A Study to Optimize the Casting Process Parameters of IS1030 Steel using Taguchi Technique

DOI : 10.17577/IJERTV4IS060641

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A Study to Optimize the Casting Process Parameters of IS1030 Steel using Taguchi Technique

Jayalaxmi A M.Tech Student, P

roduction Engineering, Department of Mechanical Engineering,

PDA College of Engineering, Gulbarga-585102, Karnataka (INDIA)

Bharat S Kodli Professor & PG Coordinator,

Production Engineering,

Department of Mechanical Engineering, PDA College of Engineering, Gulbarga-585102

Karnataka, (INDIA)

Abstract: Casting is an age old production technique wherein cavities are formed by a pattern into a porous and refractive material, usually sand, and then liquid metal is poured into the cavity so that it takes up the shape of the cavity, thus forming the required metal product. Green sand casting process involves many process parameters which affect the quality of the casting produced. In the present work Taguchi method is used to optimize tensile strength and hardness of green sand casting of IS1030 steel material. Dye penetrant test and Ultrasonic test were conducted on each sample to study the surface and internal defects respectively. A tensile and hardness tests were done for the resulted castings. Taguchis L9 orthogonal array is used for experimental design. Overall performance of the sand casting method is improved significantly by combining the experimental and analytical concepts and the most important parameter is determined on the result response. The casting samples were prepared using three different casting process parameters, Pouring temperature, Pouring time, and cooling time of the casting samples. Better parameters for highest tensile strength and hardness to the castings are predicted by Taguchi technique and then casting samples are prepared at these parameters. The experimental and analytical results proved that the Taguchi method was successful in predicting the parameters that give the highest properties. From analysis of variance (ANOVA) Pouring temperature is the mostinfluential parameter on the tensile strength and hardness results of castings.

Index terms: Green sand casting, IS1030 steel, Taguchi Technique, Tensile strength, Hardness, NDT methods and Anova.

I.INTRODUCTION

Although there are many new advanced technologies for metal casting, green sand casting remains one of the most widely used casting processes today due to the lowcost of raw materials, a wide variety of castings with respect to size and composition, and the possibility of recycling the molding sand.

The Green sand casting process is one of the most versatile processes in manufacturing because it is used for most metals and alloys with high melting temperatures such as iron, copper, and nickel. The Green sand casting process consists of pouring molten metal into a sand mold, allowing the metal to solidify, and then breaking away the sand mold to remove a casting product. Green Sand casting is used to manufacture complex shapes of various sizes depending upon the customer requirements.

There is no doubt that casting as a process involves so many parameters such as melting temperature of the charge, temperature of the mould, pouring speed, pouring temperature, composition, microstructure, size of casting, runner size, composition of the alloy and solidification time just to mention but a few. Just to mention but a few have successfully carried out studies on the varying effects of casting process parameters on the mechanical properties of casted metals and their alloys. One of the recent most important optimization processes is the Taguchi method conceived and developed by Japanese scholar Engr. Dr. Genichi Taguchi in 1950. Taguchi technique is a powerful tool for the design of high quality systems. It provides a simple efficient and systematic approach to optimize design for performance, quality and cost. [1]

The methodology is valuable when design parameters are qualitative and discrete. Taguchi parameter design can optimize the performance characteristic through the setting of design parameters and reduce the sensitivity of the system performance to source of variation. [3] The Taguchi approach enables a comprehensive understanding of the individual and combined from a minimum number of simulation trials.

  1. EXPERIMENTAL WORK

    2.1 Samples preparation

    TheIS1030 steel is used as a material for samples preparation Table [1] shows the chemical composition of the sample.

    Table[1]chemical composition of IS1030

    Element

    Weight (%)

    C

    0.30

    Mn

    0.75

    P

    0.04

    S

    0.05

    Fe

    Reminder

    An Electric furnace is used to melt the raw material, sample 1, 2 & 3 are poured at 15500C and samples 4, 5 and 6 are poured at 16500C and samples 7, 8, and 9 are poured at 17500C. A round wooden pattern is used for mould preparation and the mould is prepared from sand. The melt temperature was controlled and checked with thermocouple before pouring into a mould . The dimensions of the resulted castings are

    200mm in length and 30mm in diameter. The pouring time and cooling time are followed as per the Table [2], the figure [1.a] shows the mould cavity before pouring, fig[1.b] shows the pouring of molten metal and figure[1.c] shows the mould after pouring and figure [1.d] shows the induction furnace.

    Fig[1.a]Mould cavity before pouring

    Fig[1.b]Pouring of molten metal

    Fig[1.c] Mould after pouring

    Fig[1.d] Induction Furnace

    Table [2] Control factors value for Sample preparation

    Sample No

    Pouring

    temp.(0C)

    Pouring

    time (sec)

    Cooling

    time(min)

    1

    1550

    30

    5

    2

    1550

    40

    10

    3

    1550

    50

    15

    4

    1650

    30

    10

    5

    1650

    40

    15

    6

    1650

    50

    5

    7

    1750

    30

    15

    8

    1750

    40

    5

    9

    1750

    50

    10

  2. METHODOLOGY

      1. Non Destructive Testing of samples

        1. Dye Penetrant Testing (DPT)

          All the nine samples are tested by dye penetrant testing method to detect the surface defects which are arrived during casting samples preparation.

        2. Ultrasonic Testing (UT)

    All the nine samples are tested byultrasonic testing to detect internal defects present in theprepared samples. An Einstein II(R) ultrasonic flaw detector (UFD) is used to observe the echoes from the samples and Transmitter- Receiver (TR) probe is used for scanning the Samples for defects.

      1. Mechanical Testing of samples

        1. Tensile testing

          The fundamental material science testing, in which a sample is subjected to uniaxial tension until failure. The properties that are directly measured via tensile test are maximum elongation, ultimate tensile test and reduction in area. The specimens were prepared as perASTM SA370 Pat-2. The dimension of Specimen is 50 mm gauge length and 10mm diameter or the holding proposes the 25 mm diameter on both end is produced. The UTM is as shown in figure[2].

          Fig[2] UTM

          Samples before testing

          Samples after testing

        2. Hardness testing

          Hardness test provides an accurate, rapid and economical way to determine the material deformation. The Brinell scale characterizes the indentation hardness of materials through the scale of penetration of an indenter, loaded on a material test-piece. Hardness test has been conducted on each specimen using a load of 250 N and a steel ball indenter of diameter 5 mm as indenter. The diameter of the impression made by indenter has been measured by Brinell microscope.[7] The corresponding values of hardness (BHN) were tabulated. The figure [3] shows the Hardness Tester.

          Fig [3] Hardness tester

      2. Application of Taguchi method

    In order to observe the influencing degree of process parameters in the casting preparation, three parameters namely; (1) Pouring temperature; (2) Pouring time; and (3) Cooling time, each at three levels were considered and are listed in Table [3]. Maintaining these processing parameters as constants enabled us to study the effect of Pouring temperature, Pouring time and cooling time on the resulted properties. The degrees of freedom for three parameters in each of three levels were and it is calculated as follows [1] Degree Of Freedom (DOF) = number of levels -1

    For each factor, DOF equal to: For (A); DOF = 3 1 = 2

    For (B); DOF = 3 1 = 2

    For (C); DOF = 3 1 = 2

    In this research nine experiments were conducted at different parameters, and then the specimens were machined and tested by tensile testandBrinel hardness.

    Table [3]Control factors and levels

    Factors

    Control Factor

    Level 1

    Level 2

    Level 3

    A

    Pouring

    temperature (oC)

    1550

    1650

    1750

    B

    Pouring time (Sec)

    30

    40

    50

    C

    Cooling time (min)

    5

    10

    15

    A three level L9 34 orthogonal array Shown in Table [4] with nine experimental runs was selected. The total degree of freedom is calculated from the following

    Total DOF = no. of experiments 1

    The total DOF for the experiment is = 9 1 = 8

    Table [4] L9orthogonal array

    Expt.No

    A

    B

    C

    1

    1

    1

    1

    2

    1

    2

    2

    3

    1

    3

    3

    4

    2

    1

    2

    5

    2

    2

    3

    6

    2

    3

    1

    7

    3

    1

    3

    8

    3

    2

    1

    9

    3

    3

    2

    Taguchi method stresses the importance of studying the response variation using the signal to noise (S/N) ratio, resulting in minimization of quality characteristic variation due to uncontrollable parameter. The tensile strength and hardness were considered the quality characteristic with the concept of "the larger the better". The S/N ratio used for this type response is given by

    S/NLTB= -10log[MSD] . (1)

    .(2)

    Where dB means decibel and Yi is the response value for a trial Condition repeated n times. Table [5] indicates the used parameters and the result values of tensile strength and hardness.

    Table [5] Experimental Observation

    Expt. No

    A

    B

    C

    Tensile strength N/mm2

    Hardness(BHN)

    Trial

    1

    Trial

    2

    Average

    1

    1550

    30

    5

    270

    171

    172

    171.5

    2

    1550

    40

    10

    289

    190

    189

    189.5

    3

    1550

    50

    15

    305

    210

    209

    209.5

    4

    1650

    30

    10

    374

    205

    207

    206

    5

    1650

    40

    15

    412

    120

    121

    120.5

    6

    1650

    50

    5

    330

    156

    155

    155.5

    7

    1750

    30

    15

    470

    237

    237

    237

    8

    1750

    40

    5

    319

    219

    218

    218.5

    9

    1750

    50

    10

    396

    185

    184

    184.5

    Expt.no: Experiment number, A: Pouring temperature (oC) B: Pouring time (Sec) C: Cooling time (min)

    The casting samples preparation parameters, namely pouring temperature (A), pouring time(B), and cooling time(C) were assigned to the 1st , 2nd and 3rd column of L9 34 array, respectively. The 4th column was assigned as error (E), and was considered randomly. The S/N ratios were computed for tensile strength and hardness in each of the nine trial conditions and their values are given in Table [6].

    Table [6]S/N ratio for Tensile strength and Hardness

    Expt. No

    A

    B

    C

    E

    S/N ratio (Tensile

    strength)

    S/N ratio (Hardness

    BHN)

    1

    1

    1

    1

    1

    48.627

    44.685

    2

    1

    2

    2

    2

    49.217

    45.552

    3

    1

    3

    3

    3

    49.685

    46.424

    4

    2

    1

    2

    3

    51.457

    46.278

    5

    2

    2

    3

    1

    52.297

    41.619

    6

    2

    3

    1

    2

    50.370

    43.834

    7

    3

    1

    3

    3

    53.442

    47.497

    8

    3

    2

    1

    1

    50.075

    46.789

    9

    3

    3

    2

    2

    51.953

    45.320

    Expt.no: Experiment number, A: Pouring temperature (oC), B: Pouring time (Sec), C: Cooling time (min) E: Error

    Table [7] Pareto ANOVA for three level factors

    Factors

    <>A

    B

    C

    E

    Total

    Sum at factor level

    A1

    B1

    C1

    E1

    T

    A2

    B2

    C2

    E2

    A3

    B3

    C3

    E3

    Sum of squares of

    difference

    SA

    SB

    SC

    SE

    ST

    Degree of

    freedom

    2

    2

    2

    2

    8

    Contribution ratio (X 100)

    SA

    ST

    SB

    ST

    SC

    ST

    SE

    ST

    100

    T=A1+A2+A3

    SA= (A1-A2)2+ (A1-A3)2+ (A2-A3)2 SB= (B1-B2)2+ (B1-B3)2+ (B2-B3)2 SC= (C1-C2)2+ (C1-C3)2+ (C2-C3)2

    SE= (E1-E2)2+ (E1-E3)2+ (E2-E3)2 ST= SA+ SB+ SC+ SE

  3. RESULTS AND DISCUSSIONS

    1. Dye Penetrant Test observations

      When the nine samples are tested by dye penetrant test for surface defects, sample 1 has got crack samples 2 and 3 are defect less, sample 4 has got porosity, crack and blow holes. Samples 5 and 6have got porosity, sample 7 is defectless , sample 8 has got porosity and sample 9 has got both porosity and cracks as shown in figure, .The possible causes and remedies for these defects are mentioned in Table [8].

      Table [8] Possible causes and remedies for casting defects

      Defect

      Possible causes

      Remedies

      Porosity

      Crack

      while pouring

      Blow holes

      release of gas from core

      • Metal pouring temperature too low

      • Pouring too slowly

      • Increase metal pouring temperature

      • Pour metal as rapidly as possible without interruption.

      • Excessive temperature

      • Sufficient cooling of the casting in the mold.

      • Inadequate core venting

      • Excessive

      • provide venting channels

      • Reduce amounts of gas

    2. Ultrasonic Test observation

      When the samples are scanned ultrasonic flaw detector and TR probe sample 4,5,7 are found with backwall echoes and samples 1,2,3,6,8,9 were found with indication of presence of internal defects in the samples along with the backwall echoes and these defects locations are mentioned in Table [9].

      Sample 1 Defective

      Sample 2 Defectless

      Sample 3 Defectless

      Sample 4 Defectless

      Sample 5 Defective

      Sample 6 Defective

      Sample 7 Defectless

      Sample 8 Defective

      Sample 9 Defective

      Table [9]UT Observations

      Sample No

      UT Observations

      1

      At a depth of 12.5mm a sharp echo is observed it is a defect

      2

      Only four back wall echoes are observed at 10,20,30 &

      at 40mm so no defect is present

      3

      Only four back wall echoes are observed at 10,20,30 & at 40mm so no defect is present

      4

      At a depth of 33.6 mm a sharp echo is observed it is a

      defect

      5

      At a depth of 10.4mm and 30.4mm echoes are observed after the back wall echoes and these are the

      defects

      6

      At a depth of 13.8 mm and 31.2mm echoes are observed after the back wall echoes and these are the

      defects

      7

      Only four back wall echoes are observed at 10,20,30 &

      at 40mm so no defect is present

      8

      More echoes are observed at 12.9 mm these all related

      to defects

      9

      At a depth of 15.5mm and 28.9mm echoes are

      observed and they related defects

    3. Pareto ANOVA observations

      Computation scheme of Pareto ANOVA (ANalysis Of VAriance) for three level factors is shown in table [7]. In order to study the contribution ratio of the process parameters, Pareto ANOVA was performed for tensile strength and hardness. The details are given in tables [10] and [11] respectively.

      Factors

      A

      B

      C

      E

      Total

      Sum at factor level

      147.529

      153.526

      149.072

      150.997

      457.123

      154.124

      151.589

      152.627

      151.540

      155.470

      152.008

      155.424

      154.584

      Sum of squares of

      difference

      108.365

      6.232

      60.809

      22.410

      197.816

      Degree of

      freedom

      2

      2

      2

      2

      8

      Contribution

      ratio

      54.78

      3.15

      30.74

      11.33

      Optimum

      level

      (1)

      (3)

      (2)

      A3

      B1

      C3

      Optimum values

      17500C

      30Sec

      15min

      Table [10] Pareto ANOVA for Tensile strength

      Factors

      A

      B

      C

      E

      Total

      Sum at factor level

      136.886

      139.026

      135.308

      134.642

      410.338

      133.280

      135.509

      137.150

      134.706

      140.172

      135.803

      137.880

      140.990

      Sum of

      squares of difference

      71.251

      22.844

      10.541

      79.790

      184.426

      Degree of

      freedom

      2

      2

      2

      2

      8

      Contribution

      ratio

      38.63

      12.39

      5.72

      43.26

      100

      Optimum

      level

      (1)

      (2)

      (3)

      A3

      B1

      C3

      Optimum values

      17500C

      30Sec

      15min

      Table [11] Pareto ANOVA for Hardness

    4. Effect of Pouring Temperature on Tensile Strength and Hardness

      Graph: 1 Main effect plot for pouring temperature on Tensile strength

      Graph:2 Main effect plot for pouring temperature on Hardness

    5. Effect of Pouring Time on Tensile Strength and Hardness

      Graph: 3 Main effect plot for pouring time on Tensile strength

      Graph:4 Main effect plot for pouring time on Hardness

    6. Effect of Cooling Time on Tensile Strength and Hardness

      Graph: 5 Main effect plot for cooling time on Tensile strength

      Graph: 6 Main effect plot for cooling time on Hardness

    7. Discussion

From table [10], it can be seen that the third level of factor (A) give the highes summation (i.e. A3, which is 17500C Pouring temperature). The highest summation for factor (B) is at the first level (i.e. B1, which is 30 seconds pouring time) and the highest summation for factor (C) is at the third level (i.e. C3, which is 15 minutes cooling time). These predicted parameters are used in the casting sample preparation which indicated in table [2].

In table [11] it can be seen that the highest summation is at A3 (17500C Pouring temperature), B1(30 seconds Pouring time), and C3 (15 minutes Cooling time). The predicted parameter for giving the highest hardness by Taguchi method is already used in our experiments as shown in Table [2] and it gives the highest hardness. This also proves the success of Taguchi method.

In both tables [10] and [11], it was found that the Pouring temperature contributes a larger impact on Tensile strength and Hardness of the casting samples when compared to cooling time and pouring time.

These results have proved the success of Taguchi method in the prediction of the optimum parameters for higher tensile strength.

VI.CONCLUSION

In this work Taguchi's off line quality control method was applied to determine the optimal process parameters which maximize the mechanical properties of IS1030 steel prepared by Sand casting. For this purpose, concepts like orthogonal array, S/N ratio and ANOVA were employed. After determining the optimum process parameters, one confirmation experiment was conducted. From results the following conclusions were drawn.

  • The optimum level of process parameters to obtain good mechanical properties for the sand casting of IS1030 steel are 17500C pouring temperature, 30 seconds Pouring time And 15minutes cooling time for tensile strength and 17500C pouring temperature, 30 second pouring time and 15 minutes cooling time for hardness.

  • From the pareto analysis it was evident that the Pouring temperature is a major contributing factor for improving tensile strength and hardness.

  • Taguchi method has proved its success in predicting the optimum parameters to reach the best properties.

  • From observation it is conclude that the porosity will occur because of steep temperature gradient due to low and high pouring temperature and cracks are formed due to high pouring temperature.

ACKNOWLEDGEMENT

The authors wishes to thank research paper review committee, Department of Mechanical Engineering, HOD and Principal of PDA College of engineering, Gulbarga for their suggestions, encouragement and support in undertaking the present work.

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