Abstract:
Queueing Network Models (QNMs) with Finite Capacity provide powerful
and realistic tools for the performance evaluation and prediction of
discrete flow systems such as computer systems, communication
networks and flexible manufacturing systems. Over recent years, there
has been a great deal of progress towards the analysis and application of
QNMs with finite capacity, and high quality research work has appeared
in diverse scientific journals of learning and conference proceedings in
the
fields
of
Operations
Research,
Computer
Science,
Telecommunication Networks, Management and Industrial Engineering.
However, there are still many important and interesting finite capacity
queues and QNMs to be resolved, such as those involving multiple-job
classes, bounds and theoretical properties, exact analysis, numerical
solutions and approximate methods, as well as application studies to
computer and distributed systems, high-speed networks and production
systems.
Finite capacity queueing network models (QNMs) also play an important
role towards effective congestion control and quality of service (QoS)
protection of modern discrete flow networks. Blocking in such networks
arises because the traffic of jobs through one queue may be
momentarily halted if the destination queue has reached its capacity.
Exact closed-form solutions for QNMs with blocking are not generally
attainable except for some special cases such as two-station cyclic
ivqueues and ‘reversible’ queueing networks.
As a consequence,
numerical techniques and analytic approximations have been proposed
for the study of arbitrary QNMs with non-Markovian (external) inter-
arrival and service times under various types of blocking mechanisms.
This research mainly focuses on:
i)
To develop and validate cost effective analytical models for
arbitrary QNMs with blocking and multiple job classes.
ii)
To use the analytical models to evaluate the performance of
QNMs under various blocking mechanisms applicable to flexible
manufacturing
systems
and
high
speed
telecommunication
networks.
iii)
To develop approximate analytical algorithms for arbitrary QNMs
consisting of
G/G/1/N censored-type queues with arbitrary
arrival and service processes, single server under Partial Buffer
Sharing (PBS) and Complete Buffer Partitioning (CBP) schemes
stipulating a sequence of buffer thresholds {N=N1,N2,...,NR,0< Ni ≤
Ni-1 , i=1,2,...,R} and buffer partitioning with FCFS service
discipline. {chapter 4 and 5}
iv)
Validation of these algorithms (iii) using QNAP simulation
package.
v)
Extension of the above algorithms for multiple servers and its
validation using simulation.
Determining a performance distribution via classical queueing theory
may prove to be an infeasible task even for systems of queues with
moderate complexity. Hence, the principle of entropy maximization may
be applied to characterize useful information theoretic approximations
of performance distributions of queueing systems and queueing network
models (QNMs).
vFocusing on an arbitrary open QNM, the ME solution for the joint state
probability, subject to marginal mean value constraints, can be
interpreted as a product-form approximation. Thus, the principle of ME
implies a decomposition of a complex QNM into individual queues each
of which can be analyzed separately with revised inter arrival and
service times. Moreover, the marginal ME state probability of a single
queue, in conjunction with suitable formulae for the first two moments
of the effective flow, can play the role of a cost-effective analytic
building block towards the computation of the performance metrics for
the entire network.