Title: Chapter 4. Continuous Probability Distributions
1Chapter 4. Continuous Probability Distributions
- 4.1 The Uniform Distribution
- 4.2 The Exponential Distribution
- 4.3 The Gamma Distribution
- 4.4 The Weibull Distribution
- 4.5 The Beta Distribution
24.1 The Uniform Distribution4.1.1 Definition of
the Uniform Distribution(1/2)
- It has a flat pdf over a region.
- if X takes on values between
a and b, - and
- Mean and Variance
3Figure 4.1 Probability density function of
aU(a, b) distribution
44.2 The Exponential Distribution4.2.1 Definition
of the Exponential Distribution
- Pdf
- Cdf
- Mean and variance
-
5Figure 4.3Probability density function of an
exponential distribution with parameter l 1
6- The exponential distribution often arises, in
practice, as being of the amount of time until
some specific event occurs. - For example,
- the amount of time until an earthquake
occurs, - the amount of time until a new war breaks
out, or - the amount of time until a telephone call you
receive turns out to be a wrong number, etc.
74.2.2 The memoryless property of the Exponential
Distribution
- For any non-negative x and y
- The exponential distribution is the only
continuous distribution that has the memoryless
property
8- Memoryless property of exponential random
variable - This is equivalent to
- When X is an exponential random variable,
- The memoryless condition is satisfied since
9- Example Suppose that a number of miles that a
car run before its battery wears out is
exponentially distributed with an average value
of 10,000 miles. If a person desires to take a
5,000 mile trip, what is the probability that he
will be able to complete his trip without to
replace the battery? - (Sol)
- Let X be a random variable including the
remaining lifetime (in thousand miles) of the
battery. Then, -
- What if X is not exponential random
variable? - That is, an additional information of t
should be known.
10- Proposition If are
independent exponential random variables having
respective parameters , then
is the exponential random
variable with - parameter
- (proof)
-
11- Example A series system is one that all of its
components to function in order for the system
itself to be functional. For an n component
series system in which the component lifetimes
are independent exponential random variables with
respective parameters . - What is the probability the system serves for
a time t? - (Sol)
- Let X be a random variable indicating the
system lifetime. - Then, X is an exponential random variable
with parameter - Hence,
124.2.3 The Poisson process
- A stochastic process is a sequence of random
events - A Poisson process with parameter is a
stochastic process - where the time (or space) intervals between
event-occurrences follow the Exponential
distribution with parameter . - If X is the number of events occurring within a
fixed time (or space) interval of length t, then
13Figure 4.7 A Poisson process. The number of
events occurring in a time interval of length t
has a Poisson distribution with mean lt
14- The Poisson Process
- Suppose that events are occurring at random
time points and - let N(t) denote the number of points that
occur in time interval 0,t. - Then, A Poisson process having rate
is defined if - (a) N(0)0,
- (b) the number of events that occur in
disjoint time intervals are independent, - (c) the distribution of N(t) depends only on
the length of interval, - (d)
-
and -
- (e)
15- Let us break the interval 0,t into n
non-overlapping subintervals each of length t/n.
Now, there will be k events in 0,t if either - (1) N(t) equals to k and there is at most one
event in each subinterval, or - (2) N(t) equals to k and at least one of
subintervals contain 2 or more events. Then, -
- Since the number of events in the different
subintervals are independent, it follows that
16- Hence, as n approach infinity,
- That is, the number of events in any interval
of length t has a Poisson distribution with mean - For a Poisson process, let denote the
time of the first event and for ngt1, denote
the elapsed time between the (n-1)st and nth
event. Then, the sequence - is called the sequence of inter-arrival
times. -
17- The distribution of
-
- The event takes place if and only
if no events of - the Poisson process occur in 0,t and thus,
- Likewise,
- Repeating the same argument yields
are independent exponential random
variables with mean
18- Example 32 (Steel Girder Fractures, p.209)
- 42 fractures on average on a 10m long girder
-
- between-fracture length
- 10/430.23m on
average - If the between-fracture length (X) follows an
exponential distribution, how would you define
the gap? - How would you define the number of fractures (Y)
per 1m steel girder? - How are the Exponential distribution and the
Poisson distribution related?
19Figure 4.9 Poisson process modeling
fracturelocations on a steel girder
20- P(the length of a gap is less than 10cm)?
- P(a 25-cm segment of a girder contains at least
two fractures)?
21Figure 4.10 The number of fractures in a 25-cm
segment of the steel girder has a Poisson
distribution with mean 1.075
224.3 The Gamma Distribution4.3.1 Definition of
the Gamma distribution
- Useful for reliability theory and life-testing
and has several important sister distributions - The Gamma function
- The Gamma pdf with parameters kgt0 and gt0
- Mean and variance
-
23Curves of Gamma pdf
24- Calculation of Gamma function
- When k is an integer,
- When k1, the gamma distribution is reduced to
the exponential - with mean
-
25- Properties of Gamma random variables
- If are independent gamma
random variables with respective parameters
then -
- is a gamma random variable with parameters
- The gamma random variable with parameters
is equivalent to the exponential random variable
with parameter - If are independent
exponential random variables, each having rate
, then -
- is a gamma random variable with parameters
264.3.2 Examples of the Gamma distribution
- Example 32 (Steel Girder Fractures)
- Y the number of fractures within 1m of the
girder -
27Figure 4.15 Distance to fifth fracture has
agamma distribution with parameters k 5 and l
4.3
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294.4 Weibull distribution4.4.1 Definition of the
Weibull distribution
- Useful for modeling failure and waiting times
- (see Examples 33 34)
- The pdf
- Mean and variance
30Curves of the Weibull distribution
31- The c.d.f. of Weibull distribution
- The pth quantile of Weibull distribution
- Find x such that
324.5 The Beta distribution
- Useful for modeling proportions and personal
probability - (See Examples 35 36.)
- Pdf
- Mean and variance
-
33Figure 4.21 Probability density functions of the
beta distribution
34Figure 4.22 Probability density functions of the
beta distribution
35- Exponential and Weibull random variables have
as their set of possible values. - In engineering applications of probability
theory, it is occasionally helpful to have
available family of distributions whose set of
possible values is finite interval. -
- One of such family is the beta family of
distributions.
36- Example the beta distribution and rainstorms.
- Data gathered by the U.S. Weather Service in
Alberquerque, concern the fraction of the total
rainfall falling during the first 5 minutes of
storms occurring during both summer and nonsummer
seasons. The data for 14 nonsummer storms can be
described reasonably well by a standard beta
distribution with a2.0 and b8.8. - Let X be the fraction of the storms rainfall
falling during the first 5 minutes. Then, the
probability that more than 20 of the storms
rainfall during the first 5 minutes is determined
by