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Design of Experiments

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Catapult Example. Matthew Wick. What is DOE? Def. ... DOE using Catapult example ... Simple systems, such as a catapult, can be used to model the analytic methods of ... – PowerPoint PPT presentation

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Title: Design of Experiments


1
Design of Experiments
  • Catapult Example

Matthew Wick
2
What is DOE?
  • Def. - The use of structured, experimental
    methods to determine the relationships between
    different factors that affect the outcome of a
    process

3
History of DOE
  • Developed by Sir Ronald A. Fisher
  • gt Renowned mathematician and geneticist
  • gt Introduced in early 1920s

4
What does DOE involve?
  • Design a set of 10-20 experiments where any
    important factors are systematically varied two
    or more at a time
  • Analyze the experimental results to help identify
  • a. Any optimal conditions
  • b. Factors which strongly influence test
    results
  • c. Factors which do not influence test results
  • d. The existence of any interactions between
    factors

5
Important Side-note!
  • All tests MUST be run in a random order so as to
    avoid any bias in the experimental results !

6
Advantages of DOE
  • Only have to test at the high (1) and low (-1)
    values for any particular experimental factor
  • gt Can skip testing the increments between highs
    and lows
  • gt Greatly reduces the number of experiments
    needed for accurate results
  • -This saves Time, Money, Resources, and Effort

7
Advantages of DOE
  • Can test more than one factor at a time
  • gt Allows judgment on the significance of input
    factors ..
  • a. Acting alone on the output
  • And
  • b. Interacting with one another
  • on the output

8
DOE using Catapult example
  • Randomly ran tests on distance of a catapults
    trajectory
  • Three variables identified which may or may not
    affect distance
  • 1. Launch arm height
  • 2. Base stopping point
  • 3. Front bracket height

9
DOE using Catapult example
  • The three variables are studied at their high
    (1) and low (-1) levels
  • 1. Launch arm height (in.)
  • gtLow 7 , High 12
  • 2. Base stopping point (in.)
  • gtLow 3 , High 6
  • 3. Front bracket height (in.)
  • gtLow 5 , High 9

10
DOE using Catapult example
  • There were 16 tests which needed to be run to
    test all three variables
  • gt 23 8 different combinations of variables at
    their high and low levels
  • gt x2 16 total tests
  • -because each test must be run twice in random
    order to decrease experimental error

11
DOE using Catapult example
  • The experimental data is statistically analyzed
    for direct single variable effects as well as
    double and triple interactions and effects

12
Test Factors and Response
13
Test Design Space(Tested All Combinations of
Three Factors)
14
Test Plan (Tested in Random Order)
15
Average Results of Two Trials for Each Experiment
16
Calculate Effect of Single Factor
17
Calculate Effect of Single and Interaction Factors
18
Calculations to Determine Which Factors are
Significant
19
Which Factors are Significant?And Mathematical
Model
Predictive Model (Note Coefficient is
half of effect) Distance 51.1 10.7A 18.3B
27.1C 2.4AB 4.6BC
20
Contour Plot of Results Predict Distance to
Target
Example Set Launch Arm (A) at 10. To hit a
target at 70 units of distance, set B at 5 and C
at 8.
To hit a target at 30 units of distance, set B at
4 and C at 6
21
Conclusion
  • DOE is a strong statistical method for solving
    problems using a limited amount of experiments
  • Simple systems, such as a catapult, can be used
    to model the analytic methods of DOE
  • DOE is important to science because it can be
    used to create new ways of testing ideas and
    solving problems in a very efficient manner

22
Reference Material
  • Statistics for Experimenters, by Box, Hunter, and
    Hunter 1978
  • Quality By Experimental Design, by Thomas B.
    Barker 1985
  • Design and Analysis of Experiments, by Douglas C.
    Montgomery 1991
  • An Introduction to Design of Experiments, by
    Larry B. Barrentine 1999
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