Title: 41 Continuous Random Variables
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34-1 Continuous Random Variables
44-2 Probability Distributions and Probability
Density Functions
Figure 4-1 Density function of a loading on a
long, thin beam.
54-2 Probability Distributions and Probability
Density Functions
Figure 4-2 Probability determined from the area
under f(x).
64-2 Probability Distributions and Probability
Density Functions
Definition
74-2 Probability Distributions and Probability
Density Functions
Figure 4-3 Histogram approximates a probability
density function.
84-2 Probability Distributions and Probability
Density Functions
94-2 Probability Distributions and Probability
Density Functions
Example 4-2
104-2 Probability Distributions and Probability
Density Functions
Figure 4-5 Probability density function for
Example 4-2.
114-2 Probability Distributions and Probability
Density Functions
Example 4-2 (continued)
124-3 Cumulative Distribution Functions
Definition
134-3 Cumulative Distribution Functions
Example 4-4
144-3 Cumulative Distribution Functions
Figure 4-7 Cumulative distribution function for
Example 4-4.
154-4 Mean and Variance of a Continuous Random
Variable
Definition
164-4 Mean and Variance of a Continuous Random
Variable
Example 4-6
174-4 Mean and Variance of a Continuous Random
Variable
Expected Value of a Function of a Continuous
Random Variable
184-4 Mean and Variance of a Continuous Random
Variable
Example 4-8
194-5 Continuous Uniform Random Variable
Definition
204-5 Continuous Uniform Random Variable
Figure 4-8 Continuous uniform probability density
function.
214-5 Continuous Uniform Random Variable
Mean and Variance
224-5 Continuous Uniform Random Variable
Example 4-9
234-5 Continuous Uniform Random Variable
Figure 4-9 Probability for Example 4-9.
244-5 Continuous Uniform Random Variable
254-6 Normal Distribution
Definition
264-6 Normal Distribution
Figure 4-10 Normal probability density functions
for selected values of the parameters ? and ?2.
274-6 Normal Distribution
Some useful results concerning the normal
distribution
284-6 Normal Distribution
Definition Standard Normal
294-6 Normal Distribution
Example 4-11
Figure 4-13 Standard normal probability density
function.
304-6 Normal Distribution
Standardizing
314-6 Normal Distribution
Example 4-13
324-6 Normal Distribution
Figure 4-15 Standardizing a normal random
variable.
334-6 Normal Distribution
To Calculate Probability
344-6 Normal Distribution
Example 4-14
354-6 Normal Distribution
Example 4-14 (continued)
364-6 Normal Distribution
Example 4-14 (continued)
Figure 4-16 Determining the value of x to meet a
specified probability.
374-7 Normal Approximation to the Binomial and
Poisson Distributions
- Under certain conditions, the normal
distribution can be used to approximate the
binomial distribution and the Poisson
distribution.
384-7 Normal Approximation to the Binomial and
Poisson Distributions
Figure 4-19 Normal approximation to the binomial.
394-7 Normal Approximation to the Binomial and
Poisson Distributions
Example 4-17
404-7 Normal Approximation to the Binomial and
Poisson Distributions
Normal Approximation to the Binomial Distribution
414-7 Normal Approximation to the Binomial and
Poisson Distributions
Example 4-18
424-7 Normal Approximation to the Binomial and
Poisson Distributions
Figure 4-21 Conditions for approximating
hypergeometric and binomial probabilities.
434-7 Normal Approximation to the Binomial and
Poisson Distributions
Normal Approximation to the Poisson Distribution
444-7 Normal Approximation to the Binomial and
Poisson Distributions
Example 4-20
454-8 Exponential Distribution
Definition
464-8 Exponential Distribution
Mean and Variance
474-8 Exponential Distribution
Example 4-21
484-8 Exponential Distribution
Figure 4-23 Probability for the exponential
distribution in Example 4-21.
494-8 Exponential Distribution
Example 4-21 (continued)
504-8 Exponential Distribution
Example 4-21 (continued)
514-8 Exponential Distribution
Example 4-21 (continued)
524-8 Exponential Distribution
- Our starting point for observing the system does
not matter. - An even more interesting property of an
exponential random variable is the lack of memory
property. - In Example 4-21, suppose that there are no
log-ons from 1200 to 1215 the probability that
there are no log-ons from 1215 to 1221 is still
0.082. Because we have already been waiting for
15 minutes, we feel that we are due. That is,
the probability of a log-on in the next 6 minutes
should be greater than 0.082. However, for an
exponential distribution this is not true.
534-8 Exponential Distribution
Example 4-22
544-8 Exponential Distribution
Example 4-22 (continued)
554-8 Exponential Distribution
Example 4-22 (continued)
564-8 Exponential Distribution
Lack of Memory Property
574-8 Exponential Distribution
Figure 4-24 Lack of memory property of an
Exponential distribution.
584-9 Erlang and Gamma Distributions
Erlang Distribution
The random variable X that equals the interval
length until r counts occur in a Poisson process
with mean ? gt 0 has and Erlang random variable
with parameters ? and r. The probability density
function of X is
for x gt 0 and r 1, 2, 3, .
594-9 Erlang and Gamma Distributions
Gamma Distribution
604-9 Erlang and Gamma Distributions
Gamma Distribution
614-9 Erlang and Gamma Distributions
Gamma Distribution
Figure 4-25 Gamma probability density functions
for selected values of r and ?.
624-9 Erlang and Gamma Distributions
Gamma Distribution
634-10 Weibull Distribution
Definition
644-10 Weibull Distribution
Figure 4-26 Weibull probability density functions
for selected values of ? and ?.
654-10 Weibull Distribution
664-10 Weibull Distribution
Example 4-25
674-11 Lognormal Distribution
684-11 Lognormal Distribution
Figure 4-27 Lognormal probability density
functions with ? 0 for selected values of ?2.
694-11 Lognormal Distribution
Example 4-26
704-11 Lognormal Distribution
Example 4-26 (continued)
714-11 Lognormal Distribution
Example 4-26 (continued)
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