Min. Life for a Titanium Turbine Blade - PowerPoint PPT Presentation

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Min. Life for a Titanium Turbine Blade

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Workshop 9 Robust Design DesignXplorer Min. Life for a Titanium Turbine Blade Robust Design Goals: Based on stress and fatigue analysis we wish to optimize the ... – PowerPoint PPT presentation

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Title: Min. Life for a Titanium Turbine Blade


1
Min. Life for a Titanium Turbine Blade
  • Workshop 9
  • Robust Design DesignXplorer

2
Robust Design
Z
  • Goals Based on stress and fatigue analysis we
    wish to optimize the minimum life for the
    titanium turbine blade shown here.
  • Problem setup The optimal X and Y location for
    the blade will first be determined by holding the
    fillet radius constant and running a DX DOE
    optimization for minimum fatigue life. After
    determining this optimal location we will account
    for manufacturing uncertainty in a Six Sigma
    Analysis. Finally we will use Robust Design to
    determine the optimum fillet radius given the
    uncertainty.
  • The airfoil root is a fillet radius which
    represents a design variable.
  • The analysis and fatigue preparation is detailed
    on the next several slides. The workshop uses
    the Simulation database as a starting point for
    our robust design.

X
Y
3
Robust Design
  • An initial set of parametric values has been
    chosen
  • Xtilt 1.5
  • Ytilt 1.0
  • Radius 0.25
  • A preliminary analysis has been completed using
    the Simulation Fatigue tool to determine fatigue
    life. Each cycle represents one startup sequence
    for the unit from 0 to 7000 rpm.
  • Note throughout this workshop the effect of mesh
    density, number of statistical samples, etc. has
    been largely ignored in the interest of time.
    The results obtained in repeating this workshop
    may not exactly match those show in the
    accompanying figures. In actual practice, as
    with any analysis, proper care should be given
    when addressing each of these.

4
Robust Design
  • The preliminary analysis predicts a minimum
    fatigue life to be 1591 cycles for this
    configuration (note, the result has been scoped
    only to the blade surfaces shown here).
  • Minimum fatigue life has been made parametric in
    order to proceed with the study.

5
Robust Design
  • An initial DOE study will be performed on the
    blade to determine the initial configuration for
    the X and Y blade tilt.
  • From the project page choose New DesignXplorer
    study.
  • When prompted, Save the database file to proceed.
  • Initially we wish to optimize the blades angular
    location (x and y tilt). For this study uncheck
    the fillet radius to remove it from the process.
  • The 2 input parameters will be treated as design
    parameters and we will allow a /- 10 variation
    in their values (default).
  • From the top menu choose Run gt Solve Automatic
    Design Points.
  • Note with 2 input parameters the DOE method will
    evaluate 9 solutions to build a response surface.

6
Robust Design
  • When the solutions are complete the response
    surface can be viewed by highlighting the
    Responses view.
  • As the response surface indicates there appears
    to be an optimal location for the minimum fatigue
    life. That is, a particular combination of x and
    y tilt that will result in a maximum fatigue
    life.
  • We could, of course query the response surface to
    find this location but the Goals Driven
    Optimization (GDO) feature is ideal for this task.

7
Robust Design
  • To use the GDO feature we must first generate a
    sample set from the response surface.
  • Switch to the Goals Driven Optimization view.
  • For this workshops we will generate a set based
    on 1000 samples.
  • Choose 1000 and Generate.

8
Robust Design
  • From the sample set we can now generate candidate
    designs based on goals of our choosing. Select
    Maximum Possible as a desired value for Life
    Minimum.
  • Generate the candidate designs.

9
Robust Design
  • Recall our initial analysis predicted a minimum
    fatigue life of approximately 1600 cycles. The
    candidates from this DOE study indicate we can
    improve the fatigue life. The optimum
    configuration chosen is
  • Xtilt 1.58
  • Ytilt 0.9
  • Well use this information to proceed with the
    Six Sigma Analysis.
  • Return to Simulation and insert the geometry
    parameters.
  • From the geometry menu choose to Update Use
    Simulation Parameter Values.
  • When updated, Solve this configuration.

10
Robust Design
  • Design For Six Sigma We have determined that
    the minimum fatigue life in the model is
    approximately 38,000 cycles. However several of
    our input parameters represent uncertainty
    variables thus there will be some variation in
    this minimum life. The response variation will
    be represented by some distribution (see right).
  • For example the data shown here is based on a
    Gaussian distribution of the X and Y tilt with
    the fillet radius held constant. As can be seen,
    the probability that the blade will fail is
    represented by a function related to the input
    variation.
  • Previously our deterministic study predicted a
    single value for minimum life. With the
    uncertainty included we can see that figure can
    be as low as 722 cycles.

Minimum Life
11
Robust Design
  • With the new analysis complete return to the
    Project page and choose to start a New
    DesignXplorer study.
  • When prompted Save the existing study.
  • For this study we wish to account for
    manufacturing uncertainty in our optimal tilt
    values. Switch the parameters ds_xtilt and
    ds_ytilt to be Uncertainty Variables. Well
    leave the distribution type as Gaussian and use
    the default ranges.
  • For this study we also include the fillet radius
    ds_rootrad as a design variable with a /- 20
    range.

12
Robust Design
  • From the top menu choose Run then Solve
    Automatic Design Points. With 3 input
    parameters DX will perform 15 solutions.
  • In order to complete a robust design study we
    must first generate a six sigma analysis (SSA)
    sample set and flag the uncertainty in the
    response as parametric.
  • Highlight the Six Sigma Analysis view.
  • Activate 1000 and generate the sample set.

13
Robust Design
  • With the sample set generated select the Life
    Minimum response from the drop down list.
  • Based on maintenance schedules, warranty, etc. it
    has been determined that a fatigue life of 4500
    cycles is acceptable. As the probability table
    shows, this represents approximately a 3 sigma
    level. Well base our robust design around this
    level. This level represents a design point
    where 99.9 of our samples perform acceptably.
  • Enter 0.001 in the field and choose Insert New
    Probability Value.
  • With the new entry in the table toggle the P to
    make the minimum life for this probability
    parametric.

14
Robust Design
  • With six sigma parameters flagged notice the
    Robust Design view is now available.
  • Robust Design contains a Goals and Candidates
    section much like the main GDO view used
    previously.
  • To perform a Robust Design we must again generate
    a sample set based on the DFSS responses
    calculated earlier.
  • Activate 100 for the sample size and Generate.
  • Note as shown, to generate 100 samples DX must
    perform 100,000 evaluations of the DFSS response
    surface.

15
Robust Design
  • The goals and candidates used in robust design
    are obtained by evaluating a number of screening
    samples from the SSA.
  • Set the desired value for life to Maximum
    Possible
  • Candidate designs can be generated based on the
    stated goals.

16
Robust Design
  • Conclusion Recall that our initial configuration
    resulted in a predicted minimum fatigue life of
    around 1600 cycles. In addition we had no feel
    for the predictability of this number. After
    completing the Robust Design we have improved the
    performance (minimum life) but can now attach a
    level of confidence to that prediction.

Initial Results
Final Results
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