Title: L.%20Goch%20
1DOE Design Analysis Using Minitab
2Agenda
- DOE Design
- DOE Pitfalls Types of Designs
- Screen Design Example
- Characterization Design Example
- Optimization Design Example
- DOE Analysis
- Response Surface Design
3Experiments Pitfalls
- Having an unknown or unaccounted for input
variable be the real reason your Y changed - These are called Noise Variables
- Number of storks correlating to human births
- Solution Randomization
- Having too little data in too short a time period
- Murphy at work again.
- Solution Repetitions within Each Run
- Studying a local event and believing it applies
to everything - Same as sample size selection.
- Solution Replication of Runs within the DOE or
as a Confirmation DOE
4High Level Map Of Experiments
Screening Designs (6-11 Factors)
Plackett-Burman DOE L16 L18 DOEs Fractional
Factorial Full Factorial DOEs Response
Surface DOEs
- Characterization
- Designs (3-5 Factors)
Optimization Designs (lt3 Factors)
5- Screening Designs
- Plackett-Burman example (2 Level DOE)
- Stat gt Doe gt Factorial gt Create Factorial Design
- Check Plackett-Burman design
- Will review during training
- L16 L18 are also Good Screening Designs (2 3
Level Mixed DOE) - Stat gt Doe gt Taguchi gt Create Taguchi Design
- Check Mixed Level Design
- Review on own
6Lets use Minitab to Generate the Matrix
7Design Matrix
Enter Factors most likely to have Interactions
FIRST!
8Design Matrix OutputStandard Order Screening
Experiment
Minitabs default is to display the runs in
Random Order.
9- Characterization Designs
- Full Factorial Doe
- Stat gt Doe gt Factorial gt Create Factorial Design
- Check General Full Factorial Design
- Review on own
- Fractional Factorial Doe
- Stat gt Doe gt Factorial gt Create Factorial Design
- Check 2-Level Factorial (default generators)
- Will review during training
10DOE Example
- Problem Current Car gas mileage is 30 mpg.
Would like to get 40 mpg. - We might try
- Change brand of gas
- Change octane rating
- Drive Slower
- Tune-up Car
- Wash and wax car
- Buy new tires
- Change Tire Pressure
- What if it works?
- What if it doesnt?
Survey Says These variable greatly effect MPG
11Lets use Minitab to Generate the Matrix
WHAT DESIGN SHOULD YOU CHOOSE?
12Lets use Minitab to Generate the Matrix
WHAT DESIGN SHOULD YOU CHOOSE?
13Design Matrix
14Design Matrix
15Design Matrix OutputStandard Order for Full
Factorial
16- Optimization Designs
- Box Behnken Central Composite Designs
- Stat gt Doe gt Response Surface gt Create Response
Surface Design - Check Box Behnken or Central Composite
17Lets use Minitab to Generate the Matrix
WHAT DESIGN SHOULD YOU CHOOSE?
18Design Matrix
19Design Matrix OutputRandom Order for Central
Composite Design
Axial Points are the Actual Max Min Points of
the Design.
20- Analyzing Data
- Full Fractional Factorial Doe
- Stat gt Doe gt Factorial gt Define Custom Factorial
Design - Analyze factorial design
- Review on own
- Response Surface Doe
- Stat gt Doe gt Response Surface gt Define custom
response surface Design - Analyze response surface design
- Review on own
21Minitab Procedures Data Analysis with Multiple
Inputs (Xs) and One Output (Y)
- We can use the Analyze Response Surface Design
feature under DOE to analyze any type of data
collection with multiple inputs (Xs) - Used for 2k Full 2k-n Fractional Factorials or
other Characterization or Optimization designs - Used for Plackett-Burman or other screening
designs - Used for Passively Collected data
- Used for Historically Collected data
- Can NOT be used when an Input is Non-Numeric and
has more than 3 levels (e.g. 3 Machines, 3
Cavities)
Remember CAUSATION can only be determined thru
experimentally designed and collected data
22Roadmap for Analyzing Multiple Inputs (Xs)
- Step 1 Identify inputs (Xs) vs outputs (Ys).
-
- Step 2 Plot your data
-
- Step 3 Find Best Equation based on P-Values
-
- Step 4 Check R-squared and Adj. R-squared
- Step 5 Determine how well your model (i.e.
equation) can predict. - Step 6 Check Residuals
-
- Step 7 Make 3-D plots
-
- Step 8 Do the Results Make Sense?
-
- Step 9 Confirm Results or begin next Experiment
23Analyze the Data
Open worksheet Carpet.mtw
Inputs Carpet Composition
Output Durability
Step 1b) Composition can be coded from text to
numeric since it has only 2-levels. Carpet Type
can NOT be coded since its non-numeric
4-levels.
24Analyze the Data
Open worksheet Reheat.mtw
Inputs Operator Temp Time
Output Durability
Step 1b) Operator can be coded from text to
numeric since it has only 2-levels.
25Analyze the Data
Step 2) Plot the data
Does there appear to be any patterns in the data?
26Analyze the Data
Step 3) Find Best Equation Based on P-values
Define Inputs in MINITAB
Select Inputs
Click OK
27Analyze the Data
Step 3) Find Best Equation Based on P-values
Define Inputs in MINITAB
Inputs Defined in MINITAB
28Analyze the Data
Step 3) Find Best Equation Based on P-values
Analyze Data
Select Terms Click OK
Select Output
29Analysis
Step 3) continued
30Finding the Best Model
Step 3) continued
Now we can reduce the model more by removing the
2 input terms that are significantly above our
alpha value of 0.10
31Term Elimination
Step 3) continued
Press ltCtrlgt e
Click Terms
Double Click on Terms to Eliminate
32Finding the Best Model
Step 3) continued
One at a time remove any two input terms with
pgt0.10
Continue reducing the model by removing the 2
item terms that are significantly above our alpha
value of 0.10
33Finding the Best Model
Step 3) continued
One at a time remove any main effect terms with
pgt0.10 if they are NOT in a 2 input term.
Continue reducing the model by removing the main
effect terms that are significantly above our
alpha value of 0.10
34Finding the Best Model
Step 3) continued
Evaluate any terms with pgt0.05 if they are NOT in
a 2 input term.
Evaluate any term with an alpha value of gt0.05.
These are marginally significant terms. Only
leave in if 1) that are contained in a
significant 2 input term OR 2) they make sense
per theory/prior testing.
35Find the Best Model
Step 3) completed
- This is our best equation to describe our Quality
level based on the p-values
All Terms in the Regression Equation are
Significant The p-values are lt 0.05.
36Find the Best Model
Step 3) completed
Frozen Food Quality -180.963 (0.43070
Temp) (5.79598 Time) - (0.000318 Temp2) -
(0.05181 Time2) - (0.00521 Temp Time)
37Analyze the R-squared(s)
Step 4) Check R-squared and Adj. R-squared
If more than 4 apart eliminate term with
highest p-value
Temp Time explain 71.5 of the variability in
Quality
38How Accurate is the Model?
Step 5) Determine Model Accuracy
Equation can predict to within /- 2 Stdevs
Model can Predict Quality to within /- 3.4 with
a 95 Confidence Level
39Analyze the Residuals
Step 6) Check Residuals
Press ltCtrlgt e
Click Graphs
Check Four in One
40Analyze the Residuals
Step 6) Check Residuals
Looking for Normal Distribution
Looking for Random Pattern
Residual Plots Use if n gt 25
41Plot the Results
Step 7a) Make 3-D Plots
Select
Check Surface Plot Click Setup
42Plot the Results
Step 7a) Make 3-D Plots
Best Quality at Low Temp High Time. Robust at
350-425o 33-38 minutes.
43Evaluate the Results
Step 8) Does the Results Make Sense
- EXPERIMENTAL RESULTS
- Numbers results matched up with original plotted
data. - Operator didnt matter to the results.
- Lower oven temps longer times result in the
highest, most robust quality levels.
- Are the results what you would have expected?
- Are some statistically significant items not
PRACTICALLY significant? - Looking at the 3-D plot, do the changes in Temp
Time have a big enough effect on Quality to be
useful?
44Confirm Results!
Step 9) Confirm Results or begin Next Experiment
- ALWAYS, ALWAYS run a confirmation run at the
optimal settings or a small confirmation
experiment. This is critical to ensure that your
results are accurate!!!! - If your data was historical or collected
passively, you will need to run an experiment to
show that your inputs CAUSED the changes to
happen in your output. - At this point you may decide to eliminate factors
from your experimentation process or add new
factors to your experimentation. - Be careful to set up your next experiment so that
the results can be compared to your previous
experiment(s).
45Confirm Results!
Step 9) Confirm Results Determine Optimal
Settings
46Step 9) Confirm Results (cont.) Determine
Optimal Settings
Select Output Variable
Enter Specifications
47Plot the Results
Step 7b) Make Optimization Plot
Click Drag Red lines to see changes in Output
Relationships Run confirmation at 350o for 38
minutes for maximum Quality.
48Summary
- The goal of DOE design is to get the most
information from the fewest amount of runs. Thus,
DOE design is based on specific combinations of - the of Factors to be tested
- the of Levels for each of the factors
- The goal of DOE analysis is to achieve reliable,
predictable results. For this to happen, four
items must be evaluated as part of the analysis - P-values Significance of Terms in Equation
- R-Square Relationship of Inputs to Outputs
- /- 2 S Predictability of Equation
- Residuals Violation of Analysis Assumptions