+ All Categories
Home > Documents > Capacitacion de Minitab v14

Capacitacion de Minitab v14

Date post: 08-Feb-2016
Category:
Upload: rafafa-falcon
View: 20 times
Download: 0 times
Share this document with a friend
Popular Tags:
173
Minitab 14 Quality Statistics A person without data is merely expressing an opinion…. Created by Paul White - Aston Martin Six Sigma Department
Transcript
Page 1: Capacitacion de Minitab v14

Minitab 14 Quality Statistics

A person without data is merely expressing an opinion….

Created by Paul White - Aston Martin Six Sigma Department

Page 2: Capacitacion de Minitab v14

2

Introduction

Name

Department

Six Sigma / Minitab experience

Why are you here today?

Page 3: Capacitacion de Minitab v14

3

Training Topics

What is Six Sigma? Introduction to Minitab Version 14 Manipulation of data Basic statistics Graphs Quality tools Measurement System Analysis – R & R Control charts Normality testing Capability analysis Hypothesis Testing

Page 4: Capacitacion de Minitab v14

What is Six Sigma?

‘The function of a statistician is to make predictions, and thus to provide a basis for action’ – W.E Deming

Page 5: Capacitacion de Minitab v14

5

6-Sigma99.99966% Good

• Seven articles lost per hour• 20,000 lost articles of mail per hour

3.8-Sigma99% Good

• Unsafe drinking water for almost 15 minutes each day

• Unsafe drinking water one minute every seven months

• 5,000 incorrect surgical operations per week

• 1.7 incorrect operations per week

• 1 missed putt per 9 holes of golf • 1 missed putt per 163 years

• 10,700 defects per million opportunities

• 3.4 defects per million opportunities

Is 99% Good Enough?

Page 6: Capacitacion de Minitab v14

6

Goals of Six Sigma

Reduce defects.

Improve process capability.

Improve customer satisfaction.

Increase shareholder value.

This ensures we are competitive, provides future security and opportunity for growth.

Page 7: Capacitacion de Minitab v14

7

100% Inspection – Does it work?

100% Inspection

Page 8: Capacitacion de Minitab v14

8

Finished files are the results of many years of sceintific studies combined with the experience of many years of

effort

F-Test

Page 9: Capacitacion de Minitab v14

9

How many did you see?

Have another look!

F-Test

Page 10: Capacitacion de Minitab v14

10

Finished files are the results of many years of sceintific studies combined with the experience of many years of

effort

F-Test

Page 11: Capacitacion de Minitab v14

11

Did anyone change their mind?

F-Test

Page 12: Capacitacion de Minitab v14

12

Finished files are the results of many years of sceintific studies combined with the experience of many years of

effort

F-Test

Page 13: Capacitacion de Minitab v14

13

Did you spot anything else?

F-Test

Page 14: Capacitacion de Minitab v14

14

Finished files are the results of many years of sceintific studies combined with the experience of many years of

effort

F-Test

F-Test

Page 15: Capacitacion de Minitab v14

15

100% Inspection – Does it work?

100% Inspection

Page 16: Capacitacion de Minitab v14

16

DMAIC Improvement Model

Page 17: Capacitacion de Minitab v14

Introduction to Minitab

‘Statisticians are people with tears wiped from their eyes’

Page 18: Capacitacion de Minitab v14

18

Introduction to Minitab

The 3 Minitab views - session folder, worksheet folder, project folder.

3 types of data entry– numbers, text and dates.

Importing text from other sources

Creating, opening and saving projects and worksheets.

Page 19: Capacitacion de Minitab v14

19

Session and Worksheet Folders

The 2 main windows in Minitab – The session folder & worksheet folder.

Session folder

Worksheet folder

Select different views using icons

Page 20: Capacitacion de Minitab v14

20

Project Folder

Multiple worksheets can be opened within the same project.

File /New / New worksheet

Multiple worksheets

Select project manager

Page 21: Capacitacion de Minitab v14

21

3 Types of data

Minitab stores numbers, text and dates.

Numbers – No symbol in column header, right aligned in cell

Text – T in column header, left aligned in cell

Date – D in column header, left aligned in cell

Page 22: Capacitacion de Minitab v14

22

Numeric Data Types

FAIL PASS

Electrical Circuit

TEMPERATURE

Thermometer

TimeTime

VariableAttribute

NO-GO GO

Caliper

QTY UNIT DESCRIPTION TOTAL1 $10.00 $10.003 $1.50 $4.50

10 $10.00 $10.002 $5.00 $10.00

SHIPPING ORDER

Error

Page 23: Capacitacion de Minitab v14

23

Attribute vs Variable Data

Variable

Attribute

The Advantage of Variable Data

29

Page 24: Capacitacion de Minitab v14

24

Attribute vs Variable Data

Variable Data Available earlier in the process, before defects occur. Illustrates short term trends allowing immediate action. A small amount of data is required to draw conclusions

(minimum 30 individual readings).

Attribute Data Defect related, only after the fault has occurred. Only illustrates long term trends. A large amount of data is required to draw conclusions

(minimum 50 subgroups) Sometimes this is the only data available.

Page 25: Capacitacion de Minitab v14

25

Importing text from other sources

Easiest way is to copy & paste. However, an import function is available: File / other files / import special text.

Tip! Always title each column in the cell below the column reference number. this will make later analysis easier to interpret as the graphs will include your column description.

Select destination cell in Minitab and paste from clipboard

Select data from another source (such as Excel) and copy to clipboard.

Page 26: Capacitacion de Minitab v14

26

Saving projects and worksheets

Save projects to correct destination.

File / Save project as

Change default saving location

Rename with relevant filename and date

Page 27: Capacitacion de Minitab v14

Manipulating Data

‘Facts are stubborn things, but statistics are more pliable’

Page 28: Capacitacion de Minitab v14

28

Manipulating Data

Erasing columns and rows

Stacking columns and rows

Transposing columns

Page 29: Capacitacion de Minitab v14

29

Erasing data

Erasing columns and rows

Select column and right click mouse

Delete cells

Tip! Undo function is available on the toolbar

Page 30: Capacitacion de Minitab v14

30

Stacking columnsData / Stack / Stack Columns

Select columns to stack

Select stacked destination and subscripts

Click OK

Tip! Always store subscripts when stacking data, this will copy the column description to the adjacent data cell. This makes future analysis easier, to discriminate between data sets.

Page 31: Capacitacion de Minitab v14

31

Transposing data

Data / Transpose columns

Switch the data pattern from columns to rows.

Select columns to transpose

Select destination option

Tip! If your data is already in Excel you can use the ‘paste special’ function to transpose from columns to rows and vice versa! Use Minitab & Excel interchangeably to conduct data analysis.

Click OK

Page 32: Capacitacion de Minitab v14

Basic Statistics

‘Statistics should be used the way a drunk uses a lamp post, more for support than enlightenment ’

Page 33: Capacitacion de Minitab v14

33

Basic Statistics

Descriptive statistics

Inferential statistics

Graphical summary

Page 34: Capacitacion de Minitab v14

34

Descriptive Statistics

Stat / Basic statistics / display descriptive statistics.

Stat /Basic statistics / Display descriptive statistics

Select variables, click OK

Page 35: Capacitacion de Minitab v14

35

Descriptive Statistics

Descriptive statistics describe the sample we have gathered, tells us what is.

Session window output

Page 36: Capacitacion de Minitab v14

36

Measures of Average

Mean:Calculated average. Sum of all individual values, divided by the number of samples.

Mode: Most frequently occurring value.

Median: The middle number when the values are sequentially arranged.

Page 37: Capacitacion de Minitab v14

37

Mean =

Mean

5, 5, 4, 2, 1,1, 4, 5, 3, 2.

Measures of Average

3.2

Page 38: Capacitacion de Minitab v14

38

5, 5, 4, 2, 1,1, 4, 5, 3, 2.

Measures of Average

Mode =

Mode

5

Page 39: Capacitacion de Minitab v14

39

Median =

Median

5, 5, 4, 2, 1,1, 4, 5, 3, 2.

Measures of Average

Page 40: Capacitacion de Minitab v14

40

1, 1, 2, 2, 3, 4, 4, 5, 5, 5.

Median = 3.5

3+4 2 = 3.5

Median

Measures of Average

Page 41: Capacitacion de Minitab v14

41

Mean =3.2Mode =5Median =3.5

5, 5, 4, 2, 1,1, 4, 5, 3, 2.

Measures of Average

Page 42: Capacitacion de Minitab v14

42

Graphical Summary

Stat / Basic statistics / Graphical summary.

Stat / Basic Statistics / Graphical Summary

Select variable

Click OK

Tip! Note the confidence level of 95% in the option window. This applies to the inferential statistics that will be displayed in the graphical summary.

Page 43: Capacitacion de Minitab v14

43

Graphical Summary

Descriptive statistics describe the sample we have gathered, tells us what is. Inferential statistics allows us to “infer” about the population, tells us what

“probably is”. Inferences are never definite, only stated with a degree of confidence.

Normality test

Descriptive statistics

Inferential statistics

10.810.410.09.6

Median

Mean

10.1510.1010.0510.009.959.90

1st Quartile 9.800Median 10.0253rd Quartile 10.240Maximum 10.839

9.922 10.105

9.915 10.126

0.268 0.400

A-Squared 0.19P-Value 0.902Mean 10.014StDev 0.321Variance 0.103Skewness -0.003050Kurtosis -0.106782N 50Minimum 9.310

Anderson-Darling Normality Test

95% Confidence I nterval for Mean

95% Confidence I nterval for Median

95% Confidence Interval for StDev95% Confidence Intervals

Summary for Tool 1

Page 44: Capacitacion de Minitab v14

44

High Standard DeviationHigh Variability

Low Standard DeviationLow Variability

Standard Deviation

Standard Deviation refers to the collective deviation of the entire data set

Page 45: Capacitacion de Minitab v14

456.14

65.5 6.5 7

x xx

xx

5.26

xbar = 6.146

6.965.9 6.47

xbar = 6.146

-0.886 0.814-0.246

0.324-0.006

5.26,6.96,5.90,6.47,6.14.

r = 6.96 – 5.26 = 1.70

r = 1.70

Standard Deviation

Page 46: Capacitacion de Minitab v14

46

Calculating standard deviation is best shown in table format: (xbar = 6.146)

Data x - xbar (x – xbar)2

5.266.965.906.476.14

-0.886 0.7849960.814

-0.2460.324

-0.006

0.6625960.0605160.1049760.000036= 1.61312

S = (x – X)2

n - 1√_

Standard Deviation

Page 47: Capacitacion de Minitab v14

47

S = (x – X)2

n - 1√ _

S = 1.613124√

S = 0.40328√S = 0.635 (to 3 s.f.)

We can now use the formula:

Standard Deviation

Tip! The square of the standard deviation is the variance.

Page 48: Capacitacion de Minitab v14

48

The distribution of area as a percentage:

-3s -2s -1s X +1s +2s +3s

68.26%

95.44%

99.73%

0.135%

0.135%

Normal Distribution

Page 49: Capacitacion de Minitab v14

49

Graphical Summary

Descriptive statistics describe the sample we have gathered, tells us what is. Inferential statistics allows us to “infer” about the population, tells us what

“probably is”. Inferences are never definite, only stated with a degree of confidence.

Normality test

Descriptive statistics

Inferential statistics

10.810.410.09.6

Median

Mean

10.1510.1010.0510.009.959.90

1st Quartile 9.800Median 10.0253rd Quartile 10.240Maximum 10.839

9.922 10.105

9.915 10.126

0.268 0.400

A-Squared 0.19P-Value 0.902Mean 10.014StDev 0.321Variance 0.103Skewness -0.003050Kurtosis -0.106782N 50Minimum 9.310

Anderson-Darling Normality Test

95% Confidence I nterval for Mean

95% Confidence I nterval for Median

95% Confidence Interval for StDev95% Confidence Intervals

Summary for Tool 1

Page 50: Capacitacion de Minitab v14

Graphs

‘A picture tells a 1,000 words’

Page 51: Capacitacion de Minitab v14

51

Graphs

Time series plot

Histogram

Boxplot

Editing graphs

Update graphs in real time

Page 52: Capacitacion de Minitab v14

52

Time Series Plot

Graph / Time series plot

Graph / Time Series Plot

Select simple option

Tip! Minitab 14 allows multiple time series plots on one chart if required!

Page 53: Capacitacion de Minitab v14

53

Time Series Plot

Graph / Time series plot

Select variable to plot

Select time scale

Select stamp

Select stamp column

Click OK

Page 54: Capacitacion de Minitab v14

54

Time Series Plot

Time series plot displays the trend over time

Date

Tool

1

19/0

2/20

06

14/0

2/20

06

09/0

2/20

06

04/0

2/20

06

30/0

1/20

06

25/0

1/20

06

20/0

1/20

06

15/0

1/20

06

10/0

1/20

06

05/0

1/20

06

01/0

1/20

06

11.0

10.5

10.0

9.5

Time Series Plot of Tool 1

Page 55: Capacitacion de Minitab v14

55

Histogram

Graph / Histogram.

Graph / Histogram

Select simple option

Page 56: Capacitacion de Minitab v14

56

Histogram

Graph / Histogram.

Select variable to graph

Click OK

Page 57: Capacitacion de Minitab v14

57

Histogram

A histogram shows the distribution of the data.

Tool 1

Freq

uenc

y

10.810.610.410.210.09.89.69.4

16

14

12

10

8

6

4

2

0

Histogram of Tool 1

Tip! When copying graphs into other file formats, such as the 6 Panel template. Use edit / paste special and paste the graph as a picture to reduce the file size.

Page 58: Capacitacion de Minitab v14

58

Boxplot

Graph / Boxplot

Graph / Boxplot

Select Multiple Y’s - Simple Option

Page 59: Capacitacion de Minitab v14

59

Boxplot

Graph / Boxplot

Select variables

Click OK

Page 60: Capacitacion de Minitab v14

60

Data

Tool 3Tool 2Tool 1

14

13

12

11

10

9

8

7

6

Boxplot of Tool 1, Tool 2, Tool 3

Boxplot

A boxplot is a ‘birds eye view’ of a histogram.

Whisker

Inter quartile range – middle 50%

Median

Tip! A boxplot is a very good tool to compare multiple distributions.

Page 61: Capacitacion de Minitab v14

61

Editing Graphs

Minitab 14 allows advanced graphical editing features.

Double click graph on area to be edited (as per Excel approach)

Use options box to edit graphical features

Page 62: Capacitacion de Minitab v14

62

Editing Graphs

Minitab 14 allows advanced graphical editing features.Da

ta

Tool 3Tool 2Tool 1

14

13

12

11

10

9

8

7

6

Boxplot of Tool 1, Tool 2, Tool 3

Page 63: Capacitacion de Minitab v14

63

Update Graphs in Real Time

Minitab 14 allows graphs to be updated as the data source changes.

A green cross indicates that the graph reflects the data source

If the data source changes, a yellow circle indicates that the graph does

not reflect the data source.

Page 64: Capacitacion de Minitab v14

64

Update Graphs in Real Time

Graphs can be updated automatically or upon request.

Right click graph and select update graph now

Page 65: Capacitacion de Minitab v14

65

Update Graphs in Real Time

A green cross indicates that the graph has been updated.

Tip! The update graph function can be used on all graphs in the graph menu (except stem & leaf) and all control charts!

Page 66: Capacitacion de Minitab v14

Quality Tools

‘Statistics may be defined as a body of methods for making wise decisions in the face of uncertainty ’ – W.A.Wallis

Page 67: Capacitacion de Minitab v14

67

Quality Tools

Pareto chart

Cause and Effect Diagram

Multi-Vari Chart

Page 68: Capacitacion de Minitab v14

68

Quality Tools

Stat / Quality Tools / Pareto chart

Select columns for labels and frequencies

Click OK

Stat / Quality Tools / Pareto Chart

Page 69: Capacitacion de Minitab v14

69

Quality Tools

Pareto charts are based on the 80 / 20 rule. Used to prioritise focus.

Cumulative frequency

Faults

Results

Tip! Pareto charts should also be produced using COPQ for each defect.

Count 19 17 15100 39 25 23 22 21 20 20Percent 5.9 5.3 4.731.2 12.1 7.8 7.2 6.9 6.5 6.2 6.2Cum % 90.0 95.3 100.031.2 43.3 51.1 58.3 65.1 71.7 77.9 84.1

Coun

t

Perc

ent

Characteristic

Othe

r

Fasc

ia -

Poor

Fit

Glov

ebox

poo

r fit

Paint

Defe

ct - L

H do

or

Flat b

atter

y

Rear

bum

per p

oor f

it

Wate

r lea

k Rr

Doo

r

Camb

er ad

justm

ent

Wind

nois

e Frt

Door

Air V

ent P

oor F

it

Widg

et

350300250200150100500

100

80

60

40

20

0

Pareto Chart of Characteristic

Page 70: Capacitacion de Minitab v14

70

Cause & Effect Diagram

Conduct team brainstorm Stat / Quality tools / Cause & Effect Diagram

Stat / Quality Tools / C&E Diagram

Enter causes in columns or text

Click OK

Tip! Use 5 why analysis to drill down to root cause. Minitab 14 allows multiple sub branches to be entered in the option box.

Page 71: Capacitacion de Minitab v14

71

Cause & Effect Diagram

Use C&E to understand relationship between inputs and outputs.

Tip! The Six Sigma team should score the relationship between inputs & outputs using the C&E matrix to prioritise team focus.

DistortionPanel

Environment

Measurements

Methods

Material

Machines

Personnel

Poor training

Material Handling

New Labour

Shims missing

Location peg damage

Wear on tool

Damaged panels

Panel dimensions

Burr on panel

Standardised Work

Stock Rotation

Build sequence

procedureNo measurement

No gauge R&R

Gauge calibration

Poor lighting

Temperature

Humidity

BIW Door Panel

Page 72: Capacitacion de Minitab v14

72

Multi-Vari Chart

Graphical analysis of means for different factors. Stat / Quality tools / Multi-Vari Chart

Stat / Quality Tools / Multi-Vari Charts

Enter response variable (y) and factor levels (x)

Page 73: Capacitacion de Minitab v14

73

Multi-Vari Chart

Stat / Quality tools / Multi-Vari Chart

Mean values displayed for each factor level

Multi-Vari charts can be used during a screening DOE to reduce KPIV’s to the ‘critical few’.

Displays main effects and interactions.

Tool Number

Torq

ue

321

56

55

54

53

52

51

50

49

48

Atlas CopcoBosch

Supplier

Multi-Vari Chart for Torque by Supplier - Tool Number

Page 74: Capacitacion de Minitab v14

Measurement Systems Analysis

‘When you can measure what you are talking about and express it in numbers, you know something about it. But, when you cannot express it in numbers, your knowledge is of the meagre and unsatisfactory kind’ – Lord Kelvin

Page 75: Capacitacion de Minitab v14

75

Measurement Systems Analysis

MSA Overview

Attribute Gauge R&R

Variable Gauge R&R

Page 76: Capacitacion de Minitab v14

76

The purpose of Measurement System Analysis (MSA) is to ensure the information collected is a true representation of what is occurring in the process.

MSA is the evaluation of measurement system variation in comparison to process variation.

Measurement System Analysis

MSA validation is required before commencing data collection.

Process Variation

Measurement System Variation

Page 77: Capacitacion de Minitab v14

77

Measurement System Analysis

R & R – Repeatability and reproducibility.

Repeatability refers to the inherent variability of the measurement system.

Same operatorSame partSame condition

Repeatability is the ‘within’ variation.

Page 78: Capacitacion de Minitab v14

78

Measurement System Analysis

R & R – Repeatability and reproducibility.

Reproducibility refers to the variation that occurs when different conditions are used to take the measurement.

Different operatorDifferent partsDifferent conditions

Reproducibility is the ‘between’ variation.

Page 79: Capacitacion de Minitab v14

79

Measurement System Analysis

R & R – Repeatability and reproducibility.

Reproducibility refers to the variation that occurs when different conditions are used to take the measurement.

Different operatorDifferent partsDifferent conditions

Reproducibility is the ‘between’ variation.

Page 80: Capacitacion de Minitab v14

80

Data Types

FAIL PASS

Electrical Circuit

TEMPERATURE

Thermometer

TimeTime

VariableAttribute

NO-GO GO

Caliper

QTY UNIT DESCRIPTION TOTAL1 $10.00 $10.00

3 $1.50 $4.50

10 $10.00 $10.002 $5.00 $10.00

SHIPPING ORDER

Error

Page 81: Capacitacion de Minitab v14

81

Attribute Gauge R & R Exercise

Scenario The process to stamp dots on a domino is highly variable. RFT data is required to evaluate process performance. Measurement system must be validated first.

Study Method 2 operators 2 measurements per operator 7 samples

N.B Only 7 samples used due to time constraints. A minimum of 30 samples required for Six Sigma projects.

Page 82: Capacitacion de Minitab v14

82

Attribute Gauge R & R Exercise

Measurement Procedure No. 1

Visually inspect all dominoes to identify samples with dots smaller than the master sample.

Any non-conformance is considered a reject. Colour is of no consequence.

You have been allocated 15 seconds to inspect each sample.

Page 83: Capacitacion de Minitab v14

83

Attribute Gauge R & R Exercise

75

Is the measurement system repeatable and reproducible?

What can be done to improve the measurement system?

Page 84: Capacitacion de Minitab v14

84

Attribute Gauge R & R ExerciseMeasurement Procedure No. 2

Inspect all dominoes with the gauge provided. Ensure there are no spots smaller than the master sample. Any non-conformance is considered a reject. Colour is of no consequence.

You have been allocated 30 seconds to inspect each sample.

Page 85: Capacitacion de Minitab v14

85

Attribute Gauge R & R Exercise

Stat / Quality Tools / Attribute Agreement Analysis

Select data, samples and appraisers

Stat / Quality Tools / Attribute Agreement Analysis Enter study

information

Click OK

Page 86: Capacitacion de Minitab v14

86

Attribute Gauge R & R Output

Attribute Gage R&R StudyAttribute Gage R&R Study for Result

Within AppraiserAssessment Agreement

Appraiser # Inspected # Matched Percent (%) 95.0% CI Eric 7 7 100.0 ( 65.2, 100.0)John 7 7 100.0 ( 65.2, 100.0)

# Matched: Appraiser agrees with him/herself across trials.

Between AppraisersAssessment Agreement

# Inspected # Matched Percent (%) 95.0% CI 7 7 100.0 ( 65.2, 100.0)

# Matched: All appraisers' assessments agree with each other.

Graphical Output Session Window

Graph displays actual % result and 95% confidence interval Session window displays detailed results

Appraiser

Perc

ent

J ohnEric

100

80

60

40

20

0

95.0% CIPercent

Date of study: 13/10/2006Reported by: Paul WhiteName of product: BIW Panel Distortion

Assessment Agreement

Within Appraisers

Tip! A Kappa statistic is available to determine correlation within & between appraisers.

Page 87: Capacitacion de Minitab v14

87

Attribute Gauge R & R Summary

A ‘typical’ Attribute Gauge R&R Study includes: 1 to 3 operators (measurement takers) 30 samples 2 to 3 trials (measurements) of each sample by each operator Samples that are typical of the process (pass & fail)

An acceptable study is where 100% agreement between each operator and the Master Attribute has been achieved (if a Master Attribute is included).

Analysis of the results from a failed study can identify where improvements need to be made: Operator training Standardised inspection process Measurement Procedure

Page 88: Capacitacion de Minitab v14

88

Variable Gauge R & R

R&R studies are conducted to ensure the data collected is a true representation of what is occurring in the process.

The purpose of variable gauge R&R studies are to calculate the amount of measurement system variation in comparison to the process variation and the process tolerance.

A ‘typical’ variable gauge R&R Study includes: 1 to 3 operators (measurement takers) 10 samples 2 to 3 trials (measurements) of each sample by each

operator Samples that are typical of the process (in spec & out of

spec)

Page 89: Capacitacion de Minitab v14

89

ScenarioScenarioGandalf’s Castle has been under siege from the Orcs for several days

and he seems to be losing the battle. The main problem is that Gandalf’s long range weapons – the catapults –

keep missing the Orcs who are sheltering behind a ridge 200m away. They keep shooting either too long or too short.

Gandalf wants to improve the accuracy of his catapults.But, before he can improve the accuracy Gandalf must ensure he can

measure the distance repeatedly & reproducibly.

ExerciseConduct variable r&r study on catapult shot length.10 shots (or samples), 2 operators, 2 measurements per operatorRecord results on flip chart.

Variable Gauge R & R Exercise

Page 90: Capacitacion de Minitab v14

90

Variable Gauge R & R Exercise Stat / Quality Tools / Gage Study / Gage R&R Study (Crossed)

Stat / Quality Tools / Gage Study / Gage R&R Study (Crossed)

Tip! A Nested Gage R&R Study is available for a destructive measurement study.

Page 91: Capacitacion de Minitab v14

91

Variable Gauge R & R Exercise Stat / Quality Tools / Gage Study / Gage R&R Study (Crossed)

Enter part no. Operator & Measurement Data

Tip! Always enter the process tolerance via the options box. It is imperative to compare measurement system variation against the process variation & the process tolerance.

Page 92: Capacitacion de Minitab v14

92

Gage R&R Study – ANOVA Method

Gage name: Tin Foil Reported by: Paul White Date of study: 16th February 2006Tolerance: 0 +/-0.05 %ContributionSource Variance (of Variance) Total Gage R&R 19.62 1.59 Repeatability 17.73 1.44 Reproducibility 1.89 0.15 Part-to-Part 1212.92 98.41 Total Variation 1232.55 100.00

StdDev Study Var %Study VarSource (SD) (5.15*SD) (%SV) Total Gage R&R 4.4299 22.814 12.62 Repeatability 4.2110 21.687 11.99 Reproducibility 1.3752 7.082 3.92 Part-to-Part 34.8270 179.359 99.20 Total Variation 35.1076 180.804 100.00

Number of distinct categories = 11

Variable R & R Pass Criteria

% Study Variation must be < 30%

% Contribution must be < 9%

Distinct categories must be >=5

Tip! Gauge calibration does not negate the requirement to conduct an MSA. Calibration confirms the gauge is accurate, MSA ensures the whole measurement system is repeatable and reproducible.

Page 93: Capacitacion de Minitab v14

93

Variable R&R – Pass Criteria % Contribution% Contribution

Measurement Measurement System Variation as a percentage of Total Observed Process Variation (Variance)

% Study Variation % Study Variation

MMeasurement System Standard Deviation as a percentage of Total Observed Process Standard Deviation (using Standard Deviation)

% Tolerance % Tolerance

MMeasurement Error as a percentage of Tolerance

Number of Distinct Categories Number of Distinct Categories

Less Less than 5 indicates Attribute conditions

% Contribution % Study Variation (Process Control)

% Tolerance (Product Control) # of Distinct Categories

It is desirable to have ALL indicators Green

RR

YY

GG < 1% Good

2-9% Acceptable

> 9% Unacceptable RR

YY

GG < 10% Good

11-30% Acceptable

> 30% Unacceptable RR

YY

GG < 10% Good

11-30% Acceptable

> 30% Unacceptable RR

YY

GG > 10 Good

5-10 Acceptable

< 5 Unacceptable

Page 94: Capacitacion de Minitab v14

94

Per

cent

Part-to-PartReprodRepeatGage R&R

100

50

0

% Contribution% Study Var

Sam

ple

Ran

ge

30

15

0

_R=5.3

UCL=17.32

LCL=0

1 2

Sam

ple

Mea

n

200

100

0

__X=99.5UCL=109.4LCL=89.5

1 2

Part54321

200

100

0

Operator21

200

100

0

Part

Ave

rage

54321

200

100

0

12

Operator

Gage name: VernierDate of study: 13/06/2006

Reported by: Paul WhiteTolerance: N/A

Components of Variation

R Chart by Operator

Xbar Chart by Operator

Measurement by Part

Measurement by Operator

Operator * Part Interaction

Gage R&R (ANOVA) for Measurement

Variable R & R Diagnostic Graphs

Review the diagnostic graphs to identify sources of measurement system variation.

Overall health of Measurement System

Repeatability

Reproducibility

Repeatability & gauge linearity

Reproducibility across operators

Reproducibility across parts

Page 95: Capacitacion de Minitab v14

95

Catapult MSA

Analyse MSA data collected from catapult

Discuss results with team

Present findings to class

Page 96: Capacitacion de Minitab v14

96

Variable Gauge R & R Summary A ‘typical’ Variable Gauge R&R Study includes:

1 to 3 operators (measurement takers) 10 samples 2 to 3 trials (measurements) of each sample by each operator Samples that are typical of the process.

An acceptable study is where the total gauge R&R is less than 30% of the process spread or tolerance.

Distinct categories must be > = 5.

Analysis of the results from a failed study can identify where improvements need to be made: Standardised inspection process Operator training Measurement Procedure

Page 97: Capacitacion de Minitab v14

97

Summary – MSA

At conclusion of the MSA, the Six Sigma team should know:

The measurement system is capable of gathering data that accurately reflects variation in the process.

If there is measurement error, how big it is and a method of accounting for it.

Measurement increments are small enough to show variation.

Sources of measurement error have been identified

Page 98: Capacitacion de Minitab v14

Control Charts

‘Statistics is not a discipline like physics, chemistry or biology where we study a subject to solve problems in the same subject. We study statistics with the main aim of solving problems in other disciplines." - C.R. Rao

Page 99: Capacitacion de Minitab v14

99

Control Charts

Introduction to Control Charts

Control Limits

In Control

Out of Control

Attribute control charts

Variable control charts

Page 100: Capacitacion de Minitab v14

100

Control Charts A control chart is a run chart with upper and lower control limits (not

specification limits).

Control charts are used to detect and monitor process variation over time.

Distinguishes between special and common cause.

Data must be collected in ‘real time’.

It is important to record the ‘voice of the process’. Ensure all process events / changes are logged.

Can be used as a reference point to evaluate the impact of process changes.

Serves as a tool for ongoing control.

Page 101: Capacitacion de Minitab v14

101

Control Limits

1

2

3

4

5

7

8

9

Average +/- 3 S.D

99.73%

Upper Control Limit

Lower Control Limit

Control limits are calculated from the data from the process.

Control limits are not specification limits!

Page 102: Capacitacion de Minitab v14

102

In Control

A process is in control when all of the values are randomly spread between the control limits.

To be in control means the process is consistent.

1

2

3

4

5

7

8

9

1

2

3

4

5

7

8

9

Page 103: Capacitacion de Minitab v14

103

Out of Control

A process is out of control when one value exceeds the control limits.

This is special cause variation.

1

2

3

4

5

7

8

9

1

2

3

4

5

7

8

9

Page 104: Capacitacion de Minitab v14

104

Out of Control

A process is out of control when 9 readings fall on one side of the process average but inside the control limits.

This out of control condition indicates a process shift.

1

2

3

4

5

7

8

9

1

2

3

4

5

7

8

9

Page 105: Capacitacion de Minitab v14

105

Out of Control

A process is out of control when 6 readings in a row, display a continuous trend in an upward or downward direction.

This out of control condition indicates process drift / wear.

1

2

3

4

5

7

8

9

1

2

3

4

5

7

8

9

5566

SPC charts require ‘real time’ data collection.

Page 106: Capacitacion de Minitab v14

106

Out of Control Rules

Tools / Options / Control Charts / Define Tests

Tip! Minitab uses Nelson’s Test for Special Cause as they improved on the Western Electric Rules by aligning the probabilities of false alarm rates.

Tests for special cause

Tools / Options/ Control Charts / Define Tests

Page 107: Capacitacion de Minitab v14

107

Start

Is data Attribute or Variable?

Attribute Variable

Defects or Defective?

Is the subgroup

sample size contstant?

Is theamount of

opportunities for defect contstant?

p-chart np-chart u-chart c-chart

Is the subgroup sample size

greater than 10?

Is the subgroup sample size

greater than 1

Individual & Moving Range

- I & MR

Average & Range - Xbar &

R

Average & Standard Deviation - Xbar & S

YesNo

No

Yes

Yes

NoNoYes

Attribute Variable

Defective Defects

Control Chart Selection

Tip! There are other control charts available for special situations. A Cusum chart can be used when trying to detect small fluctuations in a process.

Page 108: Capacitacion de Minitab v14

108

P Chart

Stat / Control Charts / Attribute Charts / P-Chart

Select column with defective amounts

Tip! Use the scale options to display the date on the chart x-axis.

Select column with subgroup sample sizes in. I.e. Daily or weekly volume

Select OK

Stat / Control Charts / Attribute Charts/ P-Chart

Page 109: Capacitacion de Minitab v14

109

P Chart

A P Chart displays the proportion defective.

Tip! The P Chart is based on the Binomial distribution – pass or fail.

Date

Prop

ortio

n

09/0

2/20

06

07/0

2/20

06

05/0

2/20

06

03/0

2/20

06

01/0

2/20

06

30/0

1/20

06

28/0

1/20

06

26/0

1/20

06

24/0

1/20

06

22/0

1/20

060.4

0.3

0.2

0.1

0.0

_P=0.1097

UCL=0.2338

LCL=0

1P Chart of No of cars with Defective Vent

Tests performed with unequal sample sizes

Page 110: Capacitacion de Minitab v14

110

U Chart

Stat / Control Charts / Attribute Charts / U-Chart

Click OK

Select column with defects data

Select column with subgroup sample sizes in. I.e. Daily or weekly volume

Stat / Control Chart / Attribute Charts / U Chart

Page 111: Capacitacion de Minitab v14

111

U Chart

A U Chart displays the no of defects per unit.

Tip! The U Chart is based on the Poisson distribution – how many defects per item.

Date

Sam

ple

Coun

t Per

Uni

t

09/0

2/20

06

07/0

2/20

06

05/0

2/20

06

03/0

2/20

06

01/0

2/20

06

30/0

1/20

06

28/0

1/20

06

26/0

1/20

06

24/0

1/20

06

22/0

1/20

060.6

0.5

0.4

0.3

0.2

0.1

0.0

_U=0.1300

UCL=0.2732

LCL=0

1U Chart of No of Air Vents Defects

Tests performed with unequal sample sizes

Unequal subgroup sample sizes will create castellated control limits

Page 112: Capacitacion de Minitab v14

112

Variable Control Charts

Accuracy describesCentering

Precision describesSpread

Page 113: Capacitacion de Minitab v14

113

Individual & Moving Range Chart

Stat / Control Chart / Variables for Individuals / I&MR

Tip! Always title your chart using the Labels option box. All charts should have a title to aid reader interpretation.

Select column with measurement data

Click OK

Stat / Control Chart/ Variables for Individuals / I&MR

Page 114: Capacitacion de Minitab v14

114

Individual & Moving Range Chart I & MR chart shows the trend of individual data readings over time.

Tip! I & MR charts should be used to control process parameters (something that does not leave with the vehicle) I.e. Oven temperature, humidity, etc.

Displays the trend over time of individual readings. This part of the chart shows the accuracy of the process .

Displays the difference between consecutive readings. This part of the chart shows the precision of the process .

Date

Indi

vidu

al V

alue

15/02/200610/02/200605/02/200631/01/200626/01/200621/01/200616/01/200611/01/200606/01/200601/01/2006

11.0

10.5

10.0

9.5

9.0

_X=10.014

UCL=11.039

LCL=8.988

Date

Mov

ing

Rang

e

15/02/200610/02/200605/02/200631/01/200626/01/200621/01/200616/01/200611/01/200606/01/200601/01/2006

1.2

0.9

0.6

0.3

0.0

__MR=0.386

UCL=1.260

LCL=0

I-MR Chart of Tool 1

Page 115: Capacitacion de Minitab v14

115

Average & Range Chart

Stat / Control Chart / Variables for Sub-Groups / Xbar & R

Select column with measurement data

Click OK

Select subgroup size

Stat / Control Chart/ Variables for Sub-Groups / Xbar & R

Page 116: Capacitacion de Minitab v14

116

Average & Range Chart

Xbar & R chart shows the average reading per subgroup over time.

Displays the trend over time of the subgroup average readings. This part of the chart shows the accuracy of the process .

Displays the range for each subgroup. I.e. Difference between the highest & lowest reading within each subgroup. This part of the chart shows the precision of the process .

Tip! Xbar & R charts should be used to control process characteristics (something that leaves with the vehicle) I.e. Gap condition on a door, thickness of paint, wheel alignment etc.

Sample

Sam

ple

Mea

n

10987654321

10.50

10.25

10.00

9.75

9.50

__X=10.014

UCL=10.458

LCL=9.569

Sample

Sam

ple

Rang

e

10987654321

1.6

1.2

0.8

0.4

0.0

_R=0.770

UCL=1.629

LCL=0

Xbar-R Chart of Tool 1

Page 117: Capacitacion de Minitab v14

117

Control Charts Summary

A control chart is a run chart with upper and lower control limits (not specification limits).

Control charts are used to detect and monitor process variation over time.

Distinguishes between special and common cause.

It is important to record the ‘voice of the process’. Ensure all process events / changes are logged.

Can be used as a reference point to evaluate the impact of process changes.

Serves as a tool for ongoing control.

Page 118: Capacitacion de Minitab v14

Normality Test

‘Are statisticians normal?’

Page 119: Capacitacion de Minitab v14

119LSL Target USL

Normal Distribution

Normal Distribution

Data distribution characterized by a smooth, bell-shaped curve.

Page 120: Capacitacion de Minitab v14

120

The distribution of area as a percentage:

-3s -2s -1s X +1s +2s +3s

68.26%

95.44%

99.73%

0.135%

0.135%

Normal Distribution

Page 121: Capacitacion de Minitab v14

121

Normality Test

Stat / Basic statistics / Graphical summary.

Stat / Basic Statistics / Graphical Summary

Select variable

Click OK

Tip! Note the confidence level of 95% in the option window. This applies to the inferential statistics that will be displayed in the graphical summary.

Page 122: Capacitacion de Minitab v14

122

Normality Test

Normality test

P-Value > 0.05 indicates a normal distribution

10.810.410.09.6

Median

Mean

10.1510.1010.0510.009.959.90

1st Quartile 9.800Median 10.0253rd Quartile 10.240Maximum 10.839

9.922 10.105

9.915 10.126

0.268 0.400

A-Squared 0.19P-Value 0.902Mean 10.014StDev 0.321Variance 0.103Skewness -0.003050Kurtosis -0.106782N 50Minimum 9.310

Anderson-Darling Normality Test

95% Confidence I nterval for Mean

95% Confidence I nterval for Median

95% Confidence I nterval for StDev95% Confidence I ntervals

Summary for Tool 1

It is imperative to conduct a normality test when assessing variable data. The normal distribution is described by the mean and standard deviation (the

kurtosis & skewness provide additional info. about the shape of the curve). Control charts, process capability, 2 sample t-test and many other statistical

procedures are based on the normal distribution.

Page 123: Capacitacion de Minitab v14

123

Typical Distributions

The shape has a bell shape.It is symmetric.

The shape has two humps.It is bimodal.

The shape has a long tail.It is not symmetric.

The shape is flat. There are one or more outliers.

Page 124: Capacitacion de Minitab v14

124

Normality Test

Always conduct a normality test on variable data before conducting any statistical procedures.

I.e. Process capability, hypothesis testing etc.

Page 125: Capacitacion de Minitab v14

Process Capability

‘A knowledge of statistics is like a knowledge of foreign languages or of algebra; it may prove of use at any time under any circumstances’

Page 126: Capacitacion de Minitab v14

126

Process Capability

What is Process Capability?

Attribute Process Capability.

Variable Process Capability.

Sigma as a measure of capability.

Page 127: Capacitacion de Minitab v14

127

Process Capability

Capability analysis is a measure of how well a process is meeting the expectations of the customer.

It provides a current performance baseline for the process.

It can be used as a reference point to evaluate the impact of process changes.

It can be displayed by several indices dependent on the data type.

Page 128: Capacitacion de Minitab v14

128

VARIABLE DATA

Cp

Pp Ppk

Cpk

ATTRIBUTE DATA DPMODPUDPO

Capability Indices

Page 129: Capacitacion de Minitab v14

129

Attribute Process Capability

50 readings are required to calculate attribute process capability.

Determine if failure mode is defective or a defect. Defective: Item is pass or fail. Defects: Item has multiple defects.

If item is defective use: Defects Per Million Opportunities (DPMO).

If defects per item are being assessed, use: Defects Per Unit (DPU).

Page 130: Capacitacion de Minitab v14

130

DPMO

DPMO = Total number of defects

Total units Opportunities per unit 1,000,000

DPMO = 1,000,000D

N O

Calculate DPMO to identify baseline process capability. Unit (N) Defect (D) Opportunity (O) DPMO

DPMO ‘levels the playing field’ between different complexity processes.

I.e. The supplier of a bolt may only have 2 opportunities for failure whilst the supplier of the in-car entertainment system will have multiple opportunities due to a highly complex process.

Page 131: Capacitacion de Minitab v14

131

DPMO in Minitab

Six Sigma / Product Report

Select Six Sigma / Product Report

Enter defects, units & opportunities

Page 132: Capacitacion de Minitab v14

132

DPMO in Minitab

DPMO Metric

Six Sigma / Product Report

DPMO graphical

representation

It is imperative that the opportunities for failure are kept constant in the measure and the improve phases to validate the before and after condition. I.e. We are comparing ‘apples with apples’.

Short-Term Sigma

Page 133: Capacitacion de Minitab v14

133

Always assess for a stable process and a normal distribution before calculating variable capability indices.

• Normal Data: Cp / Cpk Pp / Ppk

•Non-Normal Data: Why is data non-normal? If non-normality is to be expected, conduct a box-cox transformation.

Variable Capability Analysis

Cp / Cpk & Pp / Ppk indices are based on the normal distribution. Therefore, it is imperative to assess for stability & normality before calculating capability.

Page 134: Capacitacion de Minitab v14

134

Variable process capability is the ability of a process output to ‘fit’ between the maximum and minimum specification limits which have been defined by the customer/engineer.

Variable Capability Analysis

43 5 6 743 5 6 7

Can this distribution from a process output fit between the specification limits of 5 1?

Page 135: Capacitacion de Minitab v14

135

LSL USL

Tolerance Process spread

LSL USL

Mean

Capability is an assessment of: process spread as a ratio of the process tolerance. – Cp / Pp

Cpk / Ppk is the location of the process mean with respect to both process specification limits.

Variable Capability Analysis

Page 136: Capacitacion de Minitab v14

136

Cp =

Cp =

Cp =

Cp =

Cp =

LSL USL

1

3

2

0.5

1

Cp Examples

Page 137: Capacitacion de Minitab v14

137

Cpkl = 1LSL USL

X

Cpkl = 5

X

Cpkl = 1X

Cpkl = 0.5 X

Cpkl = 3 X

Cpku = 1

Cpku= 1

Cpku = 3

Cpku= 0.5

Cpku = -1

Cpk Examples

Page 138: Capacitacion de Minitab v14

138

nominal

Cp = 3.70 UpperSpecification Limit

LowerSpecification

Limit

+3s-3s

Cp Example

Page 139: Capacitacion de Minitab v14

139

nominal

UpperSpecificationLimit

LowerSpecificati

onLimit

Once

Cp Example

How many times does the total process spread (+/- 3 standard deviations) fit inside the total tolerance?

Page 140: Capacitacion de Minitab v14

140

nominal

UpperSpecificationLimit

LowerSpecificati

onLimit

Cp ExampleOnceTwice

How many times does the total process spread (+/- 3 standard deviations) fit inside the total tolerance?

Page 141: Capacitacion de Minitab v14

141

nominal

UpperSpecificationLimit

LowerSpecificati

onLimit

Cp Example

How many times does the total process spread (+/- 3 standard deviations) fit inside the total tolerance?

OnceTwice3 times

Page 142: Capacitacion de Minitab v14

142

nominal

UpperSpecificationLimit

LowerSpecificati

onLimit

Cp ExampleOnceTwice3 timesAnd

0.7

How many times does the total process spread (+/- 3 standard deviations) fit inside the total tolerance?

Page 143: Capacitacion de Minitab v14

143

nominal

UpperSpecificationLimit

LowerSpecificati

onLimit

Cp Example

Cp = 3.70

Page 144: Capacitacion de Minitab v14

144

nominal

UpperSpecificationLimit

LowerSpecificati

onLimit

Cpk Lower ExampleOnce

How many times does half the total process spread (3 standard deviations) fit between the mean and the lower specification limit?

Page 145: Capacitacion de Minitab v14

145

nominal

UpperSpecificationLimit

LowerSpecificati

onLimit

Cpk Lower ExampleTwice

How many times does half the total process spread (3 standard deviations) fit between the mean and the lower specification limit?

Page 146: Capacitacion de Minitab v14

146

nominal

UpperSpecificationLimit

LowerSpecificati

onLimit

Cpk Lower Example3 Times

How many times does half the total process spread (3 standard deviations) fit between the mean and the lower specification limit?

Page 147: Capacitacion de Minitab v14

147

nominal

UpperSpecificationLimit

LowerSpecificati

onLimit

Cpk Lower Example4 Times

How many times does half the total process spread (3 standard deviations) fit between the mean and the lower specification limit?

Page 148: Capacitacion de Minitab v14

148

nominal

UpperSpecificationLimit

LowerSpecificati

onLimit

Cpk Lower Example5 Times

How many times does half the total process spread (3 standard deviations) fit between the mean and the lower specification limit?

Page 149: Capacitacion de Minitab v14

149

nominal

UpperSpecificationLimit

LowerSpecificati

onLimit

Cpk Lower Example

Cp = 3.70Cpkl = 5.00

Page 150: Capacitacion de Minitab v14

150

nominal

UpperSpecificationLimit

LowerSpecificati

onLimit

Cpk Upper Example

How many times does half the total process spread (3 standard deviations) fit between the mean and the upper specification limit?

Once

Page 151: Capacitacion de Minitab v14

151

nominal

UpperSpecificationLimit

LowerSpecificati

onLimit

Cpk Upper ExampleTwice

How many times does half the total process spread (3 standard deviations) fit between the mean and the upper specification limit?

Page 152: Capacitacion de Minitab v14

152

nominal

UpperSpecificationLimit

LowerSpecificati

onLimit

Cpk Upper ExampleAnd 0.4

How many times does half the total process spread (3 standard deviations) fit between the mean and the upper specification limit?

Page 153: Capacitacion de Minitab v14

153

nominal

UpperSpecificationLimit

LowerSpecificati

onLimit

Cp / Cpk Indices

Cp = 3.70Cpku = 2.4

Page 154: Capacitacion de Minitab v14

154

Manually calculate Cp / Cpk

Group Exercise

Cpk U = U.S.L. - Process Average

3 x SD

Cpk L = 3 x SD

Process Average - L.S.L.

Cp = Tolerance

6 x SD

• USL = 12• LSL = 8• Mean = 10.5• SD = 0.33

Page 155: Capacitacion de Minitab v14

155

Draw Process Capability

Use pencil & paper to draw the following distribution.

Mean = 10.5LSL = 8 USL =12

1 Standard Deviation = 0.33

8 109 11 12 137

Page 156: Capacitacion de Minitab v14

156

#1 #2

#3 #4

Relate Cp / Cpk to Archers Target

Page 157: Capacitacion de Minitab v14

157

Normal Capability Analysis in Minitab

Stat / Quality Tools / Normal Capability Analysis

Select Stat / Quality Tools /

Capability Analysis /

Normal

Remember! It is imperative that stability and normality tests are conducted before calculating Cpk / Ppk indices.

Page 158: Capacitacion de Minitab v14

158

Normal Capability Analysis in Minitab

Stat / Quality Tools / Capability Analysis / Normal

Select Column to

assess

Enter subgroup

size

Enter upper & lower spec.

limits

Click OK

Page 159: Capacitacion de Minitab v14

159

12.011.410.810.29.69.08.4

LSL USL

LSL 8Target *USL 12Sample Mean 10.0137Sample N 50StDev(Within) 0.331209StDev(Overall) 0.322772

Process Data

Cp 2.01CPL 2.03CPU 2.00Cpk 2.00

Pp 2.07PPL 2.08PPU 2.05Ppk 2.05Cpm *

Overall Capability

Potential (Within) Capability

PPM < LSL 0.00PPM > USL 0.00PPM Total 0.00

Observed PerformancePPM < LSL 0.00PPM > USL 0.00PPM Total 0.00

Exp. Within PerformancePPM < LSL 0.00PPM > USL 0.00PPM Total 0.00

Exp. Overall Performance

WithinOverall

Process Capability of Tool 1

Normal Capability Analysis in Minitab

Stat / Quality Tools / Capability Analysis / Normal

Short Term Capability

Long Term Capability

For a process to be deemed ‘capable’, the Cpk must be >= 1.67 & the Ppk >= 1.33.

Page 160: Capacitacion de Minitab v14

160

For example:

Cpk of 1 = Sigma value of 3

Cpk of 0.5 = Sigma value of 1.5

By converting DPMO and Cpk to a Sigma value we can compare performance between attribute and variable processes.

The higher the Sigma value, the better the process.

To convert Cpk to Sigma we merely multiply the Cpk value by 3 to get the Sigma value.

Cpk conversion to Sigma

Page 161: Capacitacion de Minitab v14

161

}

Sigma is a universal measure of process performance.

Advantage of using Sigma

VARIABLE DATA

Cp

Pp Ppk

Cpk

ATTRIBUTE DATA DPMODPUDPO

Page 162: Capacitacion de Minitab v14

Hypothesis Testing

‘Statistics is never having to say you are right’

Page 163: Capacitacion de Minitab v14

163

Hypothesis Testing

Hypothesis Testing Overview

Hypothesis Testing - Proportions

Hypothesis Testing – Variances

Hypothesis Testing - Means

Page 164: Capacitacion de Minitab v14

164

Hypothesis Testing Overview

Provides objective solutions to questions which are traditionally answered subjectively.

Can be used to determine a difference in proportions, means and variances (standard deviation).

Graphical analysis indicates a potential difference. Hypothesis testing infers a statistically significant difference

(with a degree of confidence).

A hypothesis test should always be conducted in the improve phase to validate the improvements to the baseline process capability.

Page 165: Capacitacion de Minitab v14

165

Variable orAttribute Data? 1 or 2 Factor?

1 or >1 Levels?

Contingency Table

HO : FA Independent FBHA : FA Dependent FB

Stat>Tables>Chi2 Test

Attribute 2Factor

1 Factor

2-Proportion Test

Stat>Basic Stat>2-Proportion

2 Samples2 levels to tes t for

each 2 levels

1-Proportion Test

Stat>Basic Stat>1-Proportion

1 Sample1 levelto test

Is data normal?

1, 2 or >2levels?

Test formean or sigma?

1-Sample t Test

Stat>Basic Stat>1-Sample t

Chi2 Test

Stat>BasicStat>Display Desc>Graphical Summary(if target sigma falls

between CI, then fail toreject H O )

F Test

Stat>ANOVA>Homogeneity of

Variance

2-Sample t Test

Stat>Basic Stat>2-Sample t

(if sigmas are equal, usepooled std dev to compare.

If sigmas are unequalcompare means using

unpooled std dev)

1 level

2 levels

Test formeans

Test forsigmas

Bartlett's Test

Stat>ANOVA>Homogeneity of VarianceIf sigmas are NOT equal, proceed with caution or use

Welch's Test, which is not available in M initab

More than2 levels

1-Way ANOVA(assumes equality of

variances)

Stat>ANOVA>1-Way(then select stacked or

unstacked data)

Test for means

Data Normal

HO: 1 = t

HA: 1 t

t = target

Levene's Test

Stat>ANOVA>Homogeneity of Variance

If HO is rejected, then you cango no further

Datanot

Normal

1, 2 or morelevels?

Test medianor sigma?

1 level

Chi2 Test

Stat>BasicStat>Display Desc>Graphical Summary(if target sigma falls

between CI, then fail toreject H O )

HO: 1 = t

HA: 1 t

t = target

Test for sigmas

1-Sample Wilcoxon or1-Sample Sign

Stat>Non-parametric>and either 1-Sample

Sign or 1-SampleWilcoxon

TestMedians

2 ormorelevels

M ann-Whitney Test

Stat>Non-parametric>M ann-Whitney

M ood's M edian Test(used with outliers)

Stat>Non-parametric>M ood's test

Kruskal-Wallis Test(assumes outliers)

Stat>Non-parametric>Kruskal-W allis

2 ormorelevels

HO: M1 = M2

= M3 ...

HA: M i M j for i j

(or at least one is different)

HO: M1 = M2

= M3 ...

HA: M i M j for i j

(or at least one is different)

HO: M1 = Mt

HA: M1 Mt

t = target

HO: M1 = M2

HA: M1 M2

H O: 1 = 2

= 3 ...

H A : i j for i j

(o r a t le ast o ne is d iffe rent)

HO: 1 = t

HA: 1 t

t = target

HO: 1 = 2

= 3 ...

HA: i j for i j

(or at least one is different)

HO: 1 = 2

HA: 1 2

HO: 1 = 2

= 3 ...

HA: i j for i j

(or at least one is different)

HO: P1 = Pt

HA: P1 Pt

t = target

HO: P1 = P2

HA: P1 P2

2 levels only

If P > 0.05, then fail to reject H O If P < 0.05, then reject H O Ensure the correct sam ple size is taken.

1, 2 or moreFactors?

Variable

2 levels or> 2 levels?

Fail to rejec t H O

Courtesy of Jeff Railton and Andy Battyof Seagate Technology.Revised: June 23, 1999

(Hypothesis Roadmap E.vsd)

ST ART >>>

2 or more Factors

1Factor

HO : Data is normalH A : Data is not normal

Stat>Basic Stat>Normality Test orStat>Basic Stat>Descriptive Statistics

(graphical summary)

HO: 1 = 2

HA: 1 2

ANOVA orMultiple Regression

Is DataDependent?

No,Data is drawnindependently

from twopopulations

Paired t Test

Stat>Basic Stat>Paired t

HO: 1 = 2

HA: 1 2

Yes,Data isPaired

Test formean or sigma?

Test forsigmas

Test formeans

Hypothesis Testing Roadmap

Page 166: Capacitacion de Minitab v14

166

Hypothesis Testing – Proportions

Stat / Basic Statistics / 2 Proportions

Stat / Basic Statistics / 2 Proportions

Enter trials (sample size) & events (defects)

in the option box

Click OK

Page 167: Capacitacion de Minitab v14

167

Hypothesis Testing – Proportions

Stat / Basic Statistics / 2 Proportions

P-Value < 0.05 indicates a significant difference

Either accept, or fail to accept the null hypothesis. It is assumed there is no difference unless proven otherwise. I.e. Innocent until proven guilty!

Page 168: Capacitacion de Minitab v14

168

Hypothesis Testing – Variances

Stat / Basic Statistics / 2 Variances

Stat / Basic Statistics / 2 Variances

Always conduct a normality test before conducting a hypothesis test on variable data.

Enter variables to

compare

Click OK

Page 169: Capacitacion de Minitab v14

169

Hypothesis Testing – Variances

Stat / Basic Statistics / 2 Variances

Standard deviation & confidence

interval

95% Bonferroni Confidence Intervals for StDevs

Tool 2

Tool 1

2.01.51.00.5

Data

Tool 2

Tool 1

1413121110987

Test Statistic 0.04P-Value 0.000

Test Statistic 57.07P-Value 0.000

F-Test

Levene's Test

Test for Equal Variances for Tool 1, Tool 2

P-Value < 0.05 indicates a significant difference

Use the F-Test statistic for normal data and Levene’s Test statistic for non-normal data.

Page 170: Capacitacion de Minitab v14

170

Hypothesis Testing – Means

Stat / Basic Statistics / 2 Sample t

Stat / Basic Statistics /

2 Sample t

Always conduct a normality and 2 variances test before conducting a 2 Sample T test. However, if the sample sizes are equal, the requirement to conduct a 2 variances test is not applicable.

Enter variables to

compare

Select equal variances if applicable

Click OK

Select boxplot

Page 171: Capacitacion de Minitab v14

171

Hypothesis Testing – Means

Stat / Basic Statistics / 2 Sample t

P-Value >= 0.05 infers that the

means are from the same

population

If the P is low, the null must go!

Page 172: Capacitacion de Minitab v14

172

Summary

What is Six Sigma? Introduction to Minitab Version 14 Manipulation of data Basic statistics Graphs Quality tools Measurement System Analysis – R & R Control charts Normality testing Capability analysis Hypothesis Testing

Page 173: Capacitacion de Minitab v14

173

Questions and Answers

Created by Paul White - Aston Martin Six Sigma DepartmentSources:Ford Six Sigma Black Belt Training Material 2006Ford Six Sigma Green Belt Training Material Version 5.0Jaguar SPC Training Material 2004


Recommended