- Open Access
- Total Downloads : 212
- Authors : Navneet Saini, Vivek Kumar Sharma, Mohd. Muqeem
- Paper ID : IJERTV6IS060467
- Volume & Issue : Volume 06, Issue 06 (June 2017)
- DOI : http://dx.doi.org/10.17577/IJERTV6IS060467
- Published (First Online): 27-06-2017
- ISSN (Online) : 2278-0181
- Publisher Name : IJERT
- License: This work is licensed under a Creative Commons Attribution 4.0 International License
Single Objective Optimization of Process Parameters considering Insert Nose Radius in CNC Turning of Aluminium 7075 Alloy for MRR and Surface Roughness
Navneet Saini1
PG student Industrial and Production Engineering, Modern Institute of Engineering and Technology, Mohri, Ambala, India
Mohd Muqeem3 Assistant Professor,
Department of Mechanical Engineering, IFTM University Moradabad, India
Jitender Panchal2 Assistant Professor,
Department of Mechanical Engineering, Modern Institute of Engineering and Technology,
Mohri, Ambala, India
Abstract – Machining process involves many process parameters. In order to obtain accurate dimensions, good surface quality, and maximized metal removal it is necessary to optimize the process parameters involved in machining operation. The aim of the present paper is to obtain the optimal parameters of turning process (cutting speed, feed rate, depth of cut and nose radius) which results in minimum surface roughness and maximum material removal rate for machining aluminum 7075 alloy in CNC turning by using coated carbide inserts of different nose radius. Surface roughness was measured using the SJ-201 surface roughness tester and material removal rate was calculated using MRR equation.
In this study, Taguchi method is used to find the optimal cutting parameters for surface roughness in turning. L-16 orthogonal array, signal-to-noise ratio, and ANOVA are employed to study the performance characteristics in the turning operations of aluminum 7075 alloy. A precise knowledge of these optimum parameters would result in reduction of machining costs and improved product quality.
Keywords MRR, Surface roughness, ANOVA, Taguchi
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INTRODUCTION
Manufacturing companies seek for high productivity and low surface roughness to produce a good quality product at minimal cost and within minimum possible time. These outputs are the most critical considerations in the turning process. Thus, the selection of machining parameters, such as cutting speed, feed rate, depth of cut and nose radius is very important because they directly influence the quality and productivity of the product. In addition, selecting machining parameters that can provide good performance for MRR and surface roughness is needs optimization techniques that can provide best results [1,2]].
By reviewing the work done by previous researchers [1- 12], it is found that a considerable amount of work has been done before by previous investigators for parametric optimization of surface properties and MRR in turning operation. Issues
related to tool life, tool wear, cutting forces have been addressed to. But a very little work has been found using inserts with different nose radius as a parameter for optimizing the surface properties. This study demonstrates detailed methodology of the proposed optimization technique which is based on Taguchi method that helps in optimizing the input parameters such as cutting speed, feed, depth of cut and nose radius of inserts through S/N ratio. MRR of a turned product along with surface finish of work piece have been optimized individually.
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Turning operation parameters
In CNC turning process parameters involved in the study are speed (V), Feed rate (F), Depth of cut (D) and Insert Nose Radius (N) which needs to be optimized for maximizing material removal rate and minimizing surface roughness.
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Material Removal Rate
The material removal rate (MRR) in turning operations is the volume of metal that is removed per unit time in mm3/min. For each revolution of the work piece, a ring shaped layer of material is removed.
Material Removal Rate (MRR) equation for Turning:
MRR= D DOC Fm mm3/min Where D= original diameter of work piece in mm
DOC= depth of cut in mm and Fm = feed rate in mm/min
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Surface Roughness
Surface roughness most commonly refers to the average variation in the height of the surface relative to a reference plane [8]. It was measured directly by using surface roughness tester, SJ-201.
Figure1. Surface roughness parameters
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PROBLEM DEFINITION
Turning is an important metal cutting operation which is extensively used in the manufacturing industry. Metal removal rate and surface finish are the important output responses in the turning operation with respect to quantity and quality. Based on the literature review it can be observed that turning parameters like speed, feed rate, depth of cut and nose radius influence the response variables like material removal rate and surface roughness, so they need to be optimized for getting the best results.
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DESIGN OF EXPERIMENTS
Input parameters or control factors and their levels involved in a study helps to decide the design of experiment (DOE) to be chosen according to which the experimentation is further conducted. In the present experiment L16 array is designed by using Taguchi technique and then further experimentation is advanced accordingly. Robustness of the selected design is also ensured to minimize the noise factor. A design is called robust when it has minimum effect of the noise or uncontrollable factors on the response variables. Details of experiment and analysis technique used in the present study is described in the following sections
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SELECTION OF ORTHOGONAL ARRAY- TAGUCHI METHOD
An orthogonal array (OA) was designed by Taguchi technique which was further used to investigate the effect of input parameters (speed, feed, DOC and nose radius) on the response variables with lesser number of experiments. OA was selected which was based on the number of input parameters and their levels involved in the experimentation. The number of input parameters and their levels, helps in designing the orthogonal array which is obtained from the relation (L-1) P + 1, where L is the number of levels and P is the number of input parameters. In the present study, since L
= 4 and P = 4, therefore, minimum number of experiments required to be performed is (4-1) x 4 + 1 = 13. Therefore, in the present
study L16 orthogonal array was selected. Statistical software such as Minitab-17 was used to select standard OA and to perform the data analysis [14-16].
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Selection of control levels
Four levels denoted by L of each control parameters (speed, feed rate, DOC and nose radius) were taken as shown in table below in view of previous research work [1-6]
Table 1: Process parameters and their levels
Parameters
Unit
L-1
L-2
L-3
L-4
Nose radius
mm
0.2
0.4
0.8
1.2
Speed
rpm
600
800
1000
1200
Feed rate
mm/min
40
60
80
100
DOC
mm
0.2
0.4
0.6
0.8
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EXPERIMENTAL SET UP
The setup used for experimentation in the present study consists of computer numerical control M-TAB company machine. In CNC system a dedicated computer is used to perform all the basic functions as per the executive program stored in the computer memory. The system directs commands to servo drives to drive the servo motor & other output devices like relays, solenoids etc. to initiate the oprations such as motor starting & stopping, coolant on & off, tool changing, pallet changing etc. and other miscellaneous functions..Some sensors like proximity switch, limit switch, pressure switch, flow switch and float switch etc. are used as feedback devices to monitor the miscellaneous operations. Thus all operations or CNC machine are monitored continuously with appropriate feedback devices.
Fig. 2: M TAB CNC lathe machine
A surface roughness tester SJ-201 was used to directly measure the Arithmetic mean value of Surface Roughness with 0.8mm testing length
Fig. 3: SJ-201 Surface Roughness tester
A.Material Selection
The experiment was performed with turning of AL 7075-T6 alloy (a high strength aluminium alloy used for aerospace applications).work piece of 40 mm length and 25.4 mm diameter per piece was used. A total of 16 samples were cut to the aforesaid dimension to perform the experiment.,2 additional work piece were used to conduct the confirmation experiment
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Cutting tool Inserts
The cutting tool selected for machining of AL 7075-T6 is coated cemented carbide insert an excellent material for the machining of aluminum and its alloys. Inserts having standard nose radius of 0.2, 0.4, 0.8 and 1.2 were taken to perform the machining and these nose radius were taken as one of the input parameter that influences the output parameter such as MRR and surface roughness.
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Machine Tool
The machining is done on a 2 axis CNC lathe of M TAB Company and the work piece was mounted on a pneumatic chuck and then machining program was entered in the CNC according to the selected input parameters. A simulation check is done for each run to avoid errors in programming and machining. The turning process is carried out according to the experimental chart designed using orthogonal array.
Table 2: Specification of CNC lathe (M TAB) machine
Make
M TAB Chennai
Chuck size
100 mm
Max. turning diameter
32 mm
Max. turning length
120 mm
Spindle speed range
150-3000 rpm
Feed rate
0-100 mm/min
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RESULTS AND DISCUSSIONS
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Single objective optimization for Material Removal rate (MRR) and Surface Roughness
In this technique both the parameters MRR and surface roughness were optimized individually by using Taguchi methodology and main effect plot for SN ratio of both parameters were drawn and a regression equation was established between response variables and controllable parameters ANOVA table for both the objectives was analyzed[8,9].
-
Analysis of S/N ratio for MRR
For MRR larger-the-better criterion was used as the objective was to maximize it and S/N ratio was calculated using Eq. (1).
The S/N ratio for larger-the better characteristic is expressed as:
[ 2= 10 1 1 ] (1)
=1
Table 3: S/N Ratio for MRR (larger the better)
S.NO.
Speed
Feed
DOC
NR
MRR
S/N
Ratio for MRR
1
600
40
0.2
0.2
638.05
56.10
2
600
60
0.4
0.4
1914.14
65.64
3
600
80
0.6
0.8
3828.29
71.66
4
600
100
0.8
1.2
6380.48
76.10
5
800
40
0.4
0.8
1276.10
62.12
6
800
60
0.2
1.2
957.07
59.62
7
800
80
0.8
0.2
5104.38
74.16
8
800
100
0.6
0.4
4785.36
73.60
9
1000
40
0.6
1.2
1914.14
65.64
10
1000
60
0.8
0.8
3828.29
71.66
11
1000
80
0.2
0.4
1276.10
62.12
12
1000
100
0.4
0.2
3190.24
70.08
13
1200
40
0.8
0.4
2552.19
68.14
14
1200
60
0.6
0.2
2871.22
69.16
15
1200
80
0.4
1.2
2552.19
68.14
16
1200
100
0.2
0.8
1595.12
64.06
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S/N Graph for Material Removal rate (MRR)
On analyzing the Taguchi design of experiment for the collected data using Minitab software, S/N graphs for MRR is shown below. Irrespective of the criterion of maximizing or minimizing the response variable, highest value of the mean S/N ratio is always considered in their optimization.
Fig. 4: S/N graph for MRR
Optimum settings from graph is V1-F4-D4-N1, where v is speed in rpm, F is feed rate in mm/min, D is depth of cut in mm and N is nose radius in mm
Table 4: Factor level of prediction from S/N graph
where yi is the mean of the measured values of the response variable of ith experiment and r is the number of experiments at a particular level of control factor in an orthogonal array. The negative sign ensures that the largest value gives an optimum value of the response variable
Speed
Feed
DOC
NR
600
100
0.8
0.2
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ANOVA (Analysis of variance for MRR)
An ANOVA table is commonly used to summarize the tests performed. It is evident that speed, feed, depth of cut and nose radius are significant at 95% confidence level and thus affects mean value [10, 11].
It can be observed that percentage contribution of various control parameters is shown in table below which signifies that DOC has highest contribution for MRR followed by feed rate, speed and nose radius
Table 5: Analysis of Variance (ANOVA) for MRR The S/N ratio for smaller-the-better characteristic is given as:
Source
DF
Adj SS
Adj MS
P-
Value
%
Contribu tion
speed
3
1730195
576732
0.133
4.30
feed
3
12722039
4240680
0.009
31.65
DOC
3
24935174
8311725
0.003
62.03
NR
3
407101
135700
0.500
1.01
Erro
3
407114
135705
Total
15
40201624
1
= 10 [
2] (2)
=1
Response table shows the rank of control parameters means in which order they influence the MRR which is DOC>Feed
>NR> speed
Table 6: Response Table for Signal to Noise Ratios (Larger is better)
Level
Speed
Feed
DOC
NR
1
67.37
63.00
60.47
67.37
2
67.37
66.52
66.49
67.37
3
67.37
69.02
70.01
67.37
4
67.37
70.96
72.51
67.37
Delta
0.00
7.96
12.04
67.37
Rank
4
2
1
3
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Predicted value for MRR
Prediction of MRR at optimum settings can be given by using Minitab software under Taguchi analysis
Table 7: Predicted value of MRR and corresponding S/N Ratio
Predicted S/N ratio
Predicted MRR in mm3/min
76.0971
6220.97
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Experimental value
Experimental value of MRR was measured at optimum control parameters by performing the experiment and then the corresponding S/N ratio was calculated by using equation (1)
Table 8: Experimental value of MRR and corresponding S/N Ratio
Experimental S/N ratio
Experimental MRR in mm3/min
75.64
6054.20
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Comparison of Results
Confirmation test revealed good agreement between predicted and experimental values of the MRR at optimum combination of the input parameters, which means that V1- F4-D4-N1 can be chosen as the optimum set of input parameters for maximizing MRR.
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Analysis of S/N ratio for Surface Roughness
For surface roughness (Ra) smaller-the-better criterion was used as the objective was to minimize it and S/N ratio was calculated using Eq. (2).
where yi is the mean of the measured values of the response variable of ith experiment and r is the number of experiments at a particular level of control factor in an orthogonal array. The negative sign ensures that the largest value gives an optimum value of the response variable.
Table 9: S/N Ratio for Surface Roughness (Smaller the better)
S.NO. |
Speed |
Feed |
DOC |
NR |
Ra |
S/N ratio for Ra |
1 |
600 |
40 |
0.2 |
0.2 |
1.14 |
-1.14 |
2 |
600 |
60 |
0.4 |
0.4 |
1.26 |
-2.01 |
3 |
600 |
80 |
0.6 |
0.8 |
1.33 |
-2.48 |
4 |
600 |
100 |
0.8 |
1.2 |
1.01 |
-0.09 |
5 |
800 |
40 |
0.4 |
0.8 |
1.51 |
-3.58 |
6 |
800 |
60 |
0.2 |
1.2 |
0.49 |
6.20 |
7 |
800 |
80 |
0.8 |
0.2 |
1.46 |
-3.29 |
8 |
800 |
100 |
0.6 |
0.4 |
1.40 |
-2.92 |
9 |
1000 |
40 |
0.6 |
1.2 |
0.50 |
6.02 |
10 |
1000 |
60 |
0.8 |
0.8 |
0.84 |
1.51 |
11 |
1000 |
80 |
0.2 |
0.4 |
1.07 |
-0.59 |
12 |
1000 |
100 |
0.4 |
0.2 |
1.89 |
-5.53 |
13 |
1200 |
40 |
0.8 |
0.4 |
1.03 |
-0.26 |
14 |
1200 |
60 |
0.6 |
0.2 |
1.00 |
0.00 |
15 |
1200 |
80 |
0.4 |
1.2 |
0.65 |
3.74 |
16 |
1200 |
100 |
0.2 |
0.8 |
0.94 |
0.54 |
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S/N Graph for Surface Roughness (Ra)
On analyzing the Taguchi design of experiment for the collected data using Minitab software, S/N graphs for Ra is shown below. Irrespective of the criterion of maximizing or minimizing the response variable, highest value of the mean S/N ratio is always considered in their optimization.
Fig. 5: S/N graph for Surface Roughness
Optimum settings from graph is V4-F2-D1-N4, where v is speed in rpm, F is feed rate in mm/min, D is depth of cut in mm and N is nose radius in mm
Table 10: Factor level for prediction from S/N graph
Speed
Feed
DOC
NR
1200
60
0.2
1.2
J.ANOVA (Analysis of variance for Ra)
An ANOVA table is commonly used to summarize the tests performed. It is evident that speed, feed, depth of cut and nose radius are significant at 95% confidence level and thus affects mean value
It can be observed that percentage contribution of various control parameters is shown in table below which signifies that NR has highest contribution for surface roughness (Ra) followed by DOC, feed rate and speed.
Table 11: Analysis of Variance (ANOVA) for Surface Roughness
Source
DF
Adj SS
Adj MS
P-Value
%
contribution
Speed
3
0.2360
0.07867
0.215
11.01
Feed
3
0.3551
0.11838
0.138
16.57
DOC
3
0.3591
0.11972
0.136
16.76
NR
3
1.1067
0.36892
0.032
51.54
Error
3
0.0861
0.02872
Total
15
2.1432
Response table shows the rank of control parameters means in which order they influence the surface roughness (Ra) which is NR>Feed >DOC> speed
Table 12: Response Table for Signal to Noise Ratios (Smaller is better)
Level
Speed
Feed
DOC
NR
1
-1.4272
0.2616
1.2519
-2.4886
2
-0.8983
1.4258
-1.8436
-1.4436
3
0.3545
-0.6525
0.1553
-1.0012
4
1.0056
-2.0002
-0.5290
3.9680
Delta
2.4328
3.4260
3.0956
6.4566
Rank
4
2
3
1
-
Predicted value for Surface Roughness (Ra)
Prediction of MRR at optimum settings can be given by using Minitab software under Taguchi analysis
Table 13: Predicted value of Ra and corresponding S/N Ratio
Predicted S/N ratio
Predicted Ra in µm
20.91515
0.09
-
Experimental value
Experimental value of MRR was measured at optimum control parameters by performing the experiment and then the corresponding S/N ratio was calculated by using equation (2)
Table 14: Experimental value of MRR and corresponding S/N Ratio
Experimental S/N ratio
Experimental Ra in µm
18.41638
0.12
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COMPARISON OF RESULTS
Confirmation test revealed good agreement between predicted and experimental values of the Ra at optimum combination of the input parameters, which means that V4- F2-D1-N4 can be chosen as the optimum set of input parameters for minimizing surface roughness (Ra).
VI. CONCLUSION
Single-objective Optimization for High Speed Turning of Al 7075 using Taguchi Analysis is discussed in this paper. Based on the analysis following conclusions can be made.
-
Taguchi Analysis is very effective technique for optimization of machining parameters involved
-
It can be concluded from the response table that control parameters affecting the response variables for MRR follow the descending order which is DOC
>Feed >NR >speed and for surface roughness response variables follow the descending order NR>Feed >DOC> speed
-
The recommended set of cutting parameters for high speed turning of Al 7075 for maximum MRR is 600 rpm Speed, 100 mm/min feed rate, 0.8 mm DOC and 0.2 mm NR, and for minimum value of surface roughness it is 1200m/min, 60mm/min, 0.2mm and 1.2mm with coated carbide insert and under dry machining conditions.
-
Confirmation test revealed good agreement between predicted and experimental values of the MRR and surface roughness at optimum combination of the input parameters.
-
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