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“It costs a lot to produce a bad product.” Norman Augustine

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1 “It costs a lot to produce a bad product.” Norman Augustine
Quality Management “It costs a lot to produce a bad product.” Norman Augustine

2 Cost of quality Prevention costs Appraisal costs
Internal failure costs External failure costs Opportunity costs

3 What is quality management all about?
Try to manage all aspects of the organization in order to excel in all dimensions that are important to “customers” Two aspects of quality: features: more features that meet customer needs = higher quality freedom from trouble: fewer defects = higher quality

4 The Quality Gurus – Edward Deming
Quality is “uniformity and dependability” Focus on SPC and statistical tools “14 Points” for management PDCA method 1986

5 The Quality Gurus – Joseph Juran
Quality is “fitness for use” Pareto Principle Cost of Quality General management approach as well as statistics 1951

6 History: how did we get here…
Deming and Juran outlined the principles of Quality Management. Tai-ichi Ohno applies them in Toyota Motors Corp. Japan has its National Quality Award (1951). U.S. and European firms begin to implement Quality Management programs (1980’s). U.S. establishes the Malcolm Baldridge National Quality Award (1987). Today, quality is an imperative for any business.

7 (Process Analysis, SPC, QFD)
What does Total Quality Management encompass? TQM is a management philosophy: continuous improvement leadership development partnership development Cultural Alignment Technical Tools (Process Analysis, SPC, QFD) Customer

8 Developing quality specifications
Design Design quality Input Process Output Dimensions of quality Conformance quality

9 Six Sigma Quality A philosophy and set of methods companies use to eliminate defects in their products and processes Seeks to reduce variation in the processes that lead to product defects The name “six sigma” refers to the variation that exists within plus or minus six standard deviations of the process outputs

10 Six Sigma Quality

11 Six Sigma Roadmap (DMAIC)
Next Project Define Customers, Value, Problem Statement Scope, Timeline, Team Primary/Secondary & OpEx Metrics Current Value Stream Map Voice Of Customer (QFD) Validate Project $ Celebrate Project $ Measure Assess specification / Demand Measurement Capability (Gage R&R) Correct the measurement system Process map, Spaghetti, Time obs. Measure OVs & IVs / Queues Control Document process (WIs, Std Work) Mistake proof, TT sheet, CI List Analyze change in metrics Value Stream Review Prepare final report Validate Project $ Validate Project $ Improve Optimize KPOVs & test the KPIVs Redesign process, set pacemaker 5S, Cell design, MRS Visual controls Value Stream Plan Analyze (and fix the obvious) Root Cause (Pareto, C&E, brainstorm) Find all KPOVs & KPIVs FMEA, DOE, critical Xs, VA/NVA Graphical Analysis, ANOVA Future Value Stream Map Validate Project $

12 Six Sigma Organization

13 Quality Improvement Continuous Improvement Quality Traditional Time

14 Continuous improvement philosophy
Kaizen: Japanese term for continuous improvement. A step-by-step improvement of business processes. PDCA: Plan-do-check-act as defined by Deming. Plan Do Act Check Benchmarking : what do top performers do?

15 Tools used for continuous improvement
1. Process flowchart

16 Tools used for continuous improvement
2. Run Chart Performance Time

17 Tools used for continuous improvement
3. Control Charts Performance Metric Time

18 Tools used for continuous improvement
4. Cause and effect diagram (fishbone) Environment Machine Man Method Material

19 Tools used for continuous improvement
5. Check sheet Item A B C D E F G √ √ √ √ √

20 Tools used for continuous improvement
6. Histogram Frequency

21 Tools used for continuous improvement
7. Pareto Analysis 100% 60 75% 50 40 Frequency 50% 30 Percentage 20 25% 10 0% A B C D E F

22 Summary of Tools Process flow chart Run diagram Control charts
Fishbone Check sheet Histogram Pareto analysis

23 Case: shortening telephone waiting time…
A bank is employing a call answering service The main goal in terms of quality is “zero waiting time” - customers get a bad impression - company vision to be friendly and easy access The question is how to analyze the situation and improve quality

24 How can we reduce waiting time?
The current process Operator Receiving Party Customer A Customer B How can we reduce waiting time?

25 Absent receiving party Working system of operators
Fishbone diagram analysis Makes customer wait Absent receiving party Working system of operators Customer Operator Absent Out of office Not at desk Lunchtime Too many phone calls Absent Not giving receiving party’s coordinates Complaining Leaving a message Lengthy talk Does not know organization well Takes too much time to explain Does not understand customer

26 Reasons why customers have to wait (12-day analysis with check sheet)
Daily average Total number A One operator (partner out of office) 14.3 172 B Receiving party not present 6.1 73 C No one present in the section receiving call 5.1 61 D Section and name of the party not given 1.6 19 E Inquiry about branch office locations 1.3 16 F Other reasons 0.8 10 29.2 351

27 Pareto Analysis: reasons why customers have to wait
B C D E F Frequency Percentage 0% 49% 71.2% 100 200 300 87.1% 150 250

28 Ideas for improvement Taking lunches on three different shifts
Ask all employees to leave messages when leaving desks Compiling a directory where next to personnel’s name appears her/his title

29 Results of implementing the recommendations
Before… …After A B C D E F Frequency Percentage 100% 0% 49% 71.2% 100 200 300 87.1% 100% B C A D E F Frequency Percentage 0% 100 200 300 Improvement

30 In general, how can we monitor quality…?
By observing variation in output measures! Assignable variation: we can assess the cause Common variation: variation that may not be possible to correct (random variation, random noise)

31 Statistical Process Control (SPC)
Every output measure has a target value and a level of “acceptable” variation (upper and lower tolerance limits) SPC uses samples from output measures to estimate the mean and the variation (standard deviation) Example We want beer bottles to be filled with 12 FL OZ ± 0.05 FL OZ Question: How do we define the output measures?

32 In order to measure variation we need…
The average (mean) of the observations: The standard deviation of the observations:

33 Average & Variation example
Number of pepperoni’s per pizza: 25, 25, 26, 25, 23, 24, 25, 27 Average: Standard Deviation: Number of pepperoni’s per pizza: 25, 22, 28, 30, 27, 20, 25, 23 Average: Standard Deviation: Which pizza would you rather have?

34 When is a product good enough?
Incremental Cost of Variability High Zero Lower Tolerance Target Spec Upper Traditional View a.k.a Upper/Lower Design Limits (UDL, LDL) Upper/Lower Spec Limits (USL, LSL) Upper/Lower Tolerance Limits (UTL, LTL) The “Goalpost” Mentality

35 But are all ‘good’ products equal?
Incremental Cost of Variability High Zero Lower Spec Target Upper Taguchi’s View “Quality Loss Function” (QLF) LESS VARIABILITY implies BETTER PERFORMANCE !

36 Capability Index (Cpk)
It shows how well the performance measure fits the design specification based on a given tolerance level A process is ks capable if

37 Capability Index (Cpk)
Another way of writing this is to calculate the capability index: Cpk < 1 means process is not capable at the ks level Cpk >= 1 means process is capable at the ks level

38 Accuracy and Consistency
We say that a process is accurate if its mean is close to the target T. We say that a process is consistent if its standard deviation is low.

39 Example 1: Capability Index (Cpk)
UTL LTL X X = 10 and σ = 0.5 LTL = 9 UTL = 11

40 Example 2: Capability Index (Cpk)
X = and σ = 0.5 LTL = 9 UTL = 11 LTL X UTL

41 Example 3: Capability Index (Cpk)
X = 10 and σ = 2 LTL = 9 UTL = 11 LTL X UTL

42 Example Consider the capability of a process that puts pressurized grease in an aerosol can. The design specs call for an average of 60 pounds per square inch (psi) of pressure in each can with an upper tolerance limit of 65psi and a lower tolerance limit of 55psi. A sample is taken from production and it is found that the cans average 61psi with a standard deviation of 2psi. Is the process capable at the 3s level? What is the probability of producing a defect?

43 Solution LTL = 55 UTL = s = 2 No, the process is not capable at the 3s level.

44 Solution P(defect) = P(X<55) + P(X>65)
=P(Z<(55-61)/2) + 1 – P(Z<(65-61)/2) =P(Z<-3) + 1 – P(Z<2) =G(-3)+1-G(2) = – (from standard normal table) = 2.4% of the cans are defective.

45 Example (contd) Suppose another process has a sample mean of 60.5 and
a standard deviation of 3. Which process is more accurate? This one. Which process is more consistent? The other one.

46 Control Charts Upper Control Limit Central Line Lower Control Limit Control charts tell you when a process measure is exhibiting abnormal behavior.

47 Two Types of Control Charts
X/R Chart This is a plot of averages and ranges over time (used for performance measures that are variables) p Chart This is a plot of proportions over time (used for performance measures that are yes/no attributes)

48 Statistical Process Control with p Charts
When should we use p charts? When decisions are simple “yes” or “no” by inspection When the sample sizes are large enough (>50) Sample (day) Items Defective Percentage 1 200 10 0.050 2 8 0.040 3 9 0.045 4 13 0.065 5 15 0.075 6 25 0.125 7 16 0.080

49 Statistical Process Control with p Charts
Let’s assume that we take t samples of size n …

50 Statistical Process Control with p Charts

51 Statistical Process Control with p Charts
UCL = 0.117 p = 0.066 LCL = 0.015

52 Statistical Process Control with X/R Charts
When should we use X/R charts? It is not possible to label “good” or “bad” If we have relatively smaller sample sizes (<20)

53 Statistical Process Control with X/R Charts
Take t samples of size n (sample size should be 5 or more) X is the mean for each sample R is the range between the highest and the lowest for each sample

54 Statistical Process Control with X/R Charts
X is the average of the averages. R is the average of the ranges

55 Statistical Process Control with X/R Charts
define the upper and lower control limits… Read A2, D3, D4 from Table TN 8.7

56 Example: SPC for bottle filling…
Sample Observation (xi) Average Range (R) 1 11.90 11.92 12.09 11.91 12.01 2 12.03 11.97 12.07 3 12.02 11.93 4 11.96 12.06 12.00 11.98 5 11.95 12.10 6 11.99 11.94 7 12.04 8 9 10 12.05

57 Example: SPC for bottle filling…
Calculate the average and the range for each sample… Sample Observation (xi) Average Range (R) 1 11.90 11.92 12.09 11.91 12.01 11.97 0.19 2 12.03 12.07 12.00 0.15 3 12.02 11.93 11.99 4 11.96 12.06 11.98 5 11.95 12.10 6 11.94 0.12 7 12.04 8 0.13 9 10 12.05 0.17

58 Then… is the average of the averages is the average of the ranges

59 Finally… Calculate the upper and lower control limits

60 The X Chart UCL = 12.10 X = 12.00 LCL = 11.90

61 The R Chart LCL = 0.00 R = 0.15 UCL = 0.32

62 The X/R Chart LCL UCL X What can you conclude? LCL R UCL


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