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An Introduction to Statistical Process Control Charts (SPC). Steve Harrison Monday 15 th July 2013 12 – 1pm Room 6 R Floor RHH. Topics. Variation – A Quick Recap An introduction to SPC Charts Interpretation Quiz Application in Improvement work. Variation. Common Cause Variation.
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An Introduction to Statistical Process Control Charts (SPC) Steve Harrison Monday 15th July 2013 12 – 1pm Room 6 R Floor RHH
Topics • Variation – A Quick Recap • An introduction to SPC Charts • Interpretation • Quiz • Application in Improvement work
Common Cause Variation Typically due to a large number of small sources of variation Example: Variation in work commute due to traffic lights, pedestrian traffic, parking issues Usually requires a deep understanding of the process to minimise the variation 5
Special Cause Variation Are not part of the normal process. Arises from special circumstances Example: Variation in work commute impacted by flat tire, road closure, ice-storm. Usually best uncovered when monitoring data in real time (or close to that) 6
Special Cause - My trip to work 120 Upper process limit 100 Mean 80 Lower process limit Min. 60 40 20 0 Consecutive trips
Two Types of Variation Special Cause: assignable cause signal • Common Cause: • chance cause • noise Statistically significant (not good or bad) 8
SPC, Statistical Process Control or The Control Chart Elements 1. Chart/graph showing data, running record, time order sequence 2. A line showing the mean 3. 2 lines showing the upper and lower process ‘control’ limits • You only need 25 data points to set up a control chart, but 50 are better if available
80 70 60 50 40 30 20 10 0 F M A M J J A S O N D J F M A M J J A S O N D The Anatomy of an SPC or Control Chart Upper process control limit Mean Lower process control limit
Measures of Central Tendency Mean = Average – SPC Chart Median = Central or Middle Value – Run Chart Mode = Most frequently occurring value 12
Standard Deviation or σ In statistics, standard deviation shows how much variation exists from the mean. A low standard deviation indicates that the data points tend to be very close to the mean; high standard deviation indicates that the data points are spread out over a large range of values.
PRACTICAL INTERPRETATION OF THE STANDARD DEVIATION 99.6% will be within 3 s Mean - 3s Mean Mean + 3s 0.4% will be outside 6s in a normal distribution
3s AND THE CONTROL CHART 3s 3s UCL Mean LCL 6s
Run Charts vs. SPC Charts Run Chart SPC More Powerful Control lines show the degree of variation Need Special Software Need 25+ data points • Simple • Easy to create in Excel • Less Sensitive • Only need 10 data points
90 80 70 60 50 40 30 20 10 0 F M A M J J A S O N D J F M A M J J A S O Special cause variation N D
SPECIAL CAUSES - RULE 1 UCL Point above Upper Control Limit (UCL) MEAN LCL
SPECIAL CAUSES - RULE 1 UCL MEAN Or point below Lower Control Limit (LCL) LCL
SPECIAL CAUSES - RULE 2 UCL MEAN Eight points above centre line LCL A 1 in 256 chance or 0.3906%
SPECIAL CAUSES - RULE 2 UCL Or eight points below centre line MEAN LCL A 1 in 256 chance or 0.3906%
SPECIAL CAUSES - RULE 3 UCL Six points in a downward direction MEAN LCL
SPECIAL CAUSES - RULE 3 UCL Or six points in an upward direction MEAN LCL
SPECIAL CAUSES - RULE 4 UCL Considerably less than 2/3 of all the points fall in this zone MEAN LCL
SPECIAL CAUSES - RULE 4 UCL Or considerably more than 2/3 of all the points fall in this zone MEAN LCL
Quiz – 1. Does the chart show Special Cause Variation? Common Cause Variation? Both of the above No Variation
2. How many special cause signals are present on this chart? 0 1 2 3 16
3. How many special cause signals are present on this chart? 0 1 2 3 16
4. How many special cause signals are present on this chart? 0 1 2 3 16
What use is this? • Evaluate and improve underlying process • Is the process stable? • Use data to make predictions and help planning • Recognise variation • Prove/disprove assumptions and (mis)conceptions • Help drive improvement – identify statistically significant change
Annotated SPC Charts • One of the most powerful tools for improvement • Describe a process captured over time (as opposed to being a single sample) • Reveal any trends a process might be experiencing • When combined with careful annotation they track the impact of change
Example – Renal DT247J PDSA 2 PDSA 1
Responding to Special Cause Variation Identify the cause: If positive then can it be replicated or standardised. If negative then cause needs to be eliminated 37
Responding to CommonCause Variation Reduce variation: make the process even more predictable or reliable (and/or) 2. Not satisfied with result: redesign process to get a better result 38
Identify the cause: if positive then can it be replicated or standardized. If negative then cause needs to be eliminated Process with special cause variation Reduce variation: make the process even more reliable Not satisfied with result: redesign process to get a better result Process with common cause variation 39
Evaluation • Absolute Rubbish • Terrible • Fairly Bad • Not that Great • Alright • Quite Good • Really Quite Good • Very Good • Excellent • Amazing!
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