Title: ITED 434 Quality Organization
1ITED 434Quality Organization Management Ch 10
11
- Ch 10 Basic Concepts of Statistics and
Probability - Ch 11 Statistical Tools for Analyzing Data
2 Chapter Overview
- Statistical Fundamentals
- Process Control Charts
- Some Control Chart Concepts
- Process Capability
- Other Statistical Techniques in Quality
Management
3Statistical Fundamentals
- Statistical Thinking
- Is a decision-making skill demonstrated by the
ability to draw to conclusions based on data. - Why Do Statistics Sometimes Fail in the
Workplace? - Regrettably, many times statistical tools do not
create the desired result. Why is this so? Many
firms fail to implement quality control in a
substantive way.
4Statistical Fundamentals
- Reasons for Failure of Statistical Tools
- Lack of knowledge about the tools therefore,
tools are misapplied. - General disdain for all things mathematical
creates a natural barrier to the use of
statistics. - Cultural barriers in a company make the use of
statistics for continual improvement difficult. - Statistical specialists have trouble
communicating with managerial generalists.
5Statistical Fundamentals
- Reasons for Failure of Statistical Tools
(continued) - Statistics generally are poorly taught,
emphasizing mathematical development rather than
application. - People have a poor understanding of the
scientific method. - Organization lack patience in collecting data.
All decisions have to be made yesterday.
6 Statistical Fundamentals
- Reasons for Failure of Statistical Tools
(continued) - Statistics are view as something to buttress an
already-held opinion rather than a method for
informing and improving decision making. - Most people dont understand random variation
resulting in too much process tampering.
7 Statistical Fundamentals
- Understanding Process Variation
- Random variation is centered around a mean and
occurs with a consistent amount of dispersion. - This type of variation cannot be controlled.
Hence, we refer to it as uncontrolled
variation. - The statistical tools discussed in this chapter
are not designed to detect random variation.
8 Statistical Fundamentals
- Understanding Process Variation (cont.)
- Nonrandom or special cause variation results
from some event. The event may be a shift in a
process mean or some unexpected occurrence. - Process Stability
- Means that the variation we observe in the
process is random variation. To determine
process stability we use process charts.
9 Statistical Fundamentals
- Sampling Methods
- To ensure that processes are stable, data are
gathered in samples. - Random samples. Randomization is useful because
it ensures independence among observations. To
randomize means to sample is such a way that
every piece of product has an equal chance of
being selected for inspection. - Systematic samples. Systematic samples have some
of the benefits of random samples without the
difficulty of randomizing.
10 Statistical Fundamentals
- Sampling Methods
- To ensure that processes are stable, data are
gathered in samples (continued) - Sampling by Rational Subgroup. A rational
subgroup is a group of data that is logically
homogenous variation within the data can provide
a yardstick for setting limits on the standard
variation between subgroups.
11Standard normal distribution
- The standard normal distribution is a normal
distribution with a mean of 0 and a standard
deviation of 1. Normal distributions can be
transformed to standard normal distributions by
the formula - X is a score from the original normal
distribution, ? is the mean of the original
normal distribution, and ? is the standard
deviation of original normal distribution.
12Standard normal distribution
- A z score always reflects the number of standard
deviations above or below the mean a particular
score is. - For instance, if a person scored a 70 on a test
with a mean of 50 and a standard deviation of 10,
then they scored 2 standard deviations above the
mean. Converting the test scores to z scores, an
X of 70 would be - So, a z score of 2 means the original score was 2
standard deviations above the mean. Note that the
z distribution will only be a normal distribution
if the original distribution (X) is normal.
13Applying the formula
Applying the formula will always produce a
transformed variable with a mean of zero and a
standard deviation of one. However, the shape of
the distribution will not be affected by the
transformation. If X is not normal then the
transformed distribution will not be normal
either. One important use of the standard normal
distribution is for converting between scores
from a normal distribution and percentile ranks.
Areas under portions of the standard normal
distribution are shown to the right. About .68
(.34 .34) of the distribution is between -1 and
1 while about .96 of the distribution is between
-2 and 2.
14Area under a portion of the normal curve -
Example 1
If a test is normally distributed with a mean of
60 and a standard deviation of 10, what
proportion of the scores are above 85?
From the Z table, it is calculated that .9938 of
the scores are less than or equal to a score 2.5
standard deviations above the mean. It follows
that only 1-.9938 .0062 of the scores are above
a score 2.5 standard deviations above the mean.
Therefore, only .0062 of the scores are above 85.
15Example 2
- Suppose you wanted to know the proportion of
students receiving scores between 70 and 80. The
approach is to figure out the proportion of
students scoring below 80 and the proportion
below 70. - The difference between the two proportions is the
proportion scoring between 70 and 80. - First, the calculation of the proportion below
80. Since 80 is 20 points above the mean and the
standard deviation is 10, 80 is 2 standard
deviations above the mean.
The z table is used to determine that .9772 of
the scores are below a score 2 standard
deviations above the mean.
16Example 2
To calculate the proportion below 70
- Assume a test is normally distributed with a mean
of 100 and a standard deviation of 15. What
proportion of the scores would be between 85 and
105? - The solution to this problem is similar to the
solution to the last one. The first step is to
calculate the proportion of scores below 85. - Next, calculate the proportion of scores below
105. Finally, subtract the first result from the
second to find the proportion scoring between 85
and 105.
The z-table is used to determine that the
proportion of scores less than 1 standard
deviation above the mean is .8413. So, if .1587
of the scores are above 70 and .0228 are above
80, then .1587 -.0228 .1359 are between 70 and
80.
17Example 2
Begin by calculating the proportion below 85. 85
is one standard deviation below the mean
Using the z-table with the value of -1 for z, the
area below -1 (or 85 in terms of the raw scores)
is .1587.
Do the same for 105
18Example 2
The z-table shows that the proportion scoring
below .333 (105 in raw scores) is .6304. The
difference is .6304 - .1587 .4714. So .4714 of
the scores are between 85 and 105.
19Sampling Distributions
20Sampling Distributions
- If you compute the mean of a sample of 10
numbers, the value you obtain will not equal the
population mean exactly by chance it will be a
little bit higher or a little bit lower. - If you sampled sets of 10 numbers over and over
again (computing the mean for each set), you
would find that some sample means come much
closer to the population mean than others. Some
would be higher than the population mean and some
would be lower. - Imagine sampling 10 numbers and computing the
mean over and over again, say about 1,000 times,
and then constructing a relative frequency
distribution of those 1,000 means.
21Sampling Distributions
- The distribution of means is a very good
approximation to the sampling distribution of the
mean. - The sampling distribution of the mean is a
theoretical distribution that is approached as
the number of samples in the relative frequency
distribution increases. - With 1,000 samples, the relative frequency
distribution is quite close with 10,000 it is
even closer. - As the number of samples approaches infinity, the
relative frequency distribution approaches the
sampling distribution
22Sampling Distributions
- The sampling distribution of the mean for a
sample size of 10 was just an example there is a
different sampling distribution for other sample
sizes. - Also, keep in mind that the relative frequency
distribution approaches a sampling distribution
as the number of samples increases, not as the
sample size increases since there is a different
sampling distribution for each sample size.
23Sampling Distributions
- A sampling distribution can also be defined as
the relative frequency distribution that would be
obtained if all possible samples of a particular
sample size were taken. - For example, the sampling distribution of the
mean for a sample size of 10 would be constructed
by computing the mean for each of the possible
ways in which 10 scores could be sampled from the
population and creating a relative frequency
distribution of these means. - Although these two definitions may seem
different, they are actually the same Both
procedures produce exactly the same sampling
distribution.
24Sampling Distributions
- Statistics other than the mean have sampling
distributions too. The sampling distribution of
the median is the distribution that would result
if the median instead of the mean were computed
in each sample. - Students often define "sampling distribution" as
the sampling distribution of the mean. That is a
serious mistake. - Sampling distributions are very important since
almost all inferential statistics are based on
sampling distributions.
25Sampling Distribution of the mean
- The sampling distribution of the mean is a very
important distribution. In later chapters you
will see that it is used to construct confidence
intervals for the mean and for significance
testing. - Given a population with a mean of ? and a
standard deviation of ?, the sampling
distribution of the mean has a mean of ? and a
standard deviation of s/? N , where N is the
sample size. - The standard deviation of the sampling
distribution of the mean is called the standard
error of the mean. It is designated by the symbol
?.
26Sampling Distribution of the mean
- Note that the spread of the sampling distribution
of the mean decreases as the sample size
increases.
An example of the effect of sample size is shown
above. Notice that the mean of the distribution
is not affected by sample size.
27Spread
A variable's spread is the degree scores on the
variable differ from each other.
If every score on the variable were about equal,
the variable would have very little spread.
There are many measures of spread. The
distributions on the right side of this page have
the same mean but differ in spread The
distribution on the bottom is more spread out.
Variability and dispersion are synonyms for
spread.
285 Samples
2910 Samples
3015 Samples
3120 Samples
32100 Samples
331,000 Samples
3410,000 Samples
35(No Transcript)
36Hypothesis Testing
37Classical Approach
- The Classical Approach to hypothesis testing is
to compare a test statistic and a critical value.
It is best used for distributions which give
areas and require you to look up the critical
value (like the Student's t distribution) rather
than distributions which have you look up a test
statistic to find an area (like the normal
distribution). - The Classical Approach also has three different
decision rules, depending on whether it is a left
tail, right tail, or two tail test. - One problem with the Classical Approach is that
if a different level of significance is desired,
a different critical value must be read from the
table.
38Left Tailed Test H1 parameter lt valueNotice the
inequality points to the left Decision Rule
Reject H0 if t.s. lt c.v.
Right Tailed Test H1 parameter gt valueNotice
the inequality points to the right Decision
Rule Reject H0 if t.s. gt c.v.
Two Tailed Test H1 parameter not equal
valueAnother way to write not equal is lt or
gtNotice the inequality points to both sides
Decision Rule Reject H0 if t.s. lt c.v. (left)
or t.s. gt c.v. (right)
The decision rule can be summarized as follows
Reject H0 if the test statistic falls in the
critical region (Reject H0 if the test statistic
is more extreme than the critical value)
39P-Value Approach
- The P-Value Approach, short for Probability
Value, approaches hypothesis testing from a
different manner. Instead of comparing z-scores
or t-scores as in the classical approach, you're
comparing probabilities, or areas. - The level of significance (alpha) is the area in
the critical region. That is, the area in the
tails to the right or left of the critical
values. - The p-value is the area to the right or left of
the test statistic. If it is a two tail test,
then look up the probability in one tail and
double it. - If the test statistic is in the critical region,
then the p-value will be less than the level of
significance. It does not matter whether it is a
left tail, right tail, or two tail test. This
rule always holds. - Reject the null hypothesis if the p-value is less
than the level of significance.
40P-Value Approach (Contd)
- You will fail to reject the null hypothesis if
the p-value is greater than or equal to the level
of significance. - The p-value approach is best suited for the
normal distribution when doing calculations by
hand. However, many statistical packages will
give the p-value but not the critical value. This
is because it is easier for a computer or
calculator to find the probability than it is to
find the critical value. - Another benefit of the p-value is that the
statistician immediately knows at what level the
testing becomes significant. That is, a p-value
of 0.06 would be rejected at an 0.10 level of
significance, but it would fail to reject at an
0.05 level of significance. Warning Do not
decide on the level of significance after
calculating the test statistic and finding the
p-value.
41P-Value Approach (Contd)
- Any proportion equivalent to the following
statement is correct - The test statistic is to the p-value as the
critical value is to the level of significance.
42 Process Control ChartsSlide 1 of 37
- Process Charts
- Tools for monitoring process variation.
- The figure on the following slide shows a process
control chart. It has an upper limit, a center
line, and a lower limit.
43 Process Control ChartsSlide 2 of 37
Control Chart (Figure 10.3 in the Textbook)
The UCL, CL, and LCL are computed statistically
Each point represents data that are
plotted sequentially
Upper Control Limit (UCL)
Center Line (CL)
Lower Control Limit (LCL)
44 Process Control ChartsSlide 3 of 37
- Variables and Attributes
- To select the proper process chart, we must
differentiate between variables and attributes. - A variable is a continuous measurement such as
weight, height, or volume. - An attribute is the result of a binomial process
that results in an either-or-situation. - The most common types of variable and attribute
charts are shown in the following slide.
45 Process Control ChartsSlide 4 of 37
Variables and Attributes
Variables
Attributes
X (process population average) P (proportion
defective) X-bar (mean for average) np (number
defective) R (range) C (number conforming) MR
(moving range) U (number nonconforming) S
(standard deviation)
46 Process Control ChartsSlide 5 of 37
Central Requirements for Properly Using Process
Charts
1.
You must understand the generic process for
implementing process charts. You must know how to
interpret process charts. You need to know when
different process charts are used. You need to
know how to compute limits for the different
types of process charts.
2.
3.
4.
47 Process Control ChartsSlide 6 of 37
- A Generalized Procedure for Developing Process
Charts - Identify critical operations in the process where
inspection might be needed. These are operations
in which, if the operation is performed
improperly, the product will be negatively
affected. - Identify critical product characteristics. These
are the attributes of the product that will
result in either good or poor function of the
product.
48 Process Control ChartsSlide 7 of 37
- A Generalized Procedure for Developing Process
Charts (continued) - Determine whether the critical product
characteristic is a variable or an attribute. - Select the appropriate process control chart from
among the many types of control charts. This
decision process and types of charts available
are discussed later. - Establish the control limits and use the chart to
continually improve.
49 Process Control ChartsSlide 8 of 37
- A Generalized Procedure for Developing Process
Charts (continued) - Update the limits when changes have been made to
the process.
50 Process Control ChartsSlide 9 of 37
- Understanding Control Charts
- A process chart is nothing more than an
application of hypothesis testing where the null
hypothesis is that the product meets
requirements. - An X-bar chart is a variables chart that monitors
average measurement. - An example of how to best understand control
charts is provided under the heading
Understanding Control Charts in the textbook.
51 Process Control ChartsSlide 10 of 37
- X-bar and R Charts
- The X-bar chart is a process chart used to
monitor the average of the characteristics being
measured. To set up an X-bar chart select
samples from the process for the characteristic
being measured. Then form the samples into
rational subgroups. Next, find the average value
of each sample by dividing the sums of the
measurements by the sample size and plot the
value on the process control X-bar chart.
52 Process Control ChartsSlide 11 of 37
- X-bar and R Charts (continued)
- The R chart is used to monitor the variability or
dispersion of the process. It is used in
conjunction with the X-bar chart when the process
characteristic is variable. To develop an R
chart, collect samples from the process and
organize them into subgroups, usually of three to
six items. Next, compute the range, R, by taking
the difference of the high value in the subgroup
minus the low value. Then plot the R values on
the R chart.
53 Process Control ChartsSlide 12 of 37
X-bar and R Charts
54 Process Control ChartsSlide 13 of 37
- Interpreting Control Charts
- Before introducing other types of process charts,
we discuss the interpretation of the charts. - The figures in the next several slides show
different signals for concern that are sent by a
control chart, as in the second and third boxes.
When a point is found to be outside of the
control limits, we call this an out of control
situation. When a process is out of control, the
variation is probably not longer random.
55 Process Control ChartsSlide 14 of 37
56 Process Control ChartsSlide 15 of 37
Control Chart Evidence for Investigation (Figure
10.10 in the textbook)
57 Process Control ChartsSlide 16 of 37
Control Chart Evidence for Investigation (Figure
10.10 in the textbook)
58 Process Control ChartsSlide 17 of 37
Control Chart Evidence for Investigation (Figure
10.10 in the textbook)
59 Process Control ChartsSlide 18 of 37
- Implications of a Process Out of Control
- If a process loses control and becomes nonrandom,
the process should be stopped immediately. - In many modern process industries where
just-in-time is used, this will result in the
stoppage of several work stations. - The team of workers who are to address the
problem should use a structured problem solving
process. -
60 Process Control ChartsSlide 19 of 37
- X and Moving Range (MR) Charts for Population
Data - At times, it may not be possible to draw samples.
This may occur because a process is so slow that
only one or two units per day are produced. - If you have a variable measurement that you want
to monitor, the X and MR charts might be the
thing for you.
61 Process Control ChartsSlide 20 of 37
- X and Moving Range (MR) Charts for Population
Data (continued) - X chart. A chart used to monitor the mean of a
process for population values. - MR chart. A chart for plotting variables when
samples are not possible. - If data are not normally distributed, other
charts are available.
62 Process Control ChartsSlide 21 of 37
- g and h Charts
- A g chart is used when data are geometrically
distributed, and h charts are useful when data
are hypergeometrically distributed. - The next slide presents pictures of geometric and
hypergeometric distributions. If you develop a
histogram of your data, and it appears like
either of these distributions, you may want to
use either an h or a g chart instead of an X
chart.
63 Process Control ChartsSlide 22 of 37
h and g Distributions (Figure 10.12 in the
textbook)
64 Process Control ChartsSlide 23 of 37
- Control Charts for Attributes
- We now shift to charts for attributes. These
charts deal with binomial and Poisson processes
that are not measurements. - We will now be thinking in terms of defects and
defectives rather than diameters or widths. - A defect is an irregularity or problem with a
larger unit. - A defective is a unit that, as a whole, is not
acceptable or does not meet specifications.
65 Process Control ChartsSlide 24 of 37
- p Charts for Proportion Defective
- The p chart is a process chart that is used to
graph the proportion of items in a sample that
are defective (nonconforming to specifications) - p charts are effectively used to determine when
there has been a shift in the proportion
defective for a particular product or service. - Typical applications of the p chart include
things like late deliveries, incomplete orders,
and clerical errors on written forms.
66 Process Control ChartsSlide 25 of 37
- np Charts
- The np chart is a graph of the number of
defectives (or nonconforming units) in a
subgroup. The np chart requires that the sample
size of each subgroup be the same each time a
sample is drawn. - When subgroup sizes are equal, either the p or np
chart can be used. They are essentially the same
chart.
67 Process Control ChartsSlide 26 of 37
- np Charts (continued)
- Some people find the np chart easier to use
because it reflects integer numbers rather than
proportions. The uses for the np chart are
essentially the same as the uses for the p chart.
68 Process Control ChartsSlide 27 of 37
- c and u Charts
- The c chart is a graph of the number of defects
(nonconformities) per unit. The units must be of
the same sample space this includes size,
height, length, volume and so on. This means
that the area of opportunity for finding
defects must be the same for each unit.
Several individual unites can comprise the sample
but they will be grouped as if they are one unit
of a larger size.
69 Process Control ChartsSlide 28 of 37
- c and u Charts (continued)
- Like other process charts, the c chart is used to
detect nonrandom events in the life of a
production process. Typical applications of the
c chart include number of flaws in an auto
finish, number of flaws in a standard typed
letter, and number of incorrect responses on a
standardized test
70 Process Control ChartsSlide 29 of 37
- c and u Charts (continued)
- The u chart is a graph of the average number of
defects per unit. This is contrasted with the c
chart, which shows the actual number of defects
per standardized unit. - The u chart allows for the units sampled to be
different sizes, areas, heights and so on, and
allows for different numbers of units in each
sample space. The uses for the u chart are the
same as the c chart.
71 Process Control ChartsSlide 30 of 37
- Other Control Charts
- s Chart. The s (standard deviation) chart is
used in place of the R chart when a more
sensitive chart is desired. These charts are
commonly used in semiconductor production where
process dispersion is watched very closely.
72 Process Control ChartsSlide 31 of 37
- Other Control Charts (continued)
- Moving Average Chart. The moving average chart
is an interesting chart that is used for
monitoring variables and measurement on a
continuous scale. - The chart uses past information to predict what
the next process outcome will be. Using this
chart, we can adjust a process in anticipation of
its going out of control.
73 Process Control ChartsSlide 32 of 37
- Other Control Charts (continued)
- Cusum Chart. The cumulative sum, or cusum, chart
is used to identify slight but sustained shifts
in a universe where there is no independence
between observations.
74 Process Control ChartsSlide 33 of 37
Summary of Chart Formulas (Table 10.2 in the
textbook)
75 Process Control ChartsSlide 34 of 37
- Some Control Chart Concepts
- Choosing the Correct Control Chart
- Obviously, it is key to choose the correct
control chart. Figure 10.19 in the textbook
shows a decision tree for the basic control
charts. This flow chart helps to show when
certain charts should be selected for use.
76 Process Control ChartsSlide 35 of 37
- Some Control Chart Concepts (continued)
- Corrective Action. When a process is out of
control, corrective action is needed. Correction
action steps are similar to continuous
improvement processes. They are - Carefully identify the problem.
- Form the correct team to evaluate and solve the
problem. - Use structured brainstorming along with fishbone
diagrams or affinity diagrams to identify causes
of the problem.
77 Process Control ChartsSlide 36 of 37
- Some Control Chart Concepts (continued)
- Corrective Action (continued)
- Brainstorm to identify potential solutions to
problems. - Eliminate the cause.
- Restart the process.
- Document the problem, root causes, and solutions.
- Communicate the results of the process to all
personnel so that this process becomes reinforced
and ingrained in the operations.
78 Process Control ChartsSlide 37 of 37
- Some Control Chart Concepts (continued)
- How Do We Use Control Charts to Continuously
Improve? - One of the goals of the control chart user is to
reduce variation. Over time, as processes are
improved, control limits are recomputed to show
improvements in stability. As upper and lower
control limits get closer and closer together,
the process improving. - The focus of control charts should be on
continuous improvement and they should be updated
only when there is a change in the process.
79 Process CapabilitySlide 1 of 4
- Process Stability and Capability
- Once a process is stable, the next emphasis is to
ensure that the process is capable. - Process capability refers to the ability of a
process to produce a product that meets
specifications. - Six-sigma program such as those pioneered by
Motorola Corporation result in highly capable
processes.
80 Process CapabilitySlide 2 of 4
Six-Sigma Quality (Figure 10.21 in the textbook)
81 Process CapabilitySlide 3 of 4
- Process Versus Sampling Distribution
- To understand process capability we must first
understand the differences between population and
sampling distributions. - Population distributions are distributions with
all the items or observations of interest to a
decision maker. - A population is defined as a collection of all
the items or observations of interest to a
decision maker. - A sample is subset of the population. Sampling
distributions are distributions that reflect the
distributions of sample means.
82 Process CapabilitySlide 4 of 4
- The Difference Between Capability and Stability?
- Once again, a process is capable if individual
products consistently meet specifications. - A process is stable if only common variation is
present in the process.
83Determine characteristic to be charted.
How to choose the correct control chart
Non-conforming units? ( bad parts)
Nonconformities? (I.e., discrepancies per part.)
Is the data variable?
NO
NO
YES
YES
YES
NO
Constant sample size?
Is sample space constant?
NO
Use m chart.
Use p chart.
YES
YES
Is it homogeneous, or not conducive to subgroup
sampling? (e.g., chemical bath, paint batch,
etc.)
Use c or m chart.
Use np or p chart.
Can subgroup averages be conveniently computed?
Use median chart.
NO
NO
YES
YES
Next slide.
Use X - MR chart.
84How to choose the correct control chart
Can subgroup averages be conveniently computed?
(from previous page)
NO
Use median chart.
YES
Is the subgroup size lt 9?
NO
YES
Can s be calculated for each group?
NO
YES
Use .
X - s chart