameters depth of cut, feed and
speed on surface roughness of AISI316 stainless
steel. Finally we obtained the values of selected
machining parameters for affecting surface
roughness. The optimum value of depth of cut
0.8 mm; feed is 0.05 mm/rev, and speed 900
rpm. Corresponding to these values of
parameters the minimum surface roughness
recorded.
 From regression relation the value obtained
corresponding to optimum values of parameters
was 0.2539 µm. And there was no value in of
surface roughness is recorded less than this
value during 27 experiments. Hence result was
validated.
REFERENCES
[1] Yang. W.H, T. Y.S.(1998). Design optimization of
cutting parameters for turning operations based
on the Taguchi method, Journal of Material
Processing Technology. 84(13), 122-129.
[2] Zhang, J.Z, Chen. J.C, Kirby, E.D. (2007). Surface
roughness optimization in an end-milling
operation using the Taguchi design method,
Journal of Material Processing Technology.
184(1-3), 233-239.
0.50
0.75
1.00
0.2
0.4
0.6
600
0
1.25
750
900
0.8
aR
)mpr(deeps
)mm(tucfohtped
urface Plot of Ra vs speed (rpm), depth of cut (mm)S
0.05
0.10
0.2
0.4
0.6
600
0.15
750
900
0.8
aR
)mpr(deeps
)ver/mm(deef
urface Plot of Ra vs spS e d (rpm), feed (mm/rev)e
Source DF Adj SS Adj MS
F-
Value
P-
Value
depth
of cut
(mm)
2 0.00201 0.001004 1.16 0.333
feed
(mm/rev)
2 1.11454 0.557270 644.21 0.000
speed
(rpm)
2 0.01401 0.007004 8.11 0.003
Error 20 0.01727 0.000864
Total 26 1.14783
International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056
Volume: 04 Issue: 07 | July -2017 www.irjet.net p-ISSN: 2395-0072
© 2017, IRJET | Impact Factor value: 5.181 | ISO 9001:2008 Certified Journal | Page 3203
[3] N. M, G. H, Sur. G. (2007).Application of Taguchi
method in the optimization of cutting
parameters for surface roughness in turning,
Materials & Design. 28(4): 1379-1385.
[4] J. A. Ghani,. I. A. Chodhury, and Hassan, H.H.
2004.Application of Taguchi method in the
optimization of end milling parameters, Journal
of Material Processing Technology. 145(1): 84-
92.
[5] Pranav R. Kshirsagar. (2008). Optimization of
Surface Roughness of EN8 Steel in CNC Turning
Operation by Taguchi Concept, International
Journal of advanced Technology Engineering
and Science. ISSN: 2348-7550.
[6] S. Thamizhmanii, S. Hasan. (2011). Machinability
of hard martensitic stainless steel and hard alloy
steel by CBN and PCBN tools by turning process,
Proceedings of the World Congress on
Engineering, 1(1): 554-559.
[7] I.Ciftci. (2006). Machining of austenitic stainless
steels using CVD multilayer coated cemented
carbide tools. Tribology International, 39(6):
565-569.
[8] S. Debnath, M. Mohan Reddy, Qua Sok Yi.
(2016).Influence of cutting fluid conditions and
cutting parameters on surface roughness and
tool wear in turning process using Taguchi
method. Measurement, 78:111–119.
[9] Llhan Asilturk, Suleyman Neseli, Mehmet
Alperlnce.(2016).Optimisation of parameters
affecting surface roughness of Co28Cr6Mo
medical material during CNC lathe machining by
using the Taguchi and RSM methods,
Measurement. 78:120–128.
[10] S. Sahu, B. B. Choudhury. (2015). Optimization
of Surface Roughness Using Taguchi
Methodology & Prediction of Tool Wear in Hard
Turning Tools. Materials Today Proceedings, 4th
International Conference on Materials
Processing and Characterization, 2 (4–5): 2615–
2623.
[11] Feng C. X, Wang X. (2002). Development of
[12] R.K.Suresh, G. Krishnaiah.(2013).Parametric
Optimization on single objective Dry Turning
using Taguchi Method. International Journal of
Innovations in Engineering and Technology,
vol.2.
Empirical Models for Surface Roughness
Prediction in Finish Turning. International
Journal of Advanced Manufacturing Technology,
20: 348- 356.

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Optimization of Cutting Parameters Based on Taugchi Method of AISI316 using CNC Lathe Machine

  • 1. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 04 Issue: 07 | July -2017 www.irjet.net p-ISSN: 2395-0072 © 2017, IRJET | Impact Factor value: 5.181 | ISO 9001:2008 Certified Journal | Page 3197 OPTIMIZATION OF CUTTING PARAMETERS BASED ON TAUGCHI METHOD OF AISI316 USING CNC LATHE MACHINE Lakhan Singh1, Rajeev Choudhary2, Deepak Kumar Juneja3 1Research Scholar, Department of Mechanical Engineering, Gaeta Engineering College, Panipat, Haryana 2Research Scholar, Department of Mechanical Engineering, IIT (BHU), Varanasi (U.P) 3 Head of Department Department of Mechanical Engineering, Gaeta Engineering College, Panipat, Haryana -----------------------------------------------------------------------------***---------------------------------------------------------------------------- Abstract-The main aim of this research work is focused on the analysis of optimum cutting conditions to get lowest surface roughness in CNC turning of austenitic stainless steel AISI 316 using carbide insert coated with TiN under dry condition. Taguchi method is used for design this experiment and the total 27 experiment performed to find out optimum values of level of different factors in order to minimize surface roughness of austenitic stainless steel AISI 316 in turning. The analysis of variance (ANOVA) is used for calculating the percentage of contribution of each factor in quality of surface roughness. The result show that the maximum effect on surface roughness produce by feed and the minimum effect on surface roughness produce by depth of cut. The surface of workpiece is least effected by cutting speed. Keywords: Taguchi’s Techniques, ANOVA. CNC Turning, Surface roughness. 1. INTRODUCTION The main aim of this research work to find out the factor affecting the surface roughness. This research work is conducting for optimizing these factors. Now a day’s it is great challenge for obtained high quality, good surface finish and high material removal rate for every machining enterprises. The quality of every product is depending on surface smoothness. So in this research work we shall obtain a group of factor on which surface roughness is minimum and surface smoothness maximum. The group of factor is determining with help of Taugchi method in this present work. This research work concerned with the determination of optimal turning parameters for reduced roughness and increased hardness of the machined surfaces while turning of workpiece austenitic stainless steel AISI 316 using carbide insert coated with TiN under dry condition. Yang et al. [1] conducted an experiment to study the optimize the turning operation of S45C steel bars using tungsten carbide cutting tools and reported that cutting speed, feed rate, and depth of cut were the significant cutting parameters for affecting surface roughness. They found out the contribution order of the cutting parameters for surface roughness is feed rate, then depth of cut, and then cutting speed. Zhang et al. [2] have used Taguchi method for surface finish optimization in end milling of Aluminium blocks. The experimental results indicate that in this study the effects of spindle speed and feed rate on surface finish were larger than depth of cut for milling operation. Nalbant et al. [3] conducted an experimental study which was focused on the analysis of optimum cutting conditions to get Lowest surface roughness used Taguchi method to find optimum cutting parameters for surface roughness in turning of AISI 1030 carbon steel bars using TiN coated tools. Three cutting parameters namely, insert radius, feed rate, and depth of cut were optimized. In turning, use of greater insert radius, low feed rate and low depth of cut were used to obtain better surface roughness for the specific test range. Ghani et al. [4] conducted an experimental study which was focused on the analysis of optimum cutting conditions to get lowest surface roughness and cutting force in end milling when machining hardened steel AISI H13 with TiN coated P10 carbide insert tool under semi- finishing and finishing conditions of high speed cutting. Taguchi method was used for experiment study. The milling parameters cutting speed, feed rate, and depth of cut were determine. The result show in end milling, use of high cutting speed, low feed rate and low depth of cut were recommended to obtain better surface roughness and low cutting force. Pranav R. Kshirsagar et al. [5]study in their experimental work the effect of the cutting speed, feed rate and depth of cut on surface roughness of EN8 steel using coated carbide inserts cutting tool on CNC turning machine in dry condition. Taguchi method was used for Design of experiments. The Statistical analysis for Variance (ANOV) based on S/N ratio was used to determine the optimum levels of control factors which affect on surface roughness. The results show that the surface roughness was affected by feed rate only in CNC turning of EN8 steel. Thamizhmani et.al [6] investigated the optimum cutting conditions to get lowest surface roughness of AISI410 by PCBN cutting tool. Results show that surface roughness value was low at high cutting speed with low feed rate. ICiftci [7] investigated the Machining characteristics of austenitic stainless steels (AISI 304 and AISI 316) using CVD multi layer coated carbide tools. The turning tests were conducted at four different cutting speeds with a constant feed rate and depth of cut. The effect of work
  • 2. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 04 Issue: 07 | July -2017 www.irjet.net p-ISSN: 2395-0072 © 2017, IRJET | Impact Factor value: 5.181 | ISO 9001:2008 Certified Journal | Page 3198 piece grade, cutting tool coating top layer and cutting speed were conducted on cutting forces and machined surface roughness. Results show that surface finish values decreased with increasing in cutting speed until a minimum value was reached, beyond which they increased. Sujan Debnath et al. [8]. conducted an experimental to study to investigated the effect of various cutting fluid levels and cutting parameters on surface roughness and tool wear of mild steel bar using a TiCN + Al2O3 + TiN coated carbide tool by using Taguchi and orthogonal array in C NC turning process. Llhan Asilturk et al. [9] conducted an experimental to study the modelling of experimental data of surface roughness of Co28Cr6Mo medical alloy machined on a CNC lathe. Three cutting parameters spindle rotational speed, feed rate, and depth of cut were used and tool tip radius based on the Taguchi orthogonal test design and RSM. Supriya Sahu et al. [10] investigated the optimum cutting conditions to get lowest surface roughness in turning and the performance of multi-layer TiN coated tool in machining of hardened steel (AISI 4340 steel) under high speed turning and found the effect of cutting parameters (speed, feed, and depth of cut) on surface roughness using Taguchi method. Feng and Wang [11] conducted an experiment to study for obtained the surface roughness in finish turning operation by developing an empirical model through considering working parameters. R.K.Suresh et.al [12] focused to investigate the effect of cutting parameters on EN-41 B alloy steel using Taguchi technique. An accurate regression model is developed for material removal rate. Result show that feed is the most dominant parameter for MRR. R. B. Mandavia [13] conducted an experiment to study to effect of different input parameters temperature, cutting speed, feed etc. And their effect on surface roughness, hardness, material removal rate, tool wear, tool life. Taguchi method was used for designed this experiment. Based on the study it is observed that depth of cut, speed and feed affected the surface roughness while turning of austenitic stainless steel AISI316 significantly. So more study and investigation is required to investigate the factor affected the surface roughness under various operations. 2. DESIGN OF EXPERIMENTS This presented work is based on Taguchi method of design of experiments. Taguchi strategy is effective technique for planning process that works reliably and ideally finished the types of conditions .When number of factor in a design is increase then it is very complex for solution .then a special designed method in which the use of orthogonal array to study the whole parameter space with lesser was suggested by Taguchi. 2.1. Smaller the Better In situations where you need to limit the events of some undesirable item qualities, you would figure the accompanying S/N proportions/N ratio of smaller the better is given below (S/N) smaller the better = −10*log (Σ (Y2)/n) Where Y = responses for the given factor level combination And n = number of responses in the factor level combination. 2.2. Larger the Better Cases of this kind of building issue are mileage (miles per gallon) of a car, quality of solid, resistance of protecting materials, and so forth. The accompanying S/N proportion ought to be utilized and this is given below (S/N)larger the better = −10*log (Σ (1/Y2)/n) Where Y = responses for the given factor level combination And n = number of responses in the factor level combination. 2.3. Nominal the better In case of nominal the better you have a fixed signal value (nominal value), and the variance around this value can be considered the result of noise factors: (S/N)nominal the better = −10*log (s2) Where Y = responses for the given factor level combination And n = number of responses in the factor level combination. 3 .EXPERIMENTAL SETUP Experimental setup in this research work is consist of workpiece (AISI316), CNC lathe machine, Micrometre, tungsten carbide insert type cutting tool and surface tester. 4. WORKPIECE MATERIAL The material of workpiece which is requirement is austenitic stainless steel AISI 316.Austenitic stainless steel contains 18% chromium and 8% nickel. Stainless steel AISI 316 is an alloy of iron which containing least 10.5% Chromium. Due to excellent mechanical properties austenite stainless steel AISI 316 are widely used in various areas.
  • 3. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 04 Issue: 07 | July -2017 www.irjet.net p-ISSN: 2395-0072 © 2017, IRJET | Impact Factor value: 5.181 | ISO 9001:2008 Certified Journal | Page 3199 Table- 1: The Chemical Composition of AISI316. Element Weight % C 0.058 S 0.019 Mo 2.086 Cu 0.559 Si 0.349 Cr 16.536 V 0.014 Mn 1.080 Table- 2: Mechanical Properties of AISI 316. Yield Strength 290 MPa Modulus of elasticity 193 MPa Tensile strength 580 MPa Density 800 kg/mm3 BHN 217 4. CUTTING TOOL INSERTS Tungsten inserts carbide type cutting tool is used for turning of stainless steel AISI316 in current work. The nomenclature of cutting inserts is given below. In this research paper cutting tool insert TNMG160408 is use for turning. 5. CNC LATHE MACHINE The CNC lathe machine “Midas 8i” is used for turning of stainless steel AISI316 in this present work. This machine is manufacturing by GALAXY MACHINERY PVT. LTD Table- 3: The Full Specification of Midas 8i CNC Lathe Machine Capacity Turning Diameter 280mm Max. Turning 522mm Length Maximum Swing Clearance Diameter of Over Carriage 230mm Maximum Swing Clearance Diameter over Way Covers 430mm Chuck Chuck Size 210 mm Bar Capacity 50 mm Spindle Drive Spindle Power 40 rpm – 4000 rpm Range of Spindle 12 hp-10 hp 6. SURFACE TESTER The surface roughness of workpiece in this research work is measuring by Mitutoyo SJ-201P.The surface roughness of workpiece will trace by a pick-up which attached to the detector SJ-201P. 7. FACTORS AND THEIR LEVEL The factor and there level used in this research work are given below. 1. Cutting speed in rpm 2. Feed in mm/rev 3. Depth of cut in mm Table- 4: Factor and level for Experiment Factor Unit Level 1 Level 2 Level 3 Feed mm/rev 0.05 0.1 015 Depth of Cut mm 0.4 0.8 1.2 Cutting speed rpm 500 700 900 Fig.1: Workpiece Material Fig. 4: CNC Midas 8i
  • 4. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 04 Issue: 07 | July -2017 www.irjet.net p-ISSN: 2395-0072 © 2017, IRJET | Impact Factor value: 5.181 | ISO 9001:2008 Certified Journal | Page 3200 Fig.2: Cutting Tool Inserts Fig.5: Workpiece Turning Fig.3: Workpiece after Machining Fig.6: Mitutoyo SJ-201P (Surface Tester) Table -5: Surface Roughness, MRR and S/N ratio S.N. Depth of cut (d) mm Feed (f) mm/rev Speed (N) rpm Cutting Speed (V) m/min. MMR mm3/sec Avg. Roughness(Ra) µm RMS Roughness (Rq) µm S/N for Ra 1 0.4 0.05 500 50.265 16.7551 0.42 0.51 7.53501419 2 0.4 0.05 700 70.371 23.45714 0.33 0.41 9.6297212 3 0.4 0.05 900 90.477 30.15918 0.29 0.37 10.75204 4 0.4 0.1 500 50.265 33.5102 0.47 0.58 6.55804284 5 0.4 0.1 700 70.371 46.91428 0.40 0.49 7.95880017 6 0.4 0.1 900 90.477 60.31836 0.37 0.45 8.63596552 7 0.4 0.15 500 50.265 50.2653 0.80 1.01 1.93820026 8 0.4 0.15 700 70.371 70.37142 0.81 1.04 1.83029962 9 0.4 0.15 900 90.477 90.47754 0.76 0.99 2.38372815 10 0.8 0.05 500 50.265 33.5102 0.38 0.47 8.40432807 11 0.8 0.05 700 70.371 46.91428 0.32 0.40 9.89700043
  • 5. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 04 Issue: 07 | July -2017 www.irjet.net p-ISSN: 2395-0072 © 2017, IRJET | Impact Factor value: 5.181 | ISO 9001:2008 Certified Journal | Page 3201 12 0.8 0.05 900 90.477 60.31836 0.24 0.30 12.3957752 13 0.8 0.1 500 50.265 67.0204 0.45 0.55 6.93574972 14 0.8 0.1 700 70.371 93.82856 0.40 0.49 7.95880017 15 0.8 0.1 900 90.477 120.63672 0.42 0.51 7.53501419 16 0.8 0.15 500 50.265 100.5306 0.77 0.95 2.2701855 17 0.8 0.15 700 70.371 140.74284 0.79 1.00 2.04745817 18 0.8 0.15 900 90.477 180.95508 0.78 1.00 2.15810795 19 1.2 0.05 500 50.265 50.2653 0.34 0.44 9.37042166 20 1.2 0.05 700 70.371 70.37142 0.33 0.42 9.6297212 21 1.2 0.05 900 90.477 90.47754 0.32 0.41 9.89700043 22 1.2 0.1 500 50.265 100.5306 0.44 0.53 7.13094647 23 1.2 0.1 700 70.371 140.74284 0.42 0.51 7.53501419 24 1.2 0.1 900 90.477 180.95508 0.41 0.50 7.74432287 25 1.2 0.15 500 50.265 150.7959 0.84 1.08 1.51441428 26 1.2 0.15 700 70.371 211.11426 0.82 1.02 1.72372295 27 1.2 0.15 900 90.477 271.43262 0.82 1.03 1.72372295 8. RESULT AND DISCUSSION Table- 6: Response Table for Signal to Noise Ratio Level depth of cut (mm) feed (mm/rev) speed (rpm) 1 6.358 9.723 4.740 2 6.622 7.555 6.468 3 6.252 1.954 7.025 Delta 0.370 7.769 1.285 Rank 3 1 2 Fig.7: The Main Effect Plot for SN ratios Data Means From the plot diagram it is clear that when depth of cut is increase then mean of SN ratio is increase at a point but after increasing in depth of cut mean of SN ratio is decrease. When feed is increase then means of SN ratio is decrease. When speed is increase then mean of SN ratio is also increase. Fig.9: Surface Plot of Ra Vs Feed, and Depth of Cut This figure shows variation of surface roughness with feed and depth of cut. We can obtain the minimum value of surface roughness with respect to feed and depth of cut. 0.50 0.75 1.00 0.2 0.4 0.6 0.10 0.050 1.25 0.10 0.15 0.8 aR )ver/mm(deef )mm(tucfohtped urface Plot of Ra vs feedS mm/rev), depth of cut (mm)(
  • 6. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 04 Issue: 07 | July -2017 www.irjet.net p-ISSN: 2395-0072 © 2017, IRJET | Impact Factor value: 5.181 | ISO 9001:2008 Certified Journal | Page 3202 Fig.10: Surface Plot of Ra Vs Speed, and Depth of Cut This figure shows variation of surface roughness with feed and depth of cut. We can obtain the minimum value of surface roughness with respect to speed and depth of cut. Fig. 11: Surface Plot of Ra vs Speed, and Feed This figure shows variation of surface roughness with feed and depth of cut. We can obtain the minimum value of surface roughness with respect to speed and feed. 9. REGRESSION EQUATION It is use for obtained the relationship between depth of cut, speed and fee rate with surface roughness. Ra =0.1346 + 0.0125depth of cut (mm) + 3.689feed (mm/rev) -0.000139 speed (rpm) 10. ANOVA Table- 7: Analysis of Variance Model Summary S R-sq R-sq(adj) R-sq(prep) 0.0293888 98.50% 98.04% 97.26% Analysis of variance shows the contribution of the parameter which effect on surface roughness. CONCLUSION  In this research work we investigate the effects of cutting parameters depth of cut, feed and speed on surface roughness of AISI316 stainless steel. Finally we obtained the values of selected machining parameters for affecting surface roughness. The optimum value of depth of cut 0.8 mm; feed is 0.05 mm/rev, and speed 900 rpm. Corresponding to these values of parameters the minimum surface roughness recorded.  From regression relation the value obtained corresponding to optimum values of parameters was 0.2539 µm. And there was no value in of surface roughness is recorded less than this value during 27 experiments. Hence result was validated. REFERENCES [1] Yang. W.H, T. Y.S.(1998). Design optimization of cutting parameters for turning operations based on the Taguchi method, Journal of Material Processing Technology. 84(13), 122-129. [2] Zhang, J.Z, Chen. J.C, Kirby, E.D. (2007). Surface roughness optimization in an end-milling operation using the Taguchi design method, Journal of Material Processing Technology. 184(1-3), 233-239. 0.50 0.75 1.00 0.2 0.4 0.6 600 0 1.25 750 900 0.8 aR )mpr(deeps )mm(tucfohtped urface Plot of Ra vs speed (rpm), depth of cut (mm)S 0.05 0.10 0.2 0.4 0.6 600 0.15 750 900 0.8 aR )mpr(deeps )ver/mm(deef urface Plot of Ra vs spS e d (rpm), feed (mm/rev)e Source DF Adj SS Adj MS F- Value P- Value depth of cut (mm) 2 0.00201 0.001004 1.16 0.333 feed (mm/rev) 2 1.11454 0.557270 644.21 0.000 speed (rpm) 2 0.01401 0.007004 8.11 0.003 Error 20 0.01727 0.000864 Total 26 1.14783
  • 7. International Research Journal of Engineering and Technology (IRJET) e-ISSN: 2395-0056 Volume: 04 Issue: 07 | July -2017 www.irjet.net p-ISSN: 2395-0072 © 2017, IRJET | Impact Factor value: 5.181 | ISO 9001:2008 Certified Journal | Page 3203 [3] N. M, G. H, Sur. G. (2007).Application of Taguchi method in the optimization of cutting parameters for surface roughness in turning, Materials & Design. 28(4): 1379-1385. [4] J. A. Ghani,. I. A. Chodhury, and Hassan, H.H. 2004.Application of Taguchi method in the optimization of end milling parameters, Journal of Material Processing Technology. 145(1): 84- 92. [5] Pranav R. Kshirsagar. (2008). Optimization of Surface Roughness of EN8 Steel in CNC Turning Operation by Taguchi Concept, International Journal of advanced Technology Engineering and Science. ISSN: 2348-7550. [6] S. Thamizhmanii, S. Hasan. (2011). Machinability of hard martensitic stainless steel and hard alloy steel by CBN and PCBN tools by turning process, Proceedings of the World Congress on Engineering, 1(1): 554-559. [7] I.Ciftci. (2006). Machining of austenitic stainless steels using CVD multilayer coated cemented carbide tools. Tribology International, 39(6): 565-569. [8] S. Debnath, M. Mohan Reddy, Qua Sok Yi. (2016).Influence of cutting fluid conditions and cutting parameters on surface roughness and tool wear in turning process using Taguchi method. Measurement, 78:111–119. [9] Llhan Asilturk, Suleyman Neseli, Mehmet Alperlnce.(2016).Optimisation of parameters affecting surface roughness of Co28Cr6Mo medical material during CNC lathe machining by using the Taguchi and RSM methods, Measurement. 78:120–128. [10] S. Sahu, B. B. Choudhury. (2015). Optimization of Surface Roughness Using Taguchi Methodology & Prediction of Tool Wear in Hard Turning Tools. Materials Today Proceedings, 4th International Conference on Materials Processing and Characterization, 2 (4–5): 2615– 2623. [11] Feng C. X, Wang X. (2002). Development of [12] R.K.Suresh, G. Krishnaiah.(2013).Parametric Optimization on single objective Dry Turning using Taguchi Method. International Journal of Innovations in Engineering and Technology, vol.2. Empirical Models for Surface Roughness Prediction in Finish Turning. International Journal of Advanced Manufacturing Technology, 20: 348- 356.