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Process Capability and Statistical Process Control

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Chapter 9A. Process Capability and Statistical Process Control. Learning Objectives. Explain what statistical quality control is. Calculate the capability of a process. Understand how processes are monitored with control charts for both attribute and variable data. - PowerPoint PPT Presentation

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Page 1: Chapter 9A

Process Capability and Statistical Process Control

Page 2: Chapter 9A

1. Explain what statistical quality control is.2. Calculate the capability of a process.3. Understand how processes are monitored

with control charts for both attribute and variable data

Page 3: Chapter 9A

How many paint defects are there in the finish of a car?

How long does it take to execute market orders?

How well are we able to maintain the dimensional tolerance on our ball bearing assembly?

How long do customers wait to be served from our drive-through window?

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Page 4: Chapter 9A

Assignable variation: caused by factors that can be clearly identified and possibly managed◦ Example: a poorly trained employee that creates

variation in finished product output Common variation: variation that is

inherent in the production process◦ Example: a molding process that always leaves

“burrs” or flaws on a molded item

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Page 5: Chapter 9A

When variation is reduced, quality is improved

However, it is impossible to have zero variation◦ Engineers assign acceptable limits for variation◦ The limits are know as the upper and lower

specification limits Also know as upper and lower tolerance limits

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Page 6: Chapter 9A

Traditional view is that quality within the range is good and that the cost of quality outside this range is constant

Taguchi views costs as increasing as variability increases, so seek to achieve zero defects and that will truly minimize quality costs

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Page 7: Chapter 9A

Taguchi argues that tolerance is not a yes/no decision, but a continuous function

Other experts argue that the process should be so good the probability of generating a defect should be very low

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Page 8: Chapter 9A

Process limits

Specification limits

How do the limits relate to one another?

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Page 9: Chapter 9A

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Page 10: Chapter 9A

Capability index (Cpk) shows how well parts being produced fit into design limit specifications

Also useful to calculate probabilities

3

X-UTLor

3

LTLXmin=Cpk

XUTL

ZXLTL

Z UTLLTL

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Page 11: Chapter 9A

Data◦ Designed for an average of 60 psi

Lower limit of 55 psi, upper limit of 65 psi◦ Sample mean of 61 psi, standard deviation of

2 psi Calculate Cpk

6667.06667.0,1min

23

6165,

23

5561min

3,

3min

xUSLLSLx

C pk

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Page 12: Chapter 9A

02410.002275.000135.0)2or 3(

02275.0)2(

22

6165

psi 65 than More

00135.0)3(

32

6155

psi 55 than Less

ZZP

ZP

XXZ

ZP

XXZ

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Page 13: Chapter 9A

We are the maker of this cereal. Consumer Reports has just published an article that shows that we frequently have less than 15 ounces of cereal in a box.

Let’s assume that the government says that we must be within ± 5 percent of the weight advertised on the box.

Upper Tolerance Limit = 16 + .05(16) = 16.8 ounces

Lower Tolerance Limit = 16 – .05(16) = 15.2 ounces

We go out and buy 1,000 boxes of cereal and find that they weight an average of 15.875 ounces with a standard deviation of .529 ounces.

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Page 14: Chapter 9A

Specification or Tolerance Limits◦ Upper Spec = 16.8 oz◦ Lower Spec = 15.2 oz

Observed Weight◦ Mean = 15.875 oz◦ Std Dev = .529 oz

3

;3

XUTLLTLXMinC pk

)529(.3

875.158.16;

)529(.3

2.15875.15MinC pk

5829.;4253.MinC pk

4253.pkC

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Page 15: Chapter 9A

An index that shows how well the units being produced fit within the specification limits.

This is a process that will produce a relatively high number of defects.

Many companies look for a Cpk of 1.3 or better… 6-Sigma company wants 2.0!

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Page 16: Chapter 9A

Attribute (Go or no-go information)◦ Defectives refers to the acceptability of product

across a range of characteristics.◦ Defects refers to the number of defects per unit

which may be higher than the number of defectives.◦ p-chart application

Variable (Continuous)◦ Usually measured by the mean and the standard

deviation.◦ X-bar and R chart applications

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Page 17: Chapter 9A

Statistical Process Control (SPC) Charts

UCL

LCL

Samples over time

1 2 3 4 5 6

UCL

LCL

Samples over time

1 2 3 4 5 6

UCL

LCL

Samples over time

1 2 3 4 5 6

Normal BehaviorNormal Behavior

Possible problem, investigatePossible problem, investigate

Possible problem, investigatePossible problem, investigate

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Page 18: Chapter 9A

x

0 1 2 3-3 -2 -1z

Standard deviation units or “z” units.

Standard deviation units or “z” units.

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Page 19: Chapter 9A

We establish the Upper Control Limits (UCL) and the Lower Control Limits (LCL) with plus or minus 3 standard deviations from some x-bar or mean value. Based on this we can expect 99.73% of our sample observations to fall within these limits.

xLCL UCL

99.73%

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Page 20: Chapter 9A

Created for good/bad attributes Use simple statistics to create the

control limits

p

p

p

zspLCL

zspUCL

n

pps

p

1

size Sample samples ofNumber

samples all from defects ofnumber Total

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Page 21: Chapter 9A

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Page 22: Chapter 9A

1 – 2- 5- 7 Rule 1 point above UCL or 1 point below LCL 2 consecutive points near the UCL or 2

consecutive points near the LCL 5 consecutive decreasing points or 5

consecutive increasing points 7 consecutive points above the center line

or 7 consecutive points below the center line

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Page 23: Chapter 9A

00063.000990.0303033.03

06003.000990.0303033.03

00990.0300

03033.0103033.01

03033.0000,3

91

size Sample x samples ofNumber

samples all from defects ofnumber Total

p

p

p

spLCL

spUCL

n

pps

p

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Page 24: Chapter 9A

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Page 25: Chapter 9A

In variable sampling, we measure actual values rather than sampling attributes

Generally want small sample size1. Quicker2. Cheaper

Samples of 4-5 are typical Want 25 or so samples to set up chart

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Page 26: Chapter 9A

level confidence specific afor deviations standard ofNumber z

process for theset lue target vaaor means sample of Average X

size Sample n

ondistributi process theofdeviation Standard s

means sample ofdeviation Standard s

where

UCL

X

X

X

ns

zsXLCL

zsX

X

X

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Page 27: Chapter 9A

RD

RD

R

RAX

RAX

X

3R

4R

2X

2X

LCL

UCL

Chart

LCL

UCL

Chart

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Page 28: Chapter 9A

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Page 29: Chapter 9A

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Page 30: Chapter 9A

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