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Design of E
D i     f Experiments
               i   t
   using Moldflow.
       g
What is DOE ?

DOE – D i Of E
      Design Experiment
                  i   t
Design of Experiment is a systematic approach for evaluating
the relationship between the input factors & quality criteria
using statistical methods.

                Why to use DOE?

A DOE analysis will provide you with information about the
sensitivity of the input parameters about a given part
design.
Type of DOE Analyzing Methods: -
T     f     A l i M th d

• Taguchi
  Screening Analysis
•F t i l
 Factorial
  Full Factorial Analysis
• Taguchi & Factorial
  Runs Taguchi analysis to determine the primary
factors which will be used for the factorial Analysis
Input Parameters for DOE Analysis: -

    Input Parameters which can be used for Running DOE Analysis in
    I   tP      t     hi h     b     df R      i       A l i i
                               Moldflow: -
•    Mold Temperature
•    Melt Temperature
•    Injection Time
•    Injection Profile Multiplier
•    Thickness Multiplier
•    Packing Time (only for DOE Flow)
•    Packing Profile Multiplier (only for DOE Flow)
Possible reasons to run a DOE Analysis : -
P   ibl          t            A l i

    To optimize the wall thickness of the part.
    To indentify the process parameters to keep the shear rate within the
  recommended limit while maintaining the shrinkage variation in the
      p
  component.
   To determine the molding conditions to keep clamp force within the
  maximum machine limit.
     To determine interrelation between Volumetric Shrinkage & packing
  time.
     To determine how to solve problem of warpage caused due to
  differential Shrinkage
               Shrinkage.
    To optimize cycle time considering part weight.
Taguchi Analysis : -

Taguchi analysis will filter out the main factors from large number of
factors which mostly affects the quality of the product. This is called
as screening analysis. With this method, the parameters are ranked
as per the effect on the final part quality.
When the screening analysis is complete it shows the weighting for
each of the quality criteria : -
• Flow Front Temperature
• Shear Stress
• Injection Pressure
• Overall Quality
Procedure to run the Taguchi Analysis: -
P    d    t      th T     hi A l i

 Steps to Run Taguchi Analysis: -
   Select the Analysis sequence as DOE (Fill)




   Then t th
   Th set the process parameter to mid-range.(Page1)
                            t t     id       (P   1)
Procedure to run the Taguchi Analysis: -
P    d    t      th T     hi A l i

  Setting for page 2
  Select the Experiment type to Taguchi & then
  Set the range to analyze for the respective parameter
  as shown in the figure
                  figure.




  Then Run the analysis.
Screening Analysis Results: -
S     i A l i R        lt



Once the screening analysis is completed,
MPI shows the DOE: weighting as shown
in the figure
for each of the quality criteria (factor).
From these results we need to list out the
Vital
Vi l parameter which affect the quality of
                  hi h ff       h       li f
the product. These vital parameters will be
considered as input while running
Factorial Analysis.
Factorial Analysis : -

 The Vital process p
           p        parameters which are derived
 from the results of screening analysis are used as
 the input, while running the factorial analysis. In our
 case the vital parameters which are affecting part
 quality are : -


   Melt Temperature.
   Global thickness multiplier.
   Mold wall temperature.
Procedure to run the Factorial Analysis: -
P    d    t      th F t i l A l i
Steps to Run Factorial Analysis: -
  Select the Analysis sequence as DOE (Fill)




 Then set the DOE Experiment type to Factorial




     Set the range, to analyze for the respective parameter as
   shown in the figure.

                                                                 11
Procedure to run the Factorial Analysis: -
P    d    t      th F t i l A l i




Rank the quality criteria based on the
results from Taguchi analysis as shown in the figure.
Then run the analysis.
After running the analysis moldflow will run
Various iteration considering various combinations,
To get the optimized parameters as shown in the adjoining figure
                                                          figure.
Factorial A l i R
F t i l Analysis Results: -
                     lt

 Considering the three most effective parameters which are
 figured out from the screening analysis, it launches a set of
 experiments to determine the input factor for the quadratic
 function of the response surface methodology.
Factorial A l i R
F t i l Analysis Results: -
                     lt




   Plot shows the XY Plots for flow front temperature & Injection pressure by
   which locking one of the factor y can see how it affects the q
               g                   you                            quality.
                                                                        y
Factorial A l i R
F t i l Analysis Results: -
                     lt

While reviewing the factorial results plots we need to see
at the response curves.
  Shallow or flat response curve




                                                    The larger the variation
                                                    the steeper will be the
                                                    slope & more sensitive
  Steep response curve
                                                    will be the factor
                                                                factor.
Taguchi & then Factorial Analysis : -

In “taguchi then factorial” analysis, moldflow runs the
      g                           y ,
taguchi analysis & then identifies the vital factors & use it for
running factorial analysis.
Response Su ace ( et od) object e The e pe e is
  espo se Surface (method) objective: e experiment s
designed to allow us to estimate interaction and even
quadratic effects, and therefore give us an idea of
 the (local) shape of the response surface we are investigating.
For this reason they are termed response surface method
         reason,
(RSM) designs.
RSM designs are used to:
   Find improved or optimal p
            p          p     process settings
                                           g
   Troubleshoot process problems and weak points
   Make a product or process more robust against external and
 non- controllable influences. "Robust" means relatively insensitive
to these influences.
          influences
Procedure to run the Taguchi then Factorial Analysis: -
 Steps to Run Taguchi then Factorial Analysis: -
    Select the Analysis sequence as DOE (Fill)




  Then set the DOE Experiment type to Taguchi then Factorial
 & set the number of factors .




   Set the delta value for the parameters & also rank quality criteria
 based on results f
 b   d         lt from ttaguchi analysis & th run th analysis.
                              hi   l i     then    the     l i
“Taguchi then Factorial” Analysis Results: -
“T    hi th F t i l” A l i R          lt

Screen output for the Analysis: -




                                    Moldflow will run various iterations
                                    considering the quality criteria
                                    specified. If with some processing
                                    condition there are chances to get
                                    short molding, then it will adjust the
                                    parameter & re-run the iteration.
“Taguchi then Factorial” Analysis Results: -
“T    hi th F t i l” A l i R          lt
Conclusion: -

   DOE is a good tool to understand the inter-relation
 between the parameters & the quality of the component.
   DOE will tell you which factor needs to be controlled to get
 good quality product.
  It will help you to reduce the process variations.




  Process Variation observed           Process Variation reduced
POLYSMART TECHNOLOGIES PVT LTD
                           LTD.
94,Bombay Talkies Compound,            Shreenath Chambers, 3rd Floor,
Malad (West)                           B-66 & 67, Gyaneshwar Paduka Chowk,
Mumbai:- 400064                        Ferguson College Road,
India.                                 Pune: - 411005.
Tel:- +91-22-28824448,
 e     9      88    8,                 Tel: - +91-020-25520311 / 312
                                              +91 020 25520311 312.
     +91-22-28823241,91-22-28813508.
Fax:- +91-22-28820629
Website:-
W b it www.polysmart.com
             l     t

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Design of experiments using Moldflow Analysis.

  • 1. Design of E D i f Experiments i t using Moldflow. g
  • 2. What is DOE ? DOE – D i Of E Design Experiment i t Design of Experiment is a systematic approach for evaluating the relationship between the input factors & quality criteria using statistical methods. Why to use DOE? A DOE analysis will provide you with information about the sensitivity of the input parameters about a given part design.
  • 3. Type of DOE Analyzing Methods: - T f A l i M th d • Taguchi Screening Analysis •F t i l Factorial Full Factorial Analysis • Taguchi & Factorial Runs Taguchi analysis to determine the primary factors which will be used for the factorial Analysis
  • 4. Input Parameters for DOE Analysis: - Input Parameters which can be used for Running DOE Analysis in I tP t hi h b df R i A l i i Moldflow: - • Mold Temperature • Melt Temperature • Injection Time • Injection Profile Multiplier • Thickness Multiplier • Packing Time (only for DOE Flow) • Packing Profile Multiplier (only for DOE Flow)
  • 5. Possible reasons to run a DOE Analysis : - P ibl t A l i To optimize the wall thickness of the part. To indentify the process parameters to keep the shear rate within the recommended limit while maintaining the shrinkage variation in the p component. To determine the molding conditions to keep clamp force within the maximum machine limit. To determine interrelation between Volumetric Shrinkage & packing time. To determine how to solve problem of warpage caused due to differential Shrinkage Shrinkage. To optimize cycle time considering part weight.
  • 6. Taguchi Analysis : - Taguchi analysis will filter out the main factors from large number of factors which mostly affects the quality of the product. This is called as screening analysis. With this method, the parameters are ranked as per the effect on the final part quality. When the screening analysis is complete it shows the weighting for each of the quality criteria : - • Flow Front Temperature • Shear Stress • Injection Pressure • Overall Quality
  • 7. Procedure to run the Taguchi Analysis: - P d t th T hi A l i Steps to Run Taguchi Analysis: - Select the Analysis sequence as DOE (Fill) Then t th Th set the process parameter to mid-range.(Page1) t t id (P 1)
  • 8. Procedure to run the Taguchi Analysis: - P d t th T hi A l i Setting for page 2 Select the Experiment type to Taguchi & then Set the range to analyze for the respective parameter as shown in the figure figure. Then Run the analysis.
  • 9. Screening Analysis Results: - S i A l i R lt Once the screening analysis is completed, MPI shows the DOE: weighting as shown in the figure for each of the quality criteria (factor). From these results we need to list out the Vital Vi l parameter which affect the quality of hi h ff h li f the product. These vital parameters will be considered as input while running Factorial Analysis.
  • 10. Factorial Analysis : - The Vital process p p parameters which are derived from the results of screening analysis are used as the input, while running the factorial analysis. In our case the vital parameters which are affecting part quality are : - Melt Temperature. Global thickness multiplier. Mold wall temperature.
  • 11. Procedure to run the Factorial Analysis: - P d t th F t i l A l i Steps to Run Factorial Analysis: - Select the Analysis sequence as DOE (Fill) Then set the DOE Experiment type to Factorial Set the range, to analyze for the respective parameter as shown in the figure. 11
  • 12. Procedure to run the Factorial Analysis: - P d t th F t i l A l i Rank the quality criteria based on the results from Taguchi analysis as shown in the figure. Then run the analysis. After running the analysis moldflow will run Various iteration considering various combinations, To get the optimized parameters as shown in the adjoining figure figure.
  • 13. Factorial A l i R F t i l Analysis Results: - lt Considering the three most effective parameters which are figured out from the screening analysis, it launches a set of experiments to determine the input factor for the quadratic function of the response surface methodology.
  • 14. Factorial A l i R F t i l Analysis Results: - lt Plot shows the XY Plots for flow front temperature & Injection pressure by which locking one of the factor y can see how it affects the q g you quality. y
  • 15. Factorial A l i R F t i l Analysis Results: - lt While reviewing the factorial results plots we need to see at the response curves. Shallow or flat response curve The larger the variation the steeper will be the slope & more sensitive Steep response curve will be the factor factor.
  • 16. Taguchi & then Factorial Analysis : - In “taguchi then factorial” analysis, moldflow runs the g y , taguchi analysis & then identifies the vital factors & use it for running factorial analysis. Response Su ace ( et od) object e The e pe e is espo se Surface (method) objective: e experiment s designed to allow us to estimate interaction and even quadratic effects, and therefore give us an idea of the (local) shape of the response surface we are investigating. For this reason they are termed response surface method reason, (RSM) designs. RSM designs are used to: Find improved or optimal p p p process settings g Troubleshoot process problems and weak points Make a product or process more robust against external and non- controllable influences. "Robust" means relatively insensitive to these influences. influences
  • 17. Procedure to run the Taguchi then Factorial Analysis: - Steps to Run Taguchi then Factorial Analysis: - Select the Analysis sequence as DOE (Fill) Then set the DOE Experiment type to Taguchi then Factorial & set the number of factors . Set the delta value for the parameters & also rank quality criteria based on results f b d lt from ttaguchi analysis & th run th analysis. hi l i then the l i
  • 18. “Taguchi then Factorial” Analysis Results: - “T hi th F t i l” A l i R lt Screen output for the Analysis: - Moldflow will run various iterations considering the quality criteria specified. If with some processing condition there are chances to get short molding, then it will adjust the parameter & re-run the iteration.
  • 19. “Taguchi then Factorial” Analysis Results: - “T hi th F t i l” A l i R lt
  • 20. Conclusion: - DOE is a good tool to understand the inter-relation between the parameters & the quality of the component. DOE will tell you which factor needs to be controlled to get good quality product. It will help you to reduce the process variations. Process Variation observed Process Variation reduced
  • 21. POLYSMART TECHNOLOGIES PVT LTD LTD. 94,Bombay Talkies Compound, Shreenath Chambers, 3rd Floor, Malad (West) B-66 & 67, Gyaneshwar Paduka Chowk, Mumbai:- 400064 Ferguson College Road, India. Pune: - 411005. Tel:- +91-22-28824448, e 9 88 8, Tel: - +91-020-25520311 / 312 +91 020 25520311 312. +91-22-28823241,91-22-28813508. Fax:- +91-22-28820629 Website:- W b it www.polysmart.com l t