An Experimental Investigation of Effect of Process Parameters on Surface Roughness of Fused Deposition Modeling Built Parts

DOI : 10.17577/IJERTV3IS042222

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An Experimental Investigation of Effect of Process Parameters on Surface Roughness of Fused Deposition Modeling Built Parts

Tejendrasinh S. Raol1,*, Dr. K. G. Dave2, Dharmesh B. Patel1, Viral N. Talati1 1ME CAD/CAM (Sem-IV) Student, L. D. College of Engineering, Ahmedabad 2Associate Professor, L. D. College of Engineering, Ahmedabad

Abstract –Rapid prototyping (RP) refers to a class of technology that can automatically construct the physical models from computer aided design (CAD) data. Fused deposition modelling (FDM) is process for developing rapid prototype objects from plastic material by lying track of semi molten plastic filament on to a platform in a layer wise manner from bottom to top. The aim of this paper is to investigate the effect of process parameters on surface roughness of fused deposition modelling built parts. Response surface methodology (RSM) was used to conduct the experiments. The parameters selected for controlling the process are layer thickness, part built orientation and raster angle. Surface roughness of fused deposition modelling built parts is measured by surface roughness tester. From the results of the experiments, mathematical model have been developed to study the effect of process parameters on surface roughness.

KeywordRapid Prototyping, Fused Deposition Modeling, Response Surface Methodology.

  1. INTRODUCTION

    Rapid prototyping manufacture part directly from the CAD (computer aided design) model on a layer by layer deposition principle without tools, dies, fixtures and human intervention. The RP process is capable of building parts of any complicated geometry in least possible time without incurring extra cost due to absence of tooling [1]. Another advantage with rapid prototyping is to produce functional assemblies by consolidating sub assemblies into a single unit at the computer aided design stage and thus reduces part counts, handling time and storage requirement and avoids mating and fit problem. Due to compatibility of presently available materials with RP technologies full scale application of RP is not possible. To overcome this limitation, there are generally two approaches for the full scale application of RP process, one is to use of new materials with superior properties and another is to suitably adjust the process parameters for part fabrication for maximum improvement in part properties. Many of researchers have devoted towards the second approach. Less researchers work on polycarbonate material therefore, polycarbonate material has been selected for experimental investigation on FDM. Literature presents that surface roughness is the function of various process related

    parameters and can be significantly improved with proper adjustment. The present study focus on assessment of surface roughness of part fabricated using fused deposition modelling (FDM) technology. As the relation between surface roughness and process parameters is difficult to establish, attempt has been made to derive the empirical model between the processing parameters and surface roughness using response surface methodology. In addition, effect of each process parameter on surface roughness is analysed.

  2. LITERATURE REVIEW

    R. Anitha et al.[2] have assessed of influence of three process parameters with three levels such as layer thickness in mm (0.1778, 0.254, 0.3556), road width in mm (0.537, 0.622, 0.706) and deposition speed in mm (100, 150, 200) on FDM built parts with the use of Taguchi method. The objective of the study to analyses the effect of process variables on the surface roughness of the parts produced by the FDM process. The result shows that without pooling the layer thickness is effective to 49.37% at 95% level of significance. But with pooling, layer thickness is effective to 51.57% at 99% level of significance. While the other factors, road width and speed, contribute to 15.57% and 15.83% at 99% level of significance respectively. It has been revealed though correlation analysis that inverse relation exist between layer thickness and surface roughness. According to S/N analysis, the layer thickness is most effective when it is at 0.3556mm, the road width at 0.537mm and the speed of deposition at 200mm.

    R. I. Campbell et al.[3] have identified that for several RP processes, the surface roughness varies across a full range of surface angles. It has been compared the surface profiles of test samples made by various RP processes like SLA (SLA-350), Thermo Jet (Actua 2100), FDM (FDM 16500), LOM (LOM 1015) and 3D Printer (Z 402) with roughness prediction model proposed by Reeves and Cobb equation Ra=Lt sin/4tan where, Ra is average roughness, Lt is layer thickness and is the angle between the surface normal and vertical direction. It has been shown that surface roughness can be well predicted in a wide range of angles for majority of systems in SLS, Thermo Jet, FDM

    and LOM. Experimental works revealed that for some systems the stair-stepping effect does not appear to be the main factor in determining surface roughness. Above equation estimates higher values of surface roughness for upward facing surface in parts built on Thermo Jet, most surfaces of FDM and 3D printer built parts. It have been concluded that there are other process parameters apart from layer thickness that influence surface roughness.

    Pulak M. Pandey et al.[4] have presented a semi- empirical model for evaluation of surface roughness of a layered manufactured parts by FDM by considering layer thickness and build orientation as process variables. FDM part is fabricated with 0.254mm layer thickness, 270º model temperature, 265º support structure temperature, 0.511mm road width and zero air gap to carry out surface roughness study. Also, present the surface roughness resulting due to staircase effect in rapid prototyped part is one of the major problem. It has been done that experiments a hybrid FDM system in which material deposition in a layer-by-layer and machining of edges by hot cutter simultaneously. Experiments are concluded that the proposed machining method is able to produce surface finish of the order of 0.3µm with 87% confidence level. This machining process given a key for development of a hybrid rapid prototyping system, which will have features of both layer-by-layer machining and deposition simultaneously, in order to achieve improved surface finish and functionality of RP parts.

    1. Thrimurthulu et al.[5] has worked towards obtaining an optimum part deposition orientation for fused deposition modeling process for enhancing part surface finish and reducing build time. Model has been developed for evaluation of average part surface roughness and build time. Also, assumed a parabolic build edges for FDM build part and uses the concept of minimum surface roughness measured in terms of layer thickness and part built orientation for determining the optimum orientation of part. Both build time and average part surface roughness are two contradicting objectives, which are minimized by minimization of their weighted sum. The effect of support structure is considered in the evaluation of two objectives. Adaptive slicing have been done for determine optimum part deposition orientation.

    2. M. Galantucci et al.[6] investigated the link between the FDM process parameters and the surface aspect of prototypes, studying a chemical method to improve surface finish of the products. Experimental activity has been carried out in two phases one is specimen manufacturing and other is chemical finishing. Full factorial experimental plan has been performed and Process parameters are with two levels are tip size in m (0.254, 0.305), the raster width in mm (0.305, 0.709) and the slice height in mm (0.178, 0.254). It has been carried out the chemical treatment to FDM ABS part by immersing them in a volume of 90% di-methyl-ketone and 10% water for 300s. The results shows that the chemical treatment cuts away material but the subtracted ABS is balanced by the absorption of the solution and the roughness of the

    specimens has been improved considerably by using the chemical process as compared to untreated specimen. This proposed chemical treatment is economic, fast and easy to use.

    Daekeon Ahn et al.[7] represented a new approach to model surface roughness in fused deposition modeling. Theoretical model have been done for prediction of surface roughness involving surface angle, layer thickness and overlap interval between adjacent layers for FDM built parts using filament of elliptical cross-section. FDM test parts fabricated from ABS material to verify the proposed surface roughness expression. By comparison between the measured data and computed values, the validity of the proposed expression was proved. Also, the effects of surface angle, layer thickness, cross-sectional shape of the filament and overlap interval on surface roughness where analyzed and evaluated. Results shows that an elaborate prediction of the surface roughness of the FDM parts can be performed with presented surface roughness expression.

  3. Methodology of Investigation

      1. Response Surface Methodology (RSM)

        Response surface methodology (RSM) is a collection of statistical and mathematical techniques useful for developing, improving and optimizing processes [8]. With this technique, the effect of two or more factors on quality criteria can be investigated and optimum values are obtained. In RSM design there should be at least three levels for each factor. For present study, factors and levels of process parameters are shown in Table 1.

        Table 1 Factor and Levels

        Coded Factors

        Process Parameter

        Level

        (-1)

        0

        (1)

        A

        Layer Thickness (mm)

        0.1778

        0.254

        0.3302

        B

        Part Build Orientation (degree)

        0

        15

        30

        C

        Raster Angle (degree)

        0

        30

        60

        RSM also quantifies relationships among one or more measured responses and the vital input factors. The version

        16 of the MINITAB software was used to develop the experimental plan for RSM.

      2. Central Composite Design (CCD)

        The first requirement for RSM involves the design of experiments to achieve adequate and reliable measurement of the response of interest. To meet this requirement, an

        appropriate experimental design technique has to be employed. The experimental design techniques commonly used for process analysis and modelling are the full factorial, partial factorial and central composite designs. A full factorial design requires at least three levels per variable to estimate the coefficients of the quadratic terms in the response model. A partial factorial design requires fewer experiments than the full factorial design. However, the former is particularly useful if certain variables are already known to show no interaction. An effective alternative to factorial design is central composite design, requires many fewer tests than the full factorial design and has been shown to be sufficient to describe the majority of steady-state process responses [9]. Hence in this study, it was decided to use CCD to design the experiments. Hence, the total number of tests required for the three independent variables is 23 + 2×3 + 6 = 20.

      3. Factors and Levels

        In this present study, three process parameters are taken. Layer thickness, part build orientation and raster angle are the process parameters. As per central composite design experimental plan is shown in Table 2.

        Table 2 CCD Experimental Plan

        Sr. No.

        Layer

        Thickness

        Part Build

        Orientation

        Raster Angle

        1

        0.2540

        15

        0

        2

        0.1778

        30

        60

        3

        0.1778

        15

        30

        4

        0.1778

        0

        60

        5

        0.2540

        15

        30

        6

        0.3302

        0

        0

        7

        0.2540

        30

        30

        8

        0.2540

        15

        30

        9

        0.3302

        0

        60

        10

        0.2540

        15

        30

        11

        0.2540

        15

        30

        12

        0.3302

        30

        0

        13

        0.1778

        30

        0

        14

        0.2540

        0

        30

        15

        0.2540

        15

        60

        16

        0.2540

        15

        30

        17

        0.2540

        15

        30

        18

        0.3302

        15

        30

        19

        0.1778

        0

        0

        20

        0.3302

        30

        60

    1. EXPERIMENTAL WORK

      4.1 Experimental Procedure

      Specimen has been prepared on Fused deposition modeling 360mc machine setup. And surface roughness measured on this specimen with SURFEST SJ-210 as shown in Figure 1. Average of two readings taken as surface roughness reading.

      Figure 1 Test Specimen

      Experimental results of surface roughness are shown in Table 3.

      Table 3 Experimental Results of Surface Roughness

      Sr.

      No.

      Layer Thickness in mm

      Part Build Orientation in Degree

      Raster Angle in Degree

      Surface Roughness in µm

      1

      0.2540

      15

      0

      7.27

      2

      0.1778

      30

      60

      12.176

      3

      0.1778

      15

      30

      7.547

      4

      0.1778

      0

      60

      0.897

      5

      0.2540

      15

      30

      7.85

      6

      0.3302

      0

      0

      3.35

      7

      0.2540

      30

      30

      14.84

      8

      0.2540

      15

      30

      7.9

      9

      0.3302

      0

      60

      3.2

      10

      0.2540

      15

      30

      7.95

      11

      0.2540

      15

      30

      7.93

      12

      0.3302

      30

      0

      9.5

      13

      0.1778

      30

      0

      11.497

      14

      0.2540

      0

      30

      4.234

      15

      0.2540

      15

      60

      9.53

      16

      0.2540

      15

      30

      8.1

      17

      0.2540

      15

      30

      8.0

      18

      0.3302

      15

      30

      7.977

      19

      0.1778

      0

      0

      0.52

      20

      0.3302

      30

      60

      14.7

    2. Results and Discussion

      1. Analysis of Result of Surface Roughness

        Analysis of variance is similar to regression in that it is used to investigate and model the relationship between a response variable and one or more independent variables. Analysis of the experimental data for surface roughness obtained from central composite design runs is done in MINITAB R16 software using full quadratic response surface model used to determine the influence of layer thickness, part build orientation and raster angle on surface roughness [10]. Table-4 shows the estimated regression coefficients for surface roughness.

        Table-4 Estimated Regression Coefficients

        Term

        Coef

        SE Coef

        T

        P

        Constant

        -12.613

        5.6138

        -2.247

        0.048

        A

        115.248

        45.9594

        2.508

        0.031

        B

        0.343

        0.1006

        3.406

        0.007

        C

        -0.013

        0.0503

        -0.252

        0.806

        A*A

        -209.156

        89.5073

        -2.337

        0.042

        B*B

        0.002

        0.0023

        1.079

        0.306

        C*C

        -0.001

        0.0006

        -1.109

        0.293

        A*B

        -0.504

        0.2666

        -1.889

        0.088

        A*C

        0.218

        0.1333

        1.638

        0.132

        B*C

        0.002

        0.0007

        2.319

        0.043

        S=0.861856 R-sq=97.44% R-sq (adj)=95.15%

        In estimated regression coefficients for surface roughness, factor A, B, square term A*A and interaction B*C are important because their p value is less than 0.05. The coefficient of determination (R2) which indicates the goodness of fit for the model here the value of R2 =97.44% which indicate the high significance of the model. From regression analysis, a mathematical model for predicting surface roughness in terms of layer thickness, part build orientation and raster angle is developed and given below: Ra = -12.613 + 115.248A + 0.343B 209.156(A*A) +

        0.002(B*C). Analysis of variance for surface roughness is shown in Table-5.

        Table-5 Analysis of Variance for Surface Roughness

        Source

        DF

        SS

        Adj MS

        F

        p

        Regression

        9

        283.277

        31.4753

        42.37

        0.000

        Linear

        3

        265.854

        5.7180

        7.70

        0.006

        Square

        3

        8.784

        2.9281

        3.94

        0.043

        Interaction

        3

        8.639

        2.8797

        3.88

        0.045

        Residual Error

        10

        7.428

        0.7428

        Lack of Fit

        5

        7.390

        1.4780

        195.77

        0.000

        Pure Error

        5

        0.038

        0.0075

        Total

        19

        290.705

        DF=degree of freedom SS=sum of square MS=mean sum of square

        The analysis of variance table summarizes the linear terms, the squared terms and the interactions. The small p-values for the interactions and the squared terms suggest the there is curvature in the response surface. In Table-5 p value of all the term is less than 0.05 therefore all term are significant.

      2. Response Surface Analysis for Surface Roughness

    Response surface plot is one of the best methods to represent the experimental data. Figure 1 shows surface plot of surface roughness for interaction of raster angle and layer thickness, when part build orientation taken as hold value.

    Surface Plot of Surface Roughness vs Raster Angle, Layer Thickness

    9

    8

    Surface Roughness

    7

    60

    6

    40

    20

    Raster A ngle

    0.20

    0.25

    0.30

    0

    Layer Thick ness

    0.35

    Figure 1 Surface Plot of Surface Roughness Vs Raster Angle, Layer Thickness

    Surface plot in Figure 1 indicates that surface roughness increases with increase in both layer thickness and raster angle.

    Figure 2 shows surface plot of surface roughness for interaction of raster angle and part build orientation, when layer thickness taken as hold value.

    Surface Plot of Surface Roughnes vs Raster Angle, Part Build Orien

    15

    Surface Roughness 10

    5

    60

    0

    20

    Raster A ngle

    Part Build Orientation

    30

    0

    20

    10

    40

    Figure 2 Surface Plot of Surface Roughness Vs Raster Angle, Part Build Orientation

    Surface plot in Figure 2 indicates that surface roughness increases with increase in part build orientation but influence of raster angle on surface roughness is not significant.

    Figure 3 shows surface plot of surface roughness for interaction of part build orientation and layer thickness, when raster angle taken as hold value.

    Surface Plot of Surface Roughnes vs Part Build Orien, Layer Thickness

    Surface Roughness

    15

    10

    5

    30

    0

    20

    10 Part Build Orientation

    0.20

    0.25

    0.30

    0

    Layer Thick ness

    0.35

    Figure 3 Surface Plot of Surface Roughness Vs part build Orientation, layer thickness

    Surface plot in Figure 3 indicates that surface roughness increases with increase in both part build orientation and layer thickness

    1. CONCLUSION

      The effect of process parameters like layer thickness, part build orientation and raster angle on surface roughness has been studied. Experiments were conducted using response surface methodology (central composite design matrix) and mathematical model have been developed. The response plots are analysed to assess influence of each factor and their interaction on surface roughness. Experimental result analysis and surface plots concluded that part build orientation has the most significant effect on surface roughness followed by layer thickness. However raster angle has least significant influence on surface roughness.

    2. REFERENCES

  1. H. J. Bullinger, J. Warschat, D. Fischer, Rapid product development An overview, Computers in Industry 42, 2009, pp. 99-108.

  2. R. Anitha, S. Arunachalam, P. Radhakrishnan, Critical prameters influencing the quality of prototypes in fused deposition modelling, Journal of Materials Processing Technology volume 118, 2001, pp. 385-388.

  3. R. I Campbell, M. Martorelli, H. S. Lee, Surface roughness visualization for rapid prototyping models, Computer-Aided Design volume 34, 2002, pp. 717- 725.

  4. Pulak M. Pandey, N. Venkata Reddy, Sanjay G. Dhane, Improvement of surface finish by staircase machining in fused deposition modeling, Journal of Materials Processing Technology volume 132, 2003, pp. 323-331.

  5. K. Thrimurthulu, Pulak M. Pandey, N. Venkata Reddy, Optimum part deposition orientation in fused deposition modeling, International Journal of Machine Tools & Manufacture volume 44, 2004, pp.585-594.

  6. L.M.Galantucci, F. Lavecchia, G. Percoco, Experimental study aiming to enhance the surface

    finish of fused deposition modeled parts, CIRP Annals – Manufacturing Technology volume 58, 2009, pp. 189-192.

  7. Daekeon Ahn, Jin-Hwe Kweon, Soonman Kwon, Jungil Song, Seokhee Lee, Representation of surface roughness in fused deposition modeling, Journal of Materials Processing Technology volume 209, 2009, pp. 5593-5600.

  8. Douglas C. Montgomery, Design and Analysis of Experiments, John Wiley and Sons, 2001.

  9. Ashvin J. Makadia, J. I. Nanavati, Optimiztion of machining parameters for turning operations based on response surface methodology, Measurement volume 46, 2013, pp. 1521-1529.

  10. Paul Mathews, Design of Experiments with MINITAB, Pearson Education, 2005.

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