Ch6-2 SPC-Attribute Control Charts

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Chapter 6 - Part 2 Chapter 6 - Part 2 SPC – Attribute Control Charts

description

Control Charts

Transcript of Ch6-2 SPC-Attribute Control Charts

Page 1: Ch6-2 SPC-Attribute Control Charts

Chapter 6 - Part 2Chapter 6 - Part 2

SPC – Attribute Control Charts

Page 2: Ch6-2 SPC-Attribute Control Charts

Types of Control ChartsTypes of Control Charts Attribute charts

Monitor fraction of defective units Monitor number of defects Difference between “defective unit” and a

“defect?” A defective unit is a unit that is either defective. A defect is flaw on a given unit of a product. A unit can have many defects. A defective unit may be defined as, for example, a unit

that has 3 or more defects.

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Types of Control ChartsTypes of Control Charts Variables charts

Monitors continuous quality characteristics. Continuous values (variables data) can

theoretically assume an infinite number of values in some interval. Time Weight Ounces Diameter

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Types of ControlTypes of Control

Control Chart Monitors

Attribute control charts

p chart Process fraction defective

c chart number of defects

u chart defects per unit

Variables control charts

X-bar chart Process mean

R chart (Range Chart) Process variability

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Use of p-ChartsUse of p-Charts

When observations can be placed into two categories. Good or bad Pass or fail Operate or doesn’t operate

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p-chartp-chart A company that makes light bulbs wants to

monitor the fraction of defective bulbs. The company decides to select a random

sample of 100 bulbs in each day over a 5 day period

Each of the 100 bulbs are tested to determine if they light up.

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p-chartp-chart If a bulb does not light up, the bulb is

defective. The company wants to

Estimate the percentage of defective bulbs and Determine if the percentage of defective bulbs

is increasing over time. A p chart is the appropriate tool for providing

the company with this information.

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NotationNotation

Sample size = n = 100

Number of samples (subgroups) = k = 5

X = number of defective bulbs in a sample

p = sample fraction defective = ???

p-bar = estimated process fraction defective P = process fraction defective (unknown)

p-bar is an estimate of P

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Inspection ResultsInspection Results

Day n X1 100 202 100 53 100 304 100 355 100 24

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Compute Compute pp and and pp-bar-bar

Day n X p=X/n1 100 20 0.202 100 5 0.053 100 30 0.304 100 35 0.355 100 24 0.24

Sum 1.14p-bar 0.23

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pp-bar -bar (Estimated Process Fraction (Estimated Process Fraction

Defective)Defective)

k

pp bar -p

23.05

14.1

k

pp

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n

pppLCL

n

pppUCL

)1(3

)1(3

p-Chart Control Limitsp-Chart Control Limits

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104.100

)23.1(23.323.

356.100

)23.1(23.323.

LCL

UCL

p-Chart - Control Limitsp-Chart - Control Limits

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p-Chart for Bulbs

0

0.1

0.2

0.3

0.4

1 2 3 4 5

Day

p

LCL

UCL

p-bar

p

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InterpretationInterpretation The estimated fraction of defective bulbs

produced is .23. On Day 2, p was below the LCL. This means that a special cause occurred on

that day to cause the process to go out of control.

The special cause shifted the process fraction defective downward.

This special cause was therefore favorable and should be ???

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InterpretationInterpretation After Day 2, the special cause lost its impact

because on Day 4, the process appears to be back in control and at old fraction defective of .23.

Until the special cause is identified and made part of the process, the process will be unstable and unpredictable.

It is therefore impossible to obtain a statistical valid estimate of the process fraction defective because it can change from day to day.

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UCL

LCL

p-Chart

Process fractions defective is shifting (trending) upward

SamplingDistribution

P = process fraction

defective PP

PP

Trend Within Control LimitsTrend Within Control Limits

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ApplicationsApplications Think of an application of a p-chart in:

Sales Shipping department Law

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Use of c-ChartsUse of c-Charts

When we are interested in monitoring number of defects on a given unit of product or service. Scratches, chips, dents on an airplane wing Errors on an invoice Pot holes on a 5-mile section of highway Complaints received per day

Opportunity for a defect must be infinite. Probability of a defect on any one location

or any one point in time must be small.

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c-Chartc-Chart

c-chart notation:

c = number of defects

k = number of samples

defects ofnumber mean estimatedc bar -c

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c-Chartc-Chart

A car company wants to monitor the number of paint defects on a certain new model of one of its cars.

• Each day one car in inspected.• The results after 5 days are shown on the

next slide.

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c-Chartc-Chart

Day c c-bar LCL UCL1 5 6.6 0 14.3072 2 6.6 0 14.3073 8 6.6 0 14.3074 7 6.6 0 14.3075 11 6.6 0 14.307

Sum c 33c-bar 6.60

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k

cc

c-Chart - Meanc-Chart - Mean

6.65

33

k

cc

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ccUCL

ccLCL

3

3

c-Chart – Control Limitsc-Chart – Control Limits

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307.14

6.636.6

3

0or 107.1

6.636.6

3

ccUCL

ccLCL

c-Chart – Control Limitsc-Chart – Control Limits

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c-Chart for Number of Paint Defects

0

2

4

6

8

10

12

14

16

1 2 3 4 5

Car

c, n

um

be

r o

f d

efe

cts

c

LCL

UCL

c-bar

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ConclusionConclusion Process shows upward trend. Even though trend is within the control limits,

the process is out of control. Mean is shifting upward This is due to an unfavorable special cause. Must identify special cause and eliminate it

from process. Who is responsible for finding and eliminating

special cause?

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Mini CaseMini Case Think of an application of a c-chart bank.

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u-Chartu-Chart With a c chart, the sample size is one unit.

A u-chart is like a c-chart, except that the sample size is greater than one unit.

As a result, a u-chart tracks the number of defects per unit.

A c-chart monitors the number of defects on one unit.

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u-Chartu-Chart A car company monitors the number of paint defects per car by taking a sample of 5 cars each day over the next 6 days.

The results are shown on next side.

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Day n c u=c/n u-bar LCL UCL1 5 45 9.0 10.5 6.18 14.8882 5 58 11.6 10.5 6.18 14.8883 5 48 9.6 10.5 6.18 14.8884 5 53 10.6 10.5 6.18 14.8885 5 68 13.6 10.5 6.18 14.8886 5 44 8.8 10.5 6.18 14.888

Sum u 63.2u-bar 10.5

u-Chartu-Chart

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k

uu

5.106

2.63

k

uu

u-Chartu-Chart

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n

uuUCL

n

uuLCL

3

3

u-Chartu-Chart

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89.145

5.1035.10

3

18.65

5.1035.10

3

n

uuUCL

n

uuLCL

u-Chartu-Chart

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u-Chartu-Chart

u-Chart Number of Paint Defects Per Car

0

2

4

6

8

10

12

14

16

1 2 3 4 5 6

Car

c, n

um

ber

of

def

ects

LCL

UCL

u

u-bar

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ConclusionConclusion The process appears stable. We can therefore get a statistically valid

estimate the process mean number of defects per car.

Our estimate of the mean number of paint defects per car is 10.5, the center line on the control chart.

Thus, we expect each car to have, on average, 10.5 paint defects.

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ConclusionConclusion Although the process is stable, the number of

defects per car is too high. Deming calls this a stable process for the

production of defective product. Important take away:

A stable process (process in control) is not necessarily a good process because it can be in control at the wrong level.

A stable process is predictable, but this doesn’t mean that what is being predicted is favorable.

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Mini CaseMini Case Who is responsible for improving this

process?

What is required to improve the process?

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u-Chart vs. c-Chartu-Chart vs. c-Chart

n

cu

If n = 1, u = c and .cu

Control limits of the two chart will thereforebe the same.

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Sample SizeSample Size

Control Chart When To Use Sample Size

p-Chart Monitor the proportion of defectives in a process

At least 50

c-Chart Monitor the number of defects

1

u-chart Monitor the number of defects per unit

>1

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In PracticeIn Practice You need 25 to 30 samples before computing

initial control limits. When a special cause occurs, you should

eliminate that sample and re-compute control limits if Special cause is identified Eliminated or made part of process

To identify special causes, workers must keep log sheet, where they record any changes they make to the process.

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Tracking ImprovementsTracking Improvements

UCL

LCL

LCLLCL

UCLUCL

Process not centeredand not stable

Process centeredand stable

Additional improvementsmade to the process