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IOSR Journal of Mechanical and Civil Engineering (IOSR-JMCE)
e-ISSN: 2278-1684,p-ISSN: 2320-334X, Volume 6, Issue 5 (May. - Jun. 2013), PP 34-42
www.iosrjournals.org
www.iosrjournals.org 34 | Page
Process Parametric Optimization of CNC Vertical Milling
Machine Using Taguchi Technique in Varying Condition
Piyush pandey*, Prabhat kumar sinha, Vijay kumar, Manas tiwari
Mechanical Engineering Department, Sam Higginbottom Institute of Agriculture Technology and sciences,
Allahabad
Abstract- An experiment was conducted to perform the parametric optimization of CNC end milling machine
tool in varying condition. The tool used for experiment was of Solid Carbide and the Mild Steel work piece was
used during experiment. The experiment has been taken place efficiently and completes its all objective of
optimization. The practical result can be used in industry to get the desirable Surface Roughness and Material
Removal Rate for the work piece by using suitable parameter combination.
I. Introduction
The Taguchi‟s method for optimization has been used as the principle of the process. It helps in the
selection of experiment process, selection of orthogonal array, process of reducing variation, tolerance design,
analysis and confirmation test [1]. The Taguchi‟s design is an efficient method which can optimize given
various control and noise factor using fewer resources and factorial design. This study includes feed rate spindle
speed and depth of cut as a control factor and as a noise factors were the operating chamber temperature and the
usage the different tool insert in the same specification which introduce tool condition and dimensional
variability [2]. The optimization of feed rate is essential in terms of providing high precision and efficient
machining. The surface roughness is very sensitive to the feed rate. The effect of insert run out error and the
variation of feed rate on the surface roughness and the dimensional accuracy in milling operation using a surface
roughness model. The estimated surface roughness value, the optimal feed rate that give a maximum material
removal rate under given surface roughness constraint could be selected by bisectional method [3]. By
validating the result and performance of Taguchi Method a group of researchers study the role of parameter
design and Taguchi‟s methodology for implementing it. It include the importance of variation reduction, the use
of noise factors, the role of interaction, selection of quality characteristic, signal to noise ratios, experimental
strategy dynamic systems, and applications [4]. A design of experiment (DOE) has been implemented to select
manufacturing process parameter for quality of the work piece. There use of two different parameter Dependent
and independent has been considered for optimization. The Dependent parameters were material removal rate
and surface roughness. The independent parameters used were Rake Angle, Helix Angle, Cutting Speed and
Depth of cut. The experiment was conducted in various steps by selection of quality characteristics, noise
factors, control factors, orthogonal array and then conducting and confirming experiment. The L18 was used
since it has seven three level column and one two level column [5]. The deviation of quality characteristics from
the target causes loss. The uncontrollable factor which causes the characteristics to deviate from the target
values are called noise factors. Signal-to-noise (S/N) ratio was used as a measurable value instead of standard
deviation because as the mean decreases, the standard deviation decreases and vice versa [6]. To increase the
process efficiency, flexibility and robustness, Taguchi dynamic approach couple with a proposed ideal function
model for high dimensional quality. To increase the robustness of the manufacturing process, the experiment
was design to consider the effect of manufacturing noise and to compound them as to extreme condition for
assessing the quality characteristics of the work piece [7]. To maintain stable machining much attention was
given to the formation of desired chip and chip control to facilitate its easy removal, Chip formation and
breaking aspect perform significant role in machining. Problem with surface finish, work piece accuracy and
tool life can be caused by minor changes in the chip formation process [8]. Quality improvement program in
milling industry central composite designs and classical fractional factorial design were used in conjunction
with the philosophy given by Taguchi [9]. ANOVA or analysis of variance used for analyzing and interpreting
the experimental results, It include the F-Test and percentage contribution method which helps in the statistical
test of comparison of result. ANOVA was applied to the orthogonal array types of designed experiment [1]. In
end milling operation to assure product quality and increased production rate Artificial Neural Networks (ANN)
model was developed. In this system the accelerometer and a proximity sensor were used during cutting to
collect the vibration and rotation data respectively. Using Spindle Speed, Feed rate and Depth of cut which has a
accuracy rate of (96-99%) [10]. The Orthogonal array which was the systematic tabulated arrangement made
from the combination of factor and levels helps the result to interpret properly. The uses of MINITAB made it
Process Parametric optimization of CNC vertical milling machine using Taguchi Technique in
www.iosrjournals.org 35 | Page
possible to analyze and simulate the result in short span of time, MINITAB assist in analyze the work piece
optimization‟s result.
II. Experimental Setup
There are 3 Solid Carbide Tools which are to be placed on to the CNC Milling machine as
per the signified table of trials
Tool Specification
Rake angle
Rake angle is used for better surface finish. The formal definition of a rake angle is "the angle between the
leading edge of a cutting tool and a perpendicular to the surface being cut".
Rake Angle Representation
Rake angles come in two varieties, positive and negative
If the leading edge of the blade is ahead of
the perpendicular, the angle is, by
definition, negative.
Examples of negative rake instruments are
reamers, K-files, K-Flex files, diamond
burs, most NiTi-files, and burnishing burs
or regular burs run backwards.
Tool Diameter (mm) Helix Angle (°) Rake Angle (°)
8 35 4
10 30 7
12 45 10
Process Parametric optimization of CNC vertical milling machine using Taguchi Technique in
www.iosrjournals.org 36 | Page
III. Rake Angle Importance
Work piece Material
We are using mild steel as a work piece. In this study mild steel having composition (0.16–0.29%
carbon is used. The density of mild steel is approximately 7.85 g/cm3, Young's modulus is 210,000 MPa
(30,000,000 psi). Mild steel work piece having dimension L, B, W in mm. (respectively 39.4, 35, and 11.7) is
used. Mild steel has a relatively low tensile strength, but it is cheap and malleable; surface hardness can be
increased through carburizing.
Control Parameters
Coolant:A coolant is a fluid which flows through a device to prevent its overheating,
transferring the heat produced by the device to other devices that use or dissipate it.
Cutting Oil arrangement have to be made in the machine. Cutting oil is water soluble with refractive index of
1.534 (Coolage SL non EP-Type). When a 10 ml of oil is mixed with 50ml water a change of 0.1 comes in the
refractive index.
e.g. for a cutting speed of 100 ft/min (a plain HSS steel cutter on mild steel) and diameter of 10 inches (the
cutter or the work piece)
Following Steps Have to Be Undertaken-
There are 3 Solid Carbide Tools which are to be placed on to the CNC Milling machine as per the signified table
of trials.
Tool Diameter (mm) Helix Angle(°) Rake Angle (°)
8 35 4
10 30 7
12 45 10
Tool Specification
Cutting Oil arrangement has to be made in the machine. Cutting oil is water soluble with refractive index of
1.534(Cool age SL non EP-Type).When a 10 ml of oil is mixed with 50ml water a change of 0.1 comes in the
refractive index.
Defined levels are being made-
Defined Levels Of factors
Below we have taken the response table of the material removal rate(MRR) and the surface roughness(SR).
Now out of 8 factors we have taken the factors from A to E because one of them which is A(coolant) is having
Controllable Factors Level 1 Level 2 Level 3
Cutting Speed (rpm) 800 900 1000
Depth of cut (mm) 0.6 0.7 0.8
Feed Rate (mm/min) 100 110 150
Tool Diameter (mm) 8 10 12
Coolant C1 C2 C3
Process Parametric optimization of CNC vertical milling machine using Taguchi Technique in
www.iosrjournals.org 37 | Page
just 2 levels and as prescribed in the Minitab software the minimum factor table which could accommodate 1
factor of 2 levels is L18 TABLE as in Taguchi designs.
The S/N ratio can be calculated as a logarithmic transformation of the loss function as shown below.
S/N ratio for MRR =
S/N ratio for SR =
The experimental results (or data) are further transformed into a signal-to-noise (S/N) ratio. There are several
S/N ratios available depending on the type of characteristic; lower is better (LB), Normal is best (NB) and
higher is better (HB)
The characteristic that higher value represents better machining performance, such as MRR, is called
„Higher is better (HB)‟. The characteristic that lower value represents better machining performance such as
„surface roughness, is called „Lower is better (LB)‟. Therefore, “HB” for MRR and “LB” for SF were selected
for obtaining optimum machining performance characteristics
Experimental Values
MRR (SECTION)
1. Average effect response table for raw data (MRR)
LEVELS A B C D
1 0.097 0.136 0.098 0.196
2 0.198 0.042 0.205 0.157
3 0.149 0.271 0.141 0.123
MAX-MIN 0.101 0.229 0.107 0.073
RANK 3 1 2 4






 

n
i MRRyn 1
2
11
log10





 

n
i
SRy
n 1
21
log10
Process Parametric optimization of CNC vertical milling machine using Taguchi Technique in
www.iosrjournals.org 38 | Page
Average Effect Response Table for MRR
2. Average effect response table for S/N ratios (MRR)
LEVELS A B C D
1 -26.82 -20.84 -24.60 -18.90
2 -16.70 -27.24 -9.95 -20.89
3 -20.70 -12.43 -20.90 -24.40
MAX-MIN 10.12 14.81 14.65 5.50
RANK 3 1 2 4
Average Effect Response Table for S/N Ratios (MRR)
SR (SECTION)
1. Next table shows the response values of the surface roughness (SR) column.
S.NO Response values Average
Value (µm)
S/N ratio
1 2 3
1
1.13 1.02 0.77
0.97 0.26
2 0.93 0.86 1.53 1.10 -0.82
3 2.12 1.12 1.43 1.55 -3.80
4 2.01 1.1 1.05 1.38 -2.79
5 1.5 2.09 2.06 1.88 -5.48
6 1.01 1.1 0.97 1.02 -0.17
7 1.96 1.42 1.48 1.62 -4.19
8 1.39 0.98 1.91 1.42 -3.04
9 2.22 2.42 1.57 2.07 -6.31
10 1.35 1.24 0.94 1.17 -1.36
11 0.92 0.82 1.01 0.91 0.81
12 0.94 0.98 2.01 1.31 -2.34
13 1.3 1.69 1.57 1.52 -3.63
14 1.14 1.58 1.35 1.35 -2.60
15 1.43 2.7 1.25 1.79 -5.05
16 3.05 1.44 1.53 2.00 -6.02
17 1.87 2.81 2.31 2.33 -7.34
18 1.98 2.69 3.09 2.58 -8.23
Response Values for SR
1. Average effect response table for raw data (SR)
LEVELS A B C D
1 1.16 1.44 1.24 1.40
2 1.49 1.49 1.66 1.50
3 2.00 1.72 1.41 1.75
MAX-MIN 0.84 0.28 0.42 0.35
RANK 1 4 2 3
Average Effect Response Table for SR
2. Average effect response table for S/N ratios (SR)
LEVELS A B C D
1 -1.20 -2.95 -3.40 -2.62
2 -3.28 -3.07 -4.11 -3.34
3 -5.58 -4.31 -2.28 -4.23
MAX-MIN 4.38 1.36 1.83 1.61
RANK 1 4 2 3
Average Effect Response Table for S/N Ratios (SR)
4.2. Plotting methods
The plotting of experimental results should be done in as many ways as are meaningful:
1. By levels of influential factors
2. By levels of combinations of influential factors to assess interaction possibilities
3. By order of actual test
Process Parametric optimization of CNC vertical milling machine using Taguchi Technique in
www.iosrjournals.org 39 | Page
The column effects, and later ANOVA, indicate what to plot. To plot the effect of influential factors, the
average result for each level must be calculated first. The sum of the data associated with each level in the OA
column divided by the number of tests (data points) for that level will provide the appropriate averages. This
applies to factors two or more levels.
Plot may be made with equal increments between levels on the horizontal axes of the graphs to show
the relative strengths of the factors. The factors strength is directly proportional to the slope of the graph. An
actual scale may also be used for the horizontal axes of continuous factors to graphically interpolate or
extrapolate for prediction of other levels. With the actual scale, however the relative comparison of slopes is not
meaningful.
The analysis was made using the popular software specifically used for design of experiment
applications known as MINITAB 14. Before any attempt is made to use this simple model as a predictor for the
measures of performance, the possible of interactions between the factors must be considered. Thus factorial
design incorporates a simple means of testing for the presence of the interaction effects.
MeanofSR
0.80.70.6
2.0
1.8
1.6
1.4
1.2
1000900800
120110100
2.0
1.8
1.6
1.4
1.2
12108
DEPTH OF CUT CUTTING SPEED
FEED RATE TOOL DIAMETER
Main Effects Plot (data means) for SR
Main Effects Plot For SR
DEPTH OF CUT
Mean
0.80.70.6
2.2
2.0
1.8
1.6
1.4
1.2
1.0
FEED
120
RATE
100
110
Interaction Plot (data means) for SR
Interaction Plot For SR
Process Parametric optimization of CNC vertical milling machine using Taguchi Technique in
www.iosrjournals.org 40 | Page
DEPTH OF CUT (A)
Mean
0.80.70.6
2.2
2.0
1.8
1.6
1.4
1.2
1.0
TOOL
12
DIAMETER
8
10
Interaction Plot (data means) for SR
Interaction Plot For SR
MeanofMRR
0.80.70.6
0.25
0.20
0.15
0.10
0.05
1000900800
120110100
0.25
0.20
0.15
0.10
0.05
12108
DEPTH OF CUT CUTTING SPEED
FEED RATE TOOL DIAMETER
Main Effects Plot (data means) for MRR
Main Effect Plot For MRR
DEPTH OF CUT
Mean
0.80.70.6
0.35
0.30
0.25
0.20
0.15
0.10
0.05
0.00
CUTTING
1000
SPEED
800
900
Interaction Plot (data means) for MRR
Process Parametric optimization of CNC vertical milling machine using Taguchi Technique in
www.iosrjournals.org 41 | Page
DEPTH OF CUT
Mean
0.80.70.6
0.30
0.25
0.20
0.15
0.10
0.05
0.00
FEED
120
RATE
100
110
Interaction Plot (data means) for MRR
Interaction Plot for MRR
DEPTH OF CUT
Mean
0.80.70.6
0.30
0.25
0.20
0.15
0.10
0.05
0.00
TOOL
12
DIAMETER
8
10
Interaction Plot (data means) for MRR
Interaction Plot for MRR
IV. Conclusion
This experimental study described the development of process in terms of MRR and Surface finish,
using Taguchi‟s L18 orthogonal array. It was fond that the S/N ratio with Taguchi‟s parameter design is a simple,
systematic, reliable and more efficient tool for optimizing multiple performance characteristics of CNC milling
process parameters. Factors like depth of cut, feed rate, cutting speed, tool diameter and there interactions have
been found to play a significant role in rough cutting operations for maximization of MRR and surface finish.
Interestingly, the optimal levels of the selected control factors for both objectives differ widely. In order to
optimize for both objectives, mathematical models are developed using the non-linear regression method.
Analysis of variance (ANOVA) is also employed to identify the level of importance of the machining
parameters on the multiple performance characteristics namely material removal rate and surface roughness.
Assumptions of ANOVA are tested using residual analysis. After careful testing, none of the assumptions was
violated. ANOVA results showed that CUTTING SPEED AND FEED RATE are the powerful control
parameters for the material removal rate and DEPTH OF CUT AND FEED RATE calculated as powerful
factors for controlling the surface finish of Mild Steel. In case of MRR analysis, percent contribution for
residual error is 4.166% is very small (less than 15%), it is proved that no important factors were omitted during
the experiment and there is no opportunity for the further improvement while surface roughness analysis result
interprets that percent contribution of residual error is -5% is small (less than 50%), it is acceptable that no
important factors were omitted during the experiment but there may be very small opportunity for the further
improvement.
REFERENCES-
[1] Mr. Phillip J. Ross, Taguchi Technique for Quality Engineering (2005) 23-73, 91-256.
[2] Julie Z. Zhang, Joseph C. Chen, E. Daniel Kirby, Surface roughness optimization in an end-milling operation using the Taguchi
design Method., Journal of Materials Processing Technology (2006) 233-238
[3] Dae kyun Baek, Tae jo ko, Hee Sool Kim, Optimization of feedrate in face milling operation using a surface roughness model,
International Journal of machine Tools & Mnufacturer (2001) 452-458
[4] Vijayan N. Nair, Bovas Abraham, Jock MacKay, John A. Nelder, George Box, Madhav S. Phadke, Raghu N. Kacker, Jerome
Sacks, William J. Welch, Thomas J. Lorenzen, Anne C. Shoemaker, Kwok L. Tsui, James M. Lucas, Shin Taguchi, Raymond H.
Myers, G. Geoffrey Vining, C. F. Jeff Wu, Tauchi‟s Parameter Design; A Panel Discussion, Technometric (1992) 133-146
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[5] John L. Yang & Dr. Joseph C. Chen, A Systematic approach for identifying optimum Surface Roughness performance in End-
Milling operations, Journal of Industrial Technology (2001) 3-6.
[6] J.A Ghani, I.A. Choudhary, H.H.Hassan, Application of Taguchi method in the optimization of end milling parameters, Journal of
Materials processing technology (2004) 84-86
[7] Tzeng Yih-Fong, Jean Ming-Der, Dimensional quality optimization of high speed CNC milling process with dynamic quality
characteristic, Robotics and Computer-Integrated Manufacturing (2005) 507-511
[8] Yuan Ning, M. Rahman, Y.S. Wong, Investigation of chip formation in high speed end milling, Journal of Materials processing
technology (2001) 360-366
[9] M.G.Tuck, S.M. Lewis, J.I.L.Cottrell, Response Surface Methodology and Taguchi: A Quality improvement study from the milling
industry, Jouranal of the Royal Statistical Society (1993)
[10] Yu-Hsuan Tsai, Joseph C. Chen, Shi-Jer Lou, An in-process recognition system based on neural network in end milling cutting
operations, International Journal of machine Tools & Manufacturer (1999)
[11] Meet Minitab 15 for windows (2007) 2.1-2.14, 3.1-3.12, 5.1-5.11, 8.1-8.11
[12] F-C Chen and Y-F Tzeng, Optimization of the volumetric accuracy of high-speed computer numerical control milling with dynamic
quality characteristics, (2004)
[13] Julie Z. Zhang & Joseph C. Chen, Tool condition monitoring in an end-milling operation based on the vibration signal collected
through a microcontroller-based data acquisition system (2007)
[14] Tsao Chung-Chen & Hocheng Hong, Comparison of the tool life of the tungsten carbides coated by multi-layer TiCN & TiAlCN
for end mills using the Taguchi method, Journal of Materials processing technology (2000)
[15] Madhav S. Phadke, Introduction to Robust Design (Taguchi Approach) (2001)
[16] Yih-Fong Tzeng & Fu-chen CHEN, Optimization of the high speed CNC milling process using two-phase parameter design
strategy by the Taguchi methods, JSME International Journal (2005) 775-781
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[20] Age K. Smilde, General Introduction to Robustness, Laboratory for Analytical Chemistry, University of Amsterdam (2003)
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Process Parametric Optimization of CNC Vertical Milling Machine Using Taguchi Technique in Varying Condition

  • 1. IOSR Journal of Mechanical and Civil Engineering (IOSR-JMCE) e-ISSN: 2278-1684,p-ISSN: 2320-334X, Volume 6, Issue 5 (May. - Jun. 2013), PP 34-42 www.iosrjournals.org www.iosrjournals.org 34 | Page Process Parametric Optimization of CNC Vertical Milling Machine Using Taguchi Technique in Varying Condition Piyush pandey*, Prabhat kumar sinha, Vijay kumar, Manas tiwari Mechanical Engineering Department, Sam Higginbottom Institute of Agriculture Technology and sciences, Allahabad Abstract- An experiment was conducted to perform the parametric optimization of CNC end milling machine tool in varying condition. The tool used for experiment was of Solid Carbide and the Mild Steel work piece was used during experiment. The experiment has been taken place efficiently and completes its all objective of optimization. The practical result can be used in industry to get the desirable Surface Roughness and Material Removal Rate for the work piece by using suitable parameter combination. I. Introduction The Taguchi‟s method for optimization has been used as the principle of the process. It helps in the selection of experiment process, selection of orthogonal array, process of reducing variation, tolerance design, analysis and confirmation test [1]. The Taguchi‟s design is an efficient method which can optimize given various control and noise factor using fewer resources and factorial design. This study includes feed rate spindle speed and depth of cut as a control factor and as a noise factors were the operating chamber temperature and the usage the different tool insert in the same specification which introduce tool condition and dimensional variability [2]. The optimization of feed rate is essential in terms of providing high precision and efficient machining. The surface roughness is very sensitive to the feed rate. The effect of insert run out error and the variation of feed rate on the surface roughness and the dimensional accuracy in milling operation using a surface roughness model. The estimated surface roughness value, the optimal feed rate that give a maximum material removal rate under given surface roughness constraint could be selected by bisectional method [3]. By validating the result and performance of Taguchi Method a group of researchers study the role of parameter design and Taguchi‟s methodology for implementing it. It include the importance of variation reduction, the use of noise factors, the role of interaction, selection of quality characteristic, signal to noise ratios, experimental strategy dynamic systems, and applications [4]. A design of experiment (DOE) has been implemented to select manufacturing process parameter for quality of the work piece. There use of two different parameter Dependent and independent has been considered for optimization. The Dependent parameters were material removal rate and surface roughness. The independent parameters used were Rake Angle, Helix Angle, Cutting Speed and Depth of cut. The experiment was conducted in various steps by selection of quality characteristics, noise factors, control factors, orthogonal array and then conducting and confirming experiment. The L18 was used since it has seven three level column and one two level column [5]. The deviation of quality characteristics from the target causes loss. The uncontrollable factor which causes the characteristics to deviate from the target values are called noise factors. Signal-to-noise (S/N) ratio was used as a measurable value instead of standard deviation because as the mean decreases, the standard deviation decreases and vice versa [6]. To increase the process efficiency, flexibility and robustness, Taguchi dynamic approach couple with a proposed ideal function model for high dimensional quality. To increase the robustness of the manufacturing process, the experiment was design to consider the effect of manufacturing noise and to compound them as to extreme condition for assessing the quality characteristics of the work piece [7]. To maintain stable machining much attention was given to the formation of desired chip and chip control to facilitate its easy removal, Chip formation and breaking aspect perform significant role in machining. Problem with surface finish, work piece accuracy and tool life can be caused by minor changes in the chip formation process [8]. Quality improvement program in milling industry central composite designs and classical fractional factorial design were used in conjunction with the philosophy given by Taguchi [9]. ANOVA or analysis of variance used for analyzing and interpreting the experimental results, It include the F-Test and percentage contribution method which helps in the statistical test of comparison of result. ANOVA was applied to the orthogonal array types of designed experiment [1]. In end milling operation to assure product quality and increased production rate Artificial Neural Networks (ANN) model was developed. In this system the accelerometer and a proximity sensor were used during cutting to collect the vibration and rotation data respectively. Using Spindle Speed, Feed rate and Depth of cut which has a accuracy rate of (96-99%) [10]. The Orthogonal array which was the systematic tabulated arrangement made from the combination of factor and levels helps the result to interpret properly. The uses of MINITAB made it
  • 2. Process Parametric optimization of CNC vertical milling machine using Taguchi Technique in www.iosrjournals.org 35 | Page possible to analyze and simulate the result in short span of time, MINITAB assist in analyze the work piece optimization‟s result. II. Experimental Setup There are 3 Solid Carbide Tools which are to be placed on to the CNC Milling machine as per the signified table of trials Tool Specification Rake angle Rake angle is used for better surface finish. The formal definition of a rake angle is "the angle between the leading edge of a cutting tool and a perpendicular to the surface being cut". Rake Angle Representation Rake angles come in two varieties, positive and negative If the leading edge of the blade is ahead of the perpendicular, the angle is, by definition, negative. Examples of negative rake instruments are reamers, K-files, K-Flex files, diamond burs, most NiTi-files, and burnishing burs or regular burs run backwards. Tool Diameter (mm) Helix Angle (°) Rake Angle (°) 8 35 4 10 30 7 12 45 10
  • 3. Process Parametric optimization of CNC vertical milling machine using Taguchi Technique in www.iosrjournals.org 36 | Page III. Rake Angle Importance Work piece Material We are using mild steel as a work piece. In this study mild steel having composition (0.16–0.29% carbon is used. The density of mild steel is approximately 7.85 g/cm3, Young's modulus is 210,000 MPa (30,000,000 psi). Mild steel work piece having dimension L, B, W in mm. (respectively 39.4, 35, and 11.7) is used. Mild steel has a relatively low tensile strength, but it is cheap and malleable; surface hardness can be increased through carburizing. Control Parameters Coolant:A coolant is a fluid which flows through a device to prevent its overheating, transferring the heat produced by the device to other devices that use or dissipate it. Cutting Oil arrangement have to be made in the machine. Cutting oil is water soluble with refractive index of 1.534 (Coolage SL non EP-Type). When a 10 ml of oil is mixed with 50ml water a change of 0.1 comes in the refractive index. e.g. for a cutting speed of 100 ft/min (a plain HSS steel cutter on mild steel) and diameter of 10 inches (the cutter or the work piece) Following Steps Have to Be Undertaken- There are 3 Solid Carbide Tools which are to be placed on to the CNC Milling machine as per the signified table of trials. Tool Diameter (mm) Helix Angle(°) Rake Angle (°) 8 35 4 10 30 7 12 45 10 Tool Specification Cutting Oil arrangement has to be made in the machine. Cutting oil is water soluble with refractive index of 1.534(Cool age SL non EP-Type).When a 10 ml of oil is mixed with 50ml water a change of 0.1 comes in the refractive index. Defined levels are being made- Defined Levels Of factors Below we have taken the response table of the material removal rate(MRR) and the surface roughness(SR). Now out of 8 factors we have taken the factors from A to E because one of them which is A(coolant) is having Controllable Factors Level 1 Level 2 Level 3 Cutting Speed (rpm) 800 900 1000 Depth of cut (mm) 0.6 0.7 0.8 Feed Rate (mm/min) 100 110 150 Tool Diameter (mm) 8 10 12 Coolant C1 C2 C3
  • 4. Process Parametric optimization of CNC vertical milling machine using Taguchi Technique in www.iosrjournals.org 37 | Page just 2 levels and as prescribed in the Minitab software the minimum factor table which could accommodate 1 factor of 2 levels is L18 TABLE as in Taguchi designs. The S/N ratio can be calculated as a logarithmic transformation of the loss function as shown below. S/N ratio for MRR = S/N ratio for SR = The experimental results (or data) are further transformed into a signal-to-noise (S/N) ratio. There are several S/N ratios available depending on the type of characteristic; lower is better (LB), Normal is best (NB) and higher is better (HB) The characteristic that higher value represents better machining performance, such as MRR, is called „Higher is better (HB)‟. The characteristic that lower value represents better machining performance such as „surface roughness, is called „Lower is better (LB)‟. Therefore, “HB” for MRR and “LB” for SF were selected for obtaining optimum machining performance characteristics Experimental Values MRR (SECTION) 1. Average effect response table for raw data (MRR) LEVELS A B C D 1 0.097 0.136 0.098 0.196 2 0.198 0.042 0.205 0.157 3 0.149 0.271 0.141 0.123 MAX-MIN 0.101 0.229 0.107 0.073 RANK 3 1 2 4          n i MRRyn 1 2 11 log10         n i SRy n 1 21 log10
  • 5. Process Parametric optimization of CNC vertical milling machine using Taguchi Technique in www.iosrjournals.org 38 | Page Average Effect Response Table for MRR 2. Average effect response table for S/N ratios (MRR) LEVELS A B C D 1 -26.82 -20.84 -24.60 -18.90 2 -16.70 -27.24 -9.95 -20.89 3 -20.70 -12.43 -20.90 -24.40 MAX-MIN 10.12 14.81 14.65 5.50 RANK 3 1 2 4 Average Effect Response Table for S/N Ratios (MRR) SR (SECTION) 1. Next table shows the response values of the surface roughness (SR) column. S.NO Response values Average Value (µm) S/N ratio 1 2 3 1 1.13 1.02 0.77 0.97 0.26 2 0.93 0.86 1.53 1.10 -0.82 3 2.12 1.12 1.43 1.55 -3.80 4 2.01 1.1 1.05 1.38 -2.79 5 1.5 2.09 2.06 1.88 -5.48 6 1.01 1.1 0.97 1.02 -0.17 7 1.96 1.42 1.48 1.62 -4.19 8 1.39 0.98 1.91 1.42 -3.04 9 2.22 2.42 1.57 2.07 -6.31 10 1.35 1.24 0.94 1.17 -1.36 11 0.92 0.82 1.01 0.91 0.81 12 0.94 0.98 2.01 1.31 -2.34 13 1.3 1.69 1.57 1.52 -3.63 14 1.14 1.58 1.35 1.35 -2.60 15 1.43 2.7 1.25 1.79 -5.05 16 3.05 1.44 1.53 2.00 -6.02 17 1.87 2.81 2.31 2.33 -7.34 18 1.98 2.69 3.09 2.58 -8.23 Response Values for SR 1. Average effect response table for raw data (SR) LEVELS A B C D 1 1.16 1.44 1.24 1.40 2 1.49 1.49 1.66 1.50 3 2.00 1.72 1.41 1.75 MAX-MIN 0.84 0.28 0.42 0.35 RANK 1 4 2 3 Average Effect Response Table for SR 2. Average effect response table for S/N ratios (SR) LEVELS A B C D 1 -1.20 -2.95 -3.40 -2.62 2 -3.28 -3.07 -4.11 -3.34 3 -5.58 -4.31 -2.28 -4.23 MAX-MIN 4.38 1.36 1.83 1.61 RANK 1 4 2 3 Average Effect Response Table for S/N Ratios (SR) 4.2. Plotting methods The plotting of experimental results should be done in as many ways as are meaningful: 1. By levels of influential factors 2. By levels of combinations of influential factors to assess interaction possibilities 3. By order of actual test
  • 6. Process Parametric optimization of CNC vertical milling machine using Taguchi Technique in www.iosrjournals.org 39 | Page The column effects, and later ANOVA, indicate what to plot. To plot the effect of influential factors, the average result for each level must be calculated first. The sum of the data associated with each level in the OA column divided by the number of tests (data points) for that level will provide the appropriate averages. This applies to factors two or more levels. Plot may be made with equal increments between levels on the horizontal axes of the graphs to show the relative strengths of the factors. The factors strength is directly proportional to the slope of the graph. An actual scale may also be used for the horizontal axes of continuous factors to graphically interpolate or extrapolate for prediction of other levels. With the actual scale, however the relative comparison of slopes is not meaningful. The analysis was made using the popular software specifically used for design of experiment applications known as MINITAB 14. Before any attempt is made to use this simple model as a predictor for the measures of performance, the possible of interactions between the factors must be considered. Thus factorial design incorporates a simple means of testing for the presence of the interaction effects. MeanofSR 0.80.70.6 2.0 1.8 1.6 1.4 1.2 1000900800 120110100 2.0 1.8 1.6 1.4 1.2 12108 DEPTH OF CUT CUTTING SPEED FEED RATE TOOL DIAMETER Main Effects Plot (data means) for SR Main Effects Plot For SR DEPTH OF CUT Mean 0.80.70.6 2.2 2.0 1.8 1.6 1.4 1.2 1.0 FEED 120 RATE 100 110 Interaction Plot (data means) for SR Interaction Plot For SR
  • 7. Process Parametric optimization of CNC vertical milling machine using Taguchi Technique in www.iosrjournals.org 40 | Page DEPTH OF CUT (A) Mean 0.80.70.6 2.2 2.0 1.8 1.6 1.4 1.2 1.0 TOOL 12 DIAMETER 8 10 Interaction Plot (data means) for SR Interaction Plot For SR MeanofMRR 0.80.70.6 0.25 0.20 0.15 0.10 0.05 1000900800 120110100 0.25 0.20 0.15 0.10 0.05 12108 DEPTH OF CUT CUTTING SPEED FEED RATE TOOL DIAMETER Main Effects Plot (data means) for MRR Main Effect Plot For MRR DEPTH OF CUT Mean 0.80.70.6 0.35 0.30 0.25 0.20 0.15 0.10 0.05 0.00 CUTTING 1000 SPEED 800 900 Interaction Plot (data means) for MRR
  • 8. Process Parametric optimization of CNC vertical milling machine using Taguchi Technique in www.iosrjournals.org 41 | Page DEPTH OF CUT Mean 0.80.70.6 0.30 0.25 0.20 0.15 0.10 0.05 0.00 FEED 120 RATE 100 110 Interaction Plot (data means) for MRR Interaction Plot for MRR DEPTH OF CUT Mean 0.80.70.6 0.30 0.25 0.20 0.15 0.10 0.05 0.00 TOOL 12 DIAMETER 8 10 Interaction Plot (data means) for MRR Interaction Plot for MRR IV. Conclusion This experimental study described the development of process in terms of MRR and Surface finish, using Taguchi‟s L18 orthogonal array. It was fond that the S/N ratio with Taguchi‟s parameter design is a simple, systematic, reliable and more efficient tool for optimizing multiple performance characteristics of CNC milling process parameters. Factors like depth of cut, feed rate, cutting speed, tool diameter and there interactions have been found to play a significant role in rough cutting operations for maximization of MRR and surface finish. Interestingly, the optimal levels of the selected control factors for both objectives differ widely. In order to optimize for both objectives, mathematical models are developed using the non-linear regression method. Analysis of variance (ANOVA) is also employed to identify the level of importance of the machining parameters on the multiple performance characteristics namely material removal rate and surface roughness. Assumptions of ANOVA are tested using residual analysis. After careful testing, none of the assumptions was violated. ANOVA results showed that CUTTING SPEED AND FEED RATE are the powerful control parameters for the material removal rate and DEPTH OF CUT AND FEED RATE calculated as powerful factors for controlling the surface finish of Mild Steel. In case of MRR analysis, percent contribution for residual error is 4.166% is very small (less than 15%), it is proved that no important factors were omitted during the experiment and there is no opportunity for the further improvement while surface roughness analysis result interprets that percent contribution of residual error is -5% is small (less than 50%), it is acceptable that no important factors were omitted during the experiment but there may be very small opportunity for the further improvement. REFERENCES- [1] Mr. Phillip J. Ross, Taguchi Technique for Quality Engineering (2005) 23-73, 91-256. [2] Julie Z. Zhang, Joseph C. Chen, E. Daniel Kirby, Surface roughness optimization in an end-milling operation using the Taguchi design Method., Journal of Materials Processing Technology (2006) 233-238 [3] Dae kyun Baek, Tae jo ko, Hee Sool Kim, Optimization of feedrate in face milling operation using a surface roughness model, International Journal of machine Tools & Mnufacturer (2001) 452-458 [4] Vijayan N. Nair, Bovas Abraham, Jock MacKay, John A. Nelder, George Box, Madhav S. Phadke, Raghu N. Kacker, Jerome Sacks, William J. Welch, Thomas J. Lorenzen, Anne C. Shoemaker, Kwok L. Tsui, James M. Lucas, Shin Taguchi, Raymond H. Myers, G. Geoffrey Vining, C. F. Jeff Wu, Tauchi‟s Parameter Design; A Panel Discussion, Technometric (1992) 133-146
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