SlideShare a Scribd company logo
MINITAB Tutorial 5
Control Charts for Variables
Department of Mechanical Engineering
BITSPilani, Hyderabad
Introduction
• Quality Characteristic : Variable or attribute
• Variable: average length, average diameter, average tensile strength, average service time etc.,
• Attributes: Proportion of non- conforming items, no. of non- conformities in a unit, no. of demerits
per unit etc.,
• Causes of variation –
• Common causes (Improvement of the process)
• Special causes (control of the process)
• A process operating under a stable system of common causes – Statistical control.
Control charts are very simple graphical tools which show us if measurements/results are stable over time. They
look at the mean and variation of the data and check to see whether the observed data shows any patterns that
would not be expected to occur if the data was purely random. They monitor the activity of the ongoing process.
Typical control chart
Patterns to look for in a control chart
• Individual Outliers – special cause
• Increasing or decreasing trends – process may be drifting
• Jumps in the level around which the observations may vary – process mean might
have shifted
• “Hugging the control limits” – mixed data sets
• “Hugging the center line” – less variability; good process; desirable
Rules to identify an Out- of – control process
1. If a single point lies outside the control limits
2. If two out of three consecutive points fall outside 2σ warning limits on the same side of the
center line.
3. If 4 out of 5 consecutive points fall beyond the 1σ limit on the same side of the center line.
4. If 9 or more consecutive points fall to one side of the center line.
5. If there is a run of 6 or more consecutive points steadily increasing or decreasing.
Problem 1: Mean and Range Charts
Consider a process by which coils are manufactured.
Samples of size 5 are randomly selected from the
process, and the resistance values (in ohms) of the coils
are measured. The data values are given in the following
table.
Step1: Input the data in the worksheet
Step 2: Select the ത
𝑋-R chart from the STAT tab
Step 3: Select the column containing the data
Step 4: Output
Delete the data
points for sample
3,22,23 which are
outlier and plot the
revised control chart
Screenshot 1
Step 5: Revised Output Graph
Screenshot 2
TUTORIAL _5_Control charts for variables.pptx.pdf
Step 5: Interpret the result
• It can be observed that there are 3 outliers in the ത
𝑋-R charts.
• Sample 3 is an outlier in range charts and sample 22,23 are outliers in mean chart.
• Special causes identified – Quality of raw materials, high oven temperature, wrong die
used etc.,
• The revised control charts can be made by removing the observations of the outliers.
• Note that sample 15 falls slightly above the upper control limit on the X-chart.
• On further investigation, no special causes could be identified for this sample. So, the
revised limits will be used for future observations until a subsequent revision takes
place.
If standard data is given
• Refer to the coil resistance data in previous problem. Let's suppose that the target values for the
average resistance and standard deviation are 21.0 and 1.0 , respectively. The sample size is 5.
Problem 2: Individuals - Moving Range Chart
The table shows the Brinell hardness numbers of
20 individual steel fasteners and the moving ranges. The
testing process dents the parts so that they cannot be
used for their intended purpose. Construct the I-MR chart
based on two successive observations.
Sample Brinell Hardness
1 36.3
2 28.6
3 32.5
4 38.7
5 35.4
6 27.3
7 37.2
8 36.4
9 38.3
10 30.5
11 29.4
12 35.2
13 37.7
14 27.5
15 28.4
16 33.6
17 28.5
18 36.2
19 32.7
Step 1: Input the data in the worksheet
Step 2: Select the I-MR option from the STAT tab
Step 3: Assign the columns containing the data
Step 4: Output
Step 5: Interpret the result
• It can be observed there are no outliers in the individual and moving range chart.
• Thus the observed non-conformance rate is zero and the process is capable.
Problem 3: Z-MR Chart
Data on short production runs on the diameters of four parts (A,B,C and D) are given in the table below. It is
believed that the processes for manufacturing the four parts have different variabilities. Since parts are
manufactured on demand, they are not necessarily produced in the same run. Construct an appropriate control
chart and comment on the process.
𝑍 =
𝑖𝑛𝑑𝑖𝑣𝑖𝑑𝑢𝑎𝑙 𝑣𝑎𝑙𝑢𝑒 − 𝑝𝑟𝑜𝑐𝑒𝑠𝑠 𝑚𝑒𝑎𝑛
𝑝𝑟𝑜𝑐𝑒𝑠𝑠 𝑠𝑡𝑎𝑛𝑑𝑎𝑟𝑑 𝑑𝑒𝑣𝑖𝑎𝑡𝑖𝑜𝑛
Input data
Run Part Number Quality
Characteristic
5 B 44
B 41
B 45
6 D 35
D 32
D 33
7 B 43
B 45
B 40
B 42
Run Part Number Quality
Characteristic
1 A 30
A 25
A 28
2 B 42
B 40
3 A 31
A 29
4 C 54
C 56
C 53
Step 1: Input the data in the worksheet
Step 2: Select the Z-MR chart option from the STAT tab
Step 3: Assign the column
Step 4: Output
Step 5: Interpret the result
• All of the points on Z-MR charts are within the control limits with no unusual patterns.
• Note that the upper and lower control limits on the Z-chart are at 3σ and —3 σ, respectively, with the
center line at 0.
Thank You!

More Related Content

PPTX
03&04 SPC NOTES.pptx
PPTX
CHAPTER 4 SQC.pptx
PPT
Control Chart Basics.ppt
PPT
Control Chart Basics.ppt
PPTX
statistical process control
PPTX
Multivariate SPC Strategy and its uses in different areas
PPTX
Control estadistico de calidad
PPTX
Chapter 3 CONTROL CHART FOR ATTRIBUTE.pptx
03&04 SPC NOTES.pptx
CHAPTER 4 SQC.pptx
Control Chart Basics.ppt
Control Chart Basics.ppt
statistical process control
Multivariate SPC Strategy and its uses in different areas
Control estadistico de calidad
Chapter 3 CONTROL CHART FOR ATTRIBUTE.pptx

Similar to TUTORIAL _5_Control charts for variables.pptx.pdf (20)

PDF
Six sigma
PPT
405chapter5.ppt
PPTX
6 control charts
PPT
100018718.ppt
PDF
4 26 2013 1 IME 674 Quality Assurance Reliability EXAM TERM PROJECT INFO...
PPT
Control charts
PPT
supplier quality management systemControl Charts for Variables
PDF
Shewhart Charts for Variables
PPTX
Control Charts in Lab and Trend Analysis
PDF
Six Sigma Nitish Nagar
PDF
Six Sigma Complete Guide
DOC
Final notes on s1 qc
DOC
Final notes on s1 qc
PPTX
Six sigma control charts
PPT
G-ControlChart5dsjjsbshjjjhshjdjsnds.ppt
PPTX
STATISTICAL PROCESS CONTROL(PPT).pptx
PDF
A Practical Guide to Selecting the Right Control Chart eBook
PPTX
TQM bits Pilani statistical process control attributes of Control chat
PDF
Control chart for variables ( quality assurance)
PPTX
Control charts
Six sigma
405chapter5.ppt
6 control charts
100018718.ppt
4 26 2013 1 IME 674 Quality Assurance Reliability EXAM TERM PROJECT INFO...
Control charts
supplier quality management systemControl Charts for Variables
Shewhart Charts for Variables
Control Charts in Lab and Trend Analysis
Six Sigma Nitish Nagar
Six Sigma Complete Guide
Final notes on s1 qc
Final notes on s1 qc
Six sigma control charts
G-ControlChart5dsjjsbshjjjhshjdjsnds.ppt
STATISTICAL PROCESS CONTROL(PPT).pptx
A Practical Guide to Selecting the Right Control Chart eBook
TQM bits Pilani statistical process control attributes of Control chat
Control chart for variables ( quality assurance)
Control charts
Ad

Recently uploaded (20)

PPTX
CH1 Production IntroductoryConcepts.pptx
PDF
Enhancing Cyber Defense Against Zero-Day Attacks using Ensemble Neural Networks
PDF
Operating System & Kernel Study Guide-1 - converted.pdf
PDF
Unit I ESSENTIAL OF DIGITAL MARKETING.pdf
DOCX
573137875-Attendance-Management-System-original
PPTX
UNIT 4 Total Quality Management .pptx
PDF
Human-AI Collaboration: Balancing Agentic AI and Autonomy in Hybrid Systems
PPTX
Engineering Ethics, Safety and Environment [Autosaved] (1).pptx
PPTX
Current and future trends in Computer Vision.pptx
PDF
keyrequirementskkkkkkkkkkkkkkkkkkkkkkkkkkkkkkkkkkkkk
PDF
TFEC-4-2020-Design-Guide-for-Timber-Roof-Trusses.pdf
PDF
Well-logging-methods_new................
PPTX
FINAL REVIEW FOR COPD DIANOSIS FOR PULMONARY DISEASE.pptx
PPT
Project quality management in manufacturing
PDF
SM_6th-Sem__Cse_Internet-of-Things.pdf IOT
PDF
Mohammad Mahdi Farshadian CV - Prospective PhD Student 2026
PPTX
Geodesy 1.pptx...............................................
PDF
Evaluating the Democratization of the Turkish Armed Forces from a Normative P...
PDF
Mitigating Risks through Effective Management for Enhancing Organizational Pe...
PDF
BIO-INSPIRED HORMONAL MODULATION AND ADAPTIVE ORCHESTRATION IN S-AI-GPT
CH1 Production IntroductoryConcepts.pptx
Enhancing Cyber Defense Against Zero-Day Attacks using Ensemble Neural Networks
Operating System & Kernel Study Guide-1 - converted.pdf
Unit I ESSENTIAL OF DIGITAL MARKETING.pdf
573137875-Attendance-Management-System-original
UNIT 4 Total Quality Management .pptx
Human-AI Collaboration: Balancing Agentic AI and Autonomy in Hybrid Systems
Engineering Ethics, Safety and Environment [Autosaved] (1).pptx
Current and future trends in Computer Vision.pptx
keyrequirementskkkkkkkkkkkkkkkkkkkkkkkkkkkkkkkkkkkkk
TFEC-4-2020-Design-Guide-for-Timber-Roof-Trusses.pdf
Well-logging-methods_new................
FINAL REVIEW FOR COPD DIANOSIS FOR PULMONARY DISEASE.pptx
Project quality management in manufacturing
SM_6th-Sem__Cse_Internet-of-Things.pdf IOT
Mohammad Mahdi Farshadian CV - Prospective PhD Student 2026
Geodesy 1.pptx...............................................
Evaluating the Democratization of the Turkish Armed Forces from a Normative P...
Mitigating Risks through Effective Management for Enhancing Organizational Pe...
BIO-INSPIRED HORMONAL MODULATION AND ADAPTIVE ORCHESTRATION IN S-AI-GPT
Ad

TUTORIAL _5_Control charts for variables.pptx.pdf

  • 1. MINITAB Tutorial 5 Control Charts for Variables Department of Mechanical Engineering BITSPilani, Hyderabad
  • 2. Introduction • Quality Characteristic : Variable or attribute • Variable: average length, average diameter, average tensile strength, average service time etc., • Attributes: Proportion of non- conforming items, no. of non- conformities in a unit, no. of demerits per unit etc., • Causes of variation – • Common causes (Improvement of the process) • Special causes (control of the process) • A process operating under a stable system of common causes – Statistical control. Control charts are very simple graphical tools which show us if measurements/results are stable over time. They look at the mean and variation of the data and check to see whether the observed data shows any patterns that would not be expected to occur if the data was purely random. They monitor the activity of the ongoing process.
  • 4. Patterns to look for in a control chart • Individual Outliers – special cause • Increasing or decreasing trends – process may be drifting • Jumps in the level around which the observations may vary – process mean might have shifted • “Hugging the control limits” – mixed data sets • “Hugging the center line” – less variability; good process; desirable
  • 5. Rules to identify an Out- of – control process 1. If a single point lies outside the control limits 2. If two out of three consecutive points fall outside 2σ warning limits on the same side of the center line. 3. If 4 out of 5 consecutive points fall beyond the 1σ limit on the same side of the center line. 4. If 9 or more consecutive points fall to one side of the center line. 5. If there is a run of 6 or more consecutive points steadily increasing or decreasing.
  • 6. Problem 1: Mean and Range Charts Consider a process by which coils are manufactured. Samples of size 5 are randomly selected from the process, and the resistance values (in ohms) of the coils are measured. The data values are given in the following table.
  • 7. Step1: Input the data in the worksheet
  • 8. Step 2: Select the ത 𝑋-R chart from the STAT tab
  • 9. Step 3: Select the column containing the data
  • 10. Step 4: Output Delete the data points for sample 3,22,23 which are outlier and plot the revised control chart Screenshot 1
  • 11. Step 5: Revised Output Graph Screenshot 2
  • 13. Step 5: Interpret the result • It can be observed that there are 3 outliers in the ത 𝑋-R charts. • Sample 3 is an outlier in range charts and sample 22,23 are outliers in mean chart. • Special causes identified – Quality of raw materials, high oven temperature, wrong die used etc., • The revised control charts can be made by removing the observations of the outliers. • Note that sample 15 falls slightly above the upper control limit on the X-chart. • On further investigation, no special causes could be identified for this sample. So, the revised limits will be used for future observations until a subsequent revision takes place.
  • 14. If standard data is given • Refer to the coil resistance data in previous problem. Let's suppose that the target values for the average resistance and standard deviation are 21.0 and 1.0 , respectively. The sample size is 5.
  • 15. Problem 2: Individuals - Moving Range Chart The table shows the Brinell hardness numbers of 20 individual steel fasteners and the moving ranges. The testing process dents the parts so that they cannot be used for their intended purpose. Construct the I-MR chart based on two successive observations. Sample Brinell Hardness 1 36.3 2 28.6 3 32.5 4 38.7 5 35.4 6 27.3 7 37.2 8 36.4 9 38.3 10 30.5 11 29.4 12 35.2 13 37.7 14 27.5 15 28.4 16 33.6 17 28.5 18 36.2 19 32.7
  • 16. Step 1: Input the data in the worksheet
  • 17. Step 2: Select the I-MR option from the STAT tab
  • 18. Step 3: Assign the columns containing the data
  • 20. Step 5: Interpret the result • It can be observed there are no outliers in the individual and moving range chart. • Thus the observed non-conformance rate is zero and the process is capable.
  • 21. Problem 3: Z-MR Chart Data on short production runs on the diameters of four parts (A,B,C and D) are given in the table below. It is believed that the processes for manufacturing the four parts have different variabilities. Since parts are manufactured on demand, they are not necessarily produced in the same run. Construct an appropriate control chart and comment on the process. 𝑍 = 𝑖𝑛𝑑𝑖𝑣𝑖𝑑𝑢𝑎𝑙 𝑣𝑎𝑙𝑢𝑒 − 𝑝𝑟𝑜𝑐𝑒𝑠𝑠 𝑚𝑒𝑎𝑛 𝑝𝑟𝑜𝑐𝑒𝑠𝑠 𝑠𝑡𝑎𝑛𝑑𝑎𝑟𝑑 𝑑𝑒𝑣𝑖𝑎𝑡𝑖𝑜𝑛
  • 22. Input data Run Part Number Quality Characteristic 5 B 44 B 41 B 45 6 D 35 D 32 D 33 7 B 43 B 45 B 40 B 42 Run Part Number Quality Characteristic 1 A 30 A 25 A 28 2 B 42 B 40 3 A 31 A 29 4 C 54 C 56 C 53
  • 23. Step 1: Input the data in the worksheet
  • 24. Step 2: Select the Z-MR chart option from the STAT tab
  • 25. Step 3: Assign the column
  • 27. Step 5: Interpret the result • All of the points on Z-MR charts are within the control limits with no unusual patterns. • Note that the upper and lower control limits on the Z-chart are at 3σ and —3 σ, respectively, with the center line at 0.