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Proceeding Paper

On Single Server Queues with Batch Arrivals †

by
Vitaly Sobolev
1,*,‡ and
Alexander Condratenko
2,‡
1
Department of Probability Theory and Applied Mathematics, Moscow Technical University of Communications and Informatics, 123423 Moscow, Russia
2
Faculty of Mechanics and Mathematics, Lomonosov Moscow State University, 119991 Moscow, Russia
*
Author to whom correspondence should be addressed.
Presented at the 1st International Online Conference on Mathematics and Applications, 1–15 May 2023; Available online: https://iocma2023.sciforum.net/.
These authors contributed equally to this work.
Comput. Sci. Math. Forum 2023, 7(1), 59; https://doi.org/10.3390/IOCMA2023-14417
Published: 28 April 2023

Abstract

:
We consider a queuing system GI ν | M | 1 | with arrival of customers in batches, general renewal arrivals, exponential service times, single service channels and an infinite number of waiting positions, where customers are serviced in the order of their arrival. In the stationary case, new forms of the probability generating functions of the number of clients in the system are derived. These new forms are written in terms of the p.g.f. of the tail distribution function of the number of customers per group and of the p.g.f. of an embedded discrete time homogeneous Markov chain. In a queuing system with a batch Poisson arrival flow M λ ν | M μ | 1 | , the number of customers in the system can be obtained from the normalized tail distribution.

1. Introduction

Many practical applications in communication systems, production systems, transportation and stocking systems, information processing systems, etc., can be modeled as a queueing system. Therefore, queuing theory is very useful for solving this problem. One of the most important types of queueing systems are bulk queuing systems [1]. Batch queues are a class of queues in which arrival or service (or both) are in bulk. Many scientific publications are devoted to this type of queuing system [2,3].
In this manuscript, we consider a batch queueing system GI ν | M | 1 | . It was considered in the works [4,5]. A brief description of this system is as follows. Customer arrival moments 0 < t 1 < t 2 < . . . < t n < . . . constitute a renewal process [6] with the probability generating function P t n t n 1 < t = F ( t ) . Customers arrive in batches at a single server queue. At every moment t n , a group of ν n customers arrives. The collection of these random variables ν n is independent and identically distributed. Additionally, suppose that ν n is bounded and
α ( z ) = M z ν n = α 1 z + α 2 z 2 + . . . + α m z m , α m 0
is its generating function. The system has a single service channel and the service time is exponentially distributed with parameter μ . The queue has infinite capacity and customers are serviced in the order of their arrival.
Let a stochastic process ξ ( t ) denote the number of customers in the queueing system at time t. The stationary distribution of this process can be described using the probability generating function
P ( z ) = lim t M z ξ ( t ) = n = 0 p n z n .
The probability p n can be interpreted as the fraction of time that n customers are in the system.
Consider process ξ ( t ) at the arrival moments of batches of customers and denote
ξ n = ξ ( t n 0 ) , n = 1 , 2 , . . . , ξ 1 = 0 .
Then, ξ n describes the number of customers in the system at the arrival moment of batches of customers t n . It is obvious [4] that the sequence of ξ n constitutes a homogenous Markov chain.
The stationary distribution of the chain ξ n can be described using the probability generating function
π ( z ) = lim n M z ξ n = k = 0 π k z k .
We will calculate the stationary distribution of the process ξ ( t ) by calculating the corresponding distribution in the embedded Markov chain ξ n .
It is known [4,5] that Markov chain ξ n has a stationary distribution if and only if
ν = k = 0 m k α k < μ T ,
where T = 0 t d F ( t ) is the average inter-arrival time and
ν = M ν n = α ( z ) z = 1
is the average number of customers in an arriving batch. The steady state condition (3) of the queue can be written in the form of the traffic rate
ρ = ν μ T < 1
where ρ is the traffic rate, generalized here for batch systems. Next, we suppose that inequality (4) holds.

2. Results

As we will see below, some normalized tail probabilities [7] only connect the stationary distribution of the stochastic process ξ ( t ) with the stationary distribution of the chain ξ n . Therefore, it will be convenient to use a notation for the distribution tails of ν n . Thus, we shall write
A k = P ν n k = l = k m α l , k = 1 , . . . , m
and
A z = 1 ν k = 1 m A k z k .
In this case, it is easy to see that A z is the probability generating function for some discrete random variable ζ with the probability mass function
q k = P ζ = k = A k / ν , k = 1 , . . . , m .
Let us call the probability distributions given by { q k } the normalized distribution tails and A z the probability generating function of the normalized distribution tails.
For A z , it can be shown that
A z = z ν 1 α ( z ) 1 z .
Thus, we have the following chain of equalities:
ν z A z = l = k m A k z k 1 =
= α 1 + α 2 1 + z + + α m 1 + z + + z m 1 =
= α 1 1 z + α 2 1 z 2 + + α m 1 z m 1 z =
= 1 α 1 z α 2 z 2 α m z m 1 z = 1 α z 1 z .
This approach allows us to formulate two theorems.
Theorem 1.
The condition stationary distribution of process ξ ( t ) exists and it may be defined by the generating function
P ( z ) = ρ π ( z ) A z + 1 ρ ,
where A z is the probability generating function (5), ρ is the traffic rate (4) and π ( z ) is defined by (2).
Remark 1.
Formula (6) shows that the distribution of the probability p n is a mixture of the degenerate distributions. The distribution can be represented as a convolution of two distributions, one of which is the distribution of the nested Markov chain and the other is the normalized tail distribution of the arriving batch sizes.
Now, let us consider a queuing system M λ ν | M μ | 1 | with batch Poisson arrival flow, which contains the arrival rate constant λ , i.e., the batch of customers arrives with exponential inter-arrival times with mean T = 1 λ . In this case, the following theorem holds.
Theorem 2.
For the system M λ ν | M μ | 1 | , under (4), the condition stationary distribution of process ξ ( t ) exists and it may be defined by the generating function
P ( z ) = π ( z ) = 1 ρ 1 ρ A z
where A z is from (5), ρ is the traffic rate (4) and π ( z ) is defined by (2).

3. Conclusions

In this article, we studied relationships between probability distributions in a single server batch queueing model GI λ ν | M μ | 1 | . Future research may be devoted to the search for similar probabilistic relationships between the target sequence of probabilities and the corresponding nested Markov chains in other queuing systems.

Author Contributions

The authors contributed equally to this work. All authors have read and agreed to the published version of the manuscript.

Funding

This research received no external funding.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Not applicable.

Data Availability Statement

Not applicable.

Acknowledgments

We wish to express our gratitude to V.V. Kozlov, who was abundantly helpful and offered invaluable technical assistance. The authors would like to thank the editors and the referees for their valuable comments and suggestions which have helped to improve the quality and presentation of the paper.

Conflicts of Interest

The authors declare no conflict of interest.

Abbreviations

The following abbreviations are used in this manuscript:
p.g.f.probability generating functions

References

  1. Chaudhry, M.L.; Templeton, J.G.C. A First Course in Bulk Queues, 1st ed.; John Wiley & Sons: Hoboken, NJ, USA, 1983. [Google Scholar]
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  4. Soloviev, A.D.; Sobolev, V.N. One Server Queue with Bulk Arrivals. In Analytical and Computational Methods in Probability Theory, ACMPT 2017; Rykov, V., Singpurwalla, N., Zubkov, A., Eds.; Springer: Cham, Switzerland, 2007; pp. 97–108. [Google Scholar]
  5. Soloviev, A.D.; Sobolev, V.N. One server queue with bulk arrivals. In Analytical and Computational Methods in Probability Theory and Its Applications (ACMPT-2017), Proceedings of the International Scientific Conference, Moscow, Russia, 23–27 October 2017; Lebedev, A.V., Ed.; RUDN: Moscow, Russia, 2017. [Google Scholar]
  6. Gnedenko, B.V.; Kovalenko, I.N. Introduction to Queueing Theory, 2nd ed.; Birkhauser: Boston, NJ, USA, 1989; pp. 108–119. [Google Scholar]
  7. Feller, W. An Introduction to Probability Theory and Its Applications, 3rd ed.; John Wiley & Sons, Inc.: New York, NY, USA, 1968; Volume I, pp. 264–266. [Google Scholar]
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MDPI and ACS Style

Sobolev, V.; Condratenko, A. On Single Server Queues with Batch Arrivals. Comput. Sci. Math. Forum 2023, 7, 59. https://doi.org/10.3390/IOCMA2023-14417

AMA Style

Sobolev V, Condratenko A. On Single Server Queues with Batch Arrivals. Computer Sciences & Mathematics Forum. 2023; 7(1):59. https://doi.org/10.3390/IOCMA2023-14417

Chicago/Turabian Style

Sobolev, Vitaly, and Alexander Condratenko. 2023. "On Single Server Queues with Batch Arrivals" Computer Sciences & Mathematics Forum 7, no. 1: 59. https://doi.org/10.3390/IOCMA2023-14417

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