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Special Continuous Probability Distributions Normal Distributions

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1 Special Continuous Probability Distributions Normal Distributions
Systems Engineering Program Department of Engineering Management, Information and Systems EMIS 7370/5370 STAT 5340 : PROBABILITY AND STATISTICS FOR SCIENTISTS AND ENGINEERS Special Continuous Probability Distributions Normal Distributions Lognormal Distributions Dr. Jerrell T. Stracener, SAE Fellow Leadership in Engineering

2 Normal Distribution A random variable X is said to have a normal (or
Gaussian) distribution with parameters  and , where -  <  <  and  > 0, with probability density function for -  < x <  f(x) x

3 Properties of the Normal Model
the effects of  and 

4 Normal Distribution Mean or expected value of Mean = E(X) = 
Median value of X0.5 =  Standard deviation

5 Normal Distribution Standard Normal Distribution If ~ N(, ) and if
then Z ~ N(0, 1). A normal distribution with  = 0 and  = 1, is called the standard normal distribution.

6 Normal Distribution P (X<x’) = P (Z<z’) f(z) f(x) x z X’ Z’

7 Normal Distribution Standard Normal Distribution Table of Probabilities Enter table with and find the value of  Excel z z f(z)

8 Normal Distribution - Example
The following example illustrates every possible case of application of the normal distribution. Let ~ N(100, 10) Find: (a) P(X < 105.3) (b) P(X  91.7) (c) P(87.1 <  115.7) (d) the value of x for which P(  x) = 0.05

9 Normal Distribution – Example Solution
a. P( < 105.3) = = P( < 0.53) = F(0.53) = Normal Distribution – Example Solution f(x) f(z) 100 105.3 x z 0.53

10 Normal Distribution – Example Solution
b. P(  91.7) = = P( ) = 1 - P( < -0.83) = 1- F(-0.83) = = Normal Distribution – Example Solution f(x) f(z) x z 100 91.7 -0.83

11 Normal Distribution – Example Solution
c. P(87.1 <  115.7) = F(115.7) - F(87.1) = P(-1.29 < Z < 1.57) = F(1.57) - F(-1.29) = = Normal Distribution – Example Solution f(x) f(x) x x 87.1 100 115.7 -1.29 1.57

12 Normal Distribution – Example Solution
f(x) f(z) 0.05 0.05 x 1.64 z 116.4 100

13 Normal Distribution – Example Solution
(d) P(  x) = 0.05 P(  z) = 0.05 implies that z = P(  x) = therefore x = 16.4 x = 116.4

14 Normal Distribution – Example Solution
The time it takes a driver to react to the brake lights on a decelerating vehicle is critical in helping to avoid rear-end collisions. The article ‘Fast-Rise Brake Lamp as a Collision-Prevention Device’ suggests that reaction time for an in-traffic response to a brake signal from standard brake lights can be modeled with a normal distribution having mean value 1.25 sec and standard deviation 0.46 sec. What is the probability that reaction time is between 1.00 and 1.75 seconds? If we view 2 seconds as a critically long reaction time, what is the probability that actual reaction time will exceed this value?

15 Normal Distribution – Example Solution

16 Normal Distribution – Example Solution

17 Lognormal Distribution

18 Lognormal Distribution
Definition - A random variable is said to have the Lognormal Distribution with parameters  and , where  > 0 and  > 0, if the probability density function of X is: , for x > 0 , for x  0 x f(x)

19 Lognormal Distribution - Properties
Rule: If ~ LN(,), then = ln ( ) ~ N(,) Probability Distribution Function where F(z) is the cumulative probability distribution function of N(0,1)

20 Lognormal Distribution - Properties
Mean or Expected Value Median Standard Deviation

21 Lognormal Distribution - Example
A theoretical justification based on a certain material failure mechanism underlies the assumption that ductile strength X of a material has a lognormal distribution. Suppose the parameters are  = 5 and  = 0.1 (a) Compute E( ) and Var( ) (b) Compute P( > 120) (c) Compute P(110   130) (d) What is the value of median ductile strength? (e) If ten different samples of an alloy steel of this type were subjected to a strength test, how many would you expect to have strength at least 120? (f) If the smallest 5% of strength values were unacceptable, what would the minimum acceptable strength be?

22 Lognormal Distribution –Example Solution

23 Lognormal Distribution –Example Solution
c) d)

24 Lognormal Distribution –Example Solution
Let Y=number of items tested that have strength of at least 120 y=0,1,2,…,10

25 Lognormal Distribution –Example Solution
f) The value of x, say xms, for which is determined as follows:


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