Here, Qδ(t) is the number of customers in the system Sδ at instant t. Let us introduce independent sequences
of iid random variables with exponential distribution with a rate
δ. Assume that repair time
in the system
Sδ has the form
and service time
by the
ith server has the form
Then Sδ satisfies conditions 1.6 and 1.7. Since
and
we may choose
δ so that
ρδ < 1.
The proof of [1.13] is based on the “so-called” probability space method (Belorusov 2012).
Let us note that condition 1.4 may be provided in various ways. For instance, assume that blocked (or available) period has an exponential phase and
[1.14]
Then Q is a regenerative process with points of regeneration
that is a subsequence of the sequence
such that
and all servers are in the exponential phase of their blocked (or available) periods. Now condition 1.4 follows directly from theorem 1 in Afanasyeva and Tkachenko (2014). We also note that in this case
Q is a stable process if
ρ < 1. If only assumption
[1.14] takes place with the help of the majorising system
Sδ, we obtain the stochastic boundedness
Q when
ρ < 1. ■
1.7. Discrete-time queueing system with interruptions and preemptive repeat different service discipline
Here, we consider the system with interruptions described in the previous section for the discrete-time case. The moments of breakdowns
and moments of restorations
for the
ith server satisfy
[1.12]. The input flow
X is an aperiodic discrete-time regenerative flow with rate
λX.
We consider the preemptive repeat different service discipline that means that the service is repeated from the start after restoration of the server and the new service time is independent of the original service time (Gaver 1962).
To define the process Yi for the ith server in the auxiliary system S0, we introduce the collection
of independent sequences
consisting of iid random variables with distribution function
Bi. Of course, we assume that
Let
be the counting process associated with the sequence
be the number of cycles for the
ith server during [0
,t], i.e.
Then the process
Yi is defined by the relation
[1.15]
and
We denote by
Hi(
t) the renewal function for
LEMMA 1.2.– There exists the limit
The proof easily follows from the evident inequalities
where
the strong law of large numbers and convergence
From lemma 1.2, we have
[1.16]
We introduce the counting processes
CONDITION 1.8.– The counting processes
are aperiodic.
Then Y is a regenerative aperiodic flow with points of regeneration
In other words,
is a point of regeneration of
Y if all the servers get out of the order simultaneously at this moment. Taking into account condition 1.8, we conclude from lemma 1.1 that
Now we construct the sequence
of common points of regeneration for processes
X and
Y with the help of
[1.3]. Because of lemma 1.1
and the traffic rate
ρ of the system is defined by
[1.7].
COROLLARY 1.2.– Let condition 1.8 be fulfilled. Then
1 i)
2 ii) Q(t) is a stochastically bounded process if ρ < 1.
PROOF.– The first statement follows from theorem 1.1 since conditions 1.2 and 1.3 are realized.
Let ρ < 1. For the system S, we introduce the embedded process
where
Qn is the number of customers in the system on time
Tn and
ζi(n) = 1 if there is a customer on the
ith server and
ζi (
n) = 0 otherwise. In a view