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This example shows how to model a single-queue single-server system in which the interarrival time and the service time are uniformly distributed with fixed means of 1.1 and 1, respectively. The queue has an infinite storage capacity. In the notation, the G stands for a general distribution with a known mean and variance; G/G/1 means that the system's interarrival and service times are governed by such a general distribution, and that the system has one server. You can change the variances of the uniform distributions. You can use this model to examine Little's law.

The model includes the components listed below:

**Time Based Entity Generator block:**Source of entities (also known as "customers" in queuing theory).

**Uniform Distribution for Interarrival Time subsystem:**Creates a signal representing the interarrival times for the generated entities. After you set the distribution's variance using the Arrival Process Variance block, the subsystem computes a uniform random variate with the chosen variance and mean 1.1. To see the computation details, select the Uniform Distribution for Interarrival Time subsystem, choose Edit > Look Under Mask and double-click the block labeled Uniform Distribution.

**FIFO Queue block:**It stores entities that have yet to be served.

**Single Server block:**Models a server whose service time has a uniform distribution.

**Attribute Function block labeled Generate Service Time with Uniform Distribution:**Assigns a service time to each attribute. After you set the distribution's variance using the Service Process Variance block, this block computes a uniform random variate with the chosen variance and mean 1.

The model includes these visual ways to understand its performance:

Display blocks that show the queue workload, average waiting time in the queue, average service time, and server utilization.

A scope showing the number of entities (customers) in the queue at any given time

A scope comparing empirical and theoretical ratios. See the discussion of Little's law below.

You can use this model to verify Little's law, which states the linear relationship between average queue length and average waiting time in the queue. In particular, the expected relationship is as follows:

Average queue length = (Mean arrival rate)(Average waiting time in queue)

The FIFO Queue block computes the current queue length and average waiting time in the queue. The subsystem called Little's Law Evaluation computes the ratio of average queue length (derived from the instantaneous queue length via integration) to average waiting time, as well as the ratio of mean service time to mean arrival time. The two ratios appear on the plot labeled Arrival Rate: Theoretical vs. Simulation Results.

Another way to interpret the equation above is that, given a normalized mean service time of 1, you can use the average waiting time and average queue length to derive the system's arrival rate.

**Little's Law Applied to the Server**

You can also use this model to verify the linear relationship that Little's law predicts between the server utilization and the average service time. The Single Server block computes the server utilization and average waiting time in the server. Because each entity can depart from the server immediately upon completing service, waiting time is equivalent to service time for the server in this model.

Move the Arrival Process Variance slider or the Service Process Variance slider during the simulation and observe how the queue content changes. When traffic intensity is high, the average waiting time in the queue is approximately linear in the variances of the interarrival time and service time. The larger the variances are, the longer an entity has to wait, and the more entities are waiting in the system.

Generating Entities as a Markov-Modulated Poisson ProcessGenerating Entities as a Markov-Modulated Poisson Process

[1] Kleinrock, Leonard, Queueing Systems, Volume I: Theory, New York, Wiley, 1975.

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