Student’s Solutions Manual and Study Guide: Chapter 18 Page 1

Chapter 18

Statistical Quality Control

LEARNING OBJECTIVES

Chapter 18 presents basic concepts in quality control, with a particular emphasis on statistical quality control techniques, thereby enabling you to:

1. Explain the meaning of quality in business, compare the approaches to quality improvement by various quality gurus and movements, and compare different approaches to controlling the quality of a product, including benchmarking, just-in-time inventory systems, Six Sigma, lean manufacturing, reengineering, failure mode and effects analysis, poka-yoke, and quality circles.

2. Compare various tools that identify, categorize, and solve problems in the quality improvement process, including flowcharts, Pareto analysis, cause-and-effect diagrams, control charts, check sheets, histograms, and scatter charts.

3. Measure variation among manufactured items using various control charts, including ̄x charts, R charts, p charts, and c charts.

CHAPTER OUTLINE

18.1 Introduction to Quality Control

What is Quality Control?

Total Quality Management

Quality Gurus

Six Sigma

Design for Six Sigma

Lean Manufacturing

Some Important Quality Concepts

Benchmarking

Just-in-Time Inventory Systems

Reengineering

Failure Mode and Effects Analysis (FMEA)

Poka-Yoke

Quality Circles and Six Sigma Teams

18.2 Process Analysis

Flowcharts

Pareto Analysis

Cause-and-Effect (Fishbone) Diagrams

Control Charts

Check Sheets or checklists

Histogram

Scatter Chart or Scatter Diagram

18.3 Control Charts

Variation

Types of Control Charts

Chart

R Charts

p Charts

c Charts

Interpreting Control Charts

KEY TERMS

After-Process Quality Control Pareto Analysis

Benchmarking Pareto Chart

c Chart Poka-Yoke

Cause-and-Effect Diagram Process

Centerline Product Quality

Check Sheet Quality

Control Chart Quality Circle

Design for Six Sigma (DFSS) Quality Control

Failure Mode and Effects Analysis (FMEA) R Chart

Fishbone Diagram Reengineering

Flowchart Scatter Chart

Histogram Six Sigma

In-Process Quality Control Team Building

Ishikawa Diagram Total Quality Management (TQM)

Just-in-Time (JIT) Inventory Systems Transcendent Quality

Lean Manufacturing Upper Control Limit (UCL)

Lower Control Limit (LCL) User Quality

Manufacturing-based Quality Value Quality

p Chart Chart

STUDY QUESTIONS

1. The collection of strategies, techniques, and actions taken by an organization to assure themselves that they are producing a quality product is ______.

2. Measuring product attributes at various intervals throughout the manufacturing process in an effort to pinpoint problem areas is referred to as ______quality control.

3. Inspecting the attributes of a finished product to determine whether the product is acceptable, is in need of rework, or is to be rejected and scrapped is ______quality control.

4. An inventory system in which no extra raw materials or parts are stored for production is called a ______system.

5. When a group of employees are organized as an entity to undertake management tasks and perform other functions such as organizing, developing, and overseeing projects, it is referred to as ______.

6. A ______is a small group of workers, usually from the same department or work area, and their supervisor, who meet regularly to consider quality issues.

7. The complete redesigning of a company's core business process is called ______. This usually involves innovation and is often a complete departure from the company's normal way of doing business.

8. A systematic way for identifying the effects of potential product or process failure

including methodology for eliminating or reducing the chance of a failure occurring is

______.

9. A quality concept that means “mistake proofing” and uses devices, methods, or

inspections in order to avoid machine error or simple human error is ______.

10. A total quality management approach that measures the capability of a process to

perform defect-free work is called ______.

11. A methodology in which a company attempts to develop and establish total quality management from product to process by examining and emulating the best practices and techniques used in their industry is called ______.

12. A quality scheme that places an emphasis on designing the product or process right the first time is ______.

13. A quality management philosophy that focuses on the reduction of wastes and the

elimination of unnecessary steps in an operation or process is ______.

14. A graphical method for evaluating whether a process is or is not in a state of statistical control is called a ______.

15. A diagram that is shaped like a fish and displays potential causes of one problem is called a ______or ______diagram.

16. A bar chart that displays a quantitative tallying of the numbers and types of defects that occur with a product is called a ______.

17. Two types of control charts for measurements are the ______chart and the

______chart. Two types of control charts for attribute compliance are the

______chart and the ______chart.

18. An x bar chart is constructed by graphing the ______of a given

measurement computed for a series of small samples on a product over a period of

time.

19. An R chart plots the sample ______. The centerline of an R chart is

equal to the value of ______.

20. A p chart graphs the proportion of sample items in ______

for multiple samples. The centerline of a p chart is equal to ______.

21. A c chart displays the number of ______per item or unit.

22. Normally, an x bar chart is constructed from 20 to 30 samples. However, assume

that an x bar chart can be constructed using the four samples of five items shown

below:

Sample 1 Sample 2 Sample 3 Sample 4

23 21 19 22

22 18 20 24

21 22 20 18

23 19 21 16

22 19 20 17

The value of A2 for this control chart is ______.

The centerline value is ______.

The value of is ______.

The value of UCL is ______.

The value of LCL is ______.

The following samples have means that fall outside the outer control limits

______. In constructing an R chart from these data, the

value of the centerline is ______. The value of D3 is

______and the value of D4 is ______. The UCL of the R

chart is ______and the value of LCL is ______.

The following samples have ranges that fall outside the outer control limits

______.

23. p charts should be constructed from data gathered from 20 to 30 samples. Suppose,

however, that a p chart could be constructed from the data shown below:

Sample n Number out of Compliance

1 70 3

2 70 5

3 70 0

4 70 4

5 70 3

6 70 6

The value of the centerline is ______.

The UCL for this p chart is ______.

The LCL for this p chart is ______.

The samples with sample proportions falling outside the outer control limits are

______.

24. c charts should be constructed using at least 25 items or units. Suppose, however,

that a c chart could be constructed from the data shown below:

Item Number of

Number Nonconformities

1 3

2 2

3 2

4 4

5 0

6 3

7 1

The value of the centerline for this c chart is ______.

The value of UCL is ______and the value of

LCL is ______.

25. A process is considered to be out of control if ______or more consecutive

points occur on one side of the centerline of the control chart.

26. Four possible causes of control chart abnormalities are (at least eight are mentioned

in the text) ______, ______, ______, and

______.

ANSWERS TO STUDY QUESTIONS

1. Quality Control 16. Pareto Chart

2. In-Process 17. , R, p, c

3. After-Process 18. Means

4. Just-in-Time 19. Ranges,

5. Team Building 20. Noncompliance, p (average

proportion)

6. Quality Circle

21. Nonconformances

7. Reengineering

22. 0.577, 20.35, 4.0, 22.658, 18.042,

8. FMEA None, 4.0, 0, 2.115, 8.46, 0.00, None

9. Poka-Yoke 23. .05, .128, .000, None

10. Six Sigma 24. 2.143, 6.535, 0.00

11. Benchmarking 25. 8

12. Design for Six Sigma 26. Changes in the Physical Environment,

Worker Fatigue, Worn Tools, Changes

13. Lean Manufacturing in Operators or Machines,

Maintenance, Changes in Worker

14. Control Chart Skills, Changes in Materials, Process

Modification

15. Fishbone, Ishikawa

SOLUTIONS TO PROBLEMS IN CHAPTER 18

18.5 = 4.55, = 4.10, = 4.80, = 4.70,

= 4.30, = 4.73, = 4.38

R1 = 1.3, R2 = 1.0, R3 = 1.3, R4 = 0.2, R5 = 1.1, R6 = 0.8, R7 = 0.6

= 4.51 = 0.90

For Chart: Since n = 4, A2 = 0.729

Centerline: = 4.51

UCL: + A2 = 4.51 + (0.729)(0.90) = 5.16

LCL: - A2 = 4.51 – (0.729)(0.90) = 3.85

For R Chart: Since n = 4, D3 = 0 D4 = 2.282

Centerline: = 0.90

UCL: D4 = (2.282)(0.90) = 2.05

LCL: D3 = 0

Chart:

R Chart:

18.7 = .025, = .000, = .025, = .075,

= .050, = .125, = .050

= .050

Centerline: = .050

UCL: .05 + 3 = .05 + .1034 = .1534

LCL: .05 - 3 = .05 - .1034 ~ .000

p Chart:

The proportion for sample 2 is very close to the lower quality control limit.

18.9 = = 1.344

Centerline: = 1.344

UCL: = 1.344 + 3 =

1.344 + 3.478 = 4.822

LCL: = 1.344 - 3 =

1.344 - 3.478 ~ 0.000

c Chart:

None of the points are beyond the control limits. However, some

points are close to LCL.

18.11 While there are no points outside the limits, the first chart exhibits some

problems. The chart ends with 9 consecutive points below the centerline.

Of these 9 consecutive points, there are at least 4 out of 5 in the outer 2/3 of the lower region. The second control chart contains no points outside the control limits. However, near the end, there are 8 consecutive points above the centerline. The p chart contains no points outside the upper control limit. Three times, the chart contains two out of three points in the outer third. However, this occurs in the lower third where the proportion of noncompliance items approaches zero and is probably not a problem to be concerned about. Overall, this seems to display a process that is in control. One concern might be the wide swings in the proportions at samples 15, 16 and 22 and 23.

18.13

Problem / Frequency / % of Total / Cumulative %
1 / 673 / 27.0 / 27.0
6 / 564 / 22.6 / 49.6
8 / 402 / 16.1 / 65.7
4 / 379 / 15.2 / 80.9
10 / 202 / 8.1 / 89.0
3 / 108 / 4.3 / 93.3
5 / 73 / 2.9 / 96.2
9 / 54 / 2.2 / 98.4
2 / 29 / 1.2 / 99.6
7 / 12 / 0.5 / 100
Total / 2,496 / 100

18.15 = .06, = .22, = .14, = .04, = .10,

= .16, = .00, = .18, = .02, = .12

= .104

Centerline: = .104

UCL: .104 + 3 = .104 + .130 = .234

LCL: .104 - 3 = .104 - .130 ~ .000

p Chart:

18.17 = = 2.139

Centerline: = 2.139

The centreline is the average of the numbers of nonconformances for all

sheets.

UCL: = 2.139 + 3 = 2.139 + 4.388 = 6.527

LCL: = 2.139 - 3 = 2.139 – 4.388 ~ .00000

c Chart:

18.19 = 14.993, = 15.000, = 14.978, = 14.990,

= 15.013, = 15.000, = 15.017, = 14.997,

R1 = .03, R2 = .07, R3 = .05, R4 = .05,

R5 = .04, R6 = .05, R7 = .05, R8 = .06

= 14.999 = 0.05

For Chart: Since n = 6, A2 = .483

Centerline: = 14.999

UCL: + A2 = 14.999 + .483(.05) =

14.999 + .024 = 15.023

LCL: - A2 = 14.999 - .483(.05) =

14.999 - .024 = 14.975

For R Chart: Since n = 6, D3 = 0 D4 = 2.004

Centerline: = .05

UCL: D4 = 2.004(.05) = .100

LCL: D3 = 0(.05) = .000

Two out of three consecutive points on the chart are in the outer one

third.

18.21 = = 0.640

Centerline: = 0.640

UCL: = 0.640 + 3 = 0.640 + 2.400 = 3.040

LCL: = 0.640 - 3 = 0.640 – 2.400 ~ .000

c Chart:

None of the points are beyond the control limits, but three consecutive points

(bottle number = 14, 15, 16) are close to LCL.

18.23 = .050, = .000, = .150, = .075,

= .025, = .025, = .125, = .000,

= .100, = .075, = .050, = .050,

= .150, = .025, = .000

= .06

Centerline: = .060

UCL: .060 + 3 = .060 + .113= .173

LCL: .060 - 3 = .060 - .113 ~ .000

p Chart:

Twice two out of three consecutive values fall in the outer one third.

18.25 The following list provides summary of the control chart abnormalities that should be of concern to a statistical process controller:

·  Range of the sample 25 is above UCL.

·  Near the beginning of the chart there are nine consecutive sample ranges below the centerline.

·  Near the end of the chart there are nine consecutive sample ranges above the centerline.

The controller might want to determine if there is some systematic reason why there is a string of ranges below the centerline and, perhaps more importantly, why there are a string of ranges above the centerline.

18.27 The centerline of the c chart indicates that the process is averaging 0.7400 nonconformances per part. Twenty-five of the fifty sampled items have zero nonconformances. None of the samples exceed the upper control limit for nonconformances. However, the upper control limit is 3.321 nonconformances which, in and of itself, may be too many. Indeed, three of the fifty (6%) samples actually had three nonconformances. An additional six samples (12%) had two nonconformances. One matter of concern may be that there is a run of ten samples in which nine of the samples exceed the centerline (samples 12 through 21). The question raised by this phenomenon is whether or not there is a systematic flaw in the process that produces strings of nonconforming items.