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Probability Distributions (Exponential Distribution) | Engineering Mathematics - Civil Engineering (CE) PDF Download

Introduction

Suppose we are posed with the question- How much time do we need to wait before a given event occurs?
The answer to this question can be given in probabilistic terms if we model the given problem using the Exponential Distribution.
Since the time we need to wait is unknown, we can think of it as a Random Variable. If the probability of the event happening in a given interval is proportional to the length of the interval, then the Random Variable has an exponential distribution.
The support (set of values the Random Variable can take) of an Exponential Random Variable is the set of all positive real numbers.
Rx = [0, ∞)

Probability Density Function
For a positive real number λ the probability density function of a Exponentially distributed Random variable is given by-
Probability Distributions (Exponential Distribution) | Engineering Mathematics - Civil Engineering (CE)
Here λ is the rate parameter and its effects on the density function are illustrated below

Probability Distributions (Exponential Distribution) | Engineering Mathematics - Civil Engineering (CE)

To check if the above function is a legitimate probability density function, we need to check if it’s integral over its support is 1.
Probability Distributions (Exponential Distribution) | Engineering Mathematics - Civil Engineering (CE)

Cumulative Density Function
As we know, the cumulative density function is nothing but the sum of probability of all events up to a certain value of x = t.
In the Exponential distribution, the cumulative density function F(X) is given by:
Probability Distributions (Exponential Distribution) | Engineering Mathematics - Civil Engineering (CE)

Expected Value
To find out the expected value, we simply multiply the probability distribution function with x and integrate over all possible values(support).
Probability Distributions (Exponential Distribution) | Engineering Mathematics - Civil Engineering (CE)

Variance and Standard deviation
The variance of the Exponential distribution is given by:
Probability Distributions (Exponential Distribution) | Engineering Mathematics - Civil Engineering (CE)

The Standard Deviation of the distribution:
Probability Distributions (Exponential Distribution) | Engineering Mathematics - Civil Engineering (CE)

Example: Let X denote the time between detections of a particle with a Geiger counter and assume that X has an exponential distribution with E(X) = 1.4 minutes. What is the probability that we detect a particle within 30 seconds of starting the counter?
Solution: Since the Random Variable (X) denoting the time between successive detection of particles is exponentially distributed, the Expected Value is given by:
E[X] = 1 / λ
1 / λ = 1.4
λ = 1 / 1.4
To find the probability of detecting the particle within 30 seconds of the start of the experiment, we need to use the cumulative density function discussed above. We convert the given 30 seconds in minutes since we have our rate parameter in terms of minutes.
Probability Distributions (Exponential Distribution) | Engineering Mathematics - Civil Engineering (CE)
Probability Distributions (Exponential Distribution) | Engineering Mathematics - Civil Engineering (CE)

Lack of Memory Property

Now consider that in the above example, after detecting a particle at the 30 second mark, no particle is detected three minutes since.
Because we have been waiting for the past 3 minutes, we feel that a detection is due i.e. the probability of detection of a particle in the next 30 seconds should be higher than 0.3. However. this is not true for the exponential distribution. We can prove so by finding the probability of the above scenario, which can be expressed as a conditional probability-Probability Distributions (Exponential Distribution) | Engineering Mathematics - Civil Engineering (CE)
The fact that we have waited three minutes without a detection does not change the probability of a detection in the next 30 seconds. Therefore, the probability only depends on the length of the interval being considered.

The document Probability Distributions (Exponential Distribution) | Engineering Mathematics - Civil Engineering (CE) is a part of the Civil Engineering (CE) Course Engineering Mathematics.
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FAQs on Probability Distributions (Exponential Distribution) - Engineering Mathematics - Civil Engineering (CE)

1. What is the exponential distribution?
Ans. The exponential distribution is a probability distribution that models the time between events in a Poisson process. It is often used to model the time until an event occurs, such as the time until the next customer arrives at a store or the time until a machine fails.
2. How is the exponential distribution characterized?
Ans. The exponential distribution is characterized by a single parameter called the rate parameter, denoted by λ. The rate parameter represents the average number of events that occur in a unit of time. The probability density function (PDF) of the exponential distribution is given by f(x) = λe^(-λx), where x is the random variable.
3. What is the cumulative distribution function (CDF) of the exponential distribution?
Ans. The cumulative distribution function (CDF) of the exponential distribution is defined as F(x) = 1 - e^(-λx), where x is the random variable. The CDF gives the probability that the random variable is less than or equal to a specific value x.
4. How is the exponential distribution related to the Poisson process?
Ans. The exponential distribution is closely related to the Poisson process, which models the occurrence of events over time. In a Poisson process, the time between events follows an exponential distribution. Conversely, if the time between events follows an exponential distribution, then the process can be modeled as a Poisson process.
5. What are some real-world applications of the exponential distribution?
Ans. The exponential distribution has various real-world applications. It is commonly used in reliability engineering to model the time until failure of a system or component. It is also used in queueing theory to model the time between arrivals of customers in a queue. Additionally, the exponential distribution is used in financial modeling, such as modeling the time between stock price changes or the time until an option is exercised.
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