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Statistical Process Contol
(SPC)
Lec-1
1
Quality and SPC
The concept of quality has been
with us since the beginning of time.
Typically the quality of products
was described by some attribute
such as strength, beauty or
finish.
However, the mass production of
products that the reproducibility of
the size or shape of a product
became a quality issue.
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Quality and SPC
Quality was obtained by inspecting each
part and passing only those that met
specifications.
With SPC, the process is monitored
through sampling.
Considering the results of the sample,
adjustments are made to the process
before the process is able to produce
defective parts.
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Process Variability
The concept of process variability forms the heart of
SPC.
For example, if a basketball player shot free throws
in practice, and the player shot 100 free throws
every day, the player would not get exactly the same
number of baskets each day.
Some days the player would get 84 of 100, some
days 67 of 100, and so on.
All processes have this kind of variation or
variability.
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Process Variability
The variation can be partitioned into 2 components.
Natural process variation (common cause) or
system variation.
In the case of the basketball player, this variation
would fluctuate around the player's long-run
percentage of free throws made.
Special cause variation is typically caused by
some problem or extraordinary occurrence in the
system.
In the case of the player, a hand injury might cause
the player to miss a larger than usual number of free
throws on a particular day.
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Statistical Process Control (SPC)
SPC is a methodology for charting the process and
quickly determining when a process is "out of
control“.
(e.g., a special cause variation is present because
something unusual is occurring in the process).
The process is then investigated to determine the
root cause of the "out of control" condition.
When the root cause of the problem is determined,
a strategy is identified to correct it.
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Statistical Process Control (SPC)
The management responsible to reduce common
cause or system variation as well as special cause
variation.
This is done through process improvement
techniques, investing in new technology, or
reengineering the process to have fewer steps and
therefore less variation.
Reduced variation makes the process more
predictable with process output closer to the desired
or nominal value.
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Statistical Process Control (SPC)
The process above is in apparent statistical control.
Notice that all points lie within the upper control limits
(UCL) and the lower control limits (LCL). CL-centerline
This process exhibits only common cause variation.
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The process above is out of statistical control.
Notice that a single point can be found outside the
control limits (above them).
This means that a source of special cause variation is
present.
Having a point outside the control limits is the most
easily detectable out-of-control condition.
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The graphic above illustrates the typical cycle in SPC.
First, the process is highly variable and out of statistical control.
Second, as special causes of variation are found, the process comes
into statistical control.
Finally, through process improvement, variation is reduced.
This is seen from the narrowing of the control limits.
Eliminating special cause variation keeps the process in control;
process improvement reduces the process variation and moves the
control limits in toward the centerline of the process.
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Out-of-Control Conditions
Several types of conditions exist that indicate
that a process is out of control:
Extreme Point Condition:
This process is out of control because a point is
either above the UCL or below the LCL.
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Out-of-Control Conditions
Control Chart Zones:
Control charts can be broken into 3 zones, a, b, & c on
each side of the process center line.
A series of rules exist that are used to detect conditions in
which the process is behaving abnormally to the extent that
an out of control condition is declared.
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Out-of-Control Conditions
The probability of having 2 out of 3 consecutive
points either in or beyond zone A is an extremely
unlikely occurrence when the process mean follows
the normal distribution.
This criteria applies only to X-bar charts for examining the
process mean.
X, Y, and Z are all
examples of this
phenomena.
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Out-of-Control Conditions
The probability of 4 out of 5 consecutive points
either in or beyond zone B is also an extremely
unlikely occurrence when the process mean follows
the normal distribution.
Applied to X-bar chart when analyzing a process mean.
X, Y, and Z are all
examples of this
phenomena.
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Out-of-Control Conditions
Runs Above or Below the Centerline:
The probability of having long runs (8 or more consecutive
points) either above or below the centerline is also an
extremely unlikely occurrence when the process follows the
normal distribution.
Applied to both X-bar and r charts.
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Out-of-Control Conditions
Linear Trends:
The probability of 6 or more consecutive points showing a
continuous increase or decrease is also an extremely
unlikely occurrence when the process follows the normal
distribution.
Applied to both X-bar and r charts.
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Out-of-Control Conditions
Oscillatory Trend:
The probability of having 14 or more consecutive points
oscillating back and forth is also an extremely unlikely
occurrence when the process follows the normal
distribution.
Applied to both X-bar and r charts.
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Out-of-Control Conditions
Avoidance of Zone C:
The probability of having 8 or more consecutive points
occurring on either side of the center line and do not enter
Zone C.
This phenomena occurs when more than one process is
being charted on the same chart, the use of improper
sampling techniques, or perhaps the process is over
controlled.
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Out-of-Control Conditions
Run in Zone C:
The probability of having 15 or more consecutive points
occurring the Zone C.
This condition can arise from improper sampling,
falsification of data, or a decrease in process variability that
has not been accounted for when calculating control chart
limits, UCL and LCL.
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The basics
Don’t inspect the product, inspect the
process.
You can’t inspect it in, you’ve got to
build it in.
If you can’t measure it, you can’t
manage it.
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The SPC steps
Basic approach:
Awareness that a problem exists.
Determine the specific problem to be solved.
Diagnose the causes of the problem.
Determine and implement remedies.
Implement controls to hold the gains
achieved by solving the problem.
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SPC requires the use of statistics
Quality improvement efforts have their foundation in
statistics.
SPC involves the
collection
tabulation
analysis
interpretation
presentation of numerical data.
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SPC is comprised of 7 tools:
Pareto diagram
Histogram
Cause and Effect Diagram
Check sheet
Process flow diagram
Scatter diagram
Control chart
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Pareto Principle
Alfredo Pareto (1848-1923) Italian
Economist:
Conducted studies of the distribution of wealth in
Europe.
20% of the population has 80% of the wealth
Joseph Juran used the term “vital few & trivial
many or useful many”. He noted that 20% of
the quality problems caused 80% of the dollar
loss.
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Pareto
diagram
(64)
60
Percent from each cause
A pareto
diagram is a
graph that
ranks data
classifications in
descending
order from left
to right.
70
50
40
30
20
(13)
10
(10)
(6)
(3)
(2)
(2)
0
Causes of poor quality
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% Complaints
Pareto diagram
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Pareto diagram
Sometimes a pareto diagram has a
cumulative line.
This line represents the sum of the data
as they are added together from left to
right.
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Pareto diagram
Sometimes a pareto diagram has a
cumulative line.
This line represents the sum of the data
as they are added together from left to
right.
Above the bars, using the 2nd Y-axis representing the
cumulative data, plot the cumulative percentage values in
the form of a line.
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Pareto diagram
The cumulative
percentage can
be computed
(dotted line).
On the right, add
a vertical percent
scale equal in
length to the
scale on the left.
Label this from
0% to 100% .
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Pareto diagram
Table 1. Example of a Tabulation of Causes of Ball Bond Lifting for
use in a Pareto Chart
Ball Lifting Cause
Bonder Set-up Issues
Unetched Glass on Bond Pad
Foreign Contam on Bond Pad
Excessive Probe Damage
Silicon Dust on Bond Pad
Corrosion
Bond Pad Peel-off
Cratering
Resin Bleed-out
Others
Total
Frequency
Percent (%)
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11
9
3
2
1
1
1
1
2
50
38%
22%
18%
6%
4%
2%
2%
2%
2%
4%
100%
Cum Percent
(%)
38%
60%
78%
84%
88%
90%
92%
94%
96%
100%
-
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Pareto diagram
Table 1. Example of a Tabulation of Causes of Ball Bond Lifting for
use in a Pareto Chart
Ball Lifting Cause
Bonder Set-up Issues
Unetched Glass on Bond Pad
Foreign Contam on Bond Pad
Excessive Probe Damage
Silicon Dust on Bond Pad
Corrosion
Bond Pad Peel-off
Cratering
Resin Bleed-out
Others
Total
Frequency
Percent (%)
19
11
9
3
2
1
1
1
1
2
50
38%
22%
18%
6%
4%
2%
2%
2%
2%
4%
100%
Cum Percent
(%)
38%
60%
78%
84%
88%
90%
92%
94%
96%
100%
-
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Histogram
The histogram, graphically shows the process
capability and, if desired, the relationship to the
specifications and the nominal.
It also suggests the shape of the population and
indicates if there are any gaps in the data.
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Histogram
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Histogram
Data Range
Frequency
0-10
1
10-20
3
20-30
6
30-40
4
40-50
2
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Cause-and-Effect Diagrams
Show the relationships between a problem
and its possible causes.
Developed by Kaoru Ishikawa (1953)
Also known as …
Fishbone diagrams
Ishikawa diagrams
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Cause and Effect “Skeleton”
Materials
Procedures
Quality
Problem
People
Equipment
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Measurement
Faulty testing equipment
Incorrect specifications
Improper methods
Inaccurate
temperature
control
Dust and
Dirt
Environment
Human
Machines
Out of adjustment
Poor supervision
Lack of concentration
Tooling problems
Old / worn
Inadequate training
Quality
Problem
Defective from vendor
Not to specifications
Materialhandling problems
Materials
Poor process
design
Ineffective quality
management
Deficiencies
in product
design
Process
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Cause-and-Effect Diagrams
Advantages
making the diagram is educational in itself
diagram demonstrates knowledge of problem
solving team
diagram results in active searches for causes
diagram is a guide for data collection
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Cause-and-Effect Diagrams
To construct the skeleton, remember:
For manufacturing - the 4 M’s
man, method, machine, material
For service applications
equipment, policies, procedures, people
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Defect Type
Shifts
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COMPONENTS REPLACED BY LAB
TIME PERIOD: 22 Feb to 27 Feb 1998
REPAIR TECHNICIAN: Bob
TV SET MODEL 1013
Integrated Circuits
Capacitors
Resistors
Transformers
Commands
CRT
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Flowcharts
Graphical description of how work is
done.
Used to describe processes that are to
be improved.
"Draw a flowchart for whatever you do.
Until you do, you do not know what you
are doing, you just have a job.”
Dr. W. Edwards Deming.
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Flowcharts
Activity
Decision
Yes
No
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Flowcharts
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Flow Diagrams
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Process Chart Symbols
Operations
Inspection
Transportation
Delay
Storage
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Flow Diagrams
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Scatter Diagram
.
(a) Positive correlation
(b) No correlation
(c) Curvilinear relationship
The patterns described in (a) and (b) are easy to
understand; however, those described in (c) are
more difficult.
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Run Charts
Run Charts (time series plot)
Examine the behavior of a variable over
time.
Basis for Control Charts
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Control Chart
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Number of defects
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UCL = 23.35
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c = 12.67
18
15
12
9
6
LCL = 1.99
3
2
4
6
8
10
Sample number
12
14
16
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Control Chart
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SUMMARY
SPC using statistical techniques to
measure and analyze the variation in processes
to monitor product quality and
maintain processes to fixed targets.
Statistical quality control using statistical techniques
for
measuring and improving the quality of processes,
sampling plans,
experimental design,
variation reduction,
process capability analysis,
process improvement plans.
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SUMMARY
A primary tool used for SPC is
the control chart,
a graphical representation of certain descriptive statistics
for specific quantitative measurements of the process.
These descriptive statistics are displayed in the
control chart in comparison to their "in-control"
sampling distributions.
The comparison detects any unusual variation in the
process, which could indicate a problem with the
process.
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SUMMARY - benefits
Provides surveillance and feedback for keeping
processes in control
Signals when a problem with the process has
occurred
Detects assignable causes of variation
Reduces need for inspection
Monitors process quality
Provides mechanism to make process changes and
track effects of those changes
Once a process is stable, provides process
capability analysis with comparison to the product
tolerance
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