Experimental Investigation and Optimization of Process Parameters on the Deep Drawing of AISI202 Stainless Steel

DOI : 10.17577/IJERTV2IS4016

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Experimental Investigation and Optimization of Process Parameters on the Deep Drawing of AISI202 Stainless Steel

J. Pradeep kumar1, M. Bilal Tanveer2, Sagar.A. Makwana2, R. Sivakumar2

  1. Assistant professor,Dept of Production Engineering, PSG College of Technology,Coimbatore-4

  2. Department of Production Engineering, PSG College of Technology, Coimbatore – 4

Abstract

Deep drawing is one of the most important processes for forming sheet metal parts. It is widely used for mass production of cup shapes in automobile, aerospace and packaging industries. Cup drawing, besides its importance as forming process, also serves as a basic test for the sheet metal formability. The effect of equipment and tooling parameters results in complex deformation mechanism. Existence of thickness variation in the formed part may cause stress concentration and may lead to acceleration of damage. Using TAGUCHIs signal-to-noise ratio, it is determined that the punch nose radius has major influence followed by blank holder pressure and punch pressure on the thickness distribution of the deep drawn cup of Stainless Steel AISI 202 sheet. The optimum levels of the above three factors, for the most even wall thickness distribution, are found to be punch nose radius of 2 mm, punch pressure of 60bar and blank holder force of 110bar.

  1. Introduction

    Sheet metal forming is a significant manufacturing process for producing large variety of automotive parts and aerospace parts as well as consumer products. Deformation of sheet materials in the stamping process is classified by the four deformation modes, i.e. deep drawing, stretching, stretch flanging and bending. Deep drawing is one of the widely used sheet metalworking processes in the industries, to produce cup shaped components at a very high rate. Cup drawing, besides its importance as forming process, also serves as a basic test for the sheet metal formability. During the course of deep drawing, the following five processes take place. They are: 1) pure radial drawing between the die and blank holder, 2) bending and sliding over the die profile, 3) stretching between the die and the punch, 4) bending and sliding over the punch profile radius, and 5) stretching and sliding over the punch face. Thus, the deep drawing process involves complex

    deformation mechanisms. The parameters that affect the success or failure of a deep drawing operation are the punch and die radii, the punch and die clearance, the press speed, the lubrication and the type and the extent of restraint to metal flow material in deep-drawn shapes. Among these, the punch force [1, 12], punch nose radius [1, 2, 6, and

    7] and the blank holder force [2, 3, 5, and 11] are considered to be the significant parameters in deep- drawing processes. There are two classifications of drawing, deep drawing and shallow drawing. With deep-drawing, the drawn cup is deeper than one- half its diameter, whereas in shallow drawing it is less than one-half its diameter. Thinning of the walls tends to be more of a problem with deep- drawing as opposed to shallow drawing [5, 14, 22]. Wrinkling occurs at the edges. In the field of deep- drawing much experimental and research work has been published. The results were claimed to be sufficiently accurate to provide a basis of reference for theoretical treatments of cup-drawing [1, 2, 7], as well as an empirical basis of comparison between different drawing conditions. Thickness is one of the major quality characteristics in sheet metal formed part. The thickness is unevenly distributed in the part after deep drawing [7, 17, 21]. Generally, the thickness is uniform at the bottom face of the punch, minimum at the punch nose radius and vertical surface, and thicker at the flange area. Existence of thickness variation from the production stage may cause stress concentration in the part, leading to the acceleration of damage. The selection of appropriate process parameters and their combination results in high quality parts. In this work, a statistical approach based on TAGUCHIs signal-to-noise ratio [2, 18] was adopted to determine the degree of importance of the parameters such as die shoulder radius, punch nose radius and the blank holder force on the thickness distribution of the deep drawn cup of stainless steel sheet AISI202 and to determine the optimum combination of these three factors for the most even wall thickness distribution.

  2. Materials and equipment details

    The material used in the present work was the commercially available stainless steel AISI202.The main composition of this particular grade of SS is 18% Chromium and 8% Nickel. The chromium and nickel gives it the corrosion resistance that such components generally require. The thickness of the sheet was 0.80 mm. The results of tensile test performed on blank material are provided in table 1.

    Table.1 Uniaxial tensile test data

    Proof Stress

    Tensile Strength

    Elongation

    310MPa

    655MPa

    40%

    Table.2 Equipment details

    Type of Press

    Closed frame

    Application

    Deep Drawing Press

    Capacity

    125 T

    Stroke

    800 mm

    Daylight

    700 mm

    Table Size

    750 X 750 mm

    Power

    20 HP X 3 PH X 1440 RPM

  3. Parameters and levels

    1. Selection of Parameters

      In sheet metal forming, a thin blank sheet is subjected to plastic deformation using forming tools to conform to a designed shape. During this process, the blank sheet is likely to develop defects if the process parameters are not selected properly. Therefore, it is important to optimize the process parameters to avoid defects in the parts and to minimize production cost. Optimization of the process parameters such as die radius, blank holder force, punch nose radius, etc., can be accomplished based on their degree of importance on the sheet metal forming characteristics. There are various defects associated with a deep drawing process like thinning of walls, cracking [4, 19, 20] etc. The process parameters should be properly combined so that we get an optimum process by which we get minimum defects. Optimization of process parameters in sheet metal forming is an important task to reduce manufacturing cost. To determine the optimum values of the process parameters, it is essential to find their influence on the deformation behaviour of the sheet metal. Further analysis on the defects allows for selecting the most important contributing factors.

      Out of all these defects that normally occur during sheet metal forming, there are a few defects that are specifically faced during deep drawing of various

      components which in our case is a cylindrical component. The problems that are particularly based on tooling effects are discussed and optimised during our work. Defects that are common to see during deep drawing of cylindrical components are tearing, wrinkling, compression marks and uneven distribution of material. All these defects can then lead to smaller but prominent problems of thickness variation in parts. Thickness is one of the major quality characteristics in sheet metal formed part. The thickness is unevenly distributed in the part after deep drawing [9, 12]. Generally, the thickness is uniform at the bottom face of the punch minimum at the punch nose radius and vertical surface, and thicker at the flange area. Existence of thickness variation from the production stage may cause stress concentration in the part, leading to the acceleration of damage [16, 20]. Thus this problem is effectively reduced by performing an optimisation process on the parameters that can most affect the variation in thickness. The selection of appropriate process parameters and their combination results in high quality parts. Based on the cause and effect diagram shown below, we recognise the signal factors that can be optimised and work on them. Further analysis is done on the changes that occur in deep drawing by three particular parameters namely [2, 6, 15]:

      • Punch Nose Radius (PNR).

      • Punch Pressure (PP).

      • Blank Holder Pressure (BHP).

        Fig.1 Cause and effect diagram.

    2. Trials to determine levels using design of experiments

      The effect of many different parameters on the performance characteristic in a condensed set of experiments can be examined by using the orthogonal array experimental design proposed by Taguchi. Once the parameters affecting a process

      that can be controlled have been determined, the levels at which these parameters should be varied must be determined. Determining what levels of a variable to test requires an in-depth understanding of the process, including the minimum, maximum, and current value of the parameter [8, 10, 13]. If the difference between the minimum and maximum value of a parameter is large, the values being tested can be further apart or more values can be tested. If the range of a parameter is small, then less value can be tested or the values tested can be closer together. Typically, the number of levels for all parameters in the experimental design is chosen to be the same to aid in the selection of the proper orthogonal array. Knowing the number of parameters and the number of levels, the proper orthogonal array can be selected. Using the array selector table shown below, the name of the appropriate array can be found by looking at the column and row corresponding to the number of parameters and number of levels. Once the name has been determined (the subscript represents the number of experiments that must be completed), the predefined array can be looked up. Links are provided to many of the predefined arrays given in the array selector table. These arrays were created using an algorithm Taguchi developed, and allows for each variable and setting to be tested equally.

      Table.3 Experimental details

      Exp. No

      PNR (mm)

      PP

      (bar)

      BHP

      (bar)

      1

      2

      50

      110

      2

      2

      50

      120

      3

      2

      50

      130

      4

      2

      55

      110

      5

      2

      55

      120

      6

      2

      55

      130

      7

      2

      60

      110

      8

      2

      60

      120

      9

      2

      60

      130

      10

      5

      50

      110

      11

      5

      50

      120

      12

      5

      50

      130

      13

      5

      55

      110

      14

      5

      55

      120

      15

      5

      55

      130

      16

      5

      60

      110

      17

      5

      60

      120

      18

      5

      60

      130

      19

      8

      50

      110

      20

      8

      50

      120

      21

      8

      50

      130

      22

      8

      55

      110

      23

      8

      55

      120

      24

      8

      55

      130

      25

      8

      60

      110

      26

      8

      60

      120

      27

      8

      60

      130

    3. Experimental details

      The deep drawing was conducted using a deep drawing hydraulic press with a maximum load capacity of 125tonnes. The lubricant used was soap water. The experimental setup is shown in Fig 2. The blanks of 259 mm in diameter were cut from the sheet and cups were drawn according to the experimental design. Drawn cups were sectioned at the middle and are shown in Fig 3 The details of the equipment used to conduct experimental trials are shown in table 2.

      Fig.2 Photograph of experimental setup.

      The drawn cups were sectioned at the middle and the thickness was measured at ten points at uniform intervals from the centre of the cup to the edge of the flange, as shown in Fig 4. The measured thickness values are shown in Table 4

      Fig.3 Cups sectioned at middle.

      Fig.4 Points of thickness measurements

    4. Signal to Noise ratio

      One of the quality criteria in sheet metal formed parts is thickness distribution. Failure in deep drawn parts usually occurs by thinning; therefore, it is important to determine the variation of strain in thickness direction during deformation. The objective is to reduce thickness variation in deep drawn part. Therefore, in this study, the response selected from the experiments is the thickness distribution.

      Table.4Measured thickness values of cups (mm).

      Trial

      1

      2

      3

      4

      5

      6

      7

      8

      9

      10

      1

      0.39

      0.4

      0.39

      0.39

      0.37

      0.4

      0.38

      0.39

      0.46

      0.47

      2

      0.39

      0.4

      0.39

      0.39

      0.36

      0.38

      0.38

      0.39

      0.45

      0.48

      3

      0.39

      0.39

      0.39

      0.38

      0.36

      0.4

      0.4

      0.4

      0.46

      0.47

      4

      0.39

      0.38

      0.38

      0.37

      0.36

      0.4

      0.41

      0.41

      0.45

      0.46

      5

      0.38

      0.38

      0.38

      0.37

      0.35

      0.38

      0.4

      0.41

      0.45

      0.46

      6

      0.37

      0.38

      0.37

      0.37

      0.35

      0.38

      0.41

      0.4

      0.45

      0.47

      7

      0.38

      0.38

      0.38

      0.38

      0.36

      0.4

      0.4

      0.41

      0.44

      0.46

      8

      0.38

      0.38

      0.38

      0.38

      0.36

      0.41

      0.4

      0.4

      0.45

      0.46

      9

      0.38

      0.38

      0.37

      0.37

      0.36

      0.4

      0.41

      0.41

      0.46

      0.46

      10

      0.37

      0.38

      0.39

      0.38

      0.35

      0.43

      0.41

      0.42

      0.46

      0.46

      11

      0.38

      0.38

      0.38

      0.39

      0.35

      0.42

      0.42

      0.41

      0.45

      0.46

      12

      0.39

      0.39

      0.38

      0.39

      0.36

      0.38

      0.41

      0.43

      0.46

      0.47

      13

      0.38

      0.38

      0.38

      0.39

      0.35

      0.39

      0.4

      0.39

      0.44

      0.46

      14

      0.38

      0.39

      0.39

      0.39

      0.37

      0.41

      0.4

      0.39

      0.47

      0.48

      15

      0.38

      0.38

      0.37

      0.39

      0.34

      0.41

      0.42

      0.42

      0.45

      0.46

      16

      0.39

      0.39

      0.39

      0.38

      0.37

      0.42

      0.42

      0.41

      0.46

      0.47

      17

      0.37

      0.37

      0.38

      0.37

      0.36

      0.41

      0.41

      0.42

      0.45

      0.46

      18

      0.38

      0.38

      0.38

      0.38

      0.36

      0.4

      0.4

      0.4

      0.46

      0.48

      19

      0.39

      0.38

      0.37

      0.37

      0.36

      0.4

      0.4

      0.4

      0.46

      0.47

      20

      0.38

      0.38

      0.38

      0.37

      0.35

      0.4

      0.41

      0.41

      0.46

      0.47

      21

      0.37

      0.37

      0.37

      0.37

      0.36

      0.41

      0.4

      0.41

      0.46

      0.47

      22

      0.37

      0.37

      0.36

      0.37

      0.35

      0.37

      0.38

      0.39

      0.44

      0.46

      23

      0.38

      0.38

      0.37

      0.38

      0.35

      0.39

      0.4

      0.41

      0.46

      0.47

      24

      0.37

      0.37

      0.38

      0.37

      0.36

      0.39

      0.42

      0.4

      0.46

      0.47

      25

      0.39

      0.38

      0.38

      0.38

      0.35

      0.41

      0.41

      0.41

      0.46

      0.47

      26

      0.37

      0.39

      0.39

      0.38

      0.35

      0.42

      0.41

      0.4

      0.45

      0.46

      27

      0.38

      0.37

      0.37

      0.38

      0.35

      0.41

      0.42

      0.41

      0.45

      0.46

      The response of a system, and, as a result, its quality characteristics, are influenced by three types of factors: 1) signal factors that are set by the operator of the system in later stages of the product life; 2) control factors that are set by the designer of the system; and 3) noise factors that

      cannot be directly controlled by neither the designer nor the operator. Control factors are those design parameters that can be freely specified by the designer. TAGUCHI divided these control factors into two subsets, with one subset consisting of those factors influencing both the response mean and the response variance, and second subset consisting of those factors influencing only the response mean[9]. Noise factors are usually classified by TAGUCHI into three classes: 1) external noise factors that typically describe the environmental conditions, such as temperature, dust and humidity; 2) unit-to-unit variation that typically addresses the inevitable variations in a manufacturing process; and 3) deterioration that typically refers to the deterioration in functional characteristics of sold products as time passes. TAGUCHIs main idea was to control the noise factors indirectly by examining how they are affected by different settings of the control factors. He suggested analyzing the joint effects of control and noise factors, and for this purpose, proposed a performance criterion called signal-to-noise ratio (S/N).Defects such as wrinkles and excessive localized thinning alter the product geometry from the designed one, causing difficulties in joining and assembly of sheet products, and limiting the product serviceability. Therefore, thickness of the deep drawn cup section should be as uniform as possible, i.e. the nominal values are preferred throughout the section. If the nominal value for a characteristic is the best, then the designer should maximize the S/N ratio, accordingly the S/N ratio chosen is given in equation 1.

      —— (1)

      where = S/N ratio, yi= value of the quality characteristic at ith setting, n = Total number of trials at the ith setting, = Mean and = standard deviation. The calculated S/N ratios for experiments are shown in Table 5 and the mean

      responses are shown in Table 6. Although the physical meaning of S/N ratio is not as straight forward as simple level average response analysis by values, it is more objective towards the target because the S/N ratio reflects both the average (mean) and the scatter (variance) [23]. For optimum values of the selected parameters, the

      level that gives the highest S/N ratio was chosen [24].

      Table.5 S/N ratio for experiments.

      23

      Trial. No

      S/N Ratio

      Trial.N o

      S/N Ratio

      1

      21.653

      14

      20.727

      2

      20.927

      15

      20.707

      3

      21.401

      16

      21.798

      4

      21.742

      17

      21.015

      5

      21.067

      18

      20.434

      6

      20.252

      19

      20.649

      7

      22.273

      20

      20.370

      8

      21.852

      21

      20.135

      9

      20.939

      22

      20.690

      10

      20.671

      20.327

      11

      21.401

      24

      20.198

      12

      20.979

      25

      20.722

      13

      21.935

      26

      21.390

      27

      20.865

  4. Regression Analysis

    Regression analysis is the statistical technique that identifies the relationship between two or more quantitative variables: a dependent variable, whose value is to be predicted, and an independent or explanatory variable (or variables), about which knowledge is available. The technique is used to find the equation that represents the relationship between the variables. A simple regression analysis can show that the relation between an independent variable X and a dependent variable Y is linear, using the simple linear regression equation Y= a + bX (where a and b are constants). Multiple regressions will provide an equation that predicts one variable from two or more independent variables [2, 9],

    Y=a+bX1+cX2+dX3+.

    Regression analysis is used to understand the statistical dependence of one variable on other variables. The technique can show what proportion of variance between variables is due to the dependent variable, and what proportion is due to the independent variables. The relation between the variables can be illustrated graphically, or more usually using an equation. This statistical technique is most commonly used in program evaluation to estimate effects. The net effects of the program under evaluation can be assessed using regression analysis, by attributing part of the changes observed to explanatory variables, while the remaining effects are attributed to the program. For this reason, regression analysis is useful in ex-post evaluation, to determine the net impact of the program.

    The regression equation for the standard deviation values of the experiment was derived using MINITAB. The equation was:

    STDE1 = 0.0244148 + 0.000492444 PR – 0.00014514 PF + 0.000140698 BHF

    R2 value obtained for this model was .834 which shows that predicted model is valid. This equation is then used to predict the standard deviation values and they are compared with the actual values.

  5. Results and Discussions

The response table for signal to noise ratio and standard deviations as shown in table 7 and 8 indicates the order of importance of the three parameters and they are in the order of Punch Nose Radius, Blank Holding Force and then the Punch Force.

Table.7 Response table for Signal to Noise ratio.

Level

PR

PF

BHF

1

21.35

20.91

21.35

2

21.07

20.85

21.01

3

20.59

21.25

20.66

Delta

0.75

0.40

0.69

Rank

1

3

2

Table.8 Response Table for Standard Deviations.

Level

PR

PF

BHF

1

0.03433

0.03631

0.03438

2

0.03572

0.03616

0.03577

3

0.03728

0.03486

0.03719

Delta

0.00295

0.00145

0.00281

Rank

1

3

2

    1. Effect of punch nose radius

      Effect of Punch nose radius on the S/N ratio and standard deviation of the thickness is shown in fig. 5 and 6.

      Fig.5 Effect of Punch nose radius on the S/N ratios.

      Fig.6 Effect of Punch nose radius on the Standard deviation of thickness

      This graph shows that the S/N ratio decrease and the standard deviation increase with increase in the punch nose radius thus suggesting a lower punch nose radius for lesser thickness variation and also better results from the drawing operation.

    2. Effect of punch force

      Effect of Punch force on the S/N ratio and standard deviation of thickness is shown in fig. 7 and 8.

      Fig.7 Effect of Punch force on the S/N ratios

      Fig.8 Effect of Punch force on the Standard deviation of thickness.

      The S/N ratio graph shows that the S/N ratio first decreases and then increases suggesting that the point for higher S/N ratio gives the best results. Also the standard deviation decreases with the increase in punch force. Both these graphs indicate that a higher punch force is required to produce optimum results during drawing.

    3. Effect of blank holder force

      Effect of Blank holder force on the S/N ratios and standard deviation of thickness is shown in fig 9 and 10.

      Fig.9 Effect of Blank holder force on the S/N ratios Effect of Blank holder force on the Standard

      deviation of thickness is given below:

      Fig.10 Effect of Blank holder force on the Standard deviation of thickness

      The plots for Blank holding force versus S/N ratios and standard deviation show almost a linear relationship for both the variables. This indicates that for a higher S/N ratio and a lower standard deviation plot, a lower blank holding force gives the optimum results. Thus a lower blank holding force ensures uniform thickness by not applying excessive pressure on the flange. The measured and predicted values based on the regression equation for the standard deviation are shown below along with the error percentage.

      Table.9 Comparison of standard deviation values.

      Trial No.

      PR

      PF

      BHF

      Actual Std. Dev.

      Predicted Std. Dev.

      Error (%)

      1

      2

      50

      110

      0.03339

      0.03368

      -0.84

      2

      2

      50

      120

      0.03604

      0.03472

      3.6525

      3

      2

      50

      130

      0.03438

      0.03541

      -3.012

      4

      2

      55

      110

      0.03281

      0.03200

      2.4601

      5

      2

      55

      120

      0.03502

      0.03634

      -3.766

      6

      2

      55

      130

      0.03836

      0.03785

      1.3338

      7

      2

      60

      110

      0.03071

      0.03124

      -1.715

      8

      2

      60

      120

      0.03231

      0.03231

      0.0081

      9

      2

      60

      130

      0.03590

      0.03537

      1.4596

      10

      5

      50

      110

      0.03749

      0.03559

      5.0632

      11

      5

      50

      120

      0.03438

      0.03611

      -5.031

      12

      5

      50

      130

      0.03627

      0.03643

      -0.464

      13

      5

      55

      110

      0.03169

      0.0246

      -2.449

      14

      5

      55

      120

      0.03743

      0.03628

      3.0648

      15

      5

      55

      130

      0.03705

      0.03742

      -1.001

      16

      5

      60

      110

      0.03333

      0.03445

      -3.366

      17

      5

      60

      120

      0.03559

      0.03500

      1.637

      18

      5

      60

      130

      0.03823

      0.03769

      1.4104

      19

      8

      50

      110

      0.03711

      0.03873

      -4.358

      20

      8

      50

      120

      0.03842

      0.03801

      1.0759

      21

      8

      50

      130

      0.03928

      0.03808

      3.0653

      22

      8

      55

      110

      0.03565

      0.03568

      -0.087

      23

      8

      55

      120

      0.03842

      0.03825

      0.447

      24

      8

      55

      130

      0.03900

      0.03914

      -0.361

      25

      8

      60

      110

      0.03717

      0.03552

      4.4343

      26

      8

      60

      120

      0.03425

      0.03483

      -1.709

      27

      8

      60

      130

      0.03620

      0.03727

      -2.937

      The table above shows that there is minimal error between the actual and predicted values for the standard deviation values suggesting that the regression model that was developed was satisfactory. The plot indicating the comparison of the actual and predicted values of standard deviation for the various experiments is shown in fig.11

      Fig.11 Comparison of standard deviations

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