Chapter 4. Continuous Probability Distributions

Slides:



Advertisements
Similar presentations
Exponential Distribution
Advertisements

Chapter 3 Some Special Distributions Math 6203 Fall 2009 Instructor: Ayona Chatterjee.
Exponential and Poisson Chapter 5 Material. 2 Poisson Distribution [Discrete] Poisson distribution describes many random processes quite well and is mathematically.
Many useful applications, especially in queueing systems, inventory management, and reliability analysis. A connection between discrete time Markov chains.
Chapter 5 Statistical Models in Simulation
Random Variable A random variable X is a function that assign a real number, X(ζ), to each outcome ζ in the sample space of a random experiment. Domain.
Hydrologic Statistics
5.2 Continuous Random Variable
Continuous Distributions
Stochastic Processes Dr. Nur Aini Masruroh. Stochastic process X(t) is the state of the process (measurable characteristic of interest) at time t the.
Engineering Probability and Statistics - SE-205 -Chap 4 By S. O. Duffuaa.
Probability Densities
Probability Distributions
Probability theory 2011 Outline of lecture 7 The Poisson process  Definitions  Restarted Poisson processes  Conditioning in Poisson processes  Thinning.
A random variable that has the following pmf is said to be a binomial random variable with parameters n, p The Binomial random variable.
Continuous Random Variables and Probability Distributions
Copyright (c) 2004 Brooks/Cole, a division of Thomson Learning, Inc. Chapter 4 Continuous Random Variables and Probability Distributions.
Week 51 Relation between Binomial and Poisson Distributions Binomial distribution Model for number of success in n trails where P(success in any one trail)
Chapter 21 Random Variables Discrete: Bernoulli, Binomial, Geometric, Poisson Continuous: Uniform, Exponential, Gamma, Normal Expectation & Variance, Joint.
4-1 Continuous Random Variables 4-2 Probability Distributions and Probability Density Functions Figure 4-1 Density function of a loading on a long,
Exponential Distribution & Poisson Process
1 Exponential Distribution & Poisson Process Memorylessness & other exponential distribution properties; Poisson process and compound P.P.’s.
1 Performance Evaluation of Computer Systems By Behzad Akbari Tarbiat Modares University Spring 2009 Introduction to Probabilities: Discrete Random Variables.
Al-Imam Mohammad Ibn Saud University
Chapter 5 Some Discrete Probability Distributions.
The Poisson Process. A stochastic process { N ( t ), t ≥ 0} is said to be a counting process if N ( t ) represents the total number of “events” that occur.
Exponential and Chi-Square Random Variables
Continuous Random Variables and Probability Distributions
Week 41 Continuous Probability Spaces Ω is not countable. Outcomes can be any real number or part of an interval of R, e.g. heights, weights and lifetimes.
Topic 4 - Continuous distributions
Andy Guo 1 Handout Ch5(2) 實習. Andy Guo 2 Normal Distribution There are three reasons why normal distribution is important –Mathematical properties of.
Chapter 5 Statistical Models in Simulation
Tch-prob1 Chap 3. Random Variables The outcome of a random experiment need not be a number. However, we are usually interested in some measurement or numeric.
Chapter 3 Basic Concepts in Statistics and Probability
Ch4: 4.3The Normal distribution 4.4The Exponential Distribution.
1 Topic 4 - Continuous distributions Basics of continuous distributions Uniform distribution Normal distribution Gamma distribution.
Continuous Distributions The Uniform distribution from a to b.
Stochastic Models Lecture 2 Poisson Processes
Copyright © 2010 by The McGraw-Hill Companies, Inc. All rights reserved. McGraw-Hill/Irwin Chapter 5 Discrete Random Variables.
1 Birth and death process N(t) Depends on how fast arrivals or departures occur Objective N(t) = # of customers at time t. λ arrivals (births) departures.
STA347 - week 31 Random Variables Example: We roll a fair die 6 times. Suppose we are interested in the number of 5’s in the 6 rolls. Let X = number of.
Chapter 12 Continuous Random Variables and their Probability Distributions.
Chapter 01 Probability and Stochastic Processes References: Wolff, Stochastic Modeling and the Theory of Queues, Chapter 1 Altiok, Performance Analysis.
Stats Probability Theory Summary. The sample Space, S The sample space, S, for a random phenomena is the set of all possible outcomes.
Chapter 01 Probability and Stochastic Processes References: Wolff, Stochastic Modeling and the Theory of Queues, Chapter 1 Altiok, Performance Analysis.
Random Variable The outcome of an experiment need not be a number, for example, the outcome when a coin is tossed can be 'heads' or 'tails'. However, we.
Chapter 5. Continuous Random Variables. Uniform Random Variable X is a uniform random variable on the interval (α, β) if its probability function is given.
Topic 3 - Discrete distributions Basics of discrete distributions - pages Mean and variance of a discrete distribution - pages ,
Review of Chapter
Chapter 6: Continuous Probability Distributions A visual comparison.
Chapter 5. Continuous Random Variables. Continuous Random Variables Discrete random variables –Random variables whose set of possible values is either.
Copyright © 2011 by The McGraw-Hill Companies, Inc. All rights reserved. McGraw-Hill/Irwin Chapter 5 Discrete Random Variables.
Chapter 8 Estimation ©. Estimator and Estimate estimator estimate An estimator of a population parameter is a random variable that depends on the sample.
Chapter 6: Continuous Probability Distributions A visual comparison.
Chapter 4 Continuous Random Variables and Probability Distributions  Probability Density Functions.2 - Cumulative Distribution Functions and E Expected.
Copyright © Cengage Learning. All rights reserved. 4 Continuous Random Variables and Probability Distributions.
Renewal Theory Definitions, Limit Theorems, Renewal Reward Processes, Alternating Renewal Processes, Age and Excess Life Distributions, Inspection Paradox.
4-1 Continuous Random Variables 4-2 Probability Distributions and Probability Density Functions Figure 4-1 Density function of a loading on a long,
Probability Distributions: a review
Chapter 4 Continuous Random Variables and Probability Distributions
Engineering Probability and Statistics - SE-205 -Chap 4
The Exponential and Gamma Distributions
Exponential Distribution & Poisson Process
The Poisson Process.
Pertemuan ke-7 s/d ke-10 (minggu ke-4 dan ke-5)
Chapter 7: Sampling Distributions
Multinomial Distribution
Hydrologic Statistics
Uniform Probability Distribution
Presentation transcript:

Chapter 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

4. 1 The Uniform Distribution 4. 1 4.1 The Uniform Distribution 4.1.1 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

Figure 4.1 Probability density function of a U(a, b) distribution

4. 2 The Exponential Distribution 4. 2 4.2 The Exponential Distribution 4.2.1 Definition of the Exponential Distribution Pdf: Cdf: Mean and variance:

Figure 4.3 Probability density function of an exponential distribution with parameter l = 1

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.

4.2.2 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

Memoryless property of exponential random variable: This is equivalent to When X is an exponential random variable, The memoryless condition is satisfied since

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.

Proposition: If are independent exponential random variables having respective parameters , then is the exponential random variable with parameter (proof)

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,

4.2.3 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

Figure 4. 7 A Poisson process Figure 4.7 A Poisson process. The number of events occurring in a time interval of length t has a Poisson distribution with mean lt

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)

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

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 n>1, denote the elapsed time between the (n-1)st and nth event. Then, the sequence is called the sequence of inter-arrival times.

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

Example 32 (Steel Girder Fractures, p.209) 42 fractures on average on a 10m long girder between-fracture length: 10/43=0.23m 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?

Figure 4.9 Poisson process modeling fracture locations on a steel girder

P(the length of a gap is less than 10cm)=? P(a 25-cm segment of a girder contains at least two fractures)=?

Figure 4.10 The number of fractures in a 25-cm segment of the steel girder has a Poisson distribution with mean 1.075

4.3 The Gamma Distribution 4.3.1 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 k>0 and >0: Mean and variance:

Curves of Gamma pdf

Calculation of Gamma function When k is an integer, When k=1, the gamma distribution is reduced to the exponential with mean

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

4.3.2 Examples of the Gamma distribution Example 32 (Steel Girder Fractures) : Y= the number of fractures within 1m of the girder

Figure 4.15 Distance to fifth fracture has a gamma distribution with parameters k = 5 and l = 4.3

4.4 Weibull distribution 4.4.1 Definition of the Weibull distribution Useful for modeling failure and waiting times (see Examples 33 & 34) The pdf: Mean and variance:

Curves of the Weibull distribution

The c.d.f. of Weibull distribution: The pth quantile of Weibull distribution: Find x such that

4.5 The Beta distribution Useful for modeling proportions and personal probability (See Examples 35 & 36.) Pdf: Mean and variance:

Figure 4.21 Probability density functions of the beta distribution

Figure 4.22 Probability density functions of the beta distribution

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.

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 a=2.0 and b=8.8. Let X be the fraction of the storm’s rainfall falling during the first 5 minutes. Then, the probability that more than 20% of the storm’s rainfall during the first 5 minutes is determined by