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Statistical Process Control Operations Management Dr. Ron Tibben-Lembke.

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Presentation on theme: "Statistical Process Control Operations Management Dr. Ron Tibben-Lembke."— Presentation transcript:

1 Statistical Process Control Operations Management Dr. Ron Tibben-Lembke

2 Designed Size 10 11 12 13 14 15 16 17 18 19 20

3 Natural Variation 14.5 14.6 14.7 14.8 14.9 15.0 15.1 15.2 15.3 15.4 15.5

4 Theoretical Basis of Control Charts 95.5% of all  X fall within ± 2  Properties of normal distribution

5 Theoretical Basis of Control Charts Properties of normal distribution 99.7% of all  X fall within ± 3 

6 Skewness  Lack of symmetry  Pearson’s coefficient of skewness: Skewness = 0 Negative Skew < 0 Positive Skew > 0

7 Kurtosis  Amount of peakedness or flatness Kurtosis < 0 Kurtosis > 0 Kurtosis = 0

8 Design Tolerances  Design tolerance: Determined by users’ needs UTL -- Upper Tolerance Limit LTL -- Lower Tolerance Limit Eg: specified size +/- 0.005 inches  No connection between tolerance and  completely unrelated to natural variation.

9 Process Capability and 6   A “capable” process has UTL and LTL 3 or more standard deviations away from the mean, or 3σ.  99.7% (or more) of product is acceptable to customers LTLUTL 33 66 LTLUTL

10 Process Capability LTLUTL LTL UTL CapableNot Capable LTLUTL LTLUTL

11 Process Capability  Specs: 1.5 +/- 0.01  Mean: 1.505 Std. Dev. = 0.002  Are we in trouble?

12 Process Capability  Specs: 1.5 +/- 0.01 LTL = 1.5 – 0.01 = 1.49 UTL = 1.5 + 0.01 = 1.51  Mean: 1.505 Std. Dev. = 0.002 LCL = 1.505 - 3*0.002 = 1.499 UCL = 1.505 + 0.006 = 1.511 1.499 1.511.491.511 Process Specs

13 Capability Index  Capability Index (C pk ) will tell the position of the control limits relative to the design specifications.  C pk >= 1.0, process is capable  C pk < 1.0, process is not capable

14 Process Capability, C pk  Tells how well parts produced fit into specs Process Specs 33 33 LTLUTL

15 Process Capability  Tells how well parts produced fit into specs  For our example:  C pk = min[ 0.015/.006, 0.005/0.006]  C pk = min[2.5,0.833] = 0.833 < 1 Process not capable

16 Process Capability: Re-centered  If process were properly centered  Specs: 1.5 +/- 0.01 LTL = 1.5 – 0.01 = 1.49 UTL = 1.5 + 0.01 = 1.51  Mean: 1.5 Std. Dev. = 0.002 LCL = 1.5 - 3*0.002 = 1.494 UCL = 1.5 + 0.006 = 1.506 1.4941.511.491.506 Process Specs

17 If re-centered, it would be Capable 1.4941.511.491.506 Process Specs

18 Packaged Goods  What are the Tolerance Levels?  What we have to do to measure capability?  What are the sources of variability?

19 Production Process Make Candy PackagePut in big bags Make Candy Mix Mix % Candy irregularity Wrong wt.

20 Processes Involved  Candy Manufacturing: Are M&Ms uniform size & weight? Should be easier with plain than peanut Percentage of broken items (probably from printing)  Mixing: Is proper color mix in each bag?  Individual packages: Are same # put in each package? Is same weight put in each package?  Large bags: Are same number of packages put in each bag? Is same weight put in each bag?

21 Your Job  Write down package # Weigh package and candies, all together, in grams and ounces Write down weights on form  Optional: Open package, count total # candies Count # of each color Write down Eat candies  Turn in form and empty complete wrappers for weighing

22

23 Peanut Color Mix website  Brown 17.7%20%  Yellow 8.2%20%  Red 9.5%20%  Blue15.4%20%  Orange26.4%10%  Green22.7%10%

24 Classwebsite  Brown12.1%30%  Yellow14.7%20%  Red11.4%20%  Blue19.5%10%  Orange21.2%10%  Green21.2%10% Plain Color Mix

25 So who cares?  Dept. of Commerce  National Institutes of Standards & Technology  NIST Handbook 133  Fair Packaging and Labeling Act

26 Acceptable?

27

28 Package Weight  “Not Labeled for Individual Retail Sale”  If individual is 18g  MAV is 10% = 1.8g  Nothing can be below 18g – 1.8g = 16.2g

29 Goal of Control Charts  collect and present data visually  allow us to see when trend appears  see when “out of control” point occurs

30 Process Control Charts  Graph of sample data plotted over time UCL LCL Process Average ± 3  Time X

31 Process Control Charts  Graph of sample data plotted over time Assignable Cause Variation Natural Variation UCL LCL Time X

32 Definitions of Out of Control 1. No points outside control limits 2. Same number above & below center line 3. Points seem to fall randomly above and below center line 4. Most are near the center line, only a few are close to control limits 1. 8 Consecutive pts on one side of centerline 2. 2 of 3 points in outer third 3. 4 of 5 in outer two-thirds region

33 Attributes vs. Variables Attributes:  Good / bad, works / doesn’t  count % bad (P chart)  count # defects / item (C chart) Variables:  measure length, weight, temperature (x-bar chart)  measure variability in length (R chart)

34 Attribute Control Charts  Tell us whether points in tolerance or not p chart: percentage with given characteristic (usually whether defective or not) np chart: number of units with characteristic c chart: count # of occurrences in a fixed area of opportunity (defects per car) u chart: # of events in a changeable area of opportunity (sq. yards of paper drawn from a machine)

35 p Chart Control Limits # Defective Items in Sample i Sample i Size

36 p Chart Control Limits # Defective Items in Sample i Sample i Size z = 2 for 95.5% limits; z = 3 for 99.7% limits # Samples

37 p Chart Control Limits # Defective Items in Sample i # Samples Sample i Size z = 2 for 95.5% limits; z = 3 for 99.7% limits

38 p Chart Example You’re manager of a 500- room hotel. You want to achieve the highest level of service. For 7 days, you collect data on the readiness of 200 rooms. Is the process in control (use z = 3)? © 1995 Corel Corp.

39 p Chart Hotel Data No.No. Not DayRoomsReady Proportion 12001616/200 =.080 2200 7.035 320021.105 420017.085 520025.125 620019.095 720016.080

40 p Chart Control Limits

41 16 + 7 +...+ 16

42 p Chart Solution 16 + 7 +...+ 16

43 p Chart Solution 16 + 7 +...+ 16

44 p Chart UCL LCL

45 R Chart  Type of variables control chart Interval or ratio scaled numerical data  Shows sample ranges over time Difference between smallest & largest values in inspection sample  Monitors variability in process  Example: Weigh samples of coffee & compute ranges of samples; Plot

46 You’re manager of a 500- room hotel. You want to analyze the time it takes to deliver luggage to the room. For 7 days, you collect data on 5 deliveries per day. Is the process in control? Hotel Example

47 Hotel Data DayDelivery Time 17.304.206.103.455.55 24.608.707.604.437.62 35.982.926.204.205.10 47.205.105.196.804.21 54.004.505.501.894.46 610.108.106.505.066.94 76.775.085.906.909.30

48 R &  X Chart Hotel Data Sample DayDelivery TimeMeanRange 17.304.206.103.455.555.32 7.30 + 4.20 + 6.10 + 3.45 + 5.55 5 Sample Mean =

49 R &  X Chart Hotel Data Sample DayDelivery TimeMeanRange 17.304.206.103.455.555.323.85 7.30 - 3.45Sample Range = LargestSmallest

50 R &  X Chart Hotel Data Sample DayDelivery TimeMeanRange 17.304.206.103.455.555.323.85 24.608.707.604.437.626.594.27 35.982.926.204.205.104.883.28 47.205.105.196.804.215.702.99 54.004.505.501.894.464.073.61 610.108.106.505.066.947.345.04 76.775.085.906.909.306.794.22

51 R Chart Control Limits Sample Range at Time i # Samples From Exhibit 6.13

52 Control Chart Limits

53 R R Chart Control Limits R k i i k      1 385427422 7 3894.... 

54 R Chart Solution From 6.13 (n = 5) R R k UCLDR LCLDR i i k R R        1 4 3 385427422 7 3894 (2.11)(3.894)8232 (0)(3.894)0..... 

55 R Chart Solution UCL

56  X Chart Control Limits Sample Range at Time i # Samples Sample Mean at Time i

57  X Chart Control Limits From Table 6-13

58  X Chart Control Limits Sample Range at Time i # Samples Sample Mean at Time i From 6.13

59 Exhibit 6.13 Limits

60 R &  X Chart Hotel Data Sample DayDelivery TimeMeanRange 17.304.206.103.455.555.323.85 24.608.707.604.437.626.594.27 35.982.926.204.205.104.883.28 47.205.105.196.804.215.702.99 54.004.505.501.894.464.073.61 610.108.106.505.066.947.345.04 76.775.085.906.909.306.794.22

61  X Chart Control Limits X X k R R k i i k i i k           1 1 532659679 7 5813 385427422 7 3894........  

62  X Chart Control Limits From 6.13 (n = 5) X X k R R k UCLXAR i i k i i k X            1 1 2 532659679 7 5813 385427422 7 3894 5813058 *38948060............  

63  X Chart Solution From 6.13 (n = 5) X X k R R k UCLXAR LCLXAR i i k i i k X X             1 1 2 2 532659679 7 5813 385427422 7 3894 5813(058) 5813(058) (3.894) = 3.566............   (3.894) = 8.060

64  X Chart Solution* 0 2 4 6 8 1234567  X, Minutes Day UCL LCL

65 Thinking Challenge You’re manager of a 500- room hotel. The hotel owner tells you that it takes too long to deliver luggage to the room (even if the process may be in control). What do you do? © 1995 Corel Corp. N

66  Redesign the luggage delivery process  Use TQM tools Cause & effect diagrams Process flow charts Pareto charts Solution MethodPeople Material Equipment Too Long


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